The Proceedings of JSME annual Conference on Robotics and Mechatronics (Robomec)
Online ISSN : 2424-3124
2021
Session ID : 1P1-L08
Conference information

A Self-localization Method for mobile robot Using VAE with 2D LiDAR Data Completion
*Kentaro FUKUDATakayuki NAKAMURA
Author information
CONFERENCE PROCEEDINGS RESTRICTED ACCESS

Details
Abstract

We propose AT-COMPL-VAE (VAE with autocompletion feature), which is an extension of VAE (variational autoencoder) to complement 2D LiDAR data and extract features suitable for self-localization. AT-COMPL-VAE is a multi-task neural network with three neural networks: autocompletion, which completes the missing 2D LiDAR data; encoder, which compresses the input data; and decoder, which restores the original input data from the compressed data. In the simulation experiments conducted to verify the effectiveness of the proposed method, we evaluated the performance of 2D LiDAR data complementation and the performance of self-localization using the complemented data. It is demonstrated that the data complemented by the proposed method is close to the true value compared to the data complemented by random values and that the success rate of self-localization using the complemented data was improved by more than 80% compared to the case using the data with missing data due to occlusion.

Content from these authors
© 2021 The Japan Society of Mechanical Engineers
Previous article Next article
feedback
Top