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To enhance the ability of Cyber Physical Social Intelligence (CPSI) to process three-dimensional spatial information, we investigate the problem of object detection in 3D Light laser Detection And Ranging (LiDAR) point clouds. Traditional point-based processing pipelines typically reduce memory and computational burden by progressively downsampling the input point cloud using task-agnostic random sampling or farthest point sampling. However, these methods often ignore the inherent structural information amongst the points. To address this gap, we introduce a novel structure-aware point cloud pruning technique that utilizes normal vector scoring to capture the critical structural details within point clouds. Furthermore, we implement a Learning-based Structure-Aware Pruning (LSAP) method to avoid the high computational cost associated with top-k selection algorithms. Comprehensive experiments on the ModelNet40 dataset verify the effectiveness of our method. Notably, our LSAP compressed model achieves a remarkable accuracy of 91.2% on ModelNet40 dataset with a pruning rate of 93.5%, attaining up to an 15.9× reduction in FLoating point Operations Per second (FLOPs) with less than 2.3% accuracy degradation. This significantly outperforms baseline pruning methods, delivering an accuracy improvement of 1.3%.
The articles published in this open access journal are distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/).
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