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Moving people tracking with detection by latent semantic analysis for visual surveillance applications

机译:通过潜在的语义分析,通过视觉监控应用移动人的跟踪和检测

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摘要

The latent semantic analysis (LSA) has been widely used in the fields of computer vision and pattern recognition. Most of the existing works based on LSA focus on behavior recognition and motion classification. In the applications of visual surveillance, accurate tracking of the moving people in surveillance scenes, is regarded as one of the preliminary requirement for other tasks such as object recognition or segmentation. However, accurate tracking is extremely hard under challenging surveillance scenes where similarity among multiple objects or occlusion among multiple objects occurs. Usual temporal Markov chain based tracking algorithms suffer from the 'tracking error accumulation problem'. The accumulated errors can finally make the tracking to drift from the target. To handle the problem of tracking drift, some authors have proposed the idea of using detection along with tracking as an effective solution. However, many of the critical issues still remain unsettled in these detection based tracking algorithms. In this paper, we propose a novel moving people tracking with detection based on (probabilistic) LSA. By employing a novel 'twin-pipeline' training framework to find the latent semantic topics of 'moving people', the proposed detection can effectively detect the interest points on moving people in different indoor and outdoor environments with camera motion. Since the detected interest points on different body parts can be used to locate the position of moving people more accurately, by combining the detection with incremental subspace learning based tracking, the proposed algorithms resolves the problem of tracking drift during each target appearance update process. In addition, due to the time independent processing mechanism of detection, the proposed method is also able to handle the error accumulation problem. The detection can calibrate the tracking errors during updating of each state of the tracking algorithm. Extensive, experiments on various surveillance environments using different benchmark datasets have proved the accuracy and robustness of the proposed tracking algorithm. Further, the experimental comparison results clearly show that the proposed tracking algorithm outperforms the well known tracking algorithms such as ISL, A MS and WSL algorithms. Furthermore, the speed performance of the proposed method is also satisfactory for realistic surveillance applications.
机译:潜在语义分析(LSA)已广泛应用于计算机视觉和模式识别领域。现有的大多数基于LSA的作品都集中在行为识别和运动分类上。在视觉监视的应用中,对监视场景中的移动人员进行精确跟踪被视为其他任务(如对象识别或分割)的基本要求之一。但是,在具有挑战性的监视场景下,要进行精确跟踪是非常困难的,因为在监视场景中会发生多个对象之间的相似性或多个对象之间的遮挡。通常基于时间马尔可夫链的跟踪算法遭受“跟踪误差累积问题”的困扰。累积的误差最终可以使跟踪偏离目标。为了解决跟踪漂移问题,一些作者提出了将检测和跟踪一起使用作为有效解决方案的想法。但是,在这些基于检测的跟踪算法中,许多关键问题仍未解决。在本文中,我们提出了一种新颖的基于(概率)LSA的移动人跟踪与检测。通过使用一种新颖的“双管道”训练框架来查找“动人”的潜在语义主题,所提出的检测可以通过摄像机运动有效地检测在不同室内和室外环境中动人的兴趣点。由于在不同身体部位上检测到的兴趣点可用于更准确地定位移动人的位置,因此通过将检测与基于增量子空间学习的跟踪相结合,所提出的算法解决了每个目标外观更新过程中的跟踪漂移问题。另外,由于检测的时间独立处理机制,所提出的方法还能够处理错误累积问题。该检测可以在跟踪算法的每个状态的更新期间校准跟踪误差。使用不同基准数据集的各种监视环境的广泛实验证明了所提出跟踪算法的准确性和鲁棒性。此外,实验比较结果清楚地表明,提出的跟踪算法优于ISL,A MS和WSL算法等众所周知的跟踪算法。此外,所提出的方法的速度性能对于现实的监视应用也是令人满意的。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2014年第3期|991-1021|共31页
  • 作者单位

    School of Computer Science, Northwestern Polytechnical University, Xi'an, Shaanxi, China;

    School of Computer Science, Northwestern Polytechnical University, Xi'an, Shaanxi, China;

    Indian Institute of Information Technology and Management, Madhya Pradesh, India;

    School of Computer Engineering, Nanyang Technological University, 50 Nanyang Avenue, Singapore, Singapore;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Tracking; Latent semantic analysis; Detection; Visual surveillance;

    机译:跟踪;潜在语义分析;检测;视觉监控;
  • 入库时间 2022-08-17 13:04:48

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