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Semantic 3D Mapping from Deep Image Segmentation

Francisco Martí­n, Fernando González, José Miguel Guerrero Hernández, Manuel F. Fernández, Jonatan Ginés

Year
2021
Citations
4
Access
Open access

Abstract

The perception and identification of visual stimuli from the environment is a fundamental capacity of autonomous mobile robots. Current deep learning techniques make it possible to identify and segment objects of interest in an image. This paper presents a novel algorithm to segment the object’s space from a deep segmentation of an image taken by a 3D camera. The proposed approach solves the boundary pixel problem that appears when a direct mapping from segmented pixels to their correspondence in the point cloud is used. We validate our approach by comparing baseline approaches using real images taken by a 3D camera, showing that our method outperforms their results in terms of accuracy and reliability. As an application of the proposed algorithm, we present a semantic mapping approach for a mobile robot’s indoor environments.

Keywords

Artificial intelligenceComputer scienceComputer visionPixelSegmentationObject (grammar)Point cloud

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