- 🍨 本文为🔗365天深度学习训练营 中的学习记录博客
- 🍖 原作者:K同学啊|接辅导、项目定制
目录
- 一、任务说明
- 二、导入相关包和配置
- 1.基本组件
- 1.1 autopad
- 1.2 Conv
- 1.3 Focus
- 1.4 Bottleneck
- 1.5 BottleneckCSP
- 1.6 C3
- 1.7 SPP
- 1.8 Concat
- 1.9 Contract、Expand
- 2.重要类
- 2.1 非极大值抑制(NMS)
- 2.2 AutoShape
- 2.3 Detections
- 2.4 Classify
- 三、模型调整
一、任务说明
学习并修改common.py文件
修改部分为:
去掉concat操作后的卷积层
二、导入相关包和配置
import ast
import contextlib
import json
import math # 数学函数模块
import platform
import warnings
import zipfile
from collections import OrderedDict, namedtuple
from copy import copy # 数据拷贝模块,分浅拷贝和深拷贝
from pathlib import Path # Path将str转换为Path对象,使字符串路径易于操作的模块
from urllib.parse import urlparse
import cv2
import numpy as np # numpy数组操作模块
import pandas as pd # pandas数组操作模块
import requests # Python的HTTP客户端库
import torch # pytorch深度学习框架
import torch.nn as nn # 专门为神经网络设计的模块化接口
from IPython.display import display
from PIL import Image # 图像基础操作模块
from torch.cuda import amp # 混合精度训练模块
from utils import TryExcept
from utils.dataloaders import exif_transpose, letterbox
from utils.general import (LOGGER, ROOT, Profile, check_requirements, check_suffix, check_version, colorstr,
increment_path, is_notebook, make_divisible, non_max_suppression, scale_boxes, xywh2xyxy,
xyxy2xywh, yaml_load)
from utils.plots import Annotator, colors, save_one_box
from utils.torch_utils import copy_attr, smart_inference_mode
1.基本组件
1.1 autopad
这个模块可以根据输入的卷积核计算卷积模块所需的pad值。将会用于下面会讲到的 Conv 函数和 Classify 函数中。
def autopad(k, p=None, d=1): # kernel, padding, dilation
# Pad to 'same' shape outputs
if d > 1:
k = d * (k - 1) + 1 if isinstance(k, int) else [d * (x - 1) + 1 for x in k] # actual kernel-size
if p is None:
p = k // 2 if isinstance(k, int) else [x // 2 for x in k] # auto-pad
return p
1.2 Conv
这个函数是整个网络中最基础的组件,由 卷积层 + BN层 + 激活函数 组成,具体结构如下:
另外这个类中还有一个特殊函数 forward_fuse ,这是一个前向加速推理模块,在前向传播过程中,通过融合 Conv + BN 层,达到加速推理的作用,一般用于测试或验证阶段。
class Conv(nn.Module):
# Standard convolution with args(ch_in, ch_out, kernel, stride, padding, groups, dilation, activation)
default_act = nn.SiLU() # default activation
def __init__(self, c1, c2, k=1, s=1, p=None, g=1, d=1, act=True):
''' 在Focus、Bottleneck、BottleneckCSP、C3、SPP、DWConv、TransformerBlock等模块中调用
Standard convolution : conv + BN + act
:params c1: 输入的channel值
:params c2: 输出的channel值
:params k: 卷积的kernel_size
:params s: 卷积的stride
:params p: 卷积的padding,默认是None,可以通过autopad自行计算需要的padding值
:params g: 卷积的groups数,1就是普通的卷积,>1就是深度可分离卷积
:params act: 激活函数类型,True就是SiLU()/Swish,False就是不使用激活函数,类型是nn.Module就使用传进来的激活函数类型
'''
super().__init__()
self.conv = nn.Conv2d(c1, c2, k, s, autopad(k, p, d), groups=g, dilation=d, bias=False)
self.bn = nn.BatchNorm2d(c2)
self.act = self.default_act if act is True else act if isinstance(act, nn.Module) else nn.Identity()
def forward(self, x):
return self.act(self.bn(self.conv(x)))
def forward_fuse(self, x):
''' 用于Model类的fuse函数
融合 Conv + BN 加速推理,一般用于测试/验证阶段
'''
return self.act(self.conv(x))
1.3 Focus
