知识蒸馏NST算法实战:使用CoatNet蒸馏ResNet18(一)
@[toc]
摘要
复杂度的检测模型虽然可以取得SOTA的精度,但它们往往难以直接落地应用。模型压缩方法帮助模型在效率和精度之间进行折中。知识蒸馏是模型压缩的一种有效手段,它的核心思想是迫使轻量级的学生模型去学习教师模型提取到的知识,从而提高学生模型的性能。已有的知识蒸馏方法可以分别为三大类:
- 基于特征的(feature-based,例如VID、NST、FitNets、fine-grained feature imitation)
- 基于关系的(relation-based,例如IRG、Relational KD、CRD、similarity-preserving knowledge distillation)
- 基于响应的(response-based,例如Hinton的知识蒸馏开山之作)
今天我们就尝试用基于关系特征的NST知识蒸馏算法完成这篇实战。NST蒸馏是对模型里面的的Block最后一层Feature做蒸馏,所以需要最后一层block的值。所以我们对模型要做修改来适应NST算法,并且为了使Teacher和Student的网络层之间的参数一致,我们这次选用CoatNet作为Teacher模型,选择ResNet18作为Student。
最终结论
先把结论说了吧! Teacher网络使用CoatNet的coatnet_2模型,Student网络使用ResNet18。如下表
网络 | epochs | ACC |
---|---|---|
CoatNet | 100 | 91% |
ResNet18 | 100 | 89% |
ResNet18 +NST | 100 | 90% |
模型
模型没有用pytorch官方自带的,而是参照以前总结的ResNet模型修改的。ResNet模型结构如下图:
ResNet18, ResNet34
ResNet18, ResNet34模型的残差结构是一致的,结构如下:
代码如下:
resnet.py
import torch
import torchvision
from torch import nn
from torch.nn import functional as F
# from torchsummary import summary
class ResidualBlock(nn.Module):
"""
实现子module: Residual Block
"""
def __init__(self, inchannel, outchannel, stride=1, shortcut=None):
super(ResidualBlock, self).__init__()
self.left = nn.Sequential(
nn.Conv2d(inchannel, outchannel, 3, stride, 1, bias=False),
nn.BatchNorm2d(outchannel),
nn.ReLU(inplace=True),
nn.Conv2d(outchannel, outchannel, 3, 1, 1, bias=False),
nn.BatchNorm2d(outchannel)
)
self.right = shortcut
def forward(self, x):
out = self.left(x)
residual = x if self.right is None else self.right(x)
out += residual
return F.relu(out)
class ResNet(nn.Module):
"""
实现主module:ResNet34
ResNet34包含多个layer,每个layer又包含多个Residual block
用子module来实现Residual block,用_make_layer函数来实现layer
"""
def __init__(self, blocks, num_classes=1000):
super(ResNet, self).__init__()
self.model_name = 'resnet34'
# 前几层: 图像转换
self.pre = nn.Sequential(
nn.Conv2d(3, 64, 7, 2, 3, bias=False),
nn.BatchNorm2d(64),
nn.ReLU(inplace=True),
nn.MaxPool2d(3, 2, 1))
# 重复的layer,分别有3,4,6,3个residual block
self.layer1 = self._make_layer(64, 64, blocks[0])
self.layer2 = self._make_layer(64, 128, blocks[1], stride=2)
self.layer3 = self._make_layer(128, 256, blocks[2], stride=2)
self.layer4 = self._make_layer(256, 512, blocks[3], stride=2)
# 分类用的全连接
self.fc = nn.Linear(512, num_classes)
def _make_layer(self, inchannel, outchannel, block_num, stride=1):
"""
构建layer,包含多个residual block
"""
shortcut = nn.Sequential(
nn.Conv2d(inchannel, outchannel, 1, stride, bias=False),
nn.BatchNorm2d(outchannel),
nn.ReLU()
)
layers = []
layers.append(ResidualBlock(inchannel, outchannel, stride, shortcut))
for i in range(1, block_num):
layers.append(ResidualBlock(outchannel, outchannel))
return nn.Sequential(*layers)
def forward(self, x):
x = self.pre(x)
l1_out = self.layer1(x)
l2_out = self.layer2(l1_out)
l3_out = self.layer3(l2_out)
l4_out = self.layer4(l3_out)
p_out = F.avg_pool2d(l4_out, 7)
fea = p_out.view(p_out.size(0), -1)
out=self.fc(fea)
