SSF:基于自适应体素编码和焦点稀疏卷积的稀疏点云目标检测

Yu Zhang, Zilong Wang, Yongjian Zhu, Jianxin Li
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引用次数: 0

摘要

点云物体检测正逐渐在自动驾驶任务中发挥关键作用。针对点云物体检测中对稀疏物体不敏感的问题,我们对 PVRCNN++ 的体素编码和三维骨干网络进行了改进。我们在体素特征编码时引入了自适应池化操作,以扩展每个体素内的点云信息,然后利用多层感知器提取更丰富的点云特征。在三维骨干网络上,我们采用了自适应稀疏卷积操作,使骨干网络的通道数更加灵活,从而能够适应更广泛的输入数据类型。此外,我们还集成了焦点损失(Focal Loss)功能,以解决检测任务中的类不平衡问题。在公开的 KITTI 数据集上的实验结果表明,与 PVRCNN++ 相比,它的性能有了显著提高,尤其是在行人和自行车检测任务中。具体来说,我们观察到行人检测准确率提高了 1%,自行车检测准确率提高了 2.1%。我们的检测性能也超过了其他同类检测算法。
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SSF: Sparse point cloud object detection based on self-adaptive voxel encoding and focal-sparse convolution
Point cloud object detection is gradually playing a key role in autonomous driving tasks. To address the issue of insensitivity to sparse objects in point cloud object detection, we have made improvements to the voxel encoding and 3D backbone network of the PVRCNN++. We have introduced adaptive pooling operations during voxel feature encoding to expand the point cloud information within each voxel, followed by the utilization of multi-layer perceptrons to extract richer point cloud features. On the 3D backbone network, we have employed adaptive sparse convolution operations to make the backbone network’s channel count more flexible, allowing it to accommodate a wider range of input data types. Furthermore, we have integrated Focal Loss to tackle the issue of class imbalance in detection tasks. Experimental results on the public KITTI dataset demonstrate significant improvements over the PVRCNN++, particularly in pedestrian and bicycle detection tasks. Specifically, we have observed 1% increase in detection accuracy for pedestrians and 2.1% improvement for bicycles. Our detection performance also surpasses that of other comparative detection algorithms.
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