为了减少浮点数和提高速度,而不是增加featuremap的,本质就是将图像进行切片,类似于下采样取值,将原图像的宽高信息切分,聚合到channel通道中。结构如下所示:
class Focus(nn.Module):
# Focus wh information into c-space 把宽度w和高度h的信息整合到c空间中
def __init__(self, c1, c2, k=1, s=1, p=None, g=1, act=True): # ch_in, ch_out, kernel, stride, padding, groups
''' 在yolo.py的parse_model函数中被调用
理论:从高分辨率图像中,周期性的抽出像素点重构到低分辨率图像中,即将图像相邻的四个位置进行堆叠,
聚集wh维度信息到c通道中,提高每个点的感受野,并减少原始信息的丢失,该模块的设计主要是减少计算量加快速度。
先做4个slice,再concat,最后在做Conv
slice后 (b1,c1,w,h) -> 分成4个slice,每个slice(b,c1,w/2,h/2)
concat(dim=1)后 4个slice(b,c1,w/2,h/2) -> (b,4c1,w/2,h/2)
conv后 (b,4c1,w/2,h/2) -> (b,c2,w/2,h/2)
:params c1: slice后的channel
:params c2: Focus最终输出的channel
:params k: 最后卷积的kernel
:params s: 最后卷积的stride
:params p: 最后卷积的padding
:params g: 最后卷积的分组情况,=1普通卷积,>1深度可分离卷积
:params act: bool激活函数类型,默认True[SiLU()/Swish],False[不用激活函数]
'''
super().__init__()
self.conv = Conv(c1 * 4, c2, k, s, p, g, act=act)
# self.contract = Contract(gain=2)
def forward(self, x): # x(b,c,w,h) -> y(b,4c,w/2,h/2)
''' 有点像做了个下采样 '''
return self.conv(torch.cat((x[..., ::2, ::2], x[..., 1::2, ::2], x[..., ::2, 1::2], x[..., 1::2, 1::2]), 1))
# return self.conv(self.contract(x))
1.4 Bottleneck
模型结构
代码:
class Bottleneck(nn.Module):
# Standard bottleneck Conv + Conv + shortcut
def __init__(self, c1, c2, shortcut=True, g=1, e=0.5): # ch_in, ch_out, shortcut, groups, expansion
''' 在BottleneckCSP和yolo.py的parse_model函数中被调用
:params c1: 第一个卷积的输入channel
:params c2: 第二个卷积的输入channel
:params shortcut: bool值,是否有shortcut连接,默认True
:params g: 卷积分组的个数,=1普通卷积,>1深度可分离卷积
:params e: expansion ratio,e*c2就是第一个卷积的输出channel=第二个卷积的输入channel
'''
super().__init__()
c_ = int(c2 * e) # hidden channels
self.cv1 = Conv(c1, c_, 1, 1) # 1x1
self.cv2 = Conv(c_, c2, 3, 1, g=g) # 3x3
self.add = shortcut and c1 == c2 # shortcut=Ture & c1==c2 才能做shortcut
def forward(self, x):
return x + self.cv2(self.cv1(x)) if self.add else self.cv2(self.cv1(x))
1.5 BottleneckCSP
这个模块是由Bottleneck和CSP结构组成。CSP结构来源于2019年发表的一篇论文:CSPNet: A New Backbone that can Enhance Learning Capability of CNN
这个模块和上面yolov5s中的C3模块等效,如果要用的话直接在yolov5s.yaml文件中将C3改成BottleneckCSP即可,但一般来说不用改,因为C3更好。
BottleneckCSP模块具体的结构如下所示:
class BottleneckCSP(nn.Module):
# CSP Bottleneck https://github.com/WongKinYiu/CrossStagePartialNetworks
def __init__(self, c1, c2, n=1, shortcut=True, g=1, e=0.5): # ch_in, ch_out, number, shortcut, groups, expansion
''' 在C3模块和yolo.py的parse_model函数中被调用
:params c1: 整个BottleneckCSP的输入channel
:params c2: 整个BottleneckCSP的输出channel
:params n: 有n个Bottleneck
:params shortcut: bool值,Bottleneck中是否有shortcut,默认True
:params g: Bottleneck中的3x3卷积类型,=1普通卷积,>1深度可分离卷积
:params e: expansion ratio,e*c2=中间其它所有层的卷积核个数=中间所有层的的输入输出channel
'''
super().__init__()
c_ = int(c2 * e) # hidden channels
self.cv1 = Conv(c1, c_, 1, 1)
self.cv2 = nn.Conv2d(c1, c_, 1, 1, bias=False)
self.cv3 = nn.Conv2d(c_, c_, 1, 1, bias=False)
self.cv4 = Conv(2 * c_, c2, 1, 1)
self.bn = nn.BatchNorm2d(2 * c_) # applied to cat(cv2, cv3) 2*c_
