{ "cells": [ { "cell_type": "markdown", "id": "3406a2db", "metadata": { "origin_pos": 0 }, "source": [ "# 汇聚层\n", ":label:`sec_pooling`\n", "\n", "通常当我们处理图像时,我们希望逐渐降低隐藏表示的空间分辨率、聚集信息,这样随着我们在神经网络中层叠的上升,每个神经元对其敏感的感受野(输入)就越大。\n", "\n", "而我们的机器学习任务通常会跟全局图像的问题有关(例如,“图像是否包含一只猫呢?”),所以我们最后一层的神经元应该对整个输入的全局敏感。通过逐渐聚合信息,生成越来越粗糙的映射,最终实现学习全局表示的目标,同时将卷积图层的所有优势保留在中间层。\n", "\n", "此外,当检测较底层的特征时(例如 :numref:`sec_conv_layer`中所讨论的边缘),我们通常希望这些特征保持某种程度上的平移不变性。例如,如果我们拍摄黑白之间轮廓清晰的图像`X`,并将整个图像向右移动一个像素,即`Z[i, j] = X[i, j + 1]`,则新图像`Z`的输出可能大不相同。而在现实中,随着拍摄角度的移动,任何物体几乎不可能发生在同一像素上。即使用三脚架拍摄一个静止的物体,由于快门的移动而引起的相机振动,可能会使所有物体左右移动一个像素(除了高端相机配备了特殊功能来解决这个问题)。\n", "\n", "本节将介绍*汇聚*(pooling)层,它具有双重目的:降低卷积层对位置的敏感性,同时降低对空间降采样表示的敏感性。\n", "\n", "## 最大汇聚层和平均汇聚层\n", "\n", "与卷积层类似,汇聚层运算符由一个固定形状的窗口组成,该窗口根据其步幅大小在输入的所有区域上滑动,为固定形状窗口(有时称为*汇聚窗口*)遍历的每个位置计算一个输出。\n", "然而,不同于卷积层中的输入与卷积核之间的互相关计算,汇聚层不包含参数。\n", "相反,池运算是确定性的,我们通常计算汇聚窗口中所有元素的最大值或平均值。这些操作分别称为*最大汇聚层*(maximum pooling)和*平均汇聚层*(average pooling)。\n", "\n", "在这两种情况下,与互相关运算符一样,汇聚窗口从输入张量的左上角开始,从左往右、从上往下的在输入张量内滑动。在汇聚窗口到达的每个位置,它计算该窗口中输入子张量的最大值或平均值。计算最大值或平均值是取决于使用了最大汇聚层还是平均汇聚层。\n", "\n", "![汇聚窗口形状为 $2\\times 2$ 的最大汇聚层。着色部分是第一个输出元素,以及用于计算这个输出的输入元素: $\\max(0, 1, 3, 4)=4$.](../img/pooling.svg)\n", ":label:`fig_pooling`\n", "\n", " :numref:`fig_pooling`中的输出张量的高度为$2$,宽度为$2$。这四个元素为每个汇聚窗口中的最大值:\n", "\n", "$$\n", "\\max(0, 1, 3, 4)=4,\\\\\n", "\\max(1, 2, 4, 5)=5,\\\\\n", "\\max(3, 4, 6, 7)=7,\\\\\n", "\\max(4, 5, 7, 8)=8.\\\\\n", "$$\n", "\n", "汇聚窗口形状为$p \\times q$的汇聚层称为$p \\times q$汇聚层,汇聚操作称为$p \\times q$汇聚。\n", "\n", "回到本节开头提到的对象边缘检测示例,现在我们将使用卷积层的输出作为$2\\times 2$最大汇聚的输入。\n", "设置卷积层输入为`X`,汇聚层输出为`Y`。\n", "无论`X[i, j]`和`X[i, j + 1]`的值相同与否,或`X[i, j + 1]`和`X[i, j + 2]`的值相同与否,汇聚层始终输出`Y[i, j] = 1`。\n", "也就是说,使用$2\\times 2$最大汇聚层,即使在高度或宽度上移动一个元素,卷积层仍然可以识别到模式。\n", "\n", "在下面的代码中的`pool2d`函数,我们(**实现汇聚层的前向传播**)。\n", "这类似于 :numref:`sec_conv_layer`中的`corr2d`函数。\n", "然而,这里我们没有卷积核,输出为输入中每个区域的最大值或平均值。\n" ] }, { "cell_type": "code", "execution_count": 1, "id": "292e979e", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:18.192662Z", "iopub.status.busy": "2023-08-18T07:02:18.191844Z", "iopub.status.idle": "2023-08-18T07:02:20.224371Z", "shell.execute_reply": "2023-08-18T07:02:20.223413Z" }, "origin_pos": 2, "tab": [ "pytorch" ] }, "outputs": [], "source": [ "import torch\n", "from torch import nn\n", "from d2l import torch as d2l" ] }, { "cell_type": "code", "execution_count": 2, "id": "fe35adac", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.228639Z", "iopub.status.busy": "2023-08-18T07:02:20.227964Z", "iopub.status.idle": "2023-08-18T07:02:20.234155Z", "shell.execute_reply": "2023-08-18T07:02:20.233266Z" }, "origin_pos": 