Login / Signup

Indoor Signs Detection for Visually Impaired People: Navigation Assistance Based on a Lightweight Anchor-Free Object Detector.

Yahia F SaidMohamed AtriMarwan Ali AlbaharAhmed Ben AtitallahYazan Ahmad Alsariera
Published in: International journal of environmental research and public health (2023)
Facilitating the navigation of visually impaired people in indoor environments requires detecting indicating signs and informing them. In this paper, we proposed an indoor sign detection based on a lightweight anchor-free object detection model called FAM-centerNet. The baseline model of this work is the centerNet, which is an anchor-free object detection model with high performance and low computation complexity. A Foreground Attention Module (FAM) was introduced to extract target objects in real scenes with complex backgrounds. This module segments the foreground to extract relevant features of the target object using midground proposal and boxes-induced segmentation. In addition, the foreground module provides scale information to improve the regression performance. Extensive experiments on two datasets prove the efficiency of the proposed model for detecting general objects and custom indoor signs. The Pascal VOC dataset was used to test the performance of the proposed model for detecting general objects, and a custom dataset was used for evaluating the performance in detecting indoor signs. The reported results have proved the efficiency of the proposed FAM in enhancing the performance of the baseline model.
Keyphrases
  • air pollution
  • working memory
  • particulate matter
  • health risk
  • real time pcr
  • deep learning
  • label free
  • magnetic resonance
  • single cell
  • high glucose
  • risk assessment
  • anti inflammatory
  • rna seq