From Points to Parts: 3D Object Detection From Point Cloud With Part-Aware and Part-Aggregation Network
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Xiaogang Wang | Jianping Shi | Zhe Wang | Shaoshuai Shi | Hongsheng Li | Xiaogang Wang | Zhe Wang | Jianping Shi | Hongsheng Li | Shaoshuai Shi
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