Point Density-aware Channel-wise Transformer for LiDAR 3D Object Detection

Fan Yang, Enzeng Dong, Jigang Tong, Sen Yang, Shengzhi Du
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Abstract

We present a two-stage 3D object detection framework from point clouds, named Point Density-aware Channel-wise Transformer (PD-CT3D), which investigate the property of point density. This architecture uses 3D sparse CNN to effectively generate high-quality proposals at the first stage, then integrates the inherent property of point density and 3D CNN-based voxel features by density-aware proposal grid pooling. Specifically, each generated proposal from the first stage is divided into grids to aggregate corresponding voxel-wise features and raw point-based features for encoding the representative features from the whole scene. Subsequently, a channel-wise encoder-decoder transformer is adopted to extract the encoded density-aware features and decode them into a global representation for final refinement. Experiments on the widely used KITTI dataset show that the PD-CT3D achieves competitive performance among state-of-the-art methods.
用于LiDAR 3D目标检测的点密度感知通道变压器
我们提出了一种基于点云的两阶段三维目标检测框架,称为点密度感知通道变压器(PD-CT3D),该框架研究了点密度的特性。该架构首先利用3D稀疏CNN有效生成高质量的建议,然后通过密度感知的建议网格池化,将点密度的固有属性与基于3D CNN的体素特征相结合。具体来说,从第一阶段生成的每个建议被分成网格来聚合相应的体素特征和原始的基于点的特征,用于编码来自整个场景的代表性特征。随后,采用通道式编码器-解码器转换器提取编码的密度感知特征,并将其解码为全局表示以进行最终细化。在广泛使用的KITTI数据集上的实验表明,PD-CT3D在最先进的方法中具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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