Design and Implementation of Object Tracking System Based Mean-Shift with Locust Search Optimization on Raspberry Pi

Inkreswari Retno Hardini, Y. Bandung
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Abstract

Having an optimal object tracking system is an advantage especially in everyday use. One of the example is use in victim localization. The optimal object tracking system as mentioned earlier means a system that capable of reaching the convergence point of region of interest (ROI) with small number of iterations. The smaller the number of iterations needed for reaching the convergence point, the faster the system follows the object’s movement. A system that is able to follow the movement of objects quickly, especially in accordance with case studies of victim localization, is certainly needed. In this paper, the object tracking system is built on Mean-Shift algorithm. Mean-Shift has a convergent search technique that requires a large number of iteration processes. In order to achieve an optimal object tracking system as the purpose of this paper, an optimized algorithm is carried out. Instead of shift the ROI point sequentially until reach the optimum point as done in Mean-Shift, the optimization algorithm will search the ROI optimum point randomly with a movement that pays attention to the previous optimum point. Optimization algorithm used in this paper is Locust Search algorithm. Object interest being tracked in this paper is human face. Object tracking system will be deployed in Raspberry Pi 3 Model B+ because of its characteristics that are suitable to be implemented in this paper’s case, in form of prototype.
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树莓派上基于Mean-Shift和蝗虫搜索优化的目标跟踪系统设计与实现
拥有一个最佳的目标跟踪系统是一个优势,特别是在日常使用中。其中一个例子就是受害者定位。前面提到的最优目标跟踪系统是指能够以较少的迭代次数达到感兴趣区域(ROI)的收敛点的系统。达到收敛点所需的迭代次数越少,系统跟踪物体运动的速度就越快。当然需要一个能够快速跟踪物体运动的系统,特别是根据受害者定位的案例研究。本文采用Mean-Shift算法构建目标跟踪系统。Mean-Shift是一种收敛搜索技术,需要大量的迭代过程。本文以实现最优目标跟踪系统为目的,进行了一种优化算法。优化算法不像Mean-Shift那样依次移动ROI点直到到达最优点,而是以关注前一个最优点的运动随机搜索ROI最优点。本文采用的优化算法是蝗虫搜索算法。本文跟踪的对象兴趣是人脸。目标跟踪系统将在树莓派3模型B+中部署,因为它的特点适合在本文的案例中以原型的形式实现。
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