Title :
Spatiotemporal Motion Analysis for the Detection and Classification of Moving Targets
Author :
Chen, Duan-Yu ; Cannons, Kevin ; Tyan, Hsiao-Rong ; Shih, Sheng-Wen ; Liao, Hong-Yuan Mark
Author_Institution :
Dept. of Electr. Eng., Yuan-Ze Univ., Taoyuan
Abstract :
This paper presents a video surveillance system in the environment of a stationary camera that can extract moving targets from a video stream in real time and classify them into predefined categories according to their spatiotemporal properties. Targets are detected by computing the pixel-wise difference between consecutive frames, and then classified with a temporally boosted classifier and ldquospatiotemporal-oriented energyrdquo analysis. We demonstrate that the proposed classifier can successfully recognize five types of objects: a person, a bicycle, a motorcycle, a vehicle, and a person with an umbrella. In addition, we process targets that do not match any of the AdaBoost-based classifier´s categories by using a secondary classification module that categorizes such targets as crowds of individuals or non-crowds. We show that the above classification task can be performed effectively by analyzing a target´s spatiotemporal-oriented energies, which provide a rich description of the target´s spatial and dynamic features. Our experiment results demonstrate that the proposed system is extremely effective in recognizing all predefined object classes.
Keywords :
feature extraction; image classification; image motion analysis; object recognition; video streaming; video surveillance; moving target classification; moving target detection; object recognition; spatiotemporal motion analysis; spatiotemporal-oriented energy analysis; video stream; video surveillance; Object classification; spatiotemporal analysis; video surveillance;
Journal_Title :
Multimedia, IEEE Transactions on
DOI :
10.1109/TMM.2008.2007289