return l1_out,l2_out,l3_out,l4_out,fea,out
def ResNet18():
return ResNet([2, 2, 2, 2])
def ResNet34():
return ResNet([3, 4, 6, 3])
if __name__ == '__main__':
device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
model = ResNet34()
model.to(device)
# summary(model, (3, 224, 224))
主要修改了输出结果,将每个block的结果输出出来。
CoatNet
代码:
coatnet.py
import torch
import torch.nn as nn
from einops import rearrange
from einops.layers.torch import Rearrange
def conv_3x3_bn(inp, oup, image_size, downsample=False):
stride = 1 if downsample == False else 2
return nn.Sequential(
nn.Conv2d(inp, oup, 3, stride, 1, bias=False),
nn.BatchNorm2d(oup),
nn.GELU()
)
class PreNorm(nn.Module):
def __init__(self, dim, fn, norm):
super().__init__()
self.norm = norm(dim)
self.fn = fn
def forward(self, x, **kwargs):
return self.fn(self.norm(x), **kwargs)
class SE(nn.Module):
def __init__(self, inp, oup, expansion=0.25):
super().__init__()
self.avg_pool = nn.AdaptiveAvgPool2d(1)
self.fc = nn.Sequential(
nn.Linear(oup, int(inp * expansion), bias=False),
nn.GELU(),
nn.Linear(int(inp * expansion), oup, bias=False),
nn.Sigmoid()
)
def forward(self, x):
b, c, _, _ = x.size()
y = self.avg_pool(x).view(b, c)
y = self.fc(y).view(b, c, 1, 1)
return x * y
class FeedForward(nn.Module):
def __init__(self, dim, hidden_dim, dropout=0.):
super().__init__()
self.net = nn.Sequential(
nn.Linear(dim, hidden_dim),
nn.GELU(),
nn.Dropout(dropout),
nn.Linear(hidden_dim, dim),
nn.Dropout(dropout)
)
def forward(self, x):
return self.net(x)
class MBConv(nn.Module):
def __init__(self, inp, oup, image_size, downsample=False, expansion=4):
super().__init__()
self.downsample = downsample
stride = 1 if self.downsample == False else 2
hidden_dim = int(inp * expansion)
if self.downsample:
self.pool = nn.MaxPool2d(3, 2, 1)
self.proj = nn.Conv2d(inp, oup, 1, 1, 0, bias=False)
if expansion == 1:
self.conv = nn.Sequential(
# dw
nn.Conv2d(hidden_dim, hidden_dim, 3, stride,
1, groups=hidden_dim, bias=False),
nn.BatchNorm2d(hidden_dim),
nn.GELU(),
# pw-linear
nn.Conv2d(hidden_dim, oup, 1, 1, 0, bias=False),
nn.BatchNorm2d(oup),
)
else:
self.conv = nn.Sequential(
# pw
# down-sample in the first conv
nn.Conv2d(inp, hidden_dim, 1, stride, 0, bias=False),
nn.BatchNorm2d(hidden_dim),
nn.GELU(),
# dw
nn.Conv2d(hidden_dim, hidden_dim, 3, 1, 1,
groups=hidden_dim, bias=False),
nn.BatchNorm2d(hidden_dim),
nn.GELU(),
SE(inp, hidden_dim),
# pw-linear
nn.Conv2d(hidden_dim, oup, 1, 1, 0, bias=False),
nn.BatchNorm2d(oup),
)
self.conv = PreNorm(inp, self.conv, nn.BatchNorm2d)
def forward(self, x):
if self.downsample:
return self.proj(self.pool(x)) + self.conv(x)
else:
return x + self.conv(x)
class Attention(nn.Module):
def __init__(self, inp, oup, image_size, heads=8, dim_head=32, dropout=0.):
super().__init__()
inner_dim = dim_head * heads
project_out = not (heads == 1 and dim_head == inp)
self.ih, self.iw = image_size
self.heads = heads
self.scale = dim_head ** -0.5
