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High-efficiency face detection and tracking method for numerous pedestrians through face candidate generation

机译:众多行人通过面部候选生成的高效脸部检测及跟踪方法

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摘要

This paper is dedicated to developing high-efficiency face detection and tracking method for big dynamic crowds or numerous pedestrians. Three modules constitute the proposed method, i.e., face candidate generation, face candidate verification, and face target tracking. In this work, face candidates are localized using the features of the face area, edge information, and skin color. Non-face parts in the face candidates are further verified by the C-SVM learning model and then removed, by which the face targets can be generated with lower computation-complexity and satisfactory accuracy than other approaches. Finally, the face targets are tracked by an efficient and reliable searching scheme for improving the effective face detection rate. Experimental results show that the average face detection rate (FDR) of 85%, average effective FDR of 95%, a frame rate of 28-66 frames per second (fps), and about 30 faces detected per frame are obtained from various test videos with big dynamic crowds or numerous pedestrians, indicating the feasibility of the proposed method to achieve unconstrained face detection with high-efficiency and cost-effectiveness. This result makes the proposed method more attractive for the video surveillance system as compared to other approaches, especially in the high computational complexity-based methods.
机译:本文致力于为大型动态人群或众多行人开发高效脸部检测和跟踪方法。三个模块构成所提出的方法,即面部候选生成,面部候选验证和面部目标跟踪。在这项工作中,面部候选人使用面部区域,边缘信息和肤色的特征本地化。通过C-SVM学习模型进一步验证了面部候选中的非面部部件,然后除去,通过该方法可以通过较低的计算 - 复杂度和比其他方法令人满意地产生面部目标。最后,通过高效且可靠的搜索方案跟踪面部目标,以提高有效面部检测率。实验结果表明,85%,平均有效FDR的平均面部检测率(FDR)为95%,每秒检测到每秒28-66帧(FPS)的帧速率,以及每帧检测到的约30个面积来自各种测试视频具有大动态人群或众多行人,表明该方法以高效率和成本效益实现无关脸部检测的可行性。该结果使得该方法与其他方法相比,该方法对视频监控系统更具吸引力,特别是在基于高计算复杂性的方法中。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2021年第1期|1247-1272|共26页
  • 作者单位

    Department of Computer Science and Information Engineering Da-Yeh University 168 University Rd. Dacun Changhua 515 Taiwan Republic of China;

    Department of Electronic Engineering National Kaohsiung University of Science and Technology 415 Chien Kung Rd. Kaohsiung 807 Taiwan Republic of China;

    Department of Electronic Engineering National Kaohsiung University of Science and Technology 415 Chien Kung Rd. Kaohsiung 807 Taiwan Republic of China;

    Department of Computer Science and Information Engineering National Penghu University of Science and Technology 300 Liu-Ho Rd. Makung Penghu 880 Taiwan Republic of China;

    Department of Electronic Engineering National Kaohsiung University of Science and Technology 415 Chien Kung Rd. Kaohsiung 807 Taiwan Republic of China;

    Department of Information Management Tainan University of Technology 529 Zhongzheng Rd. Yongkang District Tainan 71002 Taiwan Republic of China;

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

    Face detection; Face tracking; Numerous pedestrians; Histogram of oriented gradient (HOG); Support vector machine (SVM);

    机译:面部检测;面部跟踪;众多行人;面向梯度的直方图(猪);支持向量机(SVM);

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