基于机器学习的目标跟踪技术研究

Qian Chen, Chao Ye
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引用次数: 1

摘要

近年来,大量学者从事目标跟踪算法的研究,但由于跟踪过程中观察到的目标信息的可变性、目标的移动性以及背景的复杂性,目标跟踪仍然是一个非常具有挑战性的问题。本文依托TLD跟踪算法的理论基础,实现检测模块、P-N学习模块和综合模块,利用目标在不同状态下的动态融合特征作为目标模板,利用目标在不同状态下的不同特征,提高算法的跟踪成功率。针对目标运动背景变化,当目标颜色受到背景变化的严重影响或受到相似目标的干扰时,将Hog特征与颜色特征相结合,使跟踪算法能够最大程度地跟踪目标。本研究旨在为该领域的研究开辟一个新的方向,促进该领域技术的更新和迭代。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on target tracking technology based on machine learning
In recent years, a large number of scholars have been engaged in the research of target tracking algorithms, but target tracking is still a very challenging problem due to the variability of the observed target information in the tracking process, the mobility of the target and the complexity of the background. In this paper, relying on the theoretical basis of TLD tracking algorithm, implementation detection module, P-N learning module and synthesis module, the dynamic fusion features of the target in different states are used as target templates to take advantage of the different features of the target in different states and increase the tracking success rate of the algorithm. For the problem that the target motion background changes, when the target color is seriously affected by the background change or interfered by the similar target, Hog features are combined with color features to make the tracking algorithm track the target to the maximum extent. This study aims to set a new direction for research in this field, as a way to promote the update and iteration of the technology in this field.
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