4, "tab": [ "pytorch" ] }, "outputs": [], "source": [ "def pool2d(X, pool_size, mode='max'):\n", " p_h, p_w = pool_size\n", " Y = torch.zeros((X.shape[0] - p_h + 1, X.shape[1] - p_w + 1))\n", " for i in range(Y.shape[0]):\n", " for j in range(Y.shape[1]):\n", " if mode == 'max':\n", " Y[i, j] = X[i: i + p_h, j: j + p_w].max()\n", " elif mode == 'avg':\n", " Y[i, j] = X[i: i + p_h, j: j + p_w].mean()\n", " return Y" ] }, { "cell_type": "markdown", "id": "27b51b5e", "metadata": { "origin_pos": 6 }, "source": [ "我们可以构建 :numref:`fig_pooling`中的输入张量`X`,[**验证二维最大汇聚层的输出**]。\n" ] }, { "cell_type": "code", "execution_count": 3, "id": "3a781c85", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.237767Z", "iopub.status.busy": "2023-08-18T07:02:20.237211Z", "iopub.status.idle": "2023-08-18T07:02:20.268065Z", "shell.execute_reply": "2023-08-18T07:02:20.267212Z" }, "origin_pos": 7, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "tensor([[4., 5.],\n", " [7., 8.]])" ] }, "execution_count": 3, "metadata": {}, "output_type": "execute_result" } ], "source": [ "X = torch.tensor([[0.0, 1.0, 2.0], [3.0, 4.0, 5.0], [6.0, 7.0, 8.0]])\n", "pool2d(X, (2, 2))" ] }, { "cell_type": "markdown", "id": "8cc88d86", "metadata": { "origin_pos": 8 }, "source": [ "此外,我们还可以(**验证平均汇聚层**)。\n" ] }, { "cell_type": "code", "execution_count": 4, "id": "4f9a1ffd", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.272001Z", "iopub.status.busy": "2023-08-18T07:02:20.271411Z", "iopub.status.idle": "2023-08-18T07:02:20.277849Z", "shell.execute_reply": "2023-08-18T07:02:20.276928Z" }, "origin_pos": 9, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "tensor([[2., 3.],\n", " [5., 6.]])" ] }, "execution_count": 4, "metadata": {}, "output_type": "execute_result" } ], "source": [ "pool2d(X, (2, 2), 'avg')" ] }, { "cell_type": "markdown", "id": "447c6999", "metadata": { "origin_pos": 10 }, "source": [ "## [**填充和步幅**]\n", "\n", "与卷积层一样,汇聚层也可以改变输出形状。和以前一样,我们可以通过填充和步幅以获得所需的输出形状。\n", "下面,我们用深度学习框架中内置的二维最大汇聚层,来演示汇聚层中填充和步幅的使用。\n", "我们首先构造了一个输入张量`X`,它有四个维度,其中样本数和通道数都是1。