3D Instance Segmentation Using Deep Learning on RGB-D Indoor Data
Siddiqui Muhammad Yasir, Amin Muhammad Sadiq, Hyunsik Ahn

TL;DR
This paper introduces a deep learning method for 3D instance segmentation using RGB-D data, adapting 2D Mask R-CNN with a point rendering module to improve recognition and segmentation of objects in indoor environments.
Contribution
It presents a novel integration of 2D Mask R-CNN with depth information for efficient 3D instance segmentation in indoor scenes.
Findings
Effective segmentation of 3D object instances using RGB-D data
Improved recognition accuracy over traditional methods
Supports robotic object handling in indoor environments
Abstract
3D object recognition is a challenging task for intelligent and robot systems in industrial and home indoor environments. It is critical for such systems to recognize and segment the 3D object instances that they encounter on a frequent basis. The computer vision, graphics, and machine learning fields have all given it a lot of attention. Traditionally, 3D segmentation was done with hand-crafted features and designed approaches that did not achieve acceptable performance and could not be generalized to large-scale data. Deep learning approaches have lately become the preferred method for 3D segmentation challenges by their great success in 2D computer vision. However, the task of instance segmentation is currently less explored. In this paper, we propose a novel approach for efficient 3D instance segmentation using red green blue and depth (RGB-D) data based on deep learning. The 2D…
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