An edge-based approach to improve optical flow algorithm

Shih-Kuan Liao, Bao Liu
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引用次数: 17

Abstract

Traditional optical flow techniques applied to object tracking generally perform global searching and calculations of brightness and light intensity of the object in the image. In addition, traditional optical flow techniques assume that the light intensity is constant across a series of consecutive images. The goal is to obtain the displacement and moving direction of an object in a series of images. However, most of important information lies in the regions where optical flows vary significantly. Having relatively small optical flow variations usually implies that the information lying in this region is not important. As traditional optical flow techniques employs global searching to obtain optical flow values, the total computations are time consuming and most of time is spent on unimportant regions. If it is acceptable to exclude part of unimportant information then the overall algorithm can omit part of computations and hence shorten the time needed to calculate optical flow field. To speed up the optical flow calculation, this study proposes an edge-based algorithm for obtaining optical flows. The main ideas are to segments out objects in each of consecutive images and then compare every object's centroid with circumference to identify matching objects of each image. According to the movement data of corresponding objects in each image, optical flow field can be formed and as a result objects can be tracked. Finally, the proposed algorithm in this study has been experimented to effectively decrease computation time while preserving useful information.
一种基于边缘的改进光流算法
用于目标跟踪的传统光流技术一般是对图像中目标的亮度和光强进行全局搜索和计算。此外,传统的光流技术假设光强在一系列连续图像中是恒定的。目标是在一系列图像中获得物体的位移和运动方向。然而,大多数重要的信息存在于光流变化显著的区域。具有相对较小的光流变化通常意味着位于该区域的信息不重要。传统的光流技术采用全局搜索的方法来获取光流值,计算总量比较大,而且大部分时间都花在不重要的区域上。如果可以排除部分不重要的信息,那么整个算法可以省略部分计算,从而缩短计算光流场所需的时间。为了加快光流的计算速度,本文提出了一种基于边缘的光流获取算法。其主要思想是在每幅连续图像中分割出目标,然后将每个目标的质心与周长进行比较,从而识别出每幅图像的匹配目标。根据每张图像中对应物体的运动数据,形成光流场,从而实现对物体的跟踪。最后,本文提出的算法在保留有用信息的同时有效地减少了计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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