Model-based furniture recognition for building semantic object maps

作者:

摘要

This paper presents an approach to creating a semantic map of an indoor environment incrementally and in closed loop, based on a series of 3D point clouds captured by a mobile robot using an RGB-D camera. Based on a semantic model about furniture objects (represented in an OWL-DL ontology with rules attached), we generate hypotheses for locations and 6DoF poses of object instances and verify them by matching a geometric model of the object (given as a CAD model) into the point cloud. The result, in addition to the registered point cloud, is a consistent mesh representation of the environment, further enriched by object models corresponding to the detected pieces of furniture. We demonstrate the robustness of our approach against occlusion and aperture limitations of the RGB-D frames, and against differences between the CAD models and the real objects. We evaluate the complete system on two challenging datasets featuring partial visibility and totaling over 800 frames. The results show complementary strengths and weaknesses of processing each frame directly vs. processing the fully registered scene, which accord with intuitive expectations.

论文关键词:Semantic map,Incremental mapping,Closed-loop mapping,Model-based object recognition,3D point cloud,CAD model matching,OWL-DL ontology

论文评审过程:Revised 16 December 2014, Accepted 20 December 2014, Available online 5 January 2015, Version of Record 25 April 2017.

论文官网地址:https://doi.org/10.1016/j.artint.2014.12.007