題名: A Framework of Spatio-Temporal Analysis for Video Surveillance
作者: Chen, Duan-Yu
Cannons, Kevin
Tyan, Hsiao-Rong
Shih, Sheng-Wen
Liao, Hong-Yuan
關鍵字: video surveillance
spatiotemporal analysis
object classification
期刊名/會議名稱: 2007 NCS會議
摘要: This paper presents a video surveillance system that is capable of detecting and classifying moving targets in real-time. The system extracts moving targets from a video stream and classifies them into predefined categories according to their spatiotemporal properties. Classification of the moving targets is completed via a combination of a temporal boosted classifier and spatiotemporal “motion energy” analysis. We illustrate that a temporal boosted classifier can be designed that successfully recognizes five object categories: person(s), bicycle, motorcycle, vehicle, and person with umbrella. The proposed temporal boosted classifier has the unique ability to improve weak classifiers by allowing them to make use of previous information when evaluating the current frame. In addition, we demonstrate a method to further process targets in the “person(s)” category to determine if they are single moving individuals or crowds. It is shown that this challenging task of moving crowd recognition can be effectively performed using spatiotemporal motion energies. These motion energies provide a rich description of a target’s dynamic characteristics, from which classification can be performed. Our empirical evaluations demonstrate that the proposed system is extremely effective at recognizing all predefined object classes.
日期: 2008-08-05T02:21:05Z
分類:2007年 NCS 全國計算機會議

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