Files
Python/d2l/d2l-zh/pytorch/chapter_convolutional-neural-networks/lenet.ipynb
T
2025-12-16 09:23:53 +08:00

1350 lines
51 KiB
Plaintext
Raw Blame History

This file contains ambiguous Unicode characters
This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.
{
"cells": [
{
"cell_type": "markdown",
"id": "493c2d92",
"metadata": {
"origin_pos": 0
},
"source": [
"# 卷积神经网络(LeNet\n",
":label:`sec_lenet`\n",
"\n",
"通过之前几节,我们学习了构建一个完整卷积神经网络的所需组件。\n",
"回想一下,之前我们将softmax回归模型( :numref:`sec_softmax_scratch`)和多层感知机模型( :numref:`sec_mlp_scratch`)应用于Fashion-MNIST数据集中的服装图片。\n",
"为了能够应用softmax回归和多层感知机,我们首先将每个大小为$28\\times28$的图像展平为一个784维的固定长度的一维向量,然后用全连接层对其进行处理。\n",
"而现在,我们已经掌握了卷积层的处理方法,我们可以在图像中保留空间结构。\n",
"同时,用卷积层代替全连接层的另一个好处是:模型更简洁、所需的参数更少。\n",
"\n",
"本节将介绍LeNet,它是最早发布的卷积神经网络之一,因其在计算机视觉任务中的高效性能而受到广泛关注。\n",
"这个模型是由AT&T贝尔实验室的研究员Yann LeCun在1989年提出的(并以其命名),目的是识别图像 :cite:`LeCun.Bottou.Bengio.ea.1998`中的手写数字。\n",
"当时,Yann LeCun发表了第一篇通过反向传播成功训练卷积神经网络的研究,这项工作代表了十多年来神经网络研究开发的成果。\n",
"\n",
"当时,LeNet取得了与支持向量机(support vector machines)性能相媲美的成果,成为监督学习的主流方法。\n",
"LeNet被广泛用于自动取款机(ATM)机中,帮助识别处理支票的数字。\n",
"时至今日,一些自动取款机仍在运行Yann LeCun和他的同事Leon Bottou在上世纪90年代写的代码呢!\n",
"\n",
"## LeNet\n",
"\n",
"总体来看,(**LeNetLeNet-5)由两个部分组成:**)(~~卷积编码器和全连接层密集块~~)\n",
"\n",
"* 卷积编码器:由两个卷积层组成;\n",
"* 全连接层密集块:由三个全连接层组成。\n",
"\n",
"该架构如 :numref:`img_lenet`所示。\n",
"\n",
"![LeNet中的数据流。输入是手写数字,输出为10种可能结果的概率。](../img/lenet.svg)\n",
":label:`img_lenet`\n",
"\n",
"每个卷积块中的基本单元是一个卷积层、一个sigmoid激活函数和平均汇聚层。请注意,虽然ReLU和最大汇聚层更有效,但它们在20世纪90年代还没有出现。每个卷积层使用$5\\times 5$卷积核和一个sigmoid激活函数。这些层将输入映射到多个二维特征输出,通常同时增加通道的数量。第一卷积层有6个输出通道,而第二个卷积层有16个输出通道。每个$2\\times2$池操作(步幅2)通过空间下采样将维数减少4倍。卷积的输出形状由批量大小、通道数、高度、宽度决定。\n",
"\n",
"为了将卷积块的输出传递给稠密块,我们必须在小批量中展平每个样本。换言之,我们将这个四维输入转换成全连接层所期望的二维输入。这里的二维表示的第一个维度索引小批量中的样本,第二个维度给出每个样本的平面向量表示。LeNet的稠密块有三个全连接层,分别有120、84和10个输出。因为我们在执行分类任务,所以输出层的10维对应于最后输出结果的数量。\n",
"\n",
"通过下面的LeNet代码,可以看出用深度学习框架实现此类模型非常简单。我们只需要实例化一个`Sequential`块并将需要的层连接在一起。\n"
]
},
{
"cell_type": "code",
"execution_count": 1,
"id": "589980bb",
"metadata": {
"execution": {
"iopub.execute_input": "2023-08-18T07:16:58.345112Z",
"iopub.status.busy": "2023-08-18T07:16:58.344514Z",
"iopub.status.idle": "2023-08-18T07:17:01.351069Z",
"shell.execute_reply": "2023-08-18T07:17:01.349827Z"
},
"origin_pos": 2,
"tab": [
"pytorch"
]
},
"outputs": [],
"source": [
"import torch\n",
"from torch import nn\n",
"from d2l import torch as d2l\n",
"\n",
"net = nn.Sequential(\n",
" nn.Conv2d(1, 6, kernel_size=5, padding=2), nn.Sigmoid(),\n",
" nn.AvgPool2d(kernel_size=2, stride=2),\n",
" nn.Conv2d(6, 16, kernel_size=5), nn.Sigmoid(),\n",
" nn.AvgPool2d(kernel_size=2, stride=2),\n",
" nn.Flatten(),\n",
" nn.Linear(16 * 5 * 5, 120), nn.Sigmoid(),\n",
" nn.Linear(120, 84), nn.Sigmoid(),\n",
" nn.Linear(84, 10))"
]
},
{
"cell_type": "markdown",
"id": "b9b37131",
"metadata": {
"origin_pos": 5
},
"source": [
"我们对原始模型做了一点小改动,去掉了最后一层的高斯激活。除此之外,这个网络与最初的LeNet-5一致。\n",
"\n",
"下面,我们将一个大小为$28 \\times 28$的单通道(黑白)图像通过LeNet。通过在每一层打印输出的形状,我们可以[**检查模型**],以确保其操作与我们期望的 :numref:`img_lenet_vert`一致。\n",
"\n",
"![LeNet 的简化版。](../img/lenet-vert.svg)\n",
":label:`img_lenet_vert`\n"
]
},
{
"cell_type": "code",
"execution_count": 2,
"id": "8d4dfb21",
"metadata": {
"execution": {
"iopub.execute_input": "2023-08-18T07:17:01.355505Z",
"iopub.status.busy": "2023-08-18T07:17:01.354784Z",
"iopub.status.idle": "2023-08-18T07:17:01.371233Z",
"shell.execute_reply": "2023-08-18T07:17:01.370166Z"
},
"origin_pos": 7,
"tab": [
"pytorch"
]
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"Conv2d output shape: \t torch.Size([1, 6, 28, 28])\n",
"Sigmoid output shape: \t torch.Size([1, 6, 28, 28])\n",
"AvgPool2d output shape: \t torch.Size([1, 6, 14, 14])\n",
"Conv2d output shape: \t torch.Size([1, 16, 10, 10])\n",
"Sigmoid output shape: \t torch.Size([1, 16, 10, 10])\n",
"AvgPool2d output shape: \t torch.Size([1, 16, 5, 5])\n",
"Flatten output shape: \t torch.Size([1, 400])\n",
"Linear output shape: \t torch.Size([1, 120])\n",
"Sigmoid output shape: \t torch.Size([1, 120])\n",
"Linear output shape: \t torch.Size([1, 84])\n",
"Sigmoid output shape: \t torch.Size([1, 84])\n",
"Linear output shape: \t torch.Size([1, 10])\n"
]
}
],
"source": [
"X = torch.rand(size=(1, 1, 28, 28), dtype=torch.float32)\n",
"for layer in net:\n",
" X = layer(X)\n",
" print(layer.__class__.__name__,'output shape: \\t',X.shape)"
]
},
{
"cell_type": "markdown",
"id": "81704149",
"metadata": {
"origin_pos": 10
},
"source": [
"请注意,在整个卷积块中,与上一层相比,每一层特征的高度和宽度都减小了。\n",
"第一个卷积层使用2个像素的填充,来补偿$5 \\times 5$卷积核导致的特征减少。\n",
"相反,第二个卷积层没有填充,因此高度和宽度都减少了4个像素。\n",
"随着层叠的上升,通道的数量从输入时的1个,增加到第一个卷积层之后的6个,再到第二个卷积层之后的16个。\n",
