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<title>Object classification for obstacle avoidance</title>

Uwe Regensburger, Volker Graefe

Year
1991
Citations
18

Abstract

Object recognition is necessary for any mobile robot operating autonomously in the real world. This paper discusses an object classifier based on a 2-D object model. Obstacle candidates are tracked and analyzed false alarms generated by the object detector are recognized and rejected. The methods have been implemented on a multi-processor system and tested in real-world experiments. They work reliably under favorable conditions but sometimes problems occur e. g. when objects contain many features (edges) or move in front of structured background.

Keywords

ObstacleComputer scienceArtificial intelligenceObject detectionComputer visionMobile robotObject (grammar)Cognitive neuroscience of visual object recognitionClassifier (UML)Robot

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