self.act = nn.SiLU()
# 叠加n次Bottleneck
self.m = nn.Sequential(*(Bottleneck(c_, c_, shortcut, g, e=1.0) for _ in range(n)))
def forward(self, x):
y1 = self.cv3(self.m(self.cv1(x)))
y2 = self.cv2(x)
return self.cv4(self.act(self.bn(torch.cat((y1, y2), 1))))
1.6 C3
这个模块是一种简化的BottleneckCSP,因为除了Bottleneck部分只有3个卷积,可以减少参数,所以取名C3。而原作者之所以用C3来代替BottleneckCSP也是有原因的,作者原话:
C3() is an improved version of CSPBottleneck(). It is simpler, faster
and lighter with similar performance and better fuse characteristics.
C3模块具体结构如下:
class C3(nn.Module):
# CSP Bottleneck with 3 convolutions
def __init__(self, c1, c2, n=1, shortcut=True, g=1, e=0.5): # ch_in, ch_out, number, shortcut, groups, expansion
''' 在C3RT模块和yolo.py的parse_model函数中被调用
:params c1: 整个C3的输入channel
:params c2: 整个C3的输出channel
:params n: 有n个子模块[Bottleneck/CrossConv]
:params shortcut: bool值,子模块[Bottlenec/CrossConv]中是否有shortcut,默认True
:params g: 子模块[Bottlenec/CrossConv]中的3x3卷积类型,=1普通卷积,>1深度可分离卷积
:params e: expansion ratio,e*c2=中间其它所有层的卷积核个数=中间所有层的的输入输出channel
'''
super().__init__()
c_ = int(c2 * e) # hidden channels
self.cv1 = Conv(c1, c_, 1, 1)
self.cv2 = Conv(c1, c_, 1, 1)
self.cv3 = Conv(2 * c_, c2, 1) # optional act=FReLU(c2)
self.m = nn.Sequential(*(Bottleneck(c_, c_, shortcut, g, e=1.0) for _ in range(n)))
# 实验性 CrossConv
#self.m = nn.Sequential(*[CrossConv(c_, c_, 3, 1, g, 1.0, shortcut) for _ in range(n)])
def forward(self, x):
return self.cv3(torch.cat((self.m(self.cv1(x)), self.cv2(x)), 1))
1.7 SPP
高层网络层的感受野的语义信息表征能力强,低层网络层的感受野空间细节信息表征能力强。空间金字塔池化(Spatial Pyramid Pooling,SPP)是目标检测算法中对高层特征进行多尺度池化以增加感受野的重要措施之一。经典的空间金字塔池化模块首先将输入的卷积特征分成不同的尺寸,然后每个尺寸提取固定维度的特征,最后将这些特征拼接成一个固定的维度,如下图1所示。输入的卷积特征图的大小为(w, h),第一层空间金字塔采用4x4的刻度对特征图进行划分,其将输入的特征图分成了16个块,每块的大小为(w/4, h/4);第二层空间金字塔采用2x2的刻度对特征图进行划分,将特征图分为4个块,每块大小为(w/2, h/2);第三层空间金字塔将整张特征图作为一块,进行特征提取操作,最终的特征向量为16+4+1=21维。
SPP模块具体结构如下所示:
代码:
class SPP(nn.Module):
# Spatial Pyramid Pooling (SPP) layer https://arxiv.org/abs/1406.4729
def __init__(self, c1, c2, k=(5, 9, 13)):
''' 在yolo.py的parse_model函数中被调用
:params c1: SPP模块的输入channel
:params c2: SPP模块的输出channel
:params k: 保存着三个maxpool的卷积核大小,默认是(5, 9, 13)
'''
super().__init__()
c_ = c1 // 2 # hidden channels
self.cv1 = Conv(c1, c_, 1, 1) # 第一层卷积
self.cv2 = Conv(c_ * (len(k) + 1), c2, 1, 1) # 最后一层卷积,+1是因为有len(k)+1个输入
self.m = nn.ModuleList([nn.MaxPool2d(kernel_size=x, stride=1, padding=x // 2) for x in k])
def forward(self, x):
x = self.cv1(x)
with warnings.catch_warnings():
warnings.simplefilter('ignore') # suppress torch 1.9.0 max_pool2d() warning
return self.cv2(torch.cat([x] + [m(x) for m in self.m], 1))
1.8 Concat
这个函数是将自身(a list of tensors)按照某个维度进行concat,通常用来合并前后两个feature map,也就是上面yolov5s结构图中的Concat。
class Concat(nn.Module):
# Concatenate a list of tensors along dimension
def __init__(self, dimension=1):
''' 在yolo.py的parse_model函数中被调用
:params dimension: 沿着哪个维度进行concat
'''
super().__init__()
self.d = dimension
def forward(self, x):
