使用成本最小化技术的多目标跟踪

M. Kamaraj, Bala Krishnan
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引用次数: 0

摘要

智能交通、视频监控、计算机视觉机器人等许多应用主要依赖于多目标跟踪任务。它由检测、分类和跟踪三个过程组成。在这种新型的多目标跟踪方法中,为了实现全局优化,制定了代价项,包括目标跟踪、操作表示、碰撞处理和轨迹处理等问题的全局优化。在此基础上,采用梯度下降和梯度上升两种优化策略,分别对多个特征空间进行梯度下降和梯度上升,分别从给定的数据样本中获取密度函数的局部最小值,实现目标的似然匹配,并对图像的部分证据进行处理,使各目标的不确定性最小化。在本研究中,使用度量评估在不同的公开可用数据集上测试了所提出的工作,并基于目标跟踪问题与各种方法进行了比较。本研究也将为进一步的研究工作提供更好的问题理解、方法知识和实验评估技巧。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MULTIPLE TARGET TRACKING USING COST MINIMIZATION TECHNIQUES
Many applications such as intelligent transportation, video surveillance, robotics of computer vision mainly depend on task of multiple target tracking. It consists of process of detection, classifications and tracking. In this novel approach of multi target tracking, cost terms are formulated to attain the global optimization which includes the entire representation of the issues such as target tracking, operational representation, collision handling and trajectory processing. Furthermore, two optimization strategies such as the gradient descent which is performed on multiple feature space to obtain local minima of a density function from the given sample of data and gradient ascent which is carried out to achieve a likelihood matching of the target and used to handle the partial evidence of the image, and also uncertainty of the various targets are minimized. . In this study, the proposed works are tested on different publicly available datasets using the metric evaluation and also compared with the various methods based on issues of target tracking. This study will also provide a better understanding of the problem, knowledge of the methods, and experimental evaluation skill for further research works.
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