We present DeepICP - a novel end-to-end learning-based 3D point cloud registration framework that achieves comparable registration accuracy to prior state-of-the-art geometric methods. Different from other keypoint based methods where a RANSAC procedure is usually needed, we implement the use of various deep neural network structures to establish an end-to-end trainable network. Our keypoint detector is trained through this end-to-end structure and enables the system to avoid the inference of dynamic objects, leverages the help of sufficiently salient features on stationary objects, and as a result, achieves high robustness. Rather than searching the corresponding points among existing points, the key contribution is that we innovatively generate them based on learned matching probabilities among a group of candidates, which can boost the registration accuracy. Our loss function incorporates both the local similarity and the global geometric constraints to ensure all above network designs can converge towards the right direction. We comprehensively validate the effectiveness of our approach using both the KITTI dataset and the Apollo-SouthBay dataset. Results demonstrate that our method achieves comparable or better performance than the state-of-the-art geometry-based methods. Detailed ablation and visualization analysis are included to further illustrate the behavior and insights of our network. The low registration error and high robustness of our method makes it attractive for substantial applications relying on the point cloud registration task.
翻译:我们展示了深点-基于学习的基于端到端的3D点云登记框架,这个框架实现了与以前最先进的几何方法的可比登记准确性。 不同于通常需要RANSAC程序的其他基于关键点的方法,我们采用了各种深神经网络结构来建立端到端的可培训网络。 我们的关键点探测器通过这个端到端结构进行了培训,使该系统能够避免动态物体的推断,利用固定物体上足够突出的特征的帮助,从而实现高度稳健。 关键贡献在于,我们创新地生成这些基于对准一组候选人的概率的匹配方法,这可以提高注册的准确性。 我们的损失功能包括本地相似性和确保以上所有网络设计都能向正确方向趋同的全球几度限制。 我们用KITTI数据集和阿波罗-南贝数据集全面验证了我们方法的有效性,从而实现了高度的坚固性。 各项结果表明,我们的方法在对现有各点之间实现了可比的或更好的准确性。 高清晰度的网络注册方法包括了我们基于现状的精确度和直观性分析。