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3D Object Recognition and Pose Estimation From Point Cloud Using Stably Observed Point Pair Feature

Deping Li, Hanyun Wang, Ning Liu, Xiaoming Wang, Xu Jin

2020IEEE Access49 citationsDOIOpen Access PDF

Abstract

Recognition and pose estimation from 3D free-form objects is a key step for autonomous robotic manipulation. Recently, the point pair features (PPF) voting approach has been shown to be effective for simultaneous object recognition and pose estimation. However, the global model descriptor (e.g., PPF and its variants) that contained some unnecessary point pair features decreases the recognition performance and increases computational efficiency. To address this issue, in this paper, we introduce a novel strategy for building a global model descriptor using stably observed point pairs. The stably observed point pairs are calculated from the partial view point clouds which are rendered by the virtual camera from various viewpoints. The global model descriptor is extracted from the stably observed point pairs and then stored in a hash table. Experiments on several datasets show that our proposed method reduces redundant point pair features and achieves better compromise of speed vs accuracy.

Topics & Concepts

Point cloudPoseComputer scienceArtificial intelligencePoint (geometry)Computer visionFeature (linguistics)Pattern recognition (psychology)Cognitive neuroscience of visual object recognition3D pose estimationHash functionObject (grammar)MathematicsPhilosophyGeometryComputer securityLinguisticsRobotics and Sensor-Based LocalizationRobot Manipulation and Learning3D Surveying and Cultural Heritage