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AVSS
2003
IEEE

Invariant Feature Extraction and Biased Statistical Inference for Video Surveillance

13 years 9 months ago
Invariant Feature Extraction and Biased Statistical Inference for Video Surveillance
Using cameras for detecting hazardous or suspicious events has spurred new research for security concerns. To make such detection reliable, researchers must overcome difficulties such as variation in camera capabilities, environmental factors, imbalances of positive and negative training data, and asymmetric costs of misclassifying events of different classes. Following up on the event-detection framework that we proposed in [12], we present in this paper the framework’s two major components: invariant feature extraction and biased statistical inference. We report results of our experiments using the framework for detecting suspicious motion events in a parking lot.
Yi-Leh Wu, Long Jiao, Gang Wu, Edward Y. Chang, Yu
Added 04 Jul 2010
Updated 04 Jul 2010
Type Conference
Year 2003
Where AVSS
Authors Yi-Leh Wu, Long Jiao, Gang Wu, Edward Y. Chang, Yuan-Fang Wang
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