基于信息融合原理的视频序列目标跟踪。使用模糊规则实现Meanshift内核

Intekhab Alam
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引用次数: 1

摘要

将感兴趣目标的跟踪作为一个时变问题,根据场景条件动态调整任意特定时刻跟踪算法的复杂度,如图1所示。利用基于模糊规则的系统实现了目标颜色特征的核加权离散概率密度函数。这种基于模糊逻辑和查找表的技术不仅有利于视频馈馈线的近实时跟踪,而且与传统的均值移位算法相比具有很强的竞争力,传统的均值移位算法的原始形式非常麻烦,特别是在需要实时干预的情况下,例如在监控或安全关键应用中,驾驶辅助是主要目标。中央控制器或主管利用Bhattacharyya质量控制和标准冲突解决技术来决定解决模块之间可能出现的任何潜在意见分歧所需的算法复杂性水平。通过选择如图1所示的适当回路,从而获得最佳的信息融合水平,我们的跟踪器即使在观察到高水平可操作性的时间跨度内也变得更加稳健,与传统的平均移位相比,还具有实时capa的额外优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Object tracking in video sequences using information fusion principles. Meanshift kernel implementation using fuzzy rules
Tracking of an object of interest is posed as a time varying problem and complexity of the tracking algorithm at any specific moment in time is dynamically adjusted based on the scene conditions as shown in fig 1. We have implemented kernel weighted discrete probability density function of the target color feature by using a Fuzzy Rule Based System. This technique based on Fuzzy Logic and Look-up tables not only facilitates near real time tracking in video feed but performs very competitively to the traditional mean shift algorithm which in its original form is very cumbersome to implement especially when a real time intervention is required for e.g. in surveillance or in safety critical applications where driving assistance is the prime objective. A centralized controller or supervisor utilizes Bhattacharyya quality control and standard conflict resolution techniques to decide the level of algorithmic complexity needed to resolve any potential differences of opinion that may arise among modules. By selecting appropriate loop as in the Fig 1 and hence the optimum level of information fusion our tracker becomes much more robust even during time spans when a large level of maneuverability is observed as compared to the traditional mean shift with an added advantage of real time capa.
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