"同时,每个汇聚层的高度和宽度都减半。最后,每个全连接层减少维数,最终输出一个维数与结果分类数相匹配的输出。\n",
"\n",
"## 模型训练\n",
"\n",
"现在我们已经实现了LeNet,让我们看看[**LeNet在Fashion-MNIST数据集上的表现**]。\n"
]
},
{
"cell_type": "code",
"execution_count": 3,
"id": "d13d15dc",
"metadata": {
"execution": {
"iopub.execute_input": "2023-08-18T07:17:01.375937Z",
"iopub.status.busy": "2023-08-18T07:17:01.374923Z",
"iopub.status.idle": "2023-08-18T07:17:01.483390Z",
"shell.execute_reply": "2023-08-18T07:17:01.481932Z"
},
"origin_pos": 11,
"tab": [
"pytorch"
]
},
"outputs": [],
"source": [
"batch_size = 256\n",
"train_iter, test_iter = d2l.load_data_fashion_mnist(batch_size=batch_size)"
]
},
{
"cell_type": "markdown",
"id": "2f18ba4f",
"metadata": {
"origin_pos": 12
},
"source": [
"虽然卷积神经网络的参数较少,但与深度的多层感知机相比,它们的计算成本仍然很高,因为每个参数都参与更多的乘法。\n",
"通过使用GPU,可以用它加快训练。\n"
]
},
{
"cell_type": "markdown",
"id": "cf6cad2b",
"metadata": {
"origin_pos": 13,
"tab": [
"pytorch"
]
},
"source": [
"为了进行评估,我们需要[**对**] :numref:`sec_softmax_scratch`中描述的(**`evaluate_accuracy`函数进行轻微的修改**)。\n",
"由于完整的数据集位于内存中,因此在模型使用GPU计算数据集之前,我们需要将其复制到显存中。\n"
]
},
{
"cell_type": "code",
"execution_count": 4,
"id": "c868f5c5",
"metadata": {
"execution": {
"iopub.execute_input": "2023-08-18T07:17:01.489623Z",
"iopub.status.busy": "2023-08-18T07:17:01.488809Z",
"iopub.status.idle": "2023-08-18T07:17:01.498984Z",
"shell.execute_reply": "2023-08-18T07:17:01.498112Z"
},
"origin_pos": 15,
"tab": [
"pytorch"
]
},
"outputs": [],
"source": [
"def evaluate_accuracy_gpu(net, data_iter, device=None): #@save\n",
" \"\"\"使用GPU计算模型在数据集上的精度\"\"\"\n",
" if isinstance(net, nn.Module):\n",
" net.eval() # 设置为评估模式\n",
" if not device:\n",
" device = next(iter(net.parameters())).device\n",
" # 正确预测的数量,总预测的数量\n",
" metric = d2l.Accumulator(2)\n",
" with torch.no_grad():\n",
" for X, y in data_iter:\n",
" if isinstance(X, list):\n",
" # BERT微调所需的(之后将介绍)\n",
" X = [x.to(device) for x in X]\n",
" else:\n",
" X = X.to(device)\n",
" y = y.to(device)\n",
" metric.add(d2l.accuracy(net(X), y), y.numel())\n",
" return metric[0] / metric[1]"
]
},
{
"cell_type": "markdown",
"id": "d2872a69",
"metadata": {
"origin_pos": 17
},
"source": [
"[**为了使用GPU,我们还需要一点小改动**]。\n",
"与 :numref:`sec_softmax_scratch`中定义的`train_epoch_ch3`不同,在进行正向和反向传播之前,我们需要将每一小批量数据移动到我们指定的设备(例如GPU)上。\n",
"\n",
"如下所示,训练函数`train_ch6`也类似于 :numref:`sec_softmax_scratch`中定义的`train_ch3`。\n",
"由于我们将实现多层神经网络,因此我们将主要使用高级API。\n",
"以下训练函数假定从高级API创建的模型作为输入,并进行相应的优化。\n",
"我们使用在 :numref:`subsec_xavier`中介绍的Xavier随机初始化模型参数。\n",
"与全连接层一样,我们使用交叉熵损失函数和小批量随机梯度下降。\n"
]
},
{
"cell_type": "code",
"execution_count": 5,
"id": "8cb06c53",
"metadata": {
"execution": {
"iopub.execute_input": "2023-08-18T07:17:01.504092Z",
"iopub.status.busy": "2023-08-18T07:17:01.503194Z",
"iopub.status.idle": "2023-08-18T07:17:01.520331Z",
"shell.execute_reply": "2023-08-18T07:17:01.519209Z"
},
"origin_pos": 19,
"tab": [
"pytorch"
]
},
"outputs": [],
"source": [
"#@save\n",
"def train_ch6(net, train_iter, test_iter, num_epochs, lr, device):\n",
" \"\"\"用GPU训练模型(在第六章定义)\"\"\"\n",
" def init_weights(m):\n",
" if type(m) == nn.Linear or type(m) == nn.Conv2d:\n",
" nn.init.xavier_uniform_(m.weight)\n",
" net.apply(init_weights)\n",
" print('training on', device)\n",
" net.to(device)\n",
" optimizer = torch.optim.SGD(net.parameters(), lr=lr)\n",
" loss = nn.CrossEntropyLoss()\n",
" animator = d2l.Animator(xlabel='epoch', xlim=[1, num_epochs],\n",
" legend=['train loss', 'train acc', 'test acc'])\n",
" timer, num_batches = d2l.Timer(), len(train_iter)\n",
" for epoch in range(num_epochs):\n",
" # 训练损失之和,训练准确率之和,样本数\n",
" metric = d2l.Accumulator(3)\n",
" net.train()\n",
" for i, (X, y) in enumerate(train_iter):\n",
" timer.start()\n",
" optimizer.zero_grad()\n",
" X, y = X.to(device), y.to(device)\n",
" y_hat = net(X)\n",
" l = loss(y_hat, y)\n",
" l.backward()\n",
" optimizer.step()\n",
" with torch.no_grad():\n",
" metric.add(l * X.shape[0], d2l.accuracy(y_hat, y), X.shape[0])\n",
" timer.stop()\n",
" train_l = metric[0] / metric[2]\n",
" train_acc = metric[1] / metric[2]\n",
" if (i + 1) % (num_batches // 5) == 0 or i == num_batches - 1:\n",
" animator.add(epoch + (i + 1) / num_batches,\n",
" (train_l, train_acc, None))\n",
" test_acc = evaluate_accuracy_gpu(net, test_iter)\n",
" animator.add(epoch + 1, (None, None, test_acc))\n",
" print(f'loss {train_l:.3f}, train acc {train_acc:.3f}, '\n",
" f'test acc {test_acc:.3f}')\n",
" print(f'{metric[2] * num_epochs / timer.sum():.1f} examples/sec '\n",
" f'on {str(device)}')"
]
},
{
"cell_type": "markdown",
"id": "1d212797",
"metadata": {
"origin_pos": 22
},
"source": [
"现在,我们[**训练和评估LeNet-5模型**]。\n"
]
},
{
