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A Prediction Method of Localizability Based on Deep Learning

As a basis of many missions, the accuracy of localization is highly important for mobile robots. For the generally used map matching based localization algorithms, the accuracy of localization, which is described by localizability, is greatly impacted by the environment. Consequently, this paper pro...

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Published in:IEEE access 2020, Vol.8, p.110103-110115
Main Authors: Gao, Yang, Wang, Shu Qi, Li, Jing Hang, Hu, Meng Qi, Xia, Hong Yao, Hu, Hui, Wang, Lai Jun
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description As a basis of many missions, the accuracy of localization is highly important for mobile robots. For the generally used map matching based localization algorithms, the accuracy of localization, which is described by localizability, is greatly impacted by the environment. Consequently, this paper proposed a novel method to predict the localizability for the map matching based localization algorithms, based on the environment map. Firstly, the uncertainty of localization in map matching and dead-reckoning is analyzed based on which entropy of localization is chosen to describe the localizability instead of the generally used covariance. Next, based upon the flow chart of the map-based localization algorithm, a localizability predictor, which is composed of three different models, is designed to predict the entropy. Here a Convolutional Neural Network (CNN) is designed for the first model to predict the entropy of localization that comes from map matching. A Long Short-Term Memory (LSTM) neural network is designed for the second model to predict the entropy that comes from the dead-reckoning. Finally, a Multilayer fully connected Neural Network (MNN) is designed for the last model to predict the entropy after fusing the entropy results that come from the two models described above. Both simulation results and experimental results have proven that the proposed predictor can offer a better estimator of localizability compared to other existing approaches.
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subjects Algorithms
Artificial neural networks
Covariance
Dead reckoning
Deep learning
Entropy
Environmental impact
Flow charts
Flow mapping
Laser beams
Localizability
map matching
Matching
mobile robot
Multilayers
neural network
Neural networks
Robot kinematics
Robot sensing systems
Uncertainty
title A Prediction Method of Localizability Based on Deep Learning
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