Abstract

In this study, we propose an assistive system for helping visually impaired people walk outdoors. This assistive system contains an embedded system—Jetson AGX Xavier (manufacture by Nvidia in Santa Clara, CA, USA) and a binocular depth camera—ZED 2 (manufacture by Stereolabs in San Francisco, CA, USA). Based on the CNN neural network FAST-SCNN and the depth map obtained by the ZED 2, the image of the environment in front of the visually impaired user is split into seven equal divisions. A walkability confidence value for each division is computed, and a voice prompt is played to guide the user toward the most appropriate direction such that the visually impaired user can navigate a safe path on the sidewalk, avoid any obstacles, or walk on the crosswalk safely. Furthermore, the obstacle in front of the user is identified by the network YOLOv5s proposed by Jocher, G. et al. Finally, we provided the proposed assistive system to a visually impaired person and experimented around an MRT station in Taiwan. The visually impaired person indicated that the proposed system indeed helped him feel safer when walking outdoors. The experiment also verified that the system could effectively guide the visually impaired person walking safely on the sidewalk and crosswalks.

Highlights

  • Scholars estimate that the number of visually impaired people worldwide will increase from 38.5 million in 2020 to more than 115 million by 2050 [1]

  • Experiments We experimented with the proposed assistive system to guide a visually impaired person walking on sidewalks and crosswalks

  • This study has proposed a wearable assistive system to help the visually impaired walk safely on the sidewalk or crosswalk without hitting obstacles

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Summary

Introduction

Scholars estimate that the number of visually impaired people worldwide will increase from 38.5 million in 2020 to more than 115 million by 2050 [1]. A wearable navigation device [7] with an RGB-D camera, a gyroscope, and a smartphone were proposed to guide the user in bypassing obstacles when the visually impaired travel through indoor and outdoor environments. In the paper [15], the authors proposed a sensor-based wearable device for the walking assistance of visually impaired people. Paper [19] developed a navigation assistant for the visually impaired to effectively avoid obstacles when walking outdoors using the CNN-based object detection, tracking, and recognition methods. It does not guide the visually impaired user to walk on either the sidewalk or the crosswalks. The conclusions and future works are drawn in the final section

The Main Method
Depth Map and the Openness Values
The Selection of Walking Direction
Walking Guide Strategy
Discussions
Findings
Conclusions
Full Text
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