Title :
Global location of mobile robots using Artificial Neural Networks in omnidirectional images
Author :
Almeida Bessa, Jessyca ; Almeida Barroso, Darlan ; Rego da Rocha Neto, Ajalmar ; Ripardo de Alexandria, Auzuir
Author_Institution :
Inst. Fed. do Ceara (IFCE), Fortaleza, Brazil
Abstract :
This paper presents a comparison of Mobile Robots localization methods through Artifical Neural Networks in omnidirectional images. After an overview about Mobile Robotics, this work focuses on omnidirectional vision. The motivation for this work is the implementation and comparison of feature extraction techniques that can be used in omnidirectional images seeking invariance to rotation and building descriptors that can be used in Neural Networks. Five feature extraction techniques with their adaptations for omnidirectional image were presented and compared. The results were shown in order to choose the most suitable feature extractor for this application. The feature extractors are evaluated with respect to time processing and quality of scene description (accuracy of Artificial Neural Network) The results are satisfactory and elect GIST descriptor as the most suitable for the application.
Keywords :
feature extraction; mobile robots; neural nets; robot vision; GIST descriptor; artificial neural networks; feature extraction techniques; mobile robot localization methods; omnidirectional images; omnidirectional vision; scene description quality; Artificial neural networks; Feature extraction; Gases; Mobile communication; Mobile robots; Software; Mobile robots; Pattern Recognition; omnidirectional images;
Journal_Title :
Latin America Transactions, IEEE (Revista IEEE America Latina)
DOI :
10.1109/TLA.2015.7387248