CoordAtt:即插即用的新注意力机制!助力改进任务的神器!
本文提出Coordinate Attention机制,将位置信息嵌入通道注意力以提升模型性能。处理数据集后,对比经典模型,构建含该机制的TowerNet模型并训练,结果显示加入CA模块后性能大幅提升。

① 项目背景
1.Mobile Network设计的最新研究成果表明,通道注意力(例如,SE注意力)对于提升模型性能具有显著效果,但它们通常会忽略位置信息,而位置信息对于生成空间选择性attention maps是非常重要。2.因此在本文中,作者通过将位置信息嵌入到通道注意力中提出了一种新颖的移动网络注意力机制,将其称为“Coordinate Attention”。与通过2维全局池化将特征张量转换为单个特征向量的通道注意力不同,coordinate注意力将通道注意力分解为两个1维特征编码过程,分别沿2个空间方向聚合特征。3.这样,可以沿一个空间方向捕获远程依赖关系,同时可以沿另一空间方向保留精确的位置信息。然后将生成的特征图分别编码为一对方向感知和位置敏感的attention map,可以将其互补地应用于输入特征图,以增强关注对象的表示。
论文地址:https://arxiv.org/abs/2103.02907
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② 数据准备
2.1 解压缩数据集
我们将网上获取的数据集以压缩包的方式上传到aistudio数据集中,并加载到我们的项目内。
在使用之前我们进行数据集压缩包的一个解压。
In [ ]!unzip -oq /home/aistudio/data/data69664/Images.zip -d work/dataset登录后复制In [ ]
import paddleimport numpy as npfrom typing import Callable#参数配置config_parameters = { "class_dim": 16, #分类数 "target_path":"/home/aistudio/work/", 'train_image_dir': '/home/aistudio/work/trainImages', 'eval_image_dir': '/home/aistudio/work/evalImages', 'epochs':100, 'batch_size': 32, 'lr': 0.01}登录后复制2.2 划分数据集
接下来我们使用标注好的文件进行数据集类的定义,方便后续模型训练使用。
In [ ]import osimport shutiltrain_dir = config_parameters['train_image_dir']eval_dir = config_parameters['eval_image_dir']paths = os.listdir('work/dataset/Images')if not os.path.exists(train_dir): os.mkdir(train_dir)if not os.path.exists(eval_dir): os.mkdir(eval_dir)for path in paths: imgs_dir = os.listdir(os.path.join('work/dataset/Images', path)) target_train_dir = os.path.join(train_dir,path) target_eval_dir = os.path.join(eval_dir,path) if not os.path.exists(target_train_dir): os.mkdir(target_train_dir) if not os.path.exists(target_eval_dir): os.mkdir(target_eval_dir) for i in range(len(imgs_dir)): if ' ' in imgs_dir[i]: new_name = imgs_dir[i].replace(' ', '_') else: new_name = imgs_dir[i] target_train_path = os.path.join(target_train_dir, new_name) target_eval_path = os.path.join(target_eval_dir, new_name) if i % 5 == 0: shutil.copyfile(os.path.join(os.path.join('work/dataset/Images', path), imgs_dir[i]), target_eval_path) else: shutil.copyfile(os.path.join(os.path.join('work/dataset/Images', path), imgs_dir[i]), target_train_path)print('finished train val split!')登录后复制finished train val split!登录后复制
2.3 数据集定义与数据集展示
2.3.1 数据集展示
我们先看一下解压缩后的数据集长成什么样子,对比分析经典模型在Caltech101抽取16类mini版数据集上的效果
In [ ]import osimport randomfrom matplotlib import pyplot as pltfrom PIL import Imageimgs = []paths = os.listdir('work/dataset/Images')for path in paths: img_path = os.path.join('work/dataset/Images', path) if os.path.isdir(img_path): img_paths = os.listdir(img_path) img = Image.open(os.path.join(img_path, random.choice(img_paths))) imgs.append((img, path))f, ax = plt.subplots(4, 4, figsize=(12,12))for i, img in enumerate(imgs[:16]): ax[i//4, i%4].imshow(img[0]) ax[i//4, i%4].axis('off') ax[i//4, i%4].set_title('label: %s' % img[1])plt.show()登录后复制2.3.2 导入数据集的定义实现