# parameter table of relative position bias
self.relative_bias_table = nn.Parameter(
torch.zeros((2 * self.ih - 1) * (2 * self.iw - 1), heads))
coords = torch.meshgrid((torch.arange(self.ih), torch.arange(self.iw)))
coords = torch.flatten(torch.stack(coords), 1)
relative_coords = coords[:, :, None] - coords[:, None, :]
relative_coords[0] += self.ih - 1
relative_coords[1] += self.iw - 1
relative_coords[0] *= 2 * self.iw - 1
relative_coords = rearrange(relative_coords, 'c h w -> h w c')
relative_index = relative_coords.sum(-1).flatten().unsqueeze(1)
self.register_buffer("relative_index", relative_index)
self.attend = nn.Softmax(dim=-1)
self.to_qkv = nn.Linear(inp, inner_dim * 3, bias=False)
self.to_out = nn.Sequential(
nn.Linear(inner_dim, oup),
nn.Dropout(dropout)
) if project_out else nn.Identity()
def forward(self, x):
qkv = self.to_qkv(x).chunk(3, dim=-1)
q, k, v = map(lambda t: rearrange(
t, 'b n (h d) -> b h n d', h=self.heads), qkv)
dots = torch.matmul(q, k.transpose(-1, -2)) * self.scale
# Use "gather" for more efficiency on GPUs
relative_bias = self.relative_bias_table.gather(
0, self.relative_index.repeat(1, self.heads))
relative_bias = rearrange(
relative_bias, '(h w) c -> 1 c h w', h=self.ih*self.iw, w=self.ih*self.iw)
dots = dots + relative_bias
attn = self.attend(dots)
out = torch.matmul(attn, v)
out = rearrange(out, 'b h n d -> b n (h d)')
out = self.to_out(out)
return out
class Transformer(nn.Module):
def __init__(self, inp, oup, image_size, heads=8, dim_head=32, downsample=False, dropout=0.):
super().__init__()
hidden_dim = int(inp * 4)
self.ih, self.iw = image_size
self.downsample = downsample
if self.downsample:
self.pool1 = nn.MaxPool2d(3, 2, 1)
self.pool2 = nn.MaxPool2d(3, 2, 1)
self.proj = nn.Conv2d(inp, oup, 1, 1, 0, bias=False)
self.attn = Attention(inp, oup, image_size, heads, dim_head, dropout)
self.ff = FeedForward(oup, hidden_dim, dropout)
self.attn = nn.Sequential(
Rearrange('b c ih iw -> b (ih iw) c'),
PreNorm(inp, self.attn, nn.LayerNorm),
Rearrange('b (ih iw) c -> b c ih iw', ih=self.ih, iw=self.iw)
)
self.ff = nn.Sequential(
Rearrange('b c ih iw -> b (ih iw) c'),
PreNorm(oup, self.ff, nn.LayerNorm),
Rearrange('b (ih iw) c -> b c ih iw', ih=self.ih, iw=self.iw)
)
def forward(self, x):
if self.downsample:
x = self.proj(self.pool1(x)) + self.attn(self.pool2(x))
else:
x = x + self.attn(x)
x = x + self.ff(x)
return x
class CoAtNet(nn.Module):
def __init__(self, image_size, in_channels, num_blocks, channels, num_classes=1000, block_types=['C', 'C', 'T', 'T']):
super().__init__()
ih, iw = image_size
block = {'C': MBConv, 'T': Transformer}
self.s0 = self._make_layer(
conv_3x3_bn, in_channels, channels[0], num_blocks[0], (ih // 2, iw // 2))
self.s1 = self._make_layer(
block[block_types[0]], channels[0], channels[1], num_blocks[1], (ih // 4, iw // 4))
self.s2 = self._make_layer(
block[block_types[1]], channels[1], channels[2], num_blocks[2], (ih // 8, iw // 8))
