opencv 摄像机标定的实现
原图
矫正后
我新建了个jz的文件夹放相机矫正所需要拍摄的图片,如下:共12张
# coding:utf-8 import cv2 import numpy as np import glob # 找棋盘格角点 # 阈值 criteria = (cv2.TERM_CRITERIA_EPS + cv2.TERM_CRITERIA_MAX_ITER, 30, 0.001) # 棋盘格模板规格 从0开始计算 w = 9 h = 6 # 世界坐标系中的棋盘格点,例如(0,0,0), (1,0,0), (2,0,0) ....,(8,5,0),去掉Z坐标,记为二维矩阵 objp = np.zeros((w * h, 3), np.float32) objp[:, :2] = np.mgrid[0:w, 0:h].T.reshape(-1, 2) # 储存棋盘格角点的世界坐标和图像坐标对 objpoints = [] # 在世界坐标系中的三维点 imgpoints = [] # 在图像平面的二维点 # 匹配读取文件夹内的特定文件 images = glob.glob(http://www.cppcns.com'jz/*.jpg') for fname in images: img = cv2.imread(fname) gray = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY) # 找到棋盘格角点 ret, corners = cv2.findChessboardCorners(gray, (w, h), None) # 将角点在图像上显示 cv2.drawChessboardCorners(img, (w, h), corners, ret) cv2.imshow('findCorners', img) cv2.waitKey(500) cv2.destroyAllWindows() # 如果找到足够点对,将其存编程客栈储起来 if ret == True: cv2.cornerSubPix(gray, corners, (11, 11), (-1, -1), criteria) objpoints.append(objp) 编程客栈 imgpowww.cppcns.comints.append(corners) # 标定 ret, mtx, dist, rvecs, tvecs = cv2.calibrateCamera(objpoints, imgpoints, gray.shape[::-1], None, None) # 在应用时,将下面两个写死 print(mtx) print(dist) # 去畸变 img2 = cv2.imread('77.jpg') h, w = img2.shape[:2] newcameramtx, roi = cv2.getOptimalNewCameraMatrix(mtx, dist, (w, h), 0, (w, h)) # 自由比例参数 dst = cv2.undistort(img2, mtx, dist, None, newcameramtx) # 根据前面ROI区域裁剪图片 # x,y,w,h = roi # dst = dst[y:y+h, x:x+w] cv2.imwrite('1.jpg', dst) cv2.imshow('findCorners', dst) cv2.waitKey(0) cv2.destroyAllWindows()
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