# x: a list of tensors
return torch.cat(x, self.d)
1.9 Contract、Expand
这两个函数用于改变feature map维度。
Contract函数改变输入特征的shape,将feature map的 w 和 h 维度(缩小)的数据收缩到channel维度上(放大)。如:x(1,64,80,80) to x(1,256,40,40)。
Expand函数也是改变输入特征的shape,不过与Contract的相反,是将channel维度(变小)的数据扩展到 W 和 H 维度(变大)。如:x(1,64,80,80) to x(1,16,160,160)。
class Contract(nn.Module):
# Contract width-height into channels, i.e. x(1,64,80,80) to x(1,256,40,40)
def __init__(self, gain=2):
''' 在yolo.py的parse_model函数中被调用,用的不多
改变输入特征的shape,将w和h维度(缩小)的数据收缩到channel维度上(放大)
'''
super().__init__()
self.gain = gain
def forward(self, x):
b, c, h, w = x.size() # assert (h / s == 0) and (W / s == 0), 'Indivisible gain'
s = self.gain # 2
x = x.view(b, c, h // s, s, w // s, s) # x(1,64,40,2,40,2)
# permute: 改变tensor的维度顺序
x = x.permute(0, 3, 5, 1, 2, 4).contiguous() # x(1,2,2,64,40,40)
# .view: 改变tensor的维度
return x.view(b, c * s * s, h // s, w // s) # x(1,256,40,40)
class Expand(nn.Module):
# Expand channels into width-height, i.e. x(1,64,80,80) to x(1,16,160,160)
def __init__(self, gain=2):
''' 在yolo.py的parse_model函数中被调用,用的不多
改变输入特征的shape,将channel维度(变小)的数据扩展到W和H维度上(变大)
'''
super().__init__()
self.gain = gain
def forward(self, x):
b, c, h, w = x.size() # assert C / s ** 2 == 0, 'Indivisible gain'
s = self.gain # 2
x = x.view(b, s, s, c // s ** 2, h, w) # x(1,2,2,16,80,80)
x = x.permute(0, 3, 4, 1, 5, 2).contiguous() # x(1,16,80,2,80,2)
return x.view(b, c // s ** 2, h * s, w * s) # x(1,16,160,160)
2.重要类
下面的几个函数都是属于模型的扩展模块。yolov5的作者将搭建模型的函数功能写的很齐全。不光包含搭建模型部分,还考虑到了各方面其它的功能,比如给模型搭载NMS功能,给模型封装成包含前处理、推理、后处理的模块(预处理 + 推理 + NMS),二次分类等等功能。
2.1 非极大值抑制(NMS)
非极大值抑制(Non-maximum Suppression(NMS))的作用简单来说就是模型检测出了很多框,我们应该留哪些。
YOLOv5中使用NMS算法来移除一些网络模型预测时生成的多余的检测框,该算法的核心思想是指搜索局部得分最大值预测并移除与局部最大值预测框重叠度超过一定阈值的检测框,需要注意的是,NMS算法对所有待检测目标类别分别执行,即为不同类别的检测框即使有重叠也不会被移除。
这个模块是给模型搭载NMS功能,直接调用的./utils/general.py文件的non_max_suppression()函数。
class NMS(nn.Module):
''' 在yolo.py中Model类的NMS函数中使用
NMS非极大值抑制 Non-Maximum Suppression (NMS) module
给模型model封装NMS,增加模型的扩展功能,但我们一般不用,一般直接在前向推理结束后再调用non_max_suppression函数
'''
conf = 0.25 # 置信度阈值
iou = 0.45 # IOU阈值
classes = None # 是否NMS后只保留指定的类别
max_det = 1000 # 每张图的最大目标个数
def __init__(self):
super(NMS, self).__init__()
def forward(self, x):
'''
:params x[0]: [batch, num_anchors(3个yolo预测层),(x+y+w+h+1+num_classes)]
直接调用的是general.py中的non_max_suppression函数给Model扩展NMS功能
'''
return non_max_suppression(x[0], self.conf, iou_thres=self.iou, classes=self.classes, max_det=self.max_det)
2.2 AutoShape
这个模块是一个模型扩展模块,给模型封装成包含前处理、推理、后处理的模块(预处理 + 推理 + NMS),用的不多
class AutoShape(nn.Module):
# YOLOv5 input-robust model wrapper for passing cv2/np/PIL/torch inputs. Includes preprocessing, inference and NMS
# YOLOv5模型包装器,用于传递 cv2/np/PIL/torch输入
# 包括预处理(preprocessing)、推理(inference)和NMS
conf = 0.25 # NMS confidence threshold
iou = 0.45 # NMS IoU threshold
agnostic = False # NMS class-agnostic
multi_label = False # NMS multiple labels per box
