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import torch | |
import torch.nn as nn | |
from torchvision.ops import nms | |
import numpy as np | |
class DecodeBox(): | |
def __init__(self, anchors, num_classes, input_shape, anchors_mask = [[6,7,8], [3,4,5], [0,1,2]]): | |
super(DecodeBox, self).__init__() | |
self.anchors = anchors | |
self.num_classes = num_classes | |
self.bbox_attrs = 5 + num_classes | |
self.input_shape = input_shape | |
#-----------------------------------------------------------# | |
# 13x13的特征层对应的anchor是[142, 110],[192, 243],[459, 401] | |
# 26x26的特征层对应的anchor是[36, 75],[76, 55],[72, 146] | |
# 52x52的特征层对应的anchor是[12, 16],[19, 36],[40, 28] | |
#-----------------------------------------------------------# | |
self.anchors_mask = anchors_mask | |
def decode_box(self, inputs): | |
outputs = [] | |
for i, input in enumerate(inputs): | |
#-----------------------------------------------# | |
# 输入的input一共有三个,他们的shape分别是 | |
# batch_size, 255, 13, 13 | |
# batch_size, 255, 26, 26 | |
# batch_size, 255, 52, 52 | |
#-----------------------------------------------# | |
batch_size = input.size(0) | |
input_height = input.size(2) | |
input_width = input.size(3) | |
#-----------------------------------------------# | |
# 输入为416x416时 | |
# stride_h = stride_w = 32、16、8 | |
#-----------------------------------------------# | |
stride_h = self.input_shape[0] / input_height | |
stride_w = self.input_shape[1] / input_width | |
#-------------------------------------------------# | |
# 此时获得的scaled_anchors大小是相对于特征层的 | |
#-------------------------------------------------# | |
scaled_anchors = [(anchor_width / stride_w, anchor_height / stride_h) for anchor_width, anchor_height in self.anchors[self.anchors_mask[i]]] | |
#-----------------------------------------------# | |
# 输入的input一共有三个,他们的shape分别是 | |
# batch_size, 3, 13, 13, 85 | |
# batch_size, 3, 26, 26, 85 | |
# batch_size, 3, 52, 52, 85 | |
#-----------------------------------------------# | |
prediction = input.view(batch_size, len(self.anchors_mask[i]), | |
self.bbox_attrs, input_height, input_width).permute(0, 1, 3, 4, 2).contiguous() | |
#-----------------------------------------------# | |
# 先验框的中心位置的调整参数 | |
#-----------------------------------------------# | |
x = torch.sigmoid(prediction[..., 0]) | |
y = torch.sigmoid(prediction[..., 1]) | |
#-----------------------------------------------# | |
# 先验框的宽高调整参数 | |
#-----------------------------------------------# | |
w = prediction[..., 2] | |
h = prediction[..., 3] | |
#-----------------------------------------------# | |
# 获得置信度,是否有物体 | |
#-----------------------------------------------# | |
conf = torch.sigmoid(prediction[..., 4]) | |
#-----------------------------------------------# | |
# 种类置信度 | |
#-----------------------------------------------# | |
pred_cls = torch.sigmoid(prediction[..., 5:]) | |
FloatTensor = torch.cuda.FloatTensor if x.is_cuda else torch.FloatTensor | |
LongTensor = torch.cuda.LongTensor if x.is_cuda else torch.LongTensor | |
#----------------------------------------------------------# | |
# 生成网格,先验框中心,网格左上角 | |
# batch_size,3,13,13 | |
#----------------------------------------------------------# | |
grid_x = torch.linspace(0, input_width - 1, input_width).repeat(input_height, 1).repeat( | |
batch_size * len(self.anchors_mask[i]), 1, 1).view(x.shape).type(FloatTensor) | |
grid_y = torch.linspace(0, input_height - 1, input_height).repeat(input_width, 1).t().repeat( | |
batch_size * len(self.anchors_mask[i]), 1, 1).view(y.shape).type(FloatTensor) | |
#----------------------------------------------------------# | |
# 按照网格格式生成先验框的宽高 | |
# batch_size,3,13,13 | |
#----------------------------------------------------------# | |
anchor_w = FloatTensor(scaled_anchors).index_select(1, LongTensor([0])) | |
anchor_h = FloatTensor(scaled_anchors).index_select(1, LongTensor([1])) | |
anchor_w = anchor_w.repeat(batch_size, 1).repeat(1, 1, input_height * input_width).view(w.shape) | |
anchor_h = anchor_h.repeat(batch_size, 1).repeat(1, 1, input_height * input_width).view(h.shape) | |
#----------------------------------------------------------# | |
# 利用预测结果对先验框进行调整 | |
# 首先调整先验框的中心,从先验框中心向右下角偏移 | |
# 再调整先验框的宽高。 | |
#----------------------------------------------------------# | |
pred_boxes = FloatTensor(prediction[..., :4].shape) | |
pred_boxes[..., 0] = x.data + grid_x | |
pred_boxes[..., 1] = y.data + grid_y | |
pred_boxes[..., 2] = torch.exp(w.data) * anchor_w | |
pred_boxes[..., 3] = torch.exp(h.data) * anchor_h | |
#----------------------------------------------------------# | |
# 将输出结果归一化成小数的形式 | |
#----------------------------------------------------------# | |
_scale = torch.Tensor([input_width, input_height, input_width, input_height]).type(FloatTensor) | |
output = torch.cat((pred_boxes.view(batch_size, -1, 4) / _scale, | |
conf.view(batch_size, -1, 1), pred_cls.view(batch_size, -1, self.num_classes)), -1) | |
outputs.append(output.data) | |
return outputs | |