"cell_type": "code",
"execution_count": 6,
"id": "4b5d7b0c",
"metadata": {
"execution": {
"iopub.execute_input": "2023-08-18T07:17:01.525559Z",
"iopub.status.busy": "2023-08-18T07:17:01.524508Z",
"iopub.status.idle": "2023-08-18T07:17:54.484626Z",
"shell.execute_reply": "2023-08-18T07:17:54.483337Z"
},
"origin_pos": 23,
"tab": [
"pytorch"
]
},
"outputs": [
{
"name": "stdout",
"output_type": "stream",
"text": [
"loss 0.469, train acc 0.823, test acc 0.779\n",
"55296.6 examples/sec on cuda:0\n"
]
},
{
"data": {
"image/svg+xml": [
"<?xml version=\"1.0\" encoding=\"utf-8\" standalone=\"no\"?>\n",
"<!DOCTYPE svg PUBLIC \"-//W3C//DTD SVG 1.1//EN\"\n",
" \"http://www.w3.org/Graphics/SVG/1.1/DTD/svg11.dtd\">\n",
"<svg xmlns:xlink=\"http://www.w3.org/1999/xlink\" width=\"238.965625pt\" height=\"180.65625pt\" viewBox=\"0 0 238.965625 180.65625\" xmlns=\"http://www.w3.org/2000/svg\" version=\"1.1\">\n",
" <metadata>\n",
" <rdf:RDF xmlns:dc=\"http://purl.org/dc/elements/1.1/\" xmlns:cc=\"http://creativecommons.org/ns#\" xmlns:rdf=\"http://www.w3.org/1999/02/22-rdf-syntax-ns#\">\n",
" <cc:Work>\n",
" <dc:type rdf:resource=\"http://purl.org/dc/dcmitype/StillImage\"/>\n",
" <dc:date>2023-08-18T07:17:54.424037</dc:date>\n",
" <dc:format>image/svg+xml</dc:format>\n",
" <dc:creator>\n",
" <cc:Agent>\n",
" <dc:title>Matplotlib v3.5.1, https://matplotlib.org/</dc:title>\n",
" </cc:Agent>\n",
" </dc:creator>\n",
" </cc:Work>\n",
" </rdf:RDF>\n",
" </metadata>\n",
" <defs>\n",
" <style type=\"text/css\">*{stroke-linejoin: round; stroke-linecap: butt}</style>\n",
" </defs>\n",
" <g id=\"figure_1\">\n",
" <g id=\"patch_1\">\n",
" <path d=\"M 0 180.65625 \n",
"L 238.965625 180.65625 \n",
"L 238.965625 0 \n",
"L 0 0 \n",
"L 0 180.65625 \n",
"z\n",
"\" style=\"fill: none\"/>\n",
" </g>\n",
" <g id=\"axes_1\">\n",
" <g id=\"patch_2\">\n",
" <path d=\"M 30.103125 143.1 \n",
"L 225.403125 143.1 \n",
"L 225.403125 7.2 \n",
"L 30.103125 7.2 \n",
"z\n",
"\" style=\"fill: #ffffff\"/>\n",
" </g>\n",
" <g id=\"matplotlib.axis_1\">\n",
" <g id=\"xtick_1\">\n",
" <g id=\"line2d_1\">\n",
" <path d=\"M 51.803125 143.1 \n",
"L 51.803125 7.2 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_2\">\n",
" <defs>\n",
" <path id=\"meef99e39cb\" d=\"M 0 0 \n",
"L 0 3.5 \n",
"\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </defs>\n",
" <g>\n",
" <use xlink:href=\"#meef99e39cb\" x=\"51.803125\" y=\"143.1\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_1\">\n",
" <!-- 2 -->\n",
" <g transform=\"translate(48.621875 157.698438)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-32\" d=\"M 1228 531 \n",
"L 3431 531 \n",
"L 3431 0 \n",
"L 469 0 \n",
"L 469 531 \n",
"Q 828 903 1448 1529 \n",
"Q 2069 2156 2228 2338 \n",
"Q 2531 2678 2651 2914 \n",
"Q 2772 3150 2772 3378 \n",
"Q 2772 3750 2511 3984 \n",
"Q 2250 4219 1831 4219 \n",
"Q 1534 4219 1204 4116 \n",
"Q 875 4013 500 3803 \n",
"L 500 4441 \n",
"Q 881 4594 1212 4672 \n",
"Q 1544 4750 1819 4750 \n",
"Q 2544 4750 2975 4387 \n",
"Q 3406 4025 3406 3419 \n",
"Q 3406 3131 3298 2873 \n",
"Q 3191 2616 2906 2266 \n",
"Q 2828 2175 2409 1742 \n",
"Q 1991 1309 1228 531 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-32\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"xtick_2\">\n",
" <g id=\"line2d_3\">\n",
" <path d=\"M 95.203125 143.1 \n",
"L 95.203125 7.2 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_4\">\n",
" <g>\n",
" <use xlink:href=\"#meef99e39cb\" x=\"95.203125\" y=\"143.1\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_2\">\n",
" <!-- 4 -->\n",
" <g transform=\"translate(92.021875 157.698438)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-34\" d=\"M 2419 4116 \n",
"L 825 1625 \n",
"L 2419 1625 \n",
"L 2419 4116 \n",
"z\n",
"M 2253 4666 \n",
"L 3047 4666 \n",
"L 3047 1625 \n",
"L 3713 1625 \n",
"L 3713 1100 \n",
"L 3047 1100 \n",
"L 3047 0 \n",
"L 2419 0 \n",
"L 2419 1100 \n",
"L 313 1100 \n",
"L 313 1709 \n",
"L 2253 4666 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-34\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"xtick_3\">\n",
" <g id=\"line2d_5\">\n",
" <path d=\"M 138.603125 143.1 \n",
"L 138.603125 7.2 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_6\">\n",
" <g>\n",
" <use xlink:href=\"#meef99e39cb\" x=\"138.603125\" y=\"143.1\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_3\">\n",
" <!-- 6 -->\n",
" <g transform=\"translate(135.421875 157.698438)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-36\" d=\"M 2113 2584 \n",
"Q 1688 2584 1439 2293 \n",
"Q 1191 2003 1191 1497 \n",
"Q 1191 994 1439 701 \n",
"Q 1688 409 2113 409 \n",
"Q 2538 409 2786 701 \n",