classes = None # (optional list) filter by class, i.e. = [0, 15, 16] for COCO persons, cats and dogs
max_det = 1000 # maximum number of detections per image
amp = False # Automatic Mixed Precision (AMP) inference
def __init__(self, model, verbose=True):
super().__init__()
if verbose:
LOGGER.info('Adding AutoShape... ')
copy_attr(self, model, include=('yaml', 'nc', 'hyp', 'names', 'stride', 'abc'), exclude=()) # copy attributes
self.dmb = isinstance(model, DetectMultiBackend) # DetectMultiBackend() instance
self.pt = not self.dmb or model.pt # PyTorch model
# 开启验证模式
self.model = model.eval()
if self.pt:
m = self.model.model.model[-1] if self.dmb else self.model.model[-1] # Detect()
m.inplace = False # Detect.inplace=False for safe multithread inference
m.export = True # do not output loss values
def _apply(self, fn):
# Apply to(), cpu(), cuda(), half() to model tensors that are not parameters or registered buffers
self = super()._apply(fn)
if self.pt:
m = self.model.model.model[-1] if self.dmb else self.model.model[-1] # Detect()
m.stride = fn(m.stride)
m.grid = list(map(fn, m.grid))
if isinstance(m.anchor_grid, list):
m.anchor_grid = list(map(fn, m.anchor_grid))
return self
@smart_inference_mode()
def forward(self, ims, size=640, augment=False, profile=False):
# Inference from various sources. For size(height=640, width=1280), RGB images example inputs are:
# file: ims = 'data/images/zidane.jpg' # str or PosixPath
# URI: = 'https://ultralytics.com/images/zidane.jpg'
# OpenCV: = cv2.imread('image.jpg')[:,:,::-1] # HWC BGR to RGB x(640,1280,3)
# PIL: = Image.open('image.jpg') or ImageGrab.grab() # HWC x(640,1280,3)
# numpy: = np.zeros((640,1280,3)) # HWC
# torch: = torch.zeros(16,3,320,640) # BCHW (scaled to size=640, 0-1 values)
# multiple: = [Image.open('image1.jpg'), Image.open('image2.jpg'), ...] # list of images
dt = (Profile(), Profile(), Profile())
with dt[0]:
if isinstance(size, int): # expand
size = (size, size)
p = next(self.model.parameters()) if self.pt else torch.empty(1, device=self.model.device) # param
autocast = self.amp and (p.device.type != 'cpu') # Automatic Mixed Precision (AMP) inference
# 图片如果是tensor格式,说明是预处理过的,直接正常进行前向推理即可,NMS在推理结束进行(函数外写)
if isinstance(ims, torch.Tensor): # torch
with amp.autocast(autocast):
return self.model(ims.to(p.device).type_as(p), augment=augment) # inference
# Pre-process
n, ims = (len(ims), list(ims)) if isinstance(ims, (list, tuple)) else (1, [ims]) # number, list of images
shape0, shape1, files = [], [], [] # image and inference shapes, filenames
for i, im in enumerate(ims):
f = f'image{i}' # filename
if isinstance(im, (str, Path)): # filename or uri
im, f = Image.open(requests.get(im, stream=True).raw if str(im).startswith('http') else im), im
im = np.asarray(exif_transpose(im))
elif isinstance(im, Image.Image): # PIL Image
im, f = np.asarray(exif_transpose(im)), getattr(im, 'filename', f) or f
files.append(Path(f).with_suffix('.jpg').name)
if im.shape[0] < 5: # image in CHW