self.s3 = self._make_layer(
block[block_types[2]], channels[2], channels[3], num_blocks[3], (ih // 16, iw // 16))
self.s4 = self._make_layer(
block[block_types[3]], channels[3], channels[4], num_blocks[4], (ih // 32, iw // 32))
self.pool = nn.AvgPool2d(ih // 32, 1)
self.fc = nn.Linear(channels[-1], num_classes, bias=False)
def forward(self, x):
x = self.s0(x)
l1_out = self.s1(x)
l2_out = self.s2(l1_out)
l3_out = self.s3(l2_out)
l4_out = self.s4(l3_out)
fea = self.pool(l4_out).view(-1, l4_out.shape[1])
out = self.fc(fea)
return l1_out,l2_out,l3_out,l4_out,fea, out
def _make_layer(self, block, inp, oup, depth, image_size):
layers = nn.ModuleList([])
for i in range(depth):
if i == 0:
layers.append(block(inp, oup, image_size, downsample=True))
else:
layers.append(block(oup, oup, image_size))
return nn.Sequential(*layers)
def coatnet_0():
num_blocks = [2, 2, 3, 5, 2] # L
channels = [64, 96, 192, 384, 768] # D
return CoAtNet((224, 224), 3, num_blocks, channels, num_classes=1000)
def coatnet_1():
num_blocks = [2, 2, 6, 14, 2] # L
channels = [64, 96, 192, 384, 768] # D
return CoAtNet((224, 224), 3, num_blocks, channels, num_classes=1000)
def coatnet_2():
num_blocks = [2, 2, 6, 14, 2] # L
channels = [128, 128, 256, 512, 1026] # D
return CoAtNet((224, 224), 3, num_blocks, channels, num_classes=1000)
def coatnet_3():
num_blocks = [2, 2, 6, 14, 2] # L
channels = [192, 192, 384, 768, 1536] # D
return CoAtNet((224, 224), 3, num_blocks, channels, num_classes=1000)
def coatnet_4():
num_blocks = [2, 2, 12, 28, 2] # L
channels = [192, 192, 384, 768, 1536] # D
return CoAtNet((224, 224), 3, num_blocks, channels, num_classes=1000)
def count_parameters(model):
return sum(p.numel() for p in model.parameters() if p.requires_grad)
if __name__ == '__main__':
img = torch.randn(1, 3, 224, 224)
net = coatnet_0()
out = net(img)
print(out.shape, count_parameters(net))
net = coatnet_1()
out = net(img)
print(out.shape, count_parameters(net))
net = coatnet_2()
out = net(img)
print(out.shape, count_parameters(net))
net = coatnet_3()
out = net(img)
print(out.shape, count_parameters(net))
net = coatnet_4()
out = net(img)
print(out.shape, count_parameters(net))
同上,将每个block层都输出出来。
数据准备
数据使用我以前在图像分类任务中的数据集——植物幼苗数据集,先将数据集转为训练集和验证集。执行代码:
import glob
import os
import shutil
image_list=glob.glob('data1/*/*.png')
print(image_list)
file_dir='data'
if os.path.exists(file_dir):
print('true')
#os.rmdir(file_dir)
shutil.rmtree(file_dir)#删除再建立
os.makedirs(file_dir)
else:
os.makedirs(file_dir)
from sklearn.model_selection import train_test_split
trainval_files, val_files = train_test_split(image_list, test_size=0.3, random_state=42)
train_dir='train'
val_dir='val'
train_root=os.path.join(file_dir,train_dir)
val_root=os.path.join(file_dir,val_dir)
for file in trainval_files:
file_class=file.replace("\\","/").split('/')[-2]
file_name=file.replace("\\","/").split('/')[-1]
file_class=os.path.join(train_root,file_class)