In [ ]#数据集的定义class Dataset(paddle.io.Dataset): """ 步骤一:继承paddle.io.Dataset类 """ def __init__(self, transforms: Callable, mode: str ='train'): """ 步骤二:实现构造函数,定义数据读取方式 """ super(Dataset, self).__init__() self.mode = mode self.transforms = transforms train_image_dir = config_parameters['train_image_dir'] eval_image_dir = config_parameters['eval_image_dir'] train_data_folder = paddle.vision.DatasetFolder(train_image_dir) eval_data_folder = paddle.vision.DatasetFolder(eval_image_dir) if self.mode == 'train': self.data = train_data_folder elif self.mode == 'eval': self.data = eval_data_folder def __getitem__(self, index): """ 步骤三:实现__getitem__方法,定义指定index时如何获取数据,并返回单条数据(训练数据,对应的标签) """ data = np.array(self.data[index][0]).astype('float32') data = self.transforms(data) label = np.array([self.data[index][1]]).astype('int64') return data, label def __len__(self): """ 步骤四:实现__len__方法,返回数据集总数目 """ return len(self.data)登录后复制In [ ]from paddle.vision import transforms as T#数据增强transform_train =T.Compose([T.Resize((256,256)), #T.RandomVerticalFlip(10), #T.RandomHorizontalFlip(10), T.RandomRotation(10), T.Transpose(), T.Normalize(mean=[0, 0, 0], # 像素值归一化 std =[255, 255, 255]), # transforms.ToTensor(), # transpose操作 + (img / 255),并且数据结构变为PaddleTensor T.Normalize(mean=[0.50950350, 0.54632660, 0.57409690],# 减均值 除标准差 std= [0.26059777, 0.26041326, 0.29220656])# 计算过程:output[channel] = (input[channel] - mean[channel]) / std[channel] ])transform_eval =T.Compose([ T.Resize((256,256)), T.Transpose(), T.Normalize(mean=[0, 0, 0], # 像素值归一化 std =[255, 255, 255]), # transforms.ToTensor(), # transpose操作 + (img / 255),并且数据结构变为PaddleTensor T.Normalize(mean=[0.50950350, 0.54632660, 0.57409690],# 减均值 除标准差 std= [0.26059777, 0.26041326, 0.29220656])# 计算过程:output[channel] = (input[channel] - mean[channel]) / std[channel] ])登录后复制
2.3.3 实例化数据集类
根据所使用的数据集需求实例化数据集类,并查看总样本量。
In [ ]train_dataset =Dataset(mode='train',transforms=transform_train)eval_dataset =Dataset(mode='eval', transforms=transform_eval )#数据异步加载train_loader = paddle.io.DataLoader(train_dataset, places=paddle.CUDAPlace(0), batch_size=32, shuffle=True, #num_workers=2, #use_shared_memory=True )eval_loader = paddle.io.DataLoader (eval_dataset, places=paddle.CUDAPlace(0), batch_size=32, #num_workers=2, #use_shared_memory=True )print('训练集样本量: {},验证集样本量: {}'.format(len(train_loader), len(eval_loader)))登录后复制训练集样本量: 45,验证集样本量: 12登录后复制
③ 模型选择和开发
3.1 对比网络构建
本次我们选取了经典的卷积神经网络resnet50,vgg19,mobilenet_v2来进行实验比较。
In [ ]network = paddle.vision.models.vgg19(num_classes=16)#模型封装model = paddle.Model(network)#模型可视化model.summary((-1, 3,256 , 256))登录后复制In [ ]
network = paddle.vision.models.resnet50(num_classes=16)#模型封装model2 = paddle.Model(network)#模型可视化model2.summary((-1, 3,256 , 256))登录后复制
3.2 对比网络训练
In [ ]#优化器选择class SaveBestModel(paddle.callbacks.Callback): def __init__(self, target=0.5, path='work/best_model', verbose=0): self.target = target self.epoch = None self.path = path def on_epoch_end(self, epoch, logs=None): self.epoch = epoch def on_eval_end(self, logs=None): if logs.get('acc') > self.target: self.target = logs.get('acc') self.model.save(self.path) print('best acc is {} at epoch {}'.format(self.target, self.epoch))callback_visualdl = paddle.callbacks.VisualDL(log_dir='work/vgg19')callback_savebestmodel = SaveBestModel(target=0.5, path='work/best_model')callbacks = [callback_visualdl, callback_savebestmodel]base_lr = config_parameters['lr']epochs = config_parameters['epochs']def make_optimizer(parameters=None): momentum = 0.9 learning_rate= paddle.optimizer.lr.CosineAnnealingDecay(learning_rate=base_lr, T_max=epochs, verbose=False) weight_decay=paddle.regularizer.L2Decay(0.0001) optimizer = paddle.optimizer.Momentum( learning_rate=learning_rate, momentum=momentum, weight_decay=weight_decay, parameters=parameters) return optimizeroptimizer = make_optimizer(model.parameters())model.prepare(optimizer, paddle.nn.CrossEntropyLoss(), paddle.metric.Accuracy())model.fit(train_loader, eval_loader, epochs=100, batch_size=1, # 是否打乱样本集 callbacks=callbacks, verbose=1) # 日志展示格式登录后复制3.3 Coordinate Attention注意力机制