im = im.transpose((1, 2, 0)) # reverse dataloader .transpose(2, 0, 1)
im = im[..., :3] if im.ndim == 3 else cv2.cvtColor(im, cv2.COLOR_GRAY2BGR) # enforce 3ch input
s = im.shape[:2] # HWC
shape0.append(s) # image shape
g = max(size) / max(s) # gain
shape1.append([int(y * g) for y in s])
ims[i] = im if im.data.contiguous else np.ascontiguousarray(im) # update
shape1 = [make_divisible(x, self.stride) for x in np.array(shape1).max(0)] # inf shape
x = [letterbox(im, shape1, auto=False)[0] for im in ims] # pad
x = np.ascontiguousarray(np.array(x).transpose((0, 3, 1, 2))) # stack and BHWC to BCHW
x = torch.from_numpy(x).to(p.device).type_as(p) / 255 # uint8 to fp16/32
with amp.autocast(autocast):
# Inference
with dt[1]:
y = self.model(x, augment=augment) # forward
# Post-process
with dt[2]:
y = non_max_suppression(y if self.dmb else y[0],
self.conf,
self.iou,
self.classes,
self.agnostic,
self.multi_label,
max_det=self.max_det) # NMS
for i in range(n):
scale_boxes(shape1, y[i][:, :4], shape0[i])
return Detections(ims, y, files, dt, self.names, x.shape)
2.3 Detections
这是专门针对目标检测的封装类。
class Detections:
# YOLOv5 detections class for inference results
# YOLOv5推理结果检测类
def __init__(self, ims, pred, files, times=(0, 0, 0), names=None, shape=None):
super().__init__()
d = pred[0].device # device
gn = [torch.tensor([*(im.shape[i] for i in [1, 0, 1, 0]), 1, 1], device=d) for im in ims] # normalizations
self.ims = ims # list of images as numpy arrays
self.pred = pred # list of tensors pred[0] = (xyxy, conf, cls)
self.names = names # class names
self.files = files # image filenames
self.times = times # profiling times
self.xyxy = pred # xyxy pixels
self.xywh = [xyxy2xywh(x) for x in pred] # xywh pixels
self.xyxyn = [x / g for x, g in zip(self.xyxy, gn)] # xyxy normalized
self.xywhn = [x / g for x, g in zip(self.xywh, gn)] # xywh normalized
self.n = len(self.pred) # number of images (batch size)
self.t = tuple(x.t / self.n * 1E3 for x in times) # timestamps (ms)
self.s = tuple(shape) # inference BCHW shape
def _run(self, pprint=False, show=False, save=False, crop=False, render=False, labels=True, save_dir=Path('')):
s, crops = '', []
for i, (im, pred) in enumerate(zip(self.ims, self.pred)):
s += f'\nimage {i + 1}/{len(self.pred)}: {im.shape[0]}x{im.shape[1]} ' # string
if pred.shape[0]:
for c in pred[:, -1].unique():
n = (pred[:, -1] == c).sum() # detections per class
s += f"{n} {self.names[int(c)]}{'s' * (n > 1)}, " # add to string
s = s.rstrip(', ')
if show or save or render or crop:
annotator = Annotator(im, example=str(self.names))
for *box, conf, cls in reversed(pred): # xyxy, confidence, class
label = f'{self.names[int(cls)]} {conf:.2f}'
if crop:
file = save_dir / 'crops' / self.names[int(cls)] / self.files[i] if save else None
crops.append({
'box': box,
'conf': conf,
'cls': cls,
'label': label,
'im': save_one_box(box, im, file=file, save=save)})
else: # all others