if not os.path.isdir(file_class):
os.makedirs(file_class)
shutil.copy(file, file_class + '/' + file_name)
for file in val_files:
file_class=file.replace("\\","/").split('/')[-2]
file_name=file.replace("\\","/").split('/')[-1]
file_class=os.path.join(val_root,file_class)
if not os.path.isdir(file_class):
os.makedirs(file_class)
shutil.copy(file, file_class + '/' + file_name)
训练Teacher模型
Teacher选用CoatNet的coatnet_2模型。这个模型在训练100个epoch后,在验证集上,最高成绩是91%。
步骤
新建teacher_train.py,插入代码:
导入需要的库
import torch.optim as optim
import torch
import torch.nn as nn
import torch.nn.parallel
import torch.utils.data
import torch.utils.data.distributed
import torchvision.transforms as transforms
from torchvision import datasets
from torch.autograd import Variable
from model.coatnet import coatnet_2
import json
import os
导入所需的库
定义训练和验证函数
编写train方法和val方法,由于修改输出的结果,所以返回结果又多个,如果不想对每个返回结果命名,可以使用下划线代替。
def train(model, device, train_loader, optimizer, epoch):
model.train()
sum_loss = 0
total_num = len(train_loader.dataset)
print(total_num, len(train_loader))
for batch_idx, (data, target) in enumerate(train_loader):
data, target = Variable(data).to(device), Variable(target).to(device)
_,_,_,l4_out,fea,output = model(data)
loss = criterion(output, target)
optimizer.zero_grad()
loss.backward()
optimizer.step()
print_loss = loss.data.item()
sum_loss += print_loss
if (batch_idx + 1) % 10 == 0:
print('Train Epoch: {} [{}/{} ({:.0f}%)]\tLoss: {:.6f}'.format(
epoch, (batch_idx + 1) * len(data), len(train_loader.dataset),
100. * (batch_idx + 1) / len(train_loader), loss.item()))
ave_loss = sum_loss / len(train_loader)
print('epoch:{},loss:{}'.format(epoch, ave_loss))
定义全局参数
if __name__ == '__main__':
# 创建保存模型的文件夹
file_dir = 'CoatNet'
if os.path.exists(file_dir):
print('true')
os.makedirs(file_dir, exist_ok=True)
else:
os.makedirs(file_dir)
# 设置全局参数
modellr = 1e-4
BATCH_SIZE = 16
EPOCHS = 100
DEVICE = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
全局参数:
modellr :学习率
BATCH_SIZE:BatchSize的大小。
EPOCHS :epoch的大小
DEVICE:选择cpu还是gpu训练,默认是gpu,如果找不到GPU则改为CPU训练。
图像预处理与增强
# 数据预处理7
transform = transforms.Compose([
transforms.RandomRotation(10),
transforms.GaussianBlur(kernel_size=(5, 5), sigma=(0.1, 3.0)),
transforms.ColorJitter(brightness=0.5, contrast=0.5, saturation=0.5),
transforms.Resize((224, 224)),
transforms.ToTensor(),
transforms.Normalize(mean=[0.44127703, 0.4712498, 0.43714803], std=[0.18507297, 0.18050247, 0.16784933])
])
transform_test = transforms.Compose([
transforms.Resize((224, 224)),
transforms.ToTensor(),
transforms.Normalize(mean=[0.44127703, 0.4712498, 0.43714803], std=[0.18507297, 0.18050247, 0.16784933])
])
对于训练集,增强有10°的随机旋转、高斯模糊、饱和度明亮等。
对于验证集,则不做数据集增强。
读取数据
使用pytorch默认读取数据的方式。
# 读取数据
dataset_train = datasets.ImageFolder('data/train', transform=transform)
dataset_test = datasets.ImageFolder("data/val", transform=transform_test)
with open('class.txt', 'w') as file:
