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Traffic light and moving object detection for a guide‐dog robot

Qiang Chen, Yinong Chen, Jinhui Zhu, Gennaro De Luca, Mei Zhang, Ying Guo

Year
2020
Citations
16
Access
Open access

Abstract

Guide dogs are helpful for visually impaired people for navigating through the streets. However, it is expensive and time consuming to train a guide dog. In addition, a guide dog cannot decide when and where to cross a street safely, and it is up to the human to decide. Here, the authors propose a framework for creating a guide dog robot by using artificial intelligence and other technologies. The proposed framework is based on an Intel UP squared