"Q 3034 994 3034 1497 \n",
"Q 3034 2003 2786 2293 \n",
"Q 2538 2584 2113 2584 \n",
"z\n",
"M 3366 4563 \n",
"L 3366 3988 \n",
"Q 3128 4100 2886 4159 \n",
"Q 2644 4219 2406 4219 \n",
"Q 1781 4219 1451 3797 \n",
"Q 1122 3375 1075 2522 \n",
"Q 1259 2794 1537 2939 \n",
"Q 1816 3084 2150 3084 \n",
"Q 2853 3084 3261 2657 \n",
"Q 3669 2231 3669 1497 \n",
"Q 3669 778 3244 343 \n",
"Q 2819 -91 2113 -91 \n",
"Q 1303 -91 875 529 \n",
"Q 447 1150 447 2328 \n",
"Q 447 3434 972 4092 \n",
"Q 1497 4750 2381 4750 \n",
"Q 2619 4750 2861 4703 \n",
"Q 3103 4656 3366 4563 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-36\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"xtick_4\">\n",
" <g id=\"line2d_7\">\n",
" <path d=\"M 182.003125 143.1 \n",
"L 182.003125 7.2 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_8\">\n",
" <g>\n",
" <use xlink:href=\"#meef99e39cb\" x=\"182.003125\" y=\"143.1\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_4\">\n",
" <!-- 8 -->\n",
" <g transform=\"translate(178.821875 157.698438)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-38\" d=\"M 2034 2216 \n",
"Q 1584 2216 1326 1975 \n",
"Q 1069 1734 1069 1313 \n",
"Q 1069 891 1326 650 \n",
"Q 1584 409 2034 409 \n",
"Q 2484 409 2743 651 \n",
"Q 3003 894 3003 1313 \n",
"Q 3003 1734 2745 1975 \n",
"Q 2488 2216 2034 2216 \n",
"z\n",
"M 1403 2484 \n",
"Q 997 2584 770 2862 \n",
"Q 544 3141 544 3541 \n",
"Q 544 4100 942 4425 \n",
"Q 1341 4750 2034 4750 \n",
"Q 2731 4750 3128 4425 \n",
"Q 3525 4100 3525 3541 \n",
"Q 3525 3141 3298 2862 \n",
"Q 3072 2584 2669 2484 \n",
"Q 3125 2378 3379 2068 \n",
"Q 3634 1759 3634 1313 \n",
"Q 3634 634 3220 271 \n",
"Q 2806 -91 2034 -91 \n",
"Q 1263 -91 848 271 \n",
"Q 434 634 434 1313 \n",
"Q 434 1759 690 2068 \n",
"Q 947 2378 1403 2484 \n",
"z\n",
"M 1172 3481 \n",
"Q 1172 3119 1398 2916 \n",
"Q 1625 2713 2034 2713 \n",
"Q 2441 2713 2670 2916 \n",
"Q 2900 3119 2900 3481 \n",
"Q 2900 3844 2670 4047 \n",
"Q 2441 4250 2034 4250 \n",
"Q 1625 4250 1398 4047 \n",
"Q 1172 3844 1172 3481 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-38\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"xtick_5\">\n",
" <g id=\"line2d_9\">\n",
" <path d=\"M 225.403125 143.1 \n",
"L 225.403125 7.2 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_10\">\n",
" <g>\n",
" <use xlink:href=\"#meef99e39cb\" x=\"225.403125\" y=\"143.1\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_5\">\n",
" <!-- 10 -->\n",
" <g transform=\"translate(219.040625 157.698438)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-31\" d=\"M 794 531 \n",
"L 1825 531 \n",
"L 1825 4091 \n",
"L 703 3866 \n",
"L 703 4441 \n",
"L 1819 4666 \n",
"L 2450 4666 \n",
"L 2450 531 \n",
"L 3481 531 \n",
"L 3481 0 \n",
"L 794 0 \n",
"L 794 531 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-30\" d=\"M 2034 4250 \n",
"Q 1547 4250 1301 3770 \n",
"Q 1056 3291 1056 2328 \n",
"Q 1056 1369 1301 889 \n",
"Q 1547 409 2034 409 \n",
"Q 2525 409 2770 889 \n",
"Q 3016 1369 3016 2328 \n",
"Q 3016 3291 2770 3770 \n",
"Q 2525 4250 2034 4250 \n",
"z\n",
"M 2034 4750 \n",
"Q 2819 4750 3233 4129 \n",
"Q 3647 3509 3647 2328 \n",
"Q 3647 1150 3233 529 \n",
"Q 2819 -91 2034 -91 \n",
"Q 1250 -91 836 529 \n",
"Q 422 1150 422 2328 \n",
"Q 422 3509 836 4129 \n",
"Q 1250 4750 2034 4750 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-31\"/>\n",
" <use xlink:href=\"#DejaVuSans-30\" x=\"63.623047\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_6\">\n",
" <!-- epoch -->\n",
" <g transform=\"translate(112.525 171.376563)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-65\" d=\"M 3597 1894 \n",
"L 3597 1613 \n",
"L 953 1613 \n",
"Q 991 1019 1311 708 \n",
"Q 1631 397 2203 397 \n",
"Q 2534 397 2845 478 \n",
"Q 3156 559 3463 722 \n",
"L 3463 178 \n",
"Q 3153 47 2828 -22 \n",
"Q 2503 -91 2169 -91 \n",
"Q 1331 -91 842 396 \n",
"Q 353 884 353 1716 \n",
"Q 353 2575 817 3079 \n",
"Q 1281 3584 2069 3584 \n",
"Q 2775 3584 3186 3129 \n",
"Q 3597 2675 3597 1894 \n",
"z\n",
"M 3022 2063 \n",
"Q 3016 2534 2758 2815 \n",
"Q 2500 3097 2075 3097 \n",
"Q 1594 3097 1305 2825 \n",
"Q 1016 2553 972 2059 \n",
"L 3022 2063 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-70\" d=\"M 1159 525 \n",
"L 1159 -1331 \n",
"L 581 -1331 \n",
"L 581 3500 \n",
"L 1159 3500 \n",
"L 1159 2969 \n",
"Q 1341 3281 1617 3432 \n",
"Q 1894 3584 2278 3584 \n",
"Q 2916 3584 3314 3078 \n",
"Q 3713 2572 3713 1747 \n",
"Q 3713 922 3314 415 \n",
"Q 2916 -91 2278 -91 \n",
"Q 1894 -91 1617 61 \n",
"Q 1341 213 1159 525 \n",
"z\n",
"M 3116 1747 \n",
"Q 3116 2381 2855 2742 \n",
"Q 2594 3103 2138 3103 \n",
"Q 1681 3103 1420 2742 \n",