annotator.box_label(box, label if labels else '', color=colors(cls))
im = annotator.im
else:
s += '(no detections)'
im = Image.fromarray(im.astype(np.uint8)) if isinstance(im, np.ndarray) else im # from np
if show:
display(im) if is_notebook() else im.show(self.files[i])
if save:
f = self.files[i]
im.save(save_dir / f) # save
if i == self.n - 1:
LOGGER.info(f"Saved {self.n} image{'s' * (self.n > 1)} to {colorstr('bold', save_dir)}")
if render:
self.ims[i] = np.asarray(im)
if pprint:
s = s.lstrip('\n')
return f'{s}\nSpeed: %.1fms pre-process, %.1fms inference, %.1fms NMS per image at shape {self.s}' % self.t
if crop:
if save:
LOGGER.info(f'Saved results to {save_dir}\n')
return crops
@TryExcept('Showing images is not supported in this environment')
def show(self, labels=True):
self._run(show=True, labels=labels) # show results
def save(self, labels=True, save_dir='runs/detect/exp', exist_ok=False):
save_dir = increment_path(save_dir, exist_ok, mkdir=True) # increment save_dir
self._run(save=True, labels=labels, save_dir=save_dir) # save results
def crop(self, save=True, save_dir='runs/detect/exp', exist_ok=False):
save_dir = increment_path(save_dir, exist_ok, mkdir=True) if save else None
return self._run(crop=True, save=save, save_dir=save_dir) # crop results
def render(self, labels=True):
self._run(render=True, labels=labels) # render results
return self.ims
def pandas(self):
# return detections as pandas DataFrames, i.e. print(results.pandas().xyxy[0])
new = copy(self) # return copy
ca = 'xmin', 'ymin', 'xmax', 'ymax', 'confidence', 'class', 'name' # xyxy columns
cb = 'xcenter', 'ycenter', 'width', 'height', 'confidence', 'class', 'name' # xywh columns
for k, c in zip(['xyxy', 'xyxyn', 'xywh', 'xywhn'], [ca, ca, cb, cb]):
a = [[x[:5] + [int(x[5]), self.names[int(x[5])]] for x in x.tolist()] for x in getattr(self, k)] # update
setattr(new, k, [pd.DataFrame(x, columns=c) for x in a])
return new
def tolist(self):
# return a list of Detections objects, i.e. 'for result in results.tolist():'
r = range(self.n) # iterable
x = [Detections([self.ims[i]], [self.pred[i]], [self.files[i]], self.times, self.names, self.s) for i in r]
# for d in x:
# for k in ['ims', 'pred', 'xyxy', 'xyxyn', 'xywh', 'xywhn']:
# setattr(d, k, getattr(d, k)[0]) # pop out of list
return x
def print(self):
LOGGER.info(self.__str__())
def __len__(self): # override len(results)
return self.n
def __str__(self): # override print(results)
return self._run(pprint=True) # print results
def __repr__(self):
return f'YOLOv5 {self.__class__} instance\n' + self.__str__()
2.4 Classify
这是一个二级分类模块。什么是二级分类模块?比如做车牌识别,先识别出车牌,如果相对车牌上的字进行识别,就需要二级分类进一步检测。
class Classify(nn.Module):
# YOLOv5 classification head, i.e. x(b,c1,20,20) to x(b,c2)
def __init__(self, c1, c2, k=1, s=1, p=None, g=1): # ch_in, ch_out, kernel, stride, padding, groups
''' 这是一个二级分类模块
如果对模型输出的分类在进行分类,就可以用这个模块。
不过这里这个类写的比较简单,若进行复杂的二级分类,可以根据自己的实际任务改下,这里代码不唯一。
'''
super().__init__()
