LEARNING
Automated Exploration and Inspection: Comparing Two Visual Novelty Detectors
Hugo Vieira Neto, Ulrich Nehmzow
- Year
- 2005
- Citations
- 12
- Access
- Open access
Abstract
Mobile robot applications that involve exploration and inspection of dynamic environments benefit, and often even are dependant on reliable novelty detection algorithms. In this paper we compare and discuss the performance and functionality of two different on-line novelty detection algorithms, one based on incremental Principal Component Analysis and the other on a Grow-When-Required artificial neural network. A series of experiments using visual input obtained by a mobile robot interacting with laboratory and real-world environments demonstrate and measure advantages and disadvantages of each approach.
Keywords
Computer scienceNoveltyNovelty detectionArtificial intelligencePrincipal component analysisMeasure (data warehouse)RobotMobile robotComponent (thermodynamics)Computer vision
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