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The repo proposes a pipeline for indoor mapping by use of 3D meshes from MVS RGB images and conversion into point clouds for segmentation.

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3D mapping and Object Segmentation

Abstract

Indoor navigation for robots has become a crucial part of their use in such environments. Mapping an environment allows autonomous navigation to detect and avoid obstacles. In this paper, we present a novel approach that utilizes RGB images to segment indoor environments. The paper introduces a method for indoor mapping that can be used for robot navigation by first creating a 3D mesh from Multi-View Stereo (MVS) RGB images and then converting this mesh into a point cloud for environmental segmentation. We carry out experiments to establish a baseline for our method. We present our findings and provide avenues for future work.

Pipeline

Pipeline

Results

Our explanation of the results can be found here. A sample has been displayed below.

Results

Credits

We would like to thank the authors of the respective papers whose work we used and for opensourcing their code on github.

  1. Simple Recon

  2. PVCNN

I would also like to thank my teammates for their contributions and ideas in this project.

  1. Nishant

  2. Rishikesh

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The repo proposes a pipeline for indoor mapping by use of 3D meshes from MVS RGB images and conversion into point clouds for segmentation.

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