Multi-objective Evaluation of Deep Learning Based Semantic Segmentation for Autonomous Driving Systems

Cynthia Olvera, Yoshio Rubio, Oscar Montiel

Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

2 Scopus citations

Abstract

Recent applications of deep learning (DL) architectures for semantic segmentation had led to a significant development in autonomous driving systems (ADS). Most of the semantic segmentation applications for ADS consider a plethora of classes. Nevertheless, we believe that focusing only on the segmentation of drivable roads, sidewalks, traffic signs, and cars, can drive the improvement of navigation and control techniques in autonomous vehicles. In this study, some state-of-the-art topologies are analyzed to find a strategy that can achieve a uniform performance for the four classes. We propose a multiple objective evaluation method with the purpose of finding the non-dominated solutions in different DL architectures. Numerical results are shown using CityScapes, SYNTHIA, and CamVid datasets.

Original languageEnglish
Title of host publicationStudies in Computational Intelligence
PublisherSpringer
Pages299-311
Number of pages13
DOIs
StatePublished - 2020

Publication series

NameStudies in Computational Intelligence
Volume862
ISSN (Print)1860-949X
ISSN (Electronic)1860-9503

Keywords

  • Autonomous vehicles
  • Deep learning
  • Road detection
  • Semantic segmentation

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