Fast optical flow using 3D shortest path techniques

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摘要

Optical flow or image motion estimation is important in the area of computer vision. This paper presents a fast and reliable optical flow algorithm which produces a dense optical flow map by using fast cross correlation and 3D shortest path techniques. Fast correlation is achieved by using the box-filtering technique which is invariant to the size of the correlation window. The motion for each scanline or each column of the input image is obtained from the correlation coefficient volume by finding the best 3D path using dynamic programming techniques rather than simply choosing the position that gives the maximum cross correlation coefficient. Sub-pixel accuracy is achieved by fitting the local correlation coefficients to a quadratic surface. Typical running time for a 256×256 image is in the order of a few seconds on a 85 MHz computer. A variety of synthetic and real images have been tested, and good results have been obtained.

论文关键词:Motion estimation,Optical flow,Image motion,Dynamic programming,3D shortest path,Sub-pixel accuracy,Fast cross correlation,Similarity measure

论文评审过程:Available online 4 December 2002.

论文官网地址:https://doi.org/10.1016/S0262-8856(02)00112-9