首页> 外文会议>IEEE International Conference on Multimedia and Expo >Who missed the class? amp;#x2014; Unifying multi-face detection, tracking and recognition in videos
【24h】

Who missed the class? amp;#x2014; Unifying multi-face detection, tracking and recognition in videos

机译:谁错过了班级? —统一视频中的多面检测,跟踪和识别

获取原文

摘要

We investigate the problem of checking class attendance by detecting, tracking and recognizing multiple student faces in classroom videos taken by instructors. Instead of recognizing each individual face independently, first, we perform multi-object tracking to associate detected faces (including false positives) into face tracklets (each tracklet contains multiple instances of the same individual with variations in pose, illumination etc.) and then we cluster the face instances in each tracklet into a small number of clusters, achieving sparse face representation with less redundancy. Then, we formulate a unified optimization problem to (a) identify false positive face tracklets; (b) link broken face tracklets belonging to the same person due to long occlusion; and (c) recognize the group of faces simultaneously with spatial and temporal context constraints in the video. We test the proposed method on Honda/UCSD database and real classroom scenarios. The high recognition performance achieved by recognizing a group of multi-instance tracklets simultaneously demonstrates that multi-face recognition is more accurate than recognizing each individual face independently.
机译:我们通过检测,跟踪和识别由教师拍摄的课堂视频中的多个学生面临的课堂上进行课堂考勤的问题。而不是独立地识别每个单独的面部,首先,我们执行多对象跟踪以将检测到的面(包括误报)与面部轨迹关联(每个轨道包含同一个体的多个实例,其中具有姿势,照明等的变化,然后我们将每个ROCKLET中的脸部实例群体聚集到少量群集中,以较少冗余实现稀疏的面部表示。然后,我们向(a)识别伪正面轨迹的统一优化问题; (b)由于长闭塞而将属于同一个人的破碎面部轨迹; (c)在视频中同时识别对空间和时间上下文约束的同时的面部。我们在Honda / UCSD数据库和真正的课堂场景上测试提出的方法。通过识别一组多实例轨迹以同时识别的高识别性能表明,多面识别比独立识别每个人的面部更准确。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号