file.write(str(dataset_train.class_to_idx))
with open('class.json', 'w', encoding='utf-8') as file:
file.write(json.dumps(dataset_train.class_to_idx))
# 导入数据
train_loader = torch.utils.data.DataLoader(dataset_train, batch_size=BATCH_SIZE, shuffle=True)
test_loader = torch.utils.data.DataLoader(dataset_test, batch_size=BATCH_SIZE, shuffle=False)
采用默认的数据读取方式。
设置模型和Loss
# 实例化模型并且移动到GPU
criterion = nn.CrossEntropyLoss()
model_ft = coatnet_2()
num_ftrs = model_ft.fc.in_features
model_ft.fc = nn.Linear(num_ftrs, 12)
model_ft.to(DEVICE)
# 选择简单暴力的Adam优化器,学习率调低
optimizer = optim.Adam(model_ft.parameters(), lr=modellr)
cosine_schedule = optim.lr_scheduler.CosineAnnealingLR(optimizer=optimizer, T_max=20, eta_min=1e-9)
# 训练
val_acc_list= {}
for epoch in range(1, EPOCHS + 1):
train(model_ft, DEVICE, train_loader, optimizer, epoch)
cosine_schedule.step()
acc=val(model_ft, DEVICE, test_loader)
val_acc_list[epoch]=acc
with open('result.json', 'w', encoding='utf-8') as file:
file.write(json.dumps(val_acc_list))
torch.save(model_ft, 'CoatNet/model_final.pth')
设置loss为交叉熵。
设置模型为coatnet_2。
修改最后的输出层,将其改为数据集的类别。
设置优化器为Adam。
设置学习率的调节方式为余弦退火算法。
完成上面的代码就可以开始训练Teacher网络了。
学生网络
学生网络选用ResNet18,是一个比较小一点的网络了,模型的大小有40M。训练100个epoch,在验证集上最终的ACC是89%.
步骤
新建student_train.py,插入代码:
导入需要的库
import torch.optim as optim
import torch
import torch.nn as nn
import torch.nn.parallel
import torch.utils.data
import torch.utils.data.distributed
import torchvision.transforms as transforms
from torchvision import datasets
from torch.autograd import Variable
from model.resnet import ResNet18
import json
import os
导入所需的库
定义训练和验证函数
# 定义训练过程
def train(model, device, train_loader, optimizer, epoch):
model.train()
sum_loss = 0
total_num = len(train_loader.dataset)
print(total_num, len(train_loader))
for batch_idx, (data, target) in enumerate(train_loader):
data, target = Variable(data).to(device), Variable(target).to(device)
_,_,_,l4_out,fea,out = model(data)
loss = criterion(out, target)
optimizer.zero_grad()
loss.backward()
optimizer.step()
print_loss = loss.data.item()
sum_loss += print_loss
if (batch_idx + 1) % 10 == 0:
print('Train Epoch: {} [{}/{} ({:.0f}%)]\tLoss: {:.6f}'.format(
epoch, (batch_idx + 1) * len(data), len(train_loader.dataset),
100. * (batch_idx + 1) / len(train_loader), loss.item()))
ave_loss = sum_loss / len(train_loader)
print('epoch:{},loss:{}'.format(epoch, ave_loss))
Best_ACC=0
# 验证过程
@torch.no_grad()
def val(model, device, test_loader):
global Best_ACC
model.eval()
test_loss = 0
correct = 0
total_num = len(test_loader.dataset)
print(total_num, len(test_loader))
with torch.no_grad():
for data, target in test_loader:
data, target = Variable(data).to(device), Variable(target).to(device)
l1_out,l2_out,l3_out,l4_out,fea,out = model(data)
loss = criterion(out, target)
_, pred = torch.max(out.data, 1)
correct += torch.sum(pred == target)
print_loss = loss.data.item()
test_loss += print_loss
correct = correct.data.item()
