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Weakly-Supervised Single-view Dense 3D Point Cloud Reconstruction via Differentiable Renderer

Peng Jin, Shaoli Liu, Jianhua Liu, Hao Huang, Linlin Yang, Michael Weinmann, Reinhard Klein

2021Chinese Journal of Mechanical Engineering27 citationsDOIOpen Access PDF

Abstract

Abstract In recent years, addressing ill-posed problems by leveraging prior knowledge contained in databases on learning techniques has gained much attention. In this paper, we focus on complete three-dimensional (3D) point cloud reconstruction based on a single red-green-blue (RGB) image, a task that cannot be approached using classical reconstruction techniques. For this purpose, we used an encoder-decoder framework to encode the RGB information in latent space, and to predict the 3D structure of the considered object from different viewpoints. The individual predictions are combined to yield a common representation that is used in a module combining camera pose estimation and rendering, thereby achieving differentiability with respect to imaging process and the camera pose, and optimization of the two-dimensional prediction error of novel viewpoints. Thus, our method allows end-to-end training and does not require supervision based on additional ground-truth (GT) mask annotations or ground-truth camera pose annotations. Our evaluation of synthetic and real-world data demonstrates the robustness of our approach to appearance changes and self-occlusions, through outperformance of current state-of-the-art methods in terms of accuracy, density, and model completeness.

Topics & Concepts

Artificial intelligenceComputer scienceGround truthPoint cloudComputer visionRendering (computer graphics)Robustness (evolution)RGB color modelEncoderPoseDifferentiable functionViewpoints3D reconstructionMathematicsVisual artsOperating systemChemistryMathematical analysisArtGeneBiochemistry3D Shape Modeling and AnalysisAdvanced Vision and ImagingOptical measurement and interference techniques
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