c_ = 1280 # efficientnet_b0 size
self.conv = Conv(c1, c_, k, s, autopad(k, p), g)
self.pool = nn.AdaptiveAvgPool2d(1) # to x(b,c_,1,1)
self.drop = nn.Dropout(p=0.0, inplace=True)
self.linear = nn.Linear(c_, c2) # to x(b,c2)
def forward(self, x):
if isinstance(x, list):
x = torch.cat(x, 1)
return self.linear(self.drop(self.pool(self.conv(x)).flatten(1)))
三、模型调整
去除c3中cat后的卷积层
运行
python C:\Users\hepei\dl\yolov5-master\train.py --img 720 --batch 2 --epoch 1 --data C:\Users\hepei\dl\yolov5-master\data\test.yaml --cfg C:\Users\hepei\dl\yolov5-master\models\yolov5s.yaml --weights weights/yolov5s.pt
hyperparameters: lr0=0.01, lrf=0.01, momentum=0.937, weight_decay=0.0005, warmup_epochs=3.0, warmup_momentum=0.8, warmup_bias_lr=0.1, box=0.05, cls=0.5, cls_pw=1.0, obj=1.0, obj_pw=1.0, iou_t=0.2, anchor_t=4.0, fl_gamma=0.0, hsv_h=0.015, hsv_s=0.7, hsv_v=0.4, degrees=0.0, translate=0.1, scale=0.5, shear=0.0, perspective=0.0, flipud=0.0, fliplr=0.5, mosaic=1.0, mixup=0.0, copy_paste=0.0
ClearML: run 'pip install clearml' to automatically track, visualize and remotely train YOLOv5 in ClearML
Comet: run 'pip install comet_ml' to automatically track and visualize YOLOv5 runs in Comet
TensorBoard: Start with 'tensorboard --logdir dl\yolov5-master\runs\train', view at http://localhost:6006/
2023-01-05 21:16:55.883583: I tensorflow/stream_executor/platform/default/dso_loader.cc:49] Successfully opened dynamic library cudart64_110.dll
Overriding model.yaml nc=80 with nc=4
from n params module arguments
0 -1 1 3520 models.common.Conv [3, 32, 6, 2, 2]
1 -1 1 18560 models.common.Conv [32, 64, 3, 2]
2 -1 1 18816 models.common.C3 [64, 64, 1]
3 -1 1 73984 models.common.Conv [64, 128, 3, 2]
4 -1 2 115712 models.common.C3 [128, 128, 2]
5 -1 1 295424 models.common.Conv [128, 256, 3, 2]
6 -1 3 625152 models.common.C3 [256, 256, 3]
7 -1 1 1180672 models.common.Conv [256, 512, 3, 2]
8 -1 1 1182720 models.common.C3 [512, 512, 1]
9 -1 1 656896 models.common.SPPF [512, 512, 5]
10 -1 1 131584 models.common.Conv [512, 256, 1, 1]
11 -1 1 0 torch.nn.modules.upsampling.Upsample [None, 2, 'nearest']
12 [-1, 6] 1 0 models.common.Concat [1]
13 -1 1 361984 models.common.C3 [512, 256, 1, False]
14 -1 1 33024 models.common.Conv [256, 128, 1, 1]
15 -1 1 0 torch.nn.modules.upsampling.Upsample [None, 2, 'nearest']
16 [-1, 4] 1 0 models.common.Concat [1]
17 -1 1 90880 models.common.C3 [256, 128, 1, False]
18 -1 1 147712 models.common.Conv [128, 128, 3, 2]
19 [-1, 14] 1 0 models.common.Concat [1]
20 -1 1 296448 models.common.C3 [256, 256, 1, False]
21 -1 1 590336 models.common.Conv [256, 256, 3, 2]
22 [-1, 10] 1 0 models.common.Concat [1]
23 -1 1 1182720 models.common.C3 [512, 512, 1, False]
24 [17, 20, 23] 1 24273 models.yolo.Detect [4, [[10, 13, 16, 30, 33, 23], [30, 61, 62, 45, 59, 119], [116, 90, 156, 198, 373, 326]], [128, 256, 512]]
YOLOv5s summary: 214 layers, 7030417 parameters, 7030417 gradients, 14.3 GFLOPs