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132 lines
4.2 KiB
Python
132 lines
4.2 KiB
Python
"""
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The Horn-Schunck method estimates the optical flow for every single pixel of
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a sequence of images.
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It works by assuming brightness constancy between two consecutive frames
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and smoothness in the optical flow.
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Useful resources:
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Wikipedia: https://en.wikipedia.org/wiki/Horn%E2%80%93Schunck_method
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Paper: http://image.diku.dk/imagecanon/material/HornSchunckOptical_Flow.pdf
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"""
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from typing import SupportsIndex
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import numpy as np
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from scipy.ndimage import convolve
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def warp(
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image: np.ndarray, horizontal_flow: np.ndarray, vertical_flow: np.ndarray
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) -> np.ndarray:
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"""
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Warps the pixels of an image into a new image using the horizontal and vertical
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flows.
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Pixels that are warped from an invalid location are set to 0.
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Parameters:
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image: Grayscale image
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horizontal_flow: Horizontal flow
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vertical_flow: Vertical flow
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Returns: Warped image
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>>> warp(np.array([[0, 1, 2], [0, 3, 0], [2, 2, 2]]), \
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np.array([[0, 1, -1], [-1, 0, 0], [1, 1, 1]]), \
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np.array([[0, 0, 0], [0, 1, 0], [0, 0, 1]]))
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array([[0, 0, 0],
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[3, 1, 0],
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[0, 2, 3]])
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"""
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flow = np.stack((horizontal_flow, vertical_flow), 2)
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# Create a grid of all pixel coordinates and subtract the flow to get the
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# target pixels coordinates
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grid = np.stack(
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np.meshgrid(np.arange(0, image.shape[1]), np.arange(0, image.shape[0])), 2
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)
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grid = np.round(grid - flow).astype(np.int32)
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# Find the locations outside of the original image
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invalid = (grid < 0) | (grid >= np.array([image.shape[1], image.shape[0]]))
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grid[invalid] = 0
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warped = image[grid[:, :, 1], grid[:, :, 0]]
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# Set pixels at invalid locations to 0
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warped[invalid[:, :, 0] | invalid[:, :, 1]] = 0
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return warped
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def horn_schunck(
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image0: np.ndarray,
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image1: np.ndarray,
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num_iter: SupportsIndex,
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alpha: float | None = None,
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) -> tuple[np.ndarray, np.ndarray]:
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"""
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This function performs the Horn-Schunck algorithm and returns the estimated
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optical flow. It is assumed that the input images are grayscale and
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normalized to be in [0, 1].
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Parameters:
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image0: First image of the sequence
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image1: Second image of the sequence
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alpha: Regularization constant
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num_iter: Number of iterations performed
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Returns: estimated horizontal & vertical flow
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>>> np.round(horn_schunck(np.array([[0, 0, 2], [0, 0, 2]]), \
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np.array([[0, 2, 0], [0, 2, 0]]), alpha=0.1, num_iter=110)).\
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astype(np.int32)
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array([[[ 0, -1, -1],
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[ 0, -1, -1]],
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<BLANKLINE>
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[[ 0, 0, 0],
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[ 0, 0, 0]]], dtype=int32)
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"""
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if alpha is None:
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alpha = 0.1
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# Initialize flow
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horizontal_flow = np.zeros_like(image0)
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vertical_flow = np.zeros_like(image0)
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# Prepare kernels for the calculation of the derivatives and the average velocity
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kernel_x = np.array([[-1, 1], [-1, 1]]) * 0.25
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kernel_y = np.array([[-1, -1], [1, 1]]) * 0.25
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kernel_t = np.array([[1, 1], [1, 1]]) * 0.25
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kernel_laplacian = np.array(
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[[1 / 12, 1 / 6, 1 / 12], [1 / 6, 0, 1 / 6], [1 / 12, 1 / 6, 1 / 12]]
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)
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# Iteratively refine the flow
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for _ in range(num_iter):
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warped_image = warp(image0, horizontal_flow, vertical_flow)
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derivative_x = convolve(warped_image, kernel_x) + convolve(image1, kernel_x)
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derivative_y = convolve(warped_image, kernel_y) + convolve(image1, kernel_y)
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derivative_t = convolve(warped_image, kernel_t) + convolve(image1, -kernel_t)
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avg_horizontal_velocity = convolve(horizontal_flow, kernel_laplacian)
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avg_vertical_velocity = convolve(vertical_flow, kernel_laplacian)
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# This updates the flow as proposed in the paper (Step 12)
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update = (
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derivative_x * avg_horizontal_velocity
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+ derivative_y * avg_vertical_velocity
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+ derivative_t
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)
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update = update / (alpha**2 + derivative_x**2 + derivative_y**2)
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horizontal_flow = avg_horizontal_velocity - derivative_x * update
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vertical_flow = avg_vertical_velocity - derivative_y * update
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return horizontal_flow, vertical_flow
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if __name__ == "__main__":
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import doctest
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doctest.testmod()
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