会议专题

Visual Persons Behavior Diary Generation Model based on Trajectories and Pose Estimation

  The behavior pattern of persons was the important output of the surveillance analysis.This paper focus on the generation model of visual person behavior diary.The pipeline includes the person detection,tracking,and the person behavior classify.This paper adopts the deep convolutional neural model YOLO(You Only Look Once)V2 for person detection module.Multi person tracking was based on the detection framework.The Hungarian assignment algorithm was used to the matching.The person appearance model was integrated by HSV color model and Hash code model.The person object motion was estimated by the Kalman Filter.The multi objects were matching with exist tracklets through the appearance and motion location distance by the Hungarian assignment method.A long continuous trajectory for one person was get by the spatial-temporal continual linking algorithm.And the face recognition information was used to identify the trajectory.The trajectories with identification information can be used to generate the visual diary of person behavior based on the scene context information and person action estimation.The relevant modules are tested in public data sets and our own capture video sets.The test results show that the method can be used to generate the visual person behavior pattern diary with certain accuracy.

Chen Gang Chen Bin Liu Yuming Li Hui

Chengdu Institute of Computer Application,Chinese Academy of Sciences,Chengdu,610041;University of C University of Chinese Academy of Sciences,Beijing,100049;Guangzhou Institute of Electric Technology, Electronic dispatch control center of Yunnan power grid group co.LTD

国际会议

2017 International Symposium on Application of Materials Science and Energy Materials (SAMSE 2017) (2017材料科学应用与能源材料国际研讨会)

上海

英文

1-5

2017-12-28(万方平台首次上网日期,不代表论文的发表时间)