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Human Behavior Classification Using Multi-Class Relevance Vector Machine

B.

Year
2010
Citations
7
Access
Open access

Abstract

Problem statement: In computer vision and robotics, one of the typical tasks is to identify specific objects in an image and to determine each object's position and orientation relative to coordinate system. This study presented a Multi-class Relevance Vector machine (RVM) classification algorithm which classifies different human poses from a single stationary camera for video surveillance applications. Approach: First the foreground blobs and their edges are obtained. Then the relevance vector machine classification scheme classified the normal and abnormal behavior. Results: The performance proposed by our method was compared with Support Vector Machine (SVM) and multi-class support vector machine. Experimental results showed the effectiveness of the method. Conclusion: It is evident that RVM has good accuracy and lesser computational than SVM.

Keywords

Relevance vector machineSupport vector machineComputer scienceArtificial intelligencePattern recognition (psychology)Relevance (law)Class (philosophy)Structured support vector machineMachine learningProblem statement

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