Part Segmentation and Motion Estimation for Articulated Objects with Dynamic 3D Gaussians
Jun-Jee Chao, Qingyuan Jiang, Volkan Isler

TL;DR
This paper introduces a novel method for joint part segmentation and motion estimation of articulated objects from unordered, occlusion-prone point cloud sequences using a 3D Gaussian-based representation, outperforming existing methods.
Contribution
The authors propose a Gaussian-based representation for articulated objects that enables robust joint segmentation and motion estimation without relying on point correspondences.
Findings
Outperforms existing methods in occlusion scenarios.
More robust to missing points than prior approaches.
Achieves 13% higher segmentation accuracy on challenging datasets.
Abstract
Part segmentation and motion estimation are two fundamental problems for articulated object motion analysis. In this paper, we present a method to solve these two problems jointly from a sequence of observed point clouds of a single articulated object. The main challenge in our problem setting is that the point clouds are not assumed to be generated by a fixed set of moving points. Instead, each point cloud in the sequence could be an arbitrary sampling of the object surface at that particular time step. Such scenarios occur when the object undergoes major occlusions, or if the dataset is collected using measurements from multiple sensors asynchronously. In these scenarios, methods that rely on tracking point correspondences are not appropriate. We present an alternative approach based on a compact but effective representation where we represent the object as a collection of simple…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Human Pose and Action Recognition · Robot Manipulation and Learning
