Multiple objects tracking (MOT) is a difficult task, as it usually requires special hardware and higher computation complexity. In this work, we present a new framework of MOT by using of equilibrium optimizer (EO) algorithm and reducing the resolution of the bounding boxes of the objects to solve such problems in the detection free framework. First, in the first frame the target objects are initialized and its size is computed, then its resolution is reduced if it is higher than a threshold, and then modeled by their kernel color histogram to establish a feature model. The Bhattacharya distances between the histogram of object models and other candidates are used as the fitness function to be optimized. Multiple agents are generated by EO, according to the number of the target objects to be tracked. EO algorithm is used because of its efficiency and lower computation cost compared to other algorithms in global optimization. Experimental results confirm that EO multi-object tracker achieves satisfying tracking results then other trackers.
翻译:多对象跟踪(MOT) 是一项艰巨的任务, 因为它通常需要特殊的硬件和更高的计算复杂度。 在这项工作中, 我们通过使用均衡优化算法和减少物体捆绑框的分辨率来解决检测自由框架中的这类问题, 展示了MOT的新框架。 首先, 在第一个框架里, 目标对象被初始化, 并计算其大小, 如果其分辨率高于阈值, 那么它的分辨率就会降低, 然后以内核颜色直方图为模型, 以建立特性模型。 Bhattacharya 对象模型的直方图与其他候选人之间的距离被用作要优化的健身功能。 根据要跟踪的目标对象的数量, 由 EO 生成的多个代理。 使用 EO 算法是因为其效率和计算成本比全球优化中的其他算法要低。 实验结果证实 EO 多对象追踪器能够满足跟踪结果, 然后由其他跟踪者来进行跟踪 。