PAConv: Position Adaptive Convolution With Dynamic Kernel ...
PAConv: Position Adaptive Convolution with Dynamic Kernel Assembling on Point Clouds Mutian Xu1* Runyu Ding1* Hengshuang Zhao2 Xiaojuan Qi1† 1The University of Hong Kong 2University of Oxford mino1018@outlook.com, {ryding, xjqi}@eee.hku.hk, hengshuang.zhao@eng.ox.ac.uk
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