"Q 1159 2381 1159 1747 \n",
"Q 1159 1113 1420 752 \n",
"Q 1681 391 2138 391 \n",
"Q 2594 391 2855 752 \n",
"Q 3116 1113 3116 1747 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-6f\" d=\"M 1959 3097 \n",
"Q 1497 3097 1228 2736 \n",
"Q 959 2375 959 1747 \n",
"Q 959 1119 1226 758 \n",
"Q 1494 397 1959 397 \n",
"Q 2419 397 2687 759 \n",
"Q 2956 1122 2956 1747 \n",
"Q 2956 2369 2687 2733 \n",
"Q 2419 3097 1959 3097 \n",
"z\n",
"M 1959 3584 \n",
"Q 2709 3584 3137 3096 \n",
"Q 3566 2609 3566 1747 \n",
"Q 3566 888 3137 398 \n",
"Q 2709 -91 1959 -91 \n",
"Q 1206 -91 779 398 \n",
"Q 353 888 353 1747 \n",
"Q 353 2609 779 3096 \n",
"Q 1206 3584 1959 3584 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-63\" d=\"M 3122 3366 \n",
"L 3122 2828 \n",
"Q 2878 2963 2633 3030 \n",
"Q 2388 3097 2138 3097 \n",
"Q 1578 3097 1268 2742 \n",
"Q 959 2388 959 1747 \n",
"Q 959 1106 1268 751 \n",
"Q 1578 397 2138 397 \n",
"Q 2388 397 2633 464 \n",
"Q 2878 531 3122 666 \n",
"L 3122 134 \n",
"Q 2881 22 2623 -34 \n",
"Q 2366 -91 2075 -91 \n",
"Q 1284 -91 818 406 \n",
"Q 353 903 353 1747 \n",
"Q 353 2603 823 3093 \n",
"Q 1294 3584 2113 3584 \n",
"Q 2378 3584 2631 3529 \n",
"Q 2884 3475 3122 3366 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-68\" d=\"M 3513 2113 \n",
"L 3513 0 \n",
"L 2938 0 \n",
"L 2938 2094 \n",
"Q 2938 2591 2744 2837 \n",
"Q 2550 3084 2163 3084 \n",
"Q 1697 3084 1428 2787 \n",
"Q 1159 2491 1159 1978 \n",
"L 1159 0 \n",
"L 581 0 \n",
"L 581 4863 \n",
"L 1159 4863 \n",
"L 1159 2956 \n",
"Q 1366 3272 1645 3428 \n",
"Q 1925 3584 2291 3584 \n",
"Q 2894 3584 3203 3211 \n",
"Q 3513 2838 3513 2113 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-65\"/>\n",
" <use xlink:href=\"#DejaVuSans-70\" x=\"61.523438\"/>\n",
" <use xlink:href=\"#DejaVuSans-6f\" x=\"125\"/>\n",
" <use xlink:href=\"#DejaVuSans-63\" x=\"186.181641\"/>\n",
" <use xlink:href=\"#DejaVuSans-68\" x=\"241.162109\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"matplotlib.axis_2\">\n",
" <g id=\"ytick_1\">\n",
" <g id=\"line2d_11\">\n",
" <path d=\"M 30.103125 142.40606 \n",
"L 225.403125 142.40606 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_12\">\n",
" <defs>\n",
" <path id=\"m7446c8c41a\" d=\"M 0 0 \n",
"L -3.5 0 \n",
"\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </defs>\n",
" <g>\n",
" <use xlink:href=\"#m7446c8c41a\" x=\"30.103125\" y=\"142.40606\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_7\">\n",
" <!-- 0.0 -->\n",
" <g transform=\"translate(7.2 146.205279)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-2e\" d=\"M 684 794 \n",
"L 1344 794 \n",
"L 1344 0 \n",
"L 684 0 \n",
"L 684 794 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-30\"/>\n",
" <use xlink:href=\"#DejaVuSans-2e\" x=\"63.623047\"/>\n",
" <use xlink:href=\"#DejaVuSans-30\" x=\"95.410156\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"ytick_2\">\n",
" <g id=\"line2d_13\">\n",
" <path d=\"M 30.103125 114.989395 \n",
"L 225.403125 114.989395 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_14\">\n",
" <g>\n",
" <use xlink:href=\"#m7446c8c41a\" x=\"30.103125\" y=\"114.989395\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_8\">\n",
" <!-- 0.5 -->\n",
" <g transform=\"translate(7.2 118.788613)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-35\" d=\"M 691 4666 \n",
"L 3169 4666 \n",
"L 3169 4134 \n",
"L 1269 4134 \n",
"L 1269 2991 \n",
"Q 1406 3038 1543 3061 \n",
"Q 1681 3084 1819 3084 \n",
"Q 2600 3084 3056 2656 \n",
"Q 3513 2228 3513 1497 \n",
"Q 3513 744 3044 326 \n",
"Q 2575 -91 1722 -91 \n",
"Q 1428 -91 1123 -41 \n",
"Q 819 9 494 109 \n",
"L 494 744 \n",
"Q 775 591 1075 516 \n",
"Q 1375 441 1709 441 \n",
"Q 2250 441 2565 725 \n",
"Q 2881 1009 2881 1497 \n",
"Q 2881 1984 2565 2268 \n",
"Q 2250 2553 1709 2553 \n",
"Q 1456 2553 1204 2497 \n",
"Q 953 2441 691 2322 \n",
"L 691 4666 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-30\"/>\n",
" <use xlink:href=\"#DejaVuSans-2e\" x=\"63.623047\"/>\n",
" <use xlink:href=\"#DejaVuSans-35\" x=\"95.410156\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"ytick_3\">\n",
" <g id=\"line2d_15\">\n",
" <path d=\"M 30.103125 87.572729 \n",
"L 225.403125 87.572729 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_16\">\n",
" <g>\n",
" <use xlink:href=\"#m7446c8c41a\" x=\"30.103125\" y=\"87.572729\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_9\">\n",
" <!-- 1.0 -->\n",
" <g transform=\"translate(7.2 91.371948)scale(0.1 -0.1)\">\n",
" <use xlink:href=\"#DejaVuSans-31\"/>\n",
" <use xlink:href=\"#DejaVuSans-2e\" x=\"63.623047\"/>\n",
