一种改进的基于分割和融合机制的均值偏移运动目标检测与跟踪算法

Yanming Xu
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引用次数: 3

摘要

平均位移运动目标检测与跟踪算法是分析人体运动的一项重要技术。它广泛应用于军事防御、视频监控、人机交互、医疗诊断以及视频游戏等商业领域。然而,一般的mean-shift模型在处理严重闭塞时表现不佳。针对图像遮挡问题,提出了一种改进的基于分割和融合机制的均值偏移运动目标检测与跟踪算法。首先,该算法通过处理矩形目标输入,对目标进行检测和提取;其次,均值移位分割方法解决了遮挡问题。最后,利用各分割点权值的融合提高跟踪速度。通过融合,将多个片段的信息整合在一起,提供更多的空间信息。实验表明,该算法不仅提高了遮挡或遮挡情况下的性能,而且没有显著增加计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved mean-shift moving object detection and tracking algorithm based on segmentation and fusion mechanism
The mean-shift moving object detection and tracking algorithm is an important technique for analyzing human motion. It is widely used in military defense, video surveillance, human-computer interaction, medical diagnostics as well as in commercial fields such as video games. However,the general mean-shift model does not perform well when dealing with serious occlusions. In this paper, an improved mean-shift moving object detection and tracking algorithm based on segmentation and fusion mechanism is proposed in order to address the occlusion problem. Firstly, the detection algorithm detects and extracts the target by processing a rectangular target input. Secondly, the mean-shift method of segmentation solves the sheltering problem. Finally, the fusion of weights of various segmentations is used to improve the tracking speed. Through fusion, several segment's information are integrated, which provides more space information. The experiments we carried out demonstrated that, the proposed algorithm not only improved the performance in sheltered or occluded cases, while not significantly increased the computation cost.
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