python实现图像随机裁剪的示例代码
作者:我坚信阳光灿烂
这篇文章主要介绍了python实现图像随机裁剪的示例代码,帮助大家更好的理解和使用python处理图片,感兴趣的朋友可以了解下
实验条件:
- 从1张图像随机裁剪100张图像
- 裁剪出图像的大小为 60 x 60
- IoU 大于等于 th=0.6 的裁剪框用红色标出,其它裁剪框用蓝色标出
- IoU 比对原始区域用绿框标出
实验代码:
import cv2 as cv import numpy as np np.random.seed(0) # get IoU overlap ratio def iou(a, b): # get area of a area_a = (a[2] - a[0]) * (a[3] - a[1]) # get area of b area_b = (b[2] - b[0]) * (b[3] - b[1]) # get left top x of IoU iou_x1 = np.maximum(a[0], b[0]) # get left top y of IoU iou_y1 = np.maximum(a[1], b[1]) # get right bottom of IoU iou_x2 = np.minimum(a[2], b[2]) # get right bottom of IoU iou_y2 = np.minimum(a[3], b[3]) # get width of IoU iou_w = iou_x2 - iou_x1 # get height of IoU iou_h = iou_y2 - iou_y1 # get area of IoU area_iou = iou_w * iou_h # get overlap ratio between IoU and all area iou = area_iou / (area_a + area_b - area_iou) return iou # crop and create database def crop_bbox(img, gt, Crop_N=200, L=60, th=0.5): # get shape H, W, C = img.shape # each crop for i in range(Crop_N): # get left top x of crop bounding box x1 = np.random.randint(W - L) # get left top y of crop bounding box y1 = np.random.randint(H - L) # get right bottom x of crop bounding box x2 = x1 + L # get right bottom y of crop bounding box y2 = y1 + L # crop bounding box crop = np.array((x1, y1, x2, y2)) # get IoU between crop box and gt _iou = iou(gt, crop) # assign label if _iou >= th: cv.rectangle(img, (x1, y1), (x2, y2), (0,0,255), 1) label = 1 else: cv.rectangle(img, (x1, y1), (x2, y2), (255,0,0), 1) label = 0 return img # read image img = cv.imread("../xiyi.jpg") img1 = img.copy() # gt bounding box gt = np.array((87, 51, 169, 113), dtype=np.float32) # get crop bounding box img = crop_bbox(img, gt, Crop_N=100, L=60, th=0.6) # draw gt cv.rectangle(img, (gt[0], gt[1]), (gt[2], gt[3]), (0,255,0), 1) cv.rectangle(img1,(gt[0], gt[1]), (gt[2], gt[3]), (0,255,0), 1) cv.imshow("result1",img1) cv.imshow("result", img) cv.imwrite("out.jpg", img) cv.waitKey(0) cv.destroyAllWindows()
实验结果:
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