Abstract

This paper presents a novel 3-D object recognition framework for a service robot to eliminate false detections in cluttered office environments where objects are in a great diversity of shapes and difficult to be represented by exact models. Laser point clouds are first converted to bearing angle images and a Gentleboost-based approach is then deployed for multiclass object detection. In order to solve the problem of variable object scales in object detection, a scale coordination technique is adopted in every subscene that is segmented from the whole scene according to the spatial distribution of 3-D laser points. Moreover, semantic information (e.g., ceilings, floors, and walls) extracted from raw 3-D laser points is utilized to eliminate false object detection results. K-means clustering and Mahalanobis distance are finally deployed to perform object segmentation in a 3-D laser point cloud accurately. Experiments were conducted on a real mobile robot to show the validity and performance of the proposed method.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call