基于梯度互相关的亚像素运动估计

V. Argyriou, T. Vlachos
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引用次数: 17

摘要

提出了一种精度高、计算效率高的视频序列运动估计方法。该方法基于空间梯度互相关函数的最大化,该函数在频域中计算,因此通过快速变换算法实现。通过充分考虑梯度幅度和相位,促进了图像特征的显著性和可靠性的选择,提高了运动估计的精度。该方法在亚像素精度方面优于现有的频域运动估计方法,尤其是相位相关方法,适用于一系列测试材料和运动场景。我们的结果还表明,我们的方法对人工诱导的加性高斯噪声的存在具有相当大的免疫力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sub-pixel motion estimation using gradient cross-correlation
A highly accurate and computationally efficient method is presented suitable for the estimation of motion in video sequences. The method is based on the maximisation of the spatial gradient cross-correlation function, which is computed in the frequency domain and therefore is implemented by fast transformation algorithms. By taking into full consideration gradient magnitude and phase, the selection of salient and reliable image features is promoted and the resulting accuracy of motion estimation enhanced. The proposed method outperforms established competing frequency-domain motion estimation methods, most notably phase correlation, in terms of sub-pixel accuracy for a range of test material and motion scenarios. Our results also show that our method is considerably more immune to the presence of manually induced additive Gaussian noise.
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