" <use xlink:href=\"#DejaVuSans-30\" x=\"95.410156\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"ytick_4\">\n",
" <g id=\"line2d_17\">\n",
" <path d=\"M 30.103125 60.156063 \n",
"L 225.403125 60.156063 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_18\">\n",
" <g>\n",
" <use xlink:href=\"#m7446c8c41a\" x=\"30.103125\" y=\"60.156063\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_10\">\n",
" <!-- 1.5 -->\n",
" <g transform=\"translate(7.2 63.955282)scale(0.1 -0.1)\">\n",
" <use xlink:href=\"#DejaVuSans-31\"/>\n",
" <use xlink:href=\"#DejaVuSans-2e\" x=\"63.623047\"/>\n",
" <use xlink:href=\"#DejaVuSans-35\" x=\"95.410156\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"ytick_5\">\n",
" <g id=\"line2d_19\">\n",
" <path d=\"M 30.103125 32.739398 \n",
"L 225.403125 32.739398 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #b0b0b0; stroke-width: 0.8; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_20\">\n",
" <g>\n",
" <use xlink:href=\"#m7446c8c41a\" x=\"30.103125\" y=\"32.739398\" style=\"stroke: #000000; stroke-width: 0.8\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"text_11\">\n",
" <!-- 2.0 -->\n",
" <g transform=\"translate(7.2 36.538616)scale(0.1 -0.1)\">\n",
" <use xlink:href=\"#DejaVuSans-32\"/>\n",
" <use xlink:href=\"#DejaVuSans-2e\" x=\"63.623047\"/>\n",
" <use xlink:href=\"#DejaVuSans-30\" x=\"95.410156\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <g id=\"line2d_21\">\n",
" <path d=\"M 12.743125 13.377273 \n",
"L 17.083125 14.482104 \n",
"L 21.423125 14.901394 \n",
"L 25.763125 15.14919 \n",
"L 30.103125 15.322415 \n",
"L 34.443125 16.250372 \n",
"L 38.783125 17.766309 \n",
"L 43.123125 27.86897 \n",
"L 47.463125 39.2837 \n",
"L 51.803125 47.769265 \n",
"L 56.143125 86.02592 \n",
"L 60.483125 88.002696 \n",
"L 64.823125 89.233524 \n",
"L 69.163125 90.353259 \n",
"L 73.503125 91.517136 \n",
"L 77.843125 97.727537 \n",
"L 82.183125 99.014876 \n",
"L 86.523125 99.834352 \n",
"L 90.863125 100.670796 \n",
"L 95.203125 101.304889 \n",
"L 99.543125 105.862109 \n",
"L 103.883125 105.181821 \n",
"L 108.223125 105.422203 \n",
"L 112.563125 105.82651 \n",
"L 116.903125 105.952025 \n",
"L 121.243125 107.994234 \n",
"L 125.583125 108.248979 \n",
"L 129.923125 108.382271 \n",
"L 134.263125 108.772984 \n",
"L 138.603125 109.057182 \n",
"L 142.943125 109.932161 \n",
"L 147.283125 110.623628 \n",
"L 151.623125 111.044203 \n",
"L 155.963125 111.200874 \n",
"L 160.303125 111.395214 \n",
"L 164.643125 113.480603 \n",
"L 168.983125 113.259338 \n",
"L 173.323125 113.41714 \n",
"L 177.663125 113.684126 \n",
"L 182.003125 113.837302 \n",
"L 186.343125 114.799945 \n",
"L 190.683125 114.707896 \n",
"L 195.023125 115.125564 \n",
"L 199.363125 115.065495 \n",
"L 203.703125 115.202302 \n",
"L 208.043125 116.551563 \n",
"L 212.383125 116.426226 \n",
"L 216.723125 116.262245 \n",
"L 221.063125 116.447789 \n",
"L 225.403125 116.680423 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke: #1f77b4; stroke-width: 1.5; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"line2d_22\">\n",
" <path d=\"M 12.743125 136.759576 \n",
"L 17.083125 136.805149 \n",
"L 21.423125 136.916043 \n",
"L 25.763125 136.876926 \n",
"L 30.103125 136.876119 \n",
"L 34.443125 136.540826 \n",
"L 38.783125 135.005019 \n",
"L 43.123125 131.497424 \n",
"L 47.463125 127.51511 \n",
"L 51.803125 124.508461 \n",
"L 56.143125 110.628067 \n",
"L 60.483125 109.702937 \n",
"L 64.823125 109.101374 \n",
"L 69.163125 108.540827 \n",
"L 73.503125 107.941484 \n",
"L 77.843125 104.835749 \n",
"L 82.183125 104.480281 \n",
"L 86.523125 104.152156 \n",
"L 90.863125 103.785294 \n",
"L 95.203125 103.563956 \n",
"L 99.543125 101.955541 \n",
"L 103.883125 102.156062 \n",
"L 108.223125 102.131756 \n",
"L 112.563125 101.97377 \n",
"L 116.903125 101.90799 \n",
"L 121.243125 101.057755 \n",
"L 125.583125 100.907364 \n",
"L 129.923125 100.817737 \n",
"L 134.263125 100.633927 \n",
"L 138.603125 100.477754 \n",
"L 142.943125 100.228328 \n",
"L 147.283125 99.918432 \n",
"L 151.623125 99.758927 \n",
"L 155.963125 99.676895 \n",
"L 160.303125 99.569348 \n",
"L 164.643125 98.687963 \n",
"L 168.983125 98.806453 \n",
"L 173.323125 98.694039 \n",
"L 177.663125 98.570613 \n",
"L 182.003125 98.48182 \n",
"L 186.343125 98.150203 \n",
"L 190.683125 98.106908 \n",
"L 195.023125 97.887399 \n",
"L 199.363125 97.892716 \n",
"L 203.703125 97.839356 \n",
"L 208.043125 97.1795 \n",
"L 212.383125 97.186335 \n",
"L 216.723125 97.310142 \n",
"L 221.063125 97.34698 \n",
"L 225.403125 97.261779 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke-dasharray: 5.55,2.4; stroke-dashoffset: 0; stroke: #bf00bf; stroke-width: 1.5\"/>\n",
