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Real-time multi-class moving target tracking and recognition

机译:实时多类运动目标跟踪与识别

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摘要

The existing tracking and recognition methods concentrate mainly on single-class targets; however, systems for traffic management or intelligent transport often require multi-class target tracking and recognition in real time. This study proposes an effective multi-class moving target recognition method that is based on Gaussian mixture part-based model, which accurately locates objects of interest and recognises their corresponding categories. The method is multi-threaded and combines soft clustering approach with multiple mixture part based models to provide stable multi-class target tracking and recognition in video sequences. The highlight of the method is its ability to recognise multi-class moving targets and to count their numbers in the video sequence captured by a stationary camera with fixed focal length. Another contribution of this study is that an extended part based model is developed for object recognition in real-world environments, which can improve the overall system performance, lower time costs, and better meet the actual demand of a video system. Experimental results show that the proposed method is viable in real-time multi-class moving target tracking and recognition.
机译:现有的跟踪和识别方法主要集中于单一目标。但是,用于交通管理或智能运输的系统通常需要实时进行多类目标跟踪和识别。这项研究提出了一种有效的基于高斯混合零件模型的多类运动目标识别方法,该方法可以准确地定位感兴趣的对象并识别它们的相应类别。该方法是多线程的,并且将软聚类方法与基于多个混合部分的模型相结合,以在视频序列中提供稳定的多类目标跟踪和识别。该方法的亮点在于它能够识别多类移动目标,并能够在固定焦距的固定摄像机拍摄的视频序列中对它们进行计数。这项研究的另一个贡献是,开发了基于扩展部分的模型以用于现实环境中的对象识别,该模型可以提高整体系统性能,降低时间成本并更好地满足视频系统的实际需求。实验结果表明,该方法在实时多类运动目标跟踪与识别中是可行的。

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