3.3.1 CA模块的介绍
一个coordinate attention块可以被看作是一个计算单元,旨在增强Mobile Network中特征的表达能力。它可以将任何中间特征张量作为输入并通过转换输出了与张量具有相同size同时具有增强表征的作用。
图1 CA模块细节示意图
In [ ]import paddlefrom paddle.fluid.layers.nn import transposeimport paddle.nn as nnimport mathimport paddle.nn.functional as Fclass h_sigmoid(nn.Layer): def __init__(self): super(h_sigmoid, self).__init__() self.relu = nn.ReLU6() def forward(self, x): return self.relu(x + 3) / 6class h_swish(nn.Layer): def __init__(self): super(h_swish, self).__init__() self.sigmoid = h_sigmoid() def forward(self, x): return x * self.sigmoid(x)class CoordAtt(nn.Layer): def __init__(self, inp, oup, reduction=32): super(CoordAtt, self).__init__() self.pool_h = nn.AdaptiveAvgPool2D((None, 1)) self.pool_w = nn.AdaptiveAvgPool2D((1, None)) self.sigmoid = nn.Sigmoid() mip = max(8, inp // reduction) self.conv1 = nn.Conv2D(inp, mip, kernel_size=1, stride=1, padding=0) self.bn1 = nn.BatchNorm2D(mip) self.act = h_swish() self.conv_h = nn.Conv2D(mip, oup, kernel_size=1, stride=1, padding=0) self.conv_w = nn.Conv2D(mip, oup, kernel_size=1, stride=1, padding=0) def forward(self, x): identity = x n,c,h,w = x.shape x_h = self.pool_h(x) x_w = transpose(self.pool_w(x),[0, 1, 3, 2]) y = paddle.concat([x_h, x_w], axis=2) y = self.conv1(y) y = self.bn1(y) y = self.act(y) x_h, x_w = paddle.split(y, [h, w], axis=2) x_w = transpose(x_w,[0, 1, 3, 2]) a_h = self.sigmoid(self.conv_w(x_h)) a_w = self.sigmoid(self.conv_w(x_w)) out = identity * a_w * a_h return outif __name__ == '__main__': x = paddle.randn(shape=[1, 16, 64, 128]) # b, c, h, w ca_model = CoordAtt(inp=16,oup=16) y = ca_model(x) print(y.shape)登录后复制
W1115 23:29:01.694252 143 device_context.cc:362] Please NOTE: device: 0, GPU Compute Capability: 7.0, Driver API Version: 10.1, Runtime API Version: 10.1W1115 23:29:01.698771 143 device_context.cc:372] device: 0, cuDNN Version: 7.6.登录后复制
[1, 16, 64, 128]登录后复制
/opt/conda/envs/python35-paddle120-env/lib/python3.7/site-packages/paddle/nn/layer/norm.py:648: UserWarning: When training, we now always track global mean and variance. "When training, we now always track global mean and variance.")登录后复制
3.3.2 注意力多尺度特征融合卷积神经网络的搭建
In [ ]import paddle.nn.functional as F# 构建模型(Inception层)class Inception(paddle.nn.Layer): def __init__(self, in_channels, c1, c2, c3, c4): super(Inception, self).__init__() # 路线1,卷积核1x1 self.route1x1_1 = paddle.nn.Conv2D(in_channels, c1, kernel_size=1) # 路线2,卷积层1x1、卷积层3x3 self.route1x1_2 = paddle.nn.Conv2D(in_channels, c2[0], kernel_size=1) self.route3x3_2 = paddle.nn.Conv2D(c2[0], c2[1], kernel_size=3, padding=1) # 路线3,卷积层1x1、卷积层5x5 self.route1x1_3 = paddle.nn.Conv2D(in_channels, c3[0], kernel_size=1) self.route5x5_3 = paddle.nn.Conv2D(c3[0], c3[1], kernel_size=5, padding=2) # 路线4,池化层3x3、卷积层1x1 self.route3x3_4 = paddle.nn.MaxPool2D(kernel_size=3, stride=1, padding=1) self.route1x1_4 = paddle.nn.Conv2D(in_channels, c4, kernel_size=1) def