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@Prasad9
Last active October 21, 2017 07:27
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Perform the perspective transform on an image
def get_mask_coord(imshape):
vertices = np.array([[(0.09 * imshape[1], 0.99 * imshape[0]),
(0.43 * imshape[1], 0.32 * imshape[0]),
(0.56 * imshape[1], 0.32 * imshape[0]),
(0.85 * imshape[1], 0.99 * imshape[0])]], dtype = np.int32)
return vertices
def get_perspective_matrices(X_img):
offset = 15
img_size = (X_img.shape[1], X_img.shape[0])
# Estimate the coordinates of object of interest inside the image.
src = np.float32(get_mask_coord(X_img.shape))
dst = np.float32([[offset, img_size[1]], [offset, 0], [img_size[0] - offset, 0],
[img_size[0] - offset, img_size[1]]])
perspective_matrix = cv2.getPerspectiveTransform(src, dst)
return perspective_matrix
def perspective_transform(X_img):
# Doing only for one type of example
perspective_matrix = get_perspective_matrices(X_img)
warped_img = cv2.warpPerspective(X_img, perspective_matrix,
(X_img.shape[1], X_img.shape[0]),
flags = cv2.INTER_LINEAR)
return warped_img
perspective_img = perspective_transform(X_img)
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