改进了多目标跟踪的均值偏移

G. Phadke, R. Velmurugan
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引用次数: 6

摘要

目标跟踪是视觉监视和活动分析的关键。提出了一种快速有效的基于颜色的均值偏移跟踪算法。但在低颜色强度、背景杂乱和几帧完全遮挡的情况下,它就失效了。提出了一种基于多特征集成的视觉跟踪方案。该方法综合了目标的颜色、纹理和边缘特征来构建目标模型,并利用碎片化均值漂移来处理遮挡。为了进一步改进,用卡尔曼滤波对目标中心进行了更新,并对目标模型进行了更新。整个框架在计算上很简单。与使用具有挑战性的视频的其他跟踪器进行了比较,发现这种方法的效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved mean shift for multi-target tracking
Object tracking is critical to visual surveillance and activity analysis. The color based mean shift has been addressed as an effective and fast algorithm for tracking. But it fails in case of objects with low color intensity, clutter in background and total occlusion for several frames. We present a new scheme based on multiple feature integration for visual tracking. The proposed method integrates the color, texture and edge features of the target to construct the target model and a fragmented mean shift to handle occlusion. For further improvement target center is updated with Kalman filter and target model is also updated. The overall frame work is computationally simple. The proposed approach has been compared with other trackers using challenging videos and has been found to be performing better.
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