forward(self, x): route1 = F.relu(self.route1x1_1(x)) route2 = F.relu(self.route3x3_2(F.relu(self.route1x1_2(x)))) route3 = F.relu(self.route5x5_3(F.relu(self.route1x1_3(x)))) route4 = F.relu(self.route1x1_4(self.route3x3_4(x))) out = [route1, route2, route3, route4] return paddle.concat(out, axis=1) # 在通道维度(axis=1)上进行连接# 构建 BasicConv2d 层def BasicConv2d(in_channels, out_channels, kernel, stride=1, padding=0): layer = paddle.nn.Sequential( paddle.nn.Conv2D(in_channels, out_channels, kernel, stride, padding), paddle.nn.BatchNorm2D(out_channels, epsilon=1e-3), paddle.nn.ReLU()) return layer# 搭建网络class TowerNet(paddle.nn.Layer): def __init__(self, in_channel, num_classes): super(TowerNet, self).__init__() self.b1 = paddle.nn.Sequential( BasicConv2d(in_channel, out_channels=64, kernel=3, stride=2, padding=1), paddle.nn.MaxPool2D(2, 2)) self.b2 = paddle.nn.Sequential( BasicConv2d(64, 128, kernel=3, padding=1), paddle.nn.MaxPool2D(2, 2)) self.b3 = paddle.nn.Sequential( BasicConv2d(128, 256, kernel=3, padding=1), paddle.nn.MaxPool2D(2, 2), CoordAtt(256,256)) self.b4 = paddle.nn.Sequential( BasicConv2d(256, 256, kernel=3, padding=1), paddle.nn.MaxPool2D(2, 2), CoordAtt(256,256)) self.b5 = paddle.nn.Sequential( Inception(256, 64, (64, 128), (16, 32), 32), paddle.nn.MaxPool2D(2, 2), CoordAtt(256,256), Inception(256, 64, (64, 128), (16, 32), 32), paddle.nn.MaxPool2D(2, 2), CoordAtt(256,256), Inception(256, 64, (64, 128), (16, 32), 32)) self.AvgPool2D=paddle.nn.AvgPool2D(2) self.flatten=paddle.nn.Flatten() self.b6 = paddle.nn.Linear(256, num_classes) def forward(self, x): x = self.b1(x) x = self.b2(x) x = self.b3(x) x = self.b4(x) x = self.b5(x) x = self.AvgPool2D(x) x = self.flatten(x) x = self.b6(x) return x登录后复制In [ ]
model = paddle.Model(TowerNet(3, config_parameters['class_dim']))model.summary((-1, 3, 256, 256))登录后复制
④改进模型的训练和优化器的选择
In [ ]#优化器选择class SaveBestModel(paddle.callbacks.Callback): def __init__(self, target=0.5, path='work/best_model', verbose=0): self.target = target self.epoch = None self.path = path def on_epoch_end(self, epoch, logs=None): self.epoch = epoch def on_eval_end(self, logs=None): if logs.get('acc') > self.target: self.target = logs.get('acc') self.model.save(self.path) print('best acc is {} at epoch {}'.format(self.target, self.epoch))callback_visualdl = paddle.callbacks.VisualDL(log_dir='work/CA_Inception_Net')callback_savebestmodel = SaveBestModel(target=0.5, path='work/best_model')callbacks = [callback_visualdl, callback_savebestmodel]base_lr = config_parameters['lr']epochs = config_parameters['epochs']def make_optimizer(parameters=None): momentum = 0.9 learning_rate= paddle.optimizer.lr.CosineAnnealingDecay(learning_rate=base_lr, T_max=epochs, verbose=False) weight_decay=paddle.regularizer.L2Decay(0.0002) optimizer = paddle.optimizer.Momentum( learning_rate=learning_rate, momentum=momentum, weight_decay=weight_decay, parameters=parameters) return optimizeroptimizer = make_optimizer(model.parameters())登录后复制In [ ]model.prepare(optimizer, paddle.nn.CrossEntropyLoss(), paddle.metric.Accuracy())登录后复制In [16]
model.fit(train_loader, eval_loader, epochs=100, batch_size=1, # 是否打乱样本集 callbacks=callbacks, verbose=1) # 日志展示格式登录后复制
⑤模型训练效果展示
在增加了CA模块的注意力机制后,性能有了较大幅度的提升。 

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