Separating 3D point clouds into individual instances is an important task for 3D vision. It is challenging due to the unknown and varying number of instances in a scene. Existing deep learning based works focus on a two-step pipeline: first learn a feature embedding and then cluster the points. Such a two-step pipeline leads to disconnected intermediate objectives. In this paper, we propose an integrated reformulation of 3D instance segmentation as a per-point classification problem. We propose ICM-3D, a single-step method to segment 3D instances via instantiated categorization. The augmented category information is automatically constructed from 3D spatial positions. We conduct extensive experiments to verify the effectiveness of ICM-3D and show that it obtains inspiring performance across multiple frameworks, backbones and benchmarks.
翻译:将3D点云分解为单个情况是三D愿景的一项重要任务。由于场景中的情况未知且数量不同,这具有挑战性。现有的深层学习基础工作侧重于两步管道:首先学习嵌入的特征,然后将点分组。这种两步管道导致断开的中间目标。在本文中,我们提议将3D例分解作为一点分类问题进行综合重拟。我们提议采用ICM-3D这一单步方法,通过即时分类,将分段3D例分解为单步方法。增加的类别信息从三维空间位置自动构建。我们进行了广泛的实验,以核实ICM-3D的有效性,并表明它获得了多个框架、主干线和基准的激励性业绩。