A Comparative Evaluation of Learned Feature Descriptors on Hybrid Monocular Visual SLAM Methods

  • Hudson Bruno UNICAMP
  • Esther Colombini UNICAMP

Resumo


Classical Visual Simultaneous Localization and Mapping (VSLAM) algorithms can be easily induced to fail when either the robot’s motion or the environment is too challenging. The use of Deep Neural Networks to enhance VSLAM algorithms has recently achieved promising results, which we call hybrid methods. In this paper, we compare the performance of hybrid monocular VSLAM methods with different learned feature descriptors. To this end, we propose a set of experiments to evaluate the robustness of the algorithms under different environments, camera motion, and camera sensor noise. Experiments conducted on KITTI and Euroc MAV datasets confirm that learned feature descriptors can create more robust VSLAM systems.
Palavras-chave: Cameras, Pipelines, Feature extraction, Visualization, Simultaneous localization and mapping, Robustness, Optimization
Publicado
09/11/2020
Como Citar

Selecione um Formato
BRUNO, Hudson; COLOMBINI, Esther. A Comparative Evaluation of Learned Feature Descriptors on Hybrid Monocular Visual SLAM Methods. In: SIMPÓSIO BRASILEIRO DE ROBÓTICA E SIMPÓSIO LATINO AMERICANO DE ROBÓTICA (SBR/LARS), 17. , 2020, Natal. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2020 . p. 180-185.