" </g>\n",
" <g id=\"line2d_23\">\n",
" <path d=\"M 30.103125 136.922727 \n",
"L 51.803125 112.390295 \n",
"L 73.503125 105.124878 \n",
"L 95.203125 104.017245 \n",
"L 116.903125 103.320862 \n",
"L 138.603125 101.467495 \n",
"L 160.303125 99.976029 \n",
"L 182.003125 100.595645 \n",
"L 203.703125 98.226845 \n",
"L 225.403125 99.663479 \n",
"\" clip-path=\"url(#pc5c412d514)\" style=\"fill: none; stroke-dasharray: 9.6,2.4,1.5,2.4; stroke-dashoffset: 0; stroke: #008000; stroke-width: 1.5\"/>\n",
" </g>\n",
" <g id=\"patch_3\">\n",
" <path d=\"M 30.103125 143.1 \n",
"L 30.103125 7.2 \n",
"\" style=\"fill: none; stroke: #000000; stroke-width: 0.8; stroke-linejoin: miter; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"patch_4\">\n",
" <path d=\"M 225.403125 143.1 \n",
"L 225.403125 7.2 \n",
"\" style=\"fill: none; stroke: #000000; stroke-width: 0.8; stroke-linejoin: miter; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"patch_5\">\n",
" <path d=\"M 30.103125 143.1 \n",
"L 225.403125 143.1 \n",
"\" style=\"fill: none; stroke: #000000; stroke-width: 0.8; stroke-linejoin: miter; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"patch_6\">\n",
" <path d=\"M 30.103125 7.2 \n",
"L 225.403125 7.2 \n",
"\" style=\"fill: none; stroke: #000000; stroke-width: 0.8; stroke-linejoin: miter; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"legend_1\">\n",
" <g id=\"patch_7\">\n",
" <path d=\"M 140.634375 59.234375 \n",
"L 218.403125 59.234375 \n",
"Q 220.403125 59.234375 220.403125 57.234375 \n",
"L 220.403125 14.2 \n",
"Q 220.403125 12.2 218.403125 12.2 \n",
"L 140.634375 12.2 \n",
"Q 138.634375 12.2 138.634375 14.2 \n",
"L 138.634375 57.234375 \n",
"Q 138.634375 59.234375 140.634375 59.234375 \n",
"z\n",
"\" style=\"fill: #ffffff; opacity: 0.8; stroke: #cccccc; stroke-linejoin: miter\"/>\n",
" </g>\n",
" <g id=\"line2d_24\">\n",
" <path d=\"M 142.634375 20.298438 \n",
"L 152.634375 20.298438 \n",
"L 162.634375 20.298438 \n",
"\" style=\"fill: none; stroke: #1f77b4; stroke-width: 1.5; stroke-linecap: square\"/>\n",
" </g>\n",
" <g id=\"text_12\">\n",
" <!-- train loss -->\n",
" <g transform=\"translate(170.634375 23.798438)scale(0.1 -0.1)\">\n",
" <defs>\n",
" <path id=\"DejaVuSans-74\" d=\"M 1172 4494 \n",
"L 1172 3500 \n",
"L 2356 3500 \n",
"L 2356 3053 \n",
"L 1172 3053 \n",
"L 1172 1153 \n",
"Q 1172 725 1289 603 \n",
"Q 1406 481 1766 481 \n",
"L 2356 481 \n",
"L 2356 0 \n",
"L 1766 0 \n",
"Q 1100 0 847 248 \n",
"Q 594 497 594 1153 \n",
"L 594 3053 \n",
"L 172 3053 \n",
"L 172 3500 \n",
"L 594 3500 \n",
"L 594 4494 \n",
"L 1172 4494 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-72\" d=\"M 2631 2963 \n",
"Q 2534 3019 2420 3045 \n",
"Q 2306 3072 2169 3072 \n",
"Q 1681 3072 1420 2755 \n",
"Q 1159 2438 1159 1844 \n",
"L 1159 0 \n",
"L 581 0 \n",
"L 581 3500 \n",
"L 1159 3500 \n",
"L 1159 2956 \n",
"Q 1341 3275 1631 3429 \n",
"Q 1922 3584 2338 3584 \n",
"Q 2397 3584 2469 3576 \n",
"Q 2541 3569 2628 3553 \n",
"L 2631 2963 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-61\" d=\"M 2194 1759 \n",
"Q 1497 1759 1228 1600 \n",
"Q 959 1441 959 1056 \n",
"Q 959 750 1161 570 \n",
"Q 1363 391 1709 391 \n",
"Q 2188 391 2477 730 \n",
"Q 2766 1069 2766 1631 \n",
"L 2766 1759 \n",
"L 2194 1759 \n",
"z\n",
"M 3341 1997 \n",
"L 3341 0 \n",
"L 2766 0 \n",
"L 2766 531 \n",
"Q 2569 213 2275 61 \n",
"Q 1981 -91 1556 -91 \n",
"Q 1019 -91 701 211 \n",
"Q 384 513 384 1019 \n",
"Q 384 1609 779 1909 \n",
"Q 1175 2209 1959 2209 \n",
"L 2766 2209 \n",
"L 2766 2266 \n",
"Q 2766 2663 2505 2880 \n",
"Q 2244 3097 1772 3097 \n",
"Q 1472 3097 1187 3025 \n",
"Q 903 2953 641 2809 \n",
"L 641 3341 \n",
"Q 956 3463 1253 3523 \n",
"Q 1550 3584 1831 3584 \n",
"Q 2591 3584 2966 3190 \n",
"Q 3341 2797 3341 1997 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-69\" d=\"M 603 3500 \n",
"L 1178 3500 \n",
"L 1178 0 \n",
"L 603 0 \n",
"L 603 3500 \n",
"z\n",
"M 603 4863 \n",
"L 1178 4863 \n",
"L 1178 4134 \n",
"L 603 4134 \n",
"L 603 4863 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-6e\" d=\"M 3513 2113 \n",
"L 3513 0 \n",
"L 2938 0 \n",
"L 2938 2094 \n",
"Q 2938 2591 2744 2837 \n",
"Q 2550 3084 2163 3084 \n",
"Q 1697 3084 1428 2787 \n",
"Q 1159 2491 1159 1978 \n",
"L 1159 0 \n",
"L 581 0 \n",
"L 581 3500 \n",
"L 1159 3500 \n",
"L 1159 2956 \n",
"Q 1366 3272 1645 3428 \n",
"Q 1925 3584 2291 3584 \n",
"Q 2894 3584 3203 3211 \n",
"Q 3513 2838 3513 2113 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-20\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-6c\" d=\"M 603 4863 \n",
"L 1178 4863 \n",
"L 1178 0 \n",
"L 603 0 \n",
