Detecting 3D keypoints from point clouds is important for shape reconstruction, while this work investigates the dual question: can shape reconstruction benefit 3D keypoint detection? Existing methods either seek salient features according to statistics of different orders or learn to predict keypoints that are invariant to transformation. Nevertheless, the idea of incorporating shape reconstruction into 3D keypoint detection is under-explored. We argue that this is restricted by former problem formulations. To this end, a novel unsupervised paradigm named SNAKE is proposed, which is short for shape-aware neural 3D keypoint field. Similar to recent coordinate-based radiance or distance field, our network takes 3D coordinates as inputs and predicts implicit shape indicators and keypoint saliency simultaneously, thus naturally entangling 3D keypoint detection and shape reconstruction. We achieve superior performance on various public benchmarks, including standalone object datasets ModelNet40, KeypointNet, SMPL meshes and scene-level datasets 3DMatch and Redwood. Intrinsic shape awareness brings several advantages as follows. (1) SNAKE generates 3D keypoints consistent with human semantic annotation, even without such supervision. (2) SNAKE outperforms counterparts in terms of repeatability, especially when the input point clouds are down-sampled. (3) the generated keypoints allow accurate geometric registration, notably in a zero-shot setting. Codes are available at https://github.com/zhongcl-thu/SNAKE
翻译:从点云中检测 3D 关键点对于重建的形状很重要, 而这项工作调查了双重问题: 能够影响重建收益 3D 关键点检测? 现有方法要么根据不同命令的统计寻找显著特征, 要么根据不同命令的统计寻找显著特征, 或者学习同时预测不易变换的关键点。 然而, 将形状重建纳入 3D 关键点检测的理念尚未深入探讨。 我们争辩说, 这一点受到以前的问题配方的限制。 为此, 提出了一个名为 SNAKE 的未受监督的新模式, 用于形状神经3D关键点字段。 类似于最近的基于协调的亮点或距离字段, 我们的网络以 3D坐标坐标作为输入和预测隐含的形状指标和关键点显著特征, 从而自然地将 3D 关键点检测和形状影响重建。 我们在各种公共基准上取得了优异性性表现, 包括独立对象数据集模型 Net40、 KeypointNet、 SMPL meshes 和现场一级数据集 3DMDMT & Redwood 。 Indris mass confang 认识了以下几个 。 (SNAKE) (G) ) 在不进行精确监管中, 明显地定义 3- decamp- decreclimstrut 3) 3DVismillmental- kdeal- kdemodminutdminutts 。