acc = correct / total_num
avgloss = test_loss / len(test_loader)
if acc > Best_ACC:
torch.save(model, file_dir + '/' + 'best.pth')
Best_ACC = acc
print('\nVal set: Average loss: {:.4f}, Accuracy: {}/{} ({:.0f}%)\n'.format(
avgloss, correct, len(test_loader.dataset), 100 * acc))
return acc
编写train方法和val函数,由于修改输出的结果,所以返回结果又多个,如果不想对每个返回结果命名,可以使用下划线代替。
在val函数中验证ACC,保存ACC最高的模型。
定义全局参数
if __name__ == '__main__':
# 创建保存模型的文件夹
file_dir = 'resnet'
if os.path.exists(file_dir):
print('true')
os.makedirs(file_dir, exist_ok=True)
else:
os.makedirs(file_dir)
# 设置全局参数
modellr = 1e-4
BATCH_SIZE = 16
EPOCHS = 100
DEVICE = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
全局参数:
modellr :学习率
BATCH_SIZE:BatchSize的大小。
EPOCHS :epoch的大小
DEVICE:选择cpu还是gpu训练,默认是gpu,如果找不到GPU则改为CPU训练。
注意这里设置和Teacher模型保持一致,这样得出的结论才更有说服力。
图像预处理与增强
# 数据预处理7
transform = transforms.Compose([
transforms.RandomRotation(10),
transforms.GaussianBlur(kernel_size=(5, 5), sigma=(0.1, 3.0)),
transforms.ColorJitter(brightness=0.5, contrast=0.5, saturation=0.5),
transforms.Resize((224, 224)),
transforms.ToTensor(),
transforms.Normalize(mean=[0.44127703, 0.4712498, 0.43714803], std=[0.18507297, 0.18050247, 0.16784933])
])
transform_test = transforms.Compose([
transforms.Resize((224, 224)),
transforms.ToTensor(),
transforms.Normalize(mean=[0.44127703, 0.4712498, 0.43714803], std=[0.18507297, 0.18050247, 0.16784933])
])
对于训练集,增强有10°的随机旋转、高斯模糊、饱和度明亮等。
对于验证集,则不做数据集增强。
注意:数据增强和Teacher模型里的增强保持一致。
读取数据
使用pytorch默认读取数据的方式。
# 读取数据
dataset_train = datasets.ImageFolder('data/train', transform=transform)
dataset_test = datasets.ImageFolder("data/val", transform=transform_test)
with open('class.txt', 'w') as file:
file.write(str(dataset_train.class_to_idx))
with open('class.json', 'w', encoding='utf-8') as file:
file.write(json.dumps(dataset_train.class_to_idx))
# 导入数据
train_loader = torch.utils.data.DataLoader(dataset_train, batch_size=BATCH_SIZE, shuffle=True)
test_loader = torch.utils.data.DataLoader(dataset_test, batch_size=BATCH_SIZE, shuffle=False)
采用pytorch默认的数据读取方式。
设置模型和Loss
# 实例化模型并且移动到GPU
criterion = nn.CrossEntropyLoss()
model_ft = ResNet18()
print(model_ft)
num_ftrs = model_ft.fc.in_features
model_ft.fc = nn.Linear(num_ftrs, 12)
model_ft.to(DEVICE)
# 选择简单暴力的Adam优化器,学习率调低
optimizer = optim.Adam(model_ft.parameters(), lr=modellr)
cosine_schedule = optim.lr_scheduler.CosineAnnealingLR(optimizer=optimizer, T_max=20, eta_min=1e-9)
# 训练
val_acc_list= {}
for epoch in range(1, EPOCHS + 1):
train(model_ft, DEVICE, train_loader, optimizer, epoch)
cosine_schedule.step()
acc=val(model_ft, DEVICE, test_loader)
val_acc_list[epoch]=acc
with open('result_student.json', 'w', encoding='utf-8') as file:
file.write(json.dumps(val_acc_list))
torch.save(model_ft, 'resnet/model_final.pth')
设置loss为交叉熵。
设置模型为ResNet18。
修改最后的输出层,将其改为数据集的类别。
设置优化器为Adam。
设置学习率的调节方式为余弦退火算法。
完成上面的代码就可以开始训练Student网络了。
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