首页 /研究 /Ensemble of experts for robust floor-obstacle segmentation of omnidirectional images for mobile robot visual navigation
PERCEPTION

Ensemble of experts for robust floor-obstacle segmentation of omnidirectional images for mobile robot visual navigation

Luis Felipe Posada, Krishna Kumar Narayanan, Frank Hoffmann, Torsten Bertram

发表年份
2011
引用次数
9

摘要

This paper presents a novel approach for floor obstacle segmentation in omnidirectional images which rests upon the fusion of multiple classification generated from heterogeneous segmentation schemes. The individual naive Bayes classifiers rely on different features and cues to determine a pixel's class label. Ground truth data for training and testing the classifiers is obtained from the superposition of 3D scans captured by a photonic mixer device camera. The classification is supported by edge detection which indicate the presence of obstacles and sonar range data. The complementary expert decisions are aggregated by stacked generalization, behavior knowledge space or voting combination. The combined floor classifier achieves a classification accuracy of up to 0.96 true positive rate with only 0.03 false positive rate. A robust robot navigation is accomplished by arbitration among a reactive obstacle avoidance and a corridor following behavior using the robots local free space as perception.

关键词

Artificial intelligenceComputer scienceComputer visionMobile robotRobotSegmentationObstacle avoidanceNaive Bayes classifierSonarOdometry

相关论文

查看 PERCEPTION 分类全部论文