\n" ] }, { "cell_type": "code", "execution_count": 5, "id": "140d08f5", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.281458Z", "iopub.status.busy": "2023-08-18T07:02:20.280874Z", "iopub.status.idle": "2023-08-18T07:02:20.287391Z", "shell.execute_reply": "2023-08-18T07:02:20.286578Z" }, "origin_pos": 12, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "tensor([[[[ 0., 1., 2., 3.],\n", " [ 4., 5., 6., 7.],\n", " [ 8., 9., 10., 11.],\n", " [12., 13., 14., 15.]]]])" ] }, "execution_count": 5, "metadata": {}, "output_type": "execute_result" } ], "source": [ "X = torch.arange(16, dtype=torch.float32).reshape((1, 1, 4, 4))\n", "X" ] }, { "cell_type": "markdown", "id": "f95f2492", "metadata": { "origin_pos": 15 }, "source": [ "默认情况下,(**深度学习框架中的步幅与汇聚窗口的大小相同**)。\n", "因此,如果我们使用形状为`(3, 3)`的汇聚窗口,那么默认情况下,我们得到的步幅形状为`(3, 3)`。\n" ] }, { "cell_type": "code", "execution_count": 6, "id": "a3cc01e3", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.291052Z", "iopub.status.busy": "2023-08-18T07:02:20.290402Z", "iopub.status.idle": "2023-08-18T07:02:20.296276Z", "shell.execute_reply": "2023-08-18T07:02:20.295476Z" }, "origin_pos": 17, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "tensor([[[[10.]]]])" ] }, "execution_count": 6, "metadata": {}, "output_type": "execute_result" } ], "source": [ "pool2d = nn.MaxPool2d(3)\n", "pool2d(X)" ] }, { "cell_type": "markdown", "id": "0b19d625", "metadata": { "origin_pos": 20 }, "source": [ "[**填充和步幅可以手动设定**]。\n" ] }, { "cell_type": "code", "execution_count": 7, "id": "9c247428", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.299965Z", "iopub.status.busy": "2023-08-18T07:02:20.299310Z", "iopub.status.idle": "2023-08-18T07:02:20.307455Z", "shell.execute_reply": "2023-08-18T07:02:20.306477Z" }, "origin_pos": 22, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "tensor([[[[ 5., 7.],\n", " [13., 15.]]]])" ] }, "execution_count": 7, "metadata": {}, "output_type": "execute_result" } ], "source": [ "pool2d = nn.MaxPool2d(3, padding=1, stride=2)\n", "pool2d(X)" ] }, { "cell_type": "markdown", "id": "635b4034", "metadata": { "origin_pos": 26, "tab": [ "pytorch" ] }, "source": [ "当然,我们可以(**设定一个任意大小的矩形汇聚窗口,并分别设定填充和步幅的高度和宽度**)。\n" ] }, { "cell_type": "code", "execution_count": 8, "id": "7c169b2f", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.311794Z", "iopub.status.busy": "2023-08-18T07:02:20.311492Z", "iopub.status.idle": "2023-08-18T07:02:20.320399Z", "shell.execute_reply": "2023-08-18T07:02:20.319108Z" }, "origin_pos": 30, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "tensor([[[[ 5., 7.],\n", " [13., 15.]]]])" ] }, "execution_count": 8, "metadata": {}, "output_type": "execute_result" } ], "source": [ "pool2d = nn.MaxPool2d((2, 3), stride=(2, 3), padding=(0, 1))\n", "pool2d(X)" ] }, { "cell_type": "markdown", "id": "a893596a", "metadata": { "origin_pos": 33 }, "source": [ "## 多个通道\n", "\n", "在处理多通道输入数据时,[**汇聚层在每个输入通道上单独运算**],而不是像卷积层一样在通道上对输入进行汇总。\n", "这意味着汇聚层的输出通道数与输入通道数相同。\n", "下面,我们将在通道维度上连结张量`X`和`X + 1`,以构建具有2个通道的输入。\n" ] }, { "cell_type": "code", "execution_count": 9, "id": "c0a30a7f", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.325617Z", "iopub.status.busy": "2023-08-18T07:02:20.324879Z", "iopub.status.idle": "2023-08-18T07:02:20.335303Z", "shell.execute_reply": "2023-08-18T07:02:20.334055Z" }, "origin_pos": 35, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "tensor([[[[ 0., 1., 2., 3.],\n", " [ 4., 5., 6., 7.],\n", " [ 8., 9., 10., 11.],\n", " [12., 13., 14., 15.]],\n", "\n", " [[ 1., 2., 3., 4.],\n", " [ 5., 6., 7., 8.],\n", " [ 9., 10., 11., 12.],\n", " [13., 14., 15., 16.]]]])" ] }, "execution_count": 9, "metadata": {}, "output_type": "execute_result" } ], "source": [ "X = torch.cat((X, X + 1), 1)\n", "X" ] }, { "cell_type": "markdown", "id": "45add004", "metadata": { "origin_pos": 37 }, "source": [ "如下所示,汇聚后输出通道的数量仍然是2。\n" ] }, { "cell_type": "code", "execution_count": 10, "id": "e534c8f3", "metadata": { "execution": { "iopub.execute_input": "2023-08-18T07:02:20.340529Z", "iopub.status.busy": "2023-08-18T07:02:20.339767Z", "iopub.status.idle": "2023-08-18T07:02:20.349365Z", "shell.execute_reply": "2023-08-18T07:02:20.348159Z" }, "origin_pos": 39, "tab": [ "pytorch" ] }, "outputs": [ { "data": { "text/plain": [ "tensor([[[[ 5., 7.],\n", " [13., 15.]],\n", "\n", " [[ 6., 8.],\n", " [14., 16.]]]])" ] }, "execution_count": 10, "metadata": {}, "output_type": "execute_result" } ], "source": [ "pool2d = nn.MaxPool2d(3, padding=1, stride=2)\n", "pool2d(X)" ] }, { "cell_type": "markdown", "id": "0a91fd9f", "metadata": { "origin_pos": 43 }, "source": [ "## 小结\n", "\n", "* 对于给定输入元素,最大汇聚层会输出该窗口内的最大值,平均汇聚层会输出该窗口内的平均值。\n", "* 汇聚层的主要优点之一是减轻卷积层对位置的过度敏感。\n", "* 我们可以指定汇聚层的填充和步幅。\n", "* 使用最大汇聚层以及大于1的步幅,可减少空间维度(如高度和宽度)。\n", "* 汇聚层的输出通道数与输入通道数相同。\n", "\n", "## 练习\n", "\n", "1. 尝试将平均汇聚层作为卷积层的特殊情况实现。\n", "1. 尝试将最大汇聚层作为卷积层的特殊情况实现。\n", "1. 假设汇聚层的输入大小为$c\\times h\\times w$,则汇聚窗口的形状为$p_h\\times p_w$,填充为$(p_h, p_w)$,步幅为$(s_h, s_w)$。这个汇聚层的计算成本是多少?\n", "1. 为什么最大汇聚层和平均汇聚层的工作方式不同?\n", "1. 我们是否需要最小汇聚层?可以用已知函数替换它吗?\n", "1. 除了平均汇聚层和最大汇聚层,是否有其它函数可以考虑(提示:回想一下`softmax`)?为什么它不流行?\n" ] }, { "cell_type": "markdown", "id": "f53a8320", "metadata": { "origin_pos": 45, "tab": [ "pytorch" ] }, "source": [ "[Discussions](https://discuss.d2l.ai/t/1857)\n" ] } ], "metadata": { "language_info": { "name": "python" }, "required_libs": [] }, "nbformat": 4, "nbformat_minor": 5 }