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Multi-feature Graph-Based Object Tracking

机译:基于多特征图的对象跟踪

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摘要

We present an object detection and tracking algorithm that addresses the problem of multiple simultaneous targets tracking in real-world surveillance scenarios. The algorithm is based on color change detection and multi-feature graph matching. The change detector uses statistical information from each color channel to discriminate between foreground and background. Changes of global illumination, dark scenes, and cast shadows are dealt with a pre-processing and post-processing stage. Graph theory is used to find the best object paths across multiple frames using a set of weighted object features, namely color, position, direction and size. The effectiveness of the proposed algorithm and the improvements in accuracy and precision introduced by the use of multiple features are evaluated on the VACE dataset.
机译:我们提出了一种对象检测和跟踪算法,该算法解决了现实监控场景中多个同时目标跟踪的问题。该算法基于颜色变化检测和多特征图匹配。变化检测器使用来自每个颜色通道的统计信息来区分前景和背景。全局照明,黑暗场景和投射阴影的更改在预处理和后处理阶段进行处理。图论用于使用一组加权的对象特征(即颜色,位置,方向和大小)在多个帧中找到最佳对象路径。在VACE数据集上评估了所提出算法的有效性以及通过使用多个特征而引入的准确性和精度方面的改进。

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