Litcius/Paper detail

UnsupervisedR&R: Unsupervised Point Cloud Registration via Differentiable Rendering

Mohamed El Banani, Luya Gao, Justin Johnson

202141 citationsDOI

Abstract

Aligning partial views of a scene into a single whole is essential to understanding one’s environment and is a key component of numerous robotics tasks such as SLAM and SfM. Recent approaches have proposed end-to-end systems that can outperform traditional methods by leveraging pose supervision. However, with the rising prevalence of cameras with depth sensors, we can expect a new stream of raw RGB-D data without the annotations needed for supervision. We propose UnsupervisedR&R: an end-to-end unsupervised approach to learning point cloud registration from raw RGB-D video. The key idea is to leverage differentiable alignment and rendering to enforce photometric and geometric consistency between frames. We evaluate our approach on indoor scene datasets and find that we out-perform existing traditional approaches with classical and learned descriptors while being competitive with supervised geometric point cloud registration approaches.

Topics & Concepts

Point cloudComputer scienceArtificial intelligenceRendering (computer graphics)Leverage (statistics)RGB color modelComputer visionDifferentiable functionKey (lock)RoboticsConsistency (knowledge bases)RobotMathematicsMathematical analysisComputer security3D Surveying and Cultural HeritageRobotics and Sensor-Based Localization3D Shape Modeling and Analysis