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Visual novelty detection for autonomous inspection robots

Hugo Vieira Neto

发表年份
2006
引用次数
11

摘要

Mobile robot applications that involve automated exploration and inspection of environments are often dependant on novelty detection, the ability to differentiate between common and uncommon perceptions. Because novelty can be anything that deviates from the normal context, we argue that in order to implement a novelty filter it is necessary to exploit the robot’s sensory data from the ground up, building models of normality rather than abnormality. In this work we use unrestricted colour visual data as perceptual input to on-line incremental learning algorithms. Unlike other sensor modalities, vision can provide a variety of useful information about the environment through massive amounts of data, which often need to be reduced for realtime operation. Here we use mechanisms of visual attention to select candidate image regions to be encoded and fed to higher levels of processing, enabling the localisation of novel features within the input image frame. An extensive series of experiments using visual input, obtained by a real

关键词

Novelty detectionNoveltyArtificial intelligenceComputer scienceComputer visionMobile robotContext (archaeology)Filter (signal processing)RobotPattern recognition (psychology)

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