Abstract

Recognizing and localizing queried objects in point clouds is a critical technique for robotic manipulation and bin picking tasks. Even though it has been steadily studied, it is still a challenging task for scenes with heavy occlusion and clutter. To copy with this intractable problem, this paper presents a fast and robust 3D object recognition framework, especially an efficient high compatibility correspondence grouping (HCCG) technique achieved by the correspondence ranking, clustering and expanding operations. Utilizing the HCCG technique, we first cluster the compatible correspondences into several high compatibility correspondence groups. Then, for each group, a 6DoF pose hypothesis is generated by using a point pair feature constraints (PPFCs)-based outlier removal module and a local reference frame (LRF)-based pose estimation algorithm. Finally, a robust pose verification operator is carried out to reject the false positive pose hypotheses and pick up the correct target object pose. Our approach is not only suitable for the multi-object recognition task, but also inherently yields the capability of detecting multiple instances thanks to the efficient HCCG technique. Extensive experiments on four challenging datasets show that our approach yields efficient and timely solutions and its advantages are further verified by comparing with the latest methods.

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