二叉分割树中帧间区域目标时间关联的遗传算法

A. Setyanto, J. Woods, M. Ghanbari
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引用次数: 2

摘要

视频包含了丰富的时空信息。单个视频拍摄由许多帧组成,这些帧通常由相似的物体组成,这些物体可能在位置和大小上发生了变化。在视频分析中,识别当前帧中的区域的能力是一项重要的任务,但是下一帧中区域的后续识别却很少受到关注。本研究采用基于区域的二叉分割树(BPT)作为内容表示;目标搜索在二叉树内进行,而不是在原始像素域内进行。这个作品是基于这样一个假设:如果一个对象存在于给定视频帧的二叉树分区中,那么在下一帧的BPT中是否可以找到相应的分支?这是一个具有一对多和多对一映射的难题,需要一种以遗传算法(GA)形式的创新解决方案。当开始和结束条件已知时,遗传算法非常适合这个问题。本研究提出并利用遗传算法实现基于区域的BPTs时间相关性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic algorithm for inter-frame region object temporal correlation in binary partition tree
Video contains rich information in the spatial and temporal domains. A single video shoot consists of a number of frames which are generally composed of similar objects which may have changed in position and size. The ability to recognize regions in the current frame is an important task in video analysis, but their subsequent recognition in the next frame receives little attention. This research utilizes a region based binary partition tree (BPT) as the content representation; object searching is conducted inside the binary tree and not in the original pixel domain. This work was conceived from the postulate: If an object exists inside a binary tree partition for a given video frame, can a corresponding branch be found in the BPT of the next frame? This is a difficult problem with a one to many and a many to one mapping and requires an innovative solution in the form of a Genetic algorithms (GA). GA's are ideally suited to this problem as the start and end conditions are known. This research proposes and achieves temporal correlation in region based BPTs using a genetic algorithm.
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