def yolo_correct_boxes(self, box_xy, box_wh, input_shape, image_shape, letterbox_image): | |
#-----------------------------------------------------------------# | |
# 把y轴放前面是因为方便预测框和图像的宽高进行相乘 | |
#-----------------------------------------------------------------# | |
box_yx = box_xy[..., ::-1] | |
box_hw = box_wh[..., ::-1] | |
input_shape = np.array(input_shape) | |
image_shape = np.array(image_shape) | |
if letterbox_image: | |
#-----------------------------------------------------------------# | |
# 这里求出来的offset是图像有效区域相对于图像左上角的偏移情况 | |
# new_shape指的是宽高缩放情况 | |
#-----------------------------------------------------------------# | |
new_shape = np.round(image_shape * np.min(input_shape/image_shape)) | |
offset = (input_shape - new_shape)/2./input_shape | |
scale = input_shape/new_shape | |
box_yx = (box_yx - offset) * scale | |
box_hw *= scale | |
box_mins = box_yx - (box_hw / 2.) | |
box_maxes = box_yx + (box_hw / 2.) | |
boxes = np.concatenate([box_mins[..., 0:1], box_mins[..., 1:2], box_maxes[..., 0:1], box_maxes[..., 1:2]], axis=-1) | |
boxes *= np.concatenate([image_shape, image_shape], axis=-1) | |
return boxes | |
def non_max_suppression(self, prediction, num_classes, input_shape, image_shape, letterbox_image, conf_thres=0.5, nms_thres=0.4): | |
#----------------------------------------------------------# | |
# 将预测结果的格式转换成左上角右下角的格式。 | |
# prediction [batch_size, num_anchors, 85] | |
#----------------------------------------------------------# | |
box_corner = prediction.new(prediction.shape) | |
box_corner[:, :, 0] = prediction[:, :, 0] - prediction[:, :, 2] / 2 | |
box_corner[:, :, 1] = prediction[:, :, 1] - prediction[:, :, 3] / 2 | |
box_corner[:, :, 2] = prediction[:, :, 0] + prediction[:, :, 2] / 2 | |
box_corner[:, :, 3] = prediction[:, :, 1] + prediction[:, :, 3] / 2 | |
prediction[:, :, :4] = box_corner[:, :, :4] | |
output = [None for _ in range(len(prediction))] | |
for i, image_pred in enumerate(prediction): | |
#----------------------------------------------------------# | |
# 对种类预测部分取max。 | |
# class_conf [num_anchors, 1] 种类置信度 | |
# class_pred [num_anchors, 1] 种类 | |
#----------------------------------------------------------# | |
class_conf, class_pred = torch.max(image_pred[:, 5:5 + num_classes], 1, keepdim=True) | |
#----------------------------------------------------------# | |
# 利用置信度进行第一轮筛选 | |
#----------------------------------------------------------# | |
conf_mask = (image_pred[:, 4] * class_conf[:, 0] >= conf_thres).squeeze() | |
#----------------------------------------------------------# | |
# 根据置信度进行预测结果的筛选 | |
#----------------------------------------------------------# | |
image_pred = image_pred[conf_mask] | |
class_conf = class_conf[conf_mask] | |
class_pred = class_pred[conf_mask] | |
if not image_pred.size(0): | |
continue | |
#-------------------------------------------------------------------------# | |
# detections [num_anchors, 7] | |
# 7的内容为:x1, y1, x2, y2, obj_conf, class_conf, class_pred | |
#-------------------------------------------------------------------------# | |
detections = torch.cat((image_pred[:, :5], class_conf.float(), class_pred.float()), 1) | |
#------------------------------------------# | |
# 获得预测结果中包含的所有种类 | |
#------------------------------------------# | |
unique_labels = detections[:, -1].cpu().unique() | |
if prediction.is_cuda: | |
unique_labels = unique_labels.cuda() | |
detections = detections.cuda() | |
for c in unique_labels: | |
#------------------------------------------# | |
# 获得某一类得分筛选后全部的预测结果 | |
#------------------------------------------# | |
detections_class = detections[detections[:, -1] == c] | |
#------------------------------------------# | |
# 使用官方自带的非极大抑制会速度更快一些! | |
#------------------------------------------# | |
keep = nms( | |
detections_class[:, :4], | |
detections_class[:, 4] * detections_class[:, 5], | |
nms_thres | |
) | |
max_detections = detections_class[keep] | |
# # 按照存在物体的置信度排序 | |
# _, conf_sort_index = torch.sort(detections_class[:, 4]*detections_class[:, 5], descending=True) | |
# detections_class = detections_class[conf_sort_index] | |
# # 进行非极大抑制 | |
# max_detections = [] | |
# while detections_class.size(0): | |
# # 取出这一类置信度最高的,一步一步往下判断,判断重合程度是否大于nms_thres,如果是则去除掉 | |
# max_detections.append(detections_class[0].unsqueeze(0)) | |
# if len(detections_class) == 1: | |
# break | |
# ious = bbox_iou(max_detections[-1], detections_class[1:]) | |
# detections_class = detections_class[1:][ious < nms_thres] | |
# # 堆叠 | |
# max_detections = torch.cat(max_detections).data | |
# Add max detections to outputs | |
output[i] = max_detections if output[i] is None else torch.cat((output[i], max_detections)) | |
if output[i] is not None: | |
output[i] = output[i].cpu().numpy() | |
box_xy, box_wh = (output[i][:, 0:2] + output[i][:, 2:4])/2, output[i][:, 2:4] - output[i][:, 0:2] | |
output[i][:, :4] = self.yolo_correct_boxes(box_xy, box_wh, input_shape, image_shape, letterbox_image) | |
return output | |