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RGB-DI Images and Full Convolution Neural Network-Based Outdoor Scene Understanding for Mobile Robots

Zengshuai Qiu, Yan Zhuang, Fei Yan, Huosheng Hu, Wei Wang

Year
2018
Citations
59

Abstract

This paper presents a multisensor-based approach to outdoor scene understanding of mobile robots. Since laser scanning points in 3-D space are distributed irregularly and unbalanced, a projection algorithm is proposed to generate RGB, depth, and intensity (RGB-DI) images so that the outdoor environments can be optimally measured with a variable resolution. The 3-D semantic segmentation in RGB-DI cloud points is, therefore, transformed to the semantic segmentation in RGB-DI images. A full convolution neural network (FCN) model with deep layers is designed to perform semantic segmentation of RGB-DI images. According to the exact correspondence between each 3-D point and each pixel in a RGB-DI image, the semantic segmentation results of the RGB-DI images are mapped back to the original point clouds to realize the 3-D scene understanding. The proposed algorithms are tested on different data sets, and the results show that our RGB-DI image and FCN model-based approach can provide a superior performance for outdoor scene understanding. Moreover, real-world experiments were conducted on our mobile robot platform to show the validity and practicability of the proposed approach.

Keywords

RGB color modelArtificial intelligenceComputer visionComputer sciencePoint cloudSegmentationConvolution (computer science)Mobile robotConvolutional neural networkImage segmentation

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