Recent advances on 3D object detection heavily rely on how the 3D data are represented, \emph{i.e.}, voxel-based or point-based representation. Many existing high performance 3D detectors are point-based because this structure can better retain precise point positions. Nevertheless, point-level features lead to high computation overheads due to unordered storage. In contrast, the voxel-based structure is better suited for feature extraction but often yields lower accuracy because the input data are divided into grids. In this paper, we take a slightly different viewpoint -- we find that precise positioning of raw points is not essential for high performance 3D object detection and that the coarse voxel granularity can also offer sufficient detection accuracy. Bearing this view in mind, we devise a simple but effective voxel-based framework, named Voxel R-CNN. By taking full advantage of voxel features in a two stage approach, our method achieves comparable detection accuracy with state-of-the-art point-based models, but at a fraction of the computation cost. Voxel R-CNN consists of a 3D backbone network, a 2D bird-eye-view (BEV) Region Proposal Network and a detect head. A voxel RoI pooling is devised to extract RoI features directly from voxel features for further refinement. Extensive experiments are conducted on the widely used KITTI Dataset and the more recent Waymo Open Dataset. Our results show that compared to existing voxel-based methods, Voxel R-CNN delivers a higher detection accuracy while maintaining a real-time frame processing rate, \emph{i.e}., at a speed of 25 FPS on an NVIDIA RTX 2080 Ti GPU. The code is available at \url{https://github.com/djiajunustc/Voxel-R-CNN}.
翻译:3D 对象探测的最新进步在很大程度上依赖于 3D 数据的表达方式, {emph{ i.e.} 、 voxel 或点基的表示方式。 许多现有的高性能 3D 探测器是点基的, 因为这种结构可以更好地保留精确的点位置。 然而, 点性特征导致高计算间接费用, 因为没有排序的存储。 相反, 基于 voxel 的结构更适合特性提取, 但由于输入的数据被分为网格, 其精确度往往较低。 在本文中, 我们采用略微不同的视角 -- 我们发现, 精确定位生点对于高性能 3D 对象的检测并不必要, 而且 粗正性 3D 3D 3D 的 3D 3D 探测器也能够提供足够准确的检测结果。 记住这个观点, 我们设计了一个简单但有效的 voxel 框架, 在两个阶段方法中, 通过充分利用 vowx 特性, 我们的方法可以与基于 状态的点基数模型的模型实现可比的检测准确性。