"L 603 4863 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" <path id=\"DejaVuSans-73\" d=\"M 2834 3397 \n",
"L 2834 2853 \n",
"Q 2591 2978 2328 3040 \n",
"Q 2066 3103 1784 3103 \n",
"Q 1356 3103 1142 2972 \n",
"Q 928 2841 928 2578 \n",
"Q 928 2378 1081 2264 \n",
"Q 1234 2150 1697 2047 \n",
"L 1894 2003 \n",
"Q 2506 1872 2764 1633 \n",
"Q 3022 1394 3022 966 \n",
"Q 3022 478 2636 193 \n",
"Q 2250 -91 1575 -91 \n",
"Q 1294 -91 989 -36 \n",
"Q 684 19 347 128 \n",
"L 347 722 \n",
"Q 666 556 975 473 \n",
"Q 1284 391 1588 391 \n",
"Q 1994 391 2212 530 \n",
"Q 2431 669 2431 922 \n",
"Q 2431 1156 2273 1281 \n",
"Q 2116 1406 1581 1522 \n",
"L 1381 1569 \n",
"Q 847 1681 609 1914 \n",
"Q 372 2147 372 2553 \n",
"Q 372 3047 722 3315 \n",
"Q 1072 3584 1716 3584 \n",
"Q 2034 3584 2315 3537 \n",
"Q 2597 3491 2834 3397 \n",
"z\n",
"\" transform=\"scale(0.015625)\"/>\n",
" </defs>\n",
" <use xlink:href=\"#DejaVuSans-74\"/>\n",
" <use xlink:href=\"#DejaVuSans-72\" x=\"39.208984\"/>\n",
" <use xlink:href=\"#DejaVuSans-61\" x=\"80.322266\"/>\n",
" <use xlink:href=\"#DejaVuSans-69\" x=\"141.601562\"/>\n",
" <use xlink:href=\"#DejaVuSans-6e\" x=\"169.384766\"/>\n",
" <use xlink:href=\"#DejaVuSans-20\" x=\"232.763672\"/>\n",
" <use xlink:href=\"#DejaVuSans-6c\" x=\"264.550781\"/>\n",
" <use xlink:href=\"#DejaVuSans-6f\" x=\"292.333984\"/>\n",
" <use xlink:href=\"#DejaVuSans-73\" x=\"353.515625\"/>\n",
" <use xlink:href=\"#DejaVuSans-73\" x=\"405.615234\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"line2d_25\">\n",
" <path d=\"M 142.634375 34.976562 \n",
"L 152.634375 34.976562 \n",
"L 162.634375 34.976562 \n",
"\" style=\"fill: none; stroke-dasharray: 5.55,2.4; stroke-dashoffset: 0; stroke: #bf00bf; stroke-width: 1.5\"/>\n",
" </g>\n",
" <g id=\"text_13\">\n",
" <!-- train acc -->\n",
" <g transform=\"translate(170.634375 38.476562)scale(0.1 -0.1)\">\n",
" <use xlink:href=\"#DejaVuSans-74\"/>\n",
" <use xlink:href=\"#DejaVuSans-72\" x=\"39.208984\"/>\n",
" <use xlink:href=\"#DejaVuSans-61\" x=\"80.322266\"/>\n",
" <use xlink:href=\"#DejaVuSans-69\" x=\"141.601562\"/>\n",
" <use xlink:href=\"#DejaVuSans-6e\" x=\"169.384766\"/>\n",
" <use xlink:href=\"#DejaVuSans-20\" x=\"232.763672\"/>\n",
" <use xlink:href=\"#DejaVuSans-61\" x=\"264.550781\"/>\n",
" <use xlink:href=\"#DejaVuSans-63\" x=\"325.830078\"/>\n",
" <use xlink:href=\"#DejaVuSans-63\" x=\"380.810547\"/>\n",
" </g>\n",
" </g>\n",
" <g id=\"line2d_26\">\n",
" <path d=\"M 142.634375 49.654688 \n",
"L 152.634375 49.654688 \n",
"L 162.634375 49.654688 \n",
"\" style=\"fill: none; stroke-dasharray: 9.6,2.4,1.5,2.4; stroke-dashoffset: 0; stroke: #008000; stroke-width: 1.5\"/>\n",
" </g>\n",
" <g id=\"text_14\">\n",
" <!-- test acc -->\n",
" <g transform=\"translate(170.634375 53.154688)scale(0.1 -0.1)\">\n",
" <use xlink:href=\"#DejaVuSans-74\"/>\n",
" <use xlink:href=\"#DejaVuSans-65\" x=\"39.208984\"/>\n",
" <use xlink:href=\"#DejaVuSans-73\" x=\"100.732422\"/>\n",
" <use xlink:href=\"#DejaVuSans-74\" x=\"152.832031\"/>\n",
" <use xlink:href=\"#DejaVuSans-20\" x=\"192.041016\"/>\n",
" <use xlink:href=\"#DejaVuSans-61\" x=\"223.828125\"/>\n",
" <use xlink:href=\"#DejaVuSans-63\" x=\"285.107422\"/>\n",
" <use xlink:href=\"#DejaVuSans-63\" x=\"340.087891\"/>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" </g>\n",
" <defs>\n",
" <clipPath id=\"pc5c412d514\">\n",
" <rect x=\"30.103125\" y=\"7.2\" width=\"195.3\" height=\"135.9\"/>\n",
" </clipPath>\n",
" </defs>\n",
"</svg>\n"
],
"text/plain": [
"<Figure size 252x180 with 1 Axes>"
]
},
"metadata": {
"needs_background": "light"
},
"output_type": "display_data"
}
],
"source": [
"lr, num_epochs = 0.9, 10\n",
"train_ch6(net, train_iter, test_iter, num_epochs, lr, d2l.try_gpu())"
]
},
{
"cell_type": "markdown",
"id": "d4db919b",
"metadata": {
"origin_pos": 24
},
"source": [
"## 小结\n",
"\n",
"* 卷积神经网络(CNN)是一类使用卷积层的网络。\n",
"* 在卷积神经网络中,我们组合使用卷积层、非线性激活函数和汇聚层。\n",
"* 为了构造高性能的卷积神经网络,我们通常对卷积层进行排列,逐渐降低其表示的空间分辨率,同时增加通道数。\n",
"* 在传统的卷积神经网络中,卷积块编码得到的表征在输出之前需由一个或多个全连接层进行处理。\n",
"* LeNet是最早发布的卷积神经网络之一。\n",
"\n",
"## 练习\n",
"\n",
"1. 将平均汇聚层替换为最大汇聚层,会发生什么?\n",
"1. 尝试构建一个基于LeNet的更复杂的网络,以提高其准确性。\n",
" 1. 调整卷积窗口大小。\n",
" 1. 调整输出通道的数量。\n",
" 1. 调整激活函数(如ReLU)。\n",
" 1. 调整卷积层的数量。\n",
" 1. 调整全连接层的数量。\n",
" 1. 调整学习率和其他训练细节(例如,初始化和轮数)。\n",
"1. 在MNIST数据集上尝试以上改进的网络。\n",
"1. 显示不同输入(例如毛衣和外套)时,LeNet第一层和第二层的激活值。\n"
]
},
{
"cell_type": "markdown",
"id": "cbdd0db1",
"metadata": {
"origin_pos": 26,
"tab": [
"pytorch"
]
},
"source": [
"[Discussions](https://discuss.d2l.ai/t/1860)\n"
]
}
],
"metadata": {
"language_info": {
"name": "python"
},
"required_libs": []
},
"nbformat": 4,
"nbformat_minor": 5
}