Hybrid中添加SENet

Hybrid中添加SENet

! wget http://www.ehu.eus/ccwintco/uploads/6/67/Indian_pines_corrected.mat
! wget http://www.ehu.eus/ccwintco/uploads/c/c4/Indian_pines_gt.mat
! pip install spectral
import numpy as np
import matplotlib.pyplot as plt
import scipy.io as sio
from sklearn.decomposition import PCA
from sklearn.model_selection import train_test_split
from sklearn.metrics import confusion_matrix, accuracy_score, classification_report, cohen_kappa_score
import spectral
import torch
import torchvision
import torch.nn as nn
import torch.nn.functional as F
import torch.optim as optim

定义SELayer

class SELayer(nn.Module):
  def __init__(self,channel,r=16):
    super(SELayer,self).__init__()
    # 定义自适应平均池化函数,降采样
    self.avg_pool = nn.AdaptiveAvgPool2d(1)
    # 定义两个全连接层
    self.fc = nn.Sequential(
      nn.Linear(channel,round(channel/r)),
      nn.ReLU(inplace = True),
      nn.Linear(round(channel/r),channel),
      nn.Sigmoid() 
    )

  def forward(self,x):
    b,c,_,_ = x.size()
    out = self.avg_pool(x).view(b,c)
    out = self.fc(out).view(b,c,1,1)
    out = x * out.expand_as(x)
    return out

定义HybridSN

class HybridSN(nn.Module):
  def __init__(self):
    super(HybridSN, self).__init__()
    self.conv3d_1 = nn.Sequential(
        nn.Conv3d(1, 8, kernel_size=(7, 3, 3), stride=1, padding=0),
        nn.BatchNorm3d(8),
        nn.ReLU(inplace = True),
    )
    self.conv3d_2 = nn.Sequential(
        nn.Conv3d(8, 16, kernel_size=(5, 3, 3), stride=1, padding=0),
        nn.BatchNorm3d(16),
        nn.ReLU(inplace = True),
    ) 
    self.conv3d_3 = nn.Sequential(
        nn.Conv3d(16, 32, kernel_size=(3, 3, 3), stride=1, padding=0),
        nn.BatchNorm3d(32),
        nn.ReLU(inplace = True)
    )

    self.conv2d_4 = nn.Sequential(
        nn.Conv2d(576, 64, kernel_size=(3, 3), stride=1, padding=0),
        nn.BatchNorm2d(64),
        nn.ReLU(inplace = True),
    )
    self.SElayer = SELayer(64,16)
    self.fc1 = nn.Linear(18496,256)
    self.fc2 = nn.Linear(256,128)
    self.fc3 = nn.Linear(128,16)
    self.dropout = nn.Dropout(p = 0.4)

  def forward(self,x):
    out = self.conv3d_1(x)
    out = self.conv3d_2(out)
    out = self.conv3d_3(out)
    out = self.conv2d_4(out.reshape(out.shape[0],-1,19,19))
    out = self.SElayer(out)
    out = out.reshape(out.shape[0],-1)
    out = F.relu(self.dropout(self.fc1(out)))
    out = F.relu(self.dropout(self.fc2(out)))
    out = self.fc3(out)
    return out

创建数据集

# 对高光谱数据 X 应用 PCA 变换
def applyPCA(X, numComponents):
    newX = np.reshape(X, (-1, X.shape[2]))
    pca = PCA(n_components=numComponents, whiten=True)
    newX = pca.fit_transform(newX)
    newX = np.reshape(newX, (X.shape[0], X.shape[1], numComponents))
    return newX

# 对单个像素周围提取 patch 时,边缘像素就无法取了,因此,给这部分像素进行 padding 操作
def padWithZeros(X, margin=2):
    newX = np.zeros((X.shape[0] + 2 * margin, X.shape[1] + 2* margin, X.shape[2]))
    x_offset = margin
    y_offset = margin
    newX[x_offset:X.shape[0] + x_offset, y_offset:X.shape[1] + y_offset, :] = X
    return newX

# 在每个像素周围提取 patch ,然后创建成符合 keras 处理的格式
def createImageCubes(X, y, windowSize=5, removeZeroLabels = True):
    # 给 X 做 padding
    margin = int((windowSize - 1) / 2)
    zeroPaddedX = padWithZeros(X, margin=margin)
    # split patches
    patchesData = np.zeros((X.shape[0] * X.shape[1], windowSize, windowSize, X.shape[2]))
    patchesLabels = np.zeros((X.shape[0] * X.shape[1]))
    patchIndex = 0
    for r in range(margin, zeroPaddedX.shape[0] - margin):
        for c in range(margin, zeroPaddedX.shape[1] - margin):
            patch = zeroPaddedX[r - margin:r + margin + 1, c - margin:c + margin + 1]   
            patchesData[patchIndex, :, :, :] = patch
            patchesLabels[patchIndex] = y[r-margin, c-margin]
            patchIndex = patchIndex + 1
    if removeZeroLabels:
        patchesData = patchesData[patchesLabels>0,:,:,:]
        patchesLabels = patchesLabels[patchesLabels>0]
        patchesLabels -= 1
    return patchesData, patchesLabels

def splitTrainTestSet(X, y, testRatio, randomState=345):
    X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=testRatio, random_state=randomState, stratify=y)
    return X_train, X_test, y_train, y_test

读取并创建数据集

# 地物类别
class_num = 16
X = sio.loadmat('Indian_pines_corrected.mat')['indian_pines_corrected']
y = sio.loadmat('Indian_pines_gt.mat')['indian_pines_gt']

# 用于测试样本的比例
test_ratio = 0.90
# 每个像素周围提取 patch 的尺寸
patch_size = 25
# 使用 PCA 降维,得到主成分的数量
pca_components = 30

print('Hyperspectral data shape: ', X.shape)
print('Label shape: ', y.shape)

print('\n... ... PCA tranformation ... ...')
X_pca = applyPCA(X, numComponents=pca_components)
print('Data shape after PCA: ', X_pca.shape)

print('\n... ... create data cubes ... ...')
X_pca, y = createImageCubes(X_pca, y, windowSize=patch_size)
print('Data cube X shape: ', X_pca.shape)
print('Data cube y shape: ', y.shape)

print('\n... ... create train & test data ... ...')
Xtrain, Xtest, ytrain, ytest = splitTrainTestSet(X_pca, y, test_ratio)
print('Xtrain shape: ', Xtrain.shape)
print('Xtest  shape: ', Xtest.shape)

# 改变 Xtrain, Ytrain 的形状,以符合 keras 的要求
Xtrain = Xtrain.reshape(-1, patch_size, patch_size, pca_components, 1)
Xtest  = Xtest.reshape(-1, patch_size, patch_size, pca_components, 1)
print('before transpose: Xtrain shape: ', Xtrain.shape) 
print('before transpose: Xtest  shape: ', Xtest.shape) 

# 为了适应 pytorch 结构,数据要做 transpose
Xtrain = Xtrain.transpose(0, 4, 3, 1, 2)
Xtest  = Xtest.transpose(0, 4, 3, 1, 2)
print('after transpose: Xtrain shape: ', Xtrain.shape) 
print('after transpose: Xtest  shape: ', Xtest.shape) 


""" Training dataset"""
class TrainDS(torch.utils.data.Dataset): 
    def __init__(self):
        self.len = Xtrain.shape[0]
        self.x_data = torch.FloatTensor(Xtrain)
        self.y_data = torch.LongTensor(ytrain)        
    def __getitem__(self, index):
        # 根据索引返回数据和对应的标签
        return self.x_data[index], self.y_data[index]
    def __len__(self): 
        # 返回文件数据的数目
        return self.len

""" Testing dataset"""
class TestDS(torch.utils.data.Dataset): 
    def __init__(self):
        self.len = Xtest.shape[0]
        self.x_data = torch.FloatTensor(Xtest)
        self.y_data = torch.LongTensor(ytest)
    def __getitem__(self, index):
        # 根据索引返回数据和对应的标签
        return self.x_data[index], self.y_data[index]
    def __len__(self): 
        # 返回文件数据的数目
        return self.len

# 创建 trainloader 和 testloader
trainset = TrainDS()
testset  = TestDS()
train_loader = torch.utils.data.DataLoader(dataset=trainset, batch_size=128, shuffle=True, num_workers=2)
test_loader  = torch.utils.data.DataLoader(dataset=testset,  batch_size=128, shuffle=False, num_workers=2)

开始训练

# 使用GPU训练,可以在菜单 "代码执行工具" -> "更改运行时类型" 里进行设置
device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")

# 网络放到GPU上
net = HybridSN().to(device)
criterion = nn.CrossEntropyLoss()
optimizer = optim.Adam(net.parameters(), lr=0.001)

# 开始训练
total_loss = 0
net.train()
for epoch in range(100):
    for i, (inputs, labels) in enumerate(train_loader):
        inputs = inputs.to(device)
        labels = labels.to(device)
        # 优化器梯度归零
        optimizer.zero_grad()
        # 正向传播 + 反向传播 + 优化 
        outputs = net(inputs)
        loss = criterion(outputs, labels)
        loss.backward()
        optimizer.step()
        total_loss += loss.item()
    print('[Epoch: %d]   [loss avg: %.4f]   [current loss: %.4f]' %(epoch + 1, total_loss/(epoch+1), loss.item()))

print('Finished Training')

模型测试

net.eval()
count = 0
# 模型测试
for inputs, _ in test_loader:
    inputs = inputs.to(device)
    outputs = net(inputs)
    outputs = np.argmax(outputs.detach().cpu().numpy(), axis=1)
    if count == 0:
        y_pred_test =  outputs
        count = 1
    else:
        y_pred_test = np.concatenate( (y_pred_test, outputs) )

# 生成分类报告
classification = classification_report(ytest, y_pred_test, digits=4)
print(classification)

最终结果

相比较于在HybridSN中添加了model.train()和model.eval()后,在二维卷积后面加入SE模块,该网络的准确率上升了0.0016,提升效果不是很明显。

posted @ 2020-08-15 10:02  陳半仙  阅读(303)  评论(0编辑  收藏  举报