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The detection of occluded objects and small objects (including distant objects) by autonomous vehicles is still at a low level. Even multi-sensor fusion cannot solve this problem well. V2V cooperative perception has over-the-horizon and wide-range perception capabilities, and can effectively perceive occluded objects and small objects. It has a vast potential for development and a very high performance ceiling. In this paper, a V2V cooperative perception framework is established. We partition the sensing region and perform different information fusion and clustering strategies in different regions to achieve point-cloud level information fusion with low information transmission cost. We also specifically optimize the positioning error and information fusion error of the cooperative vehicles. We devise a two-stage clustering algorithm for V2V cooperative perception. In the first stage, we propose Adaptive Grid Refinement Clustering (AGRC), which achieves better preliminary clustering results in a very short time. In the second stage, we design Scan Line Run Clustering for Multi-vehicle Collaboration (SLR-MVC) to segment the under-segmented objects further, while correcting the object boundaries and eliminating the effects of noise points and point clouds missed by ground segmentation to get accurate clustering results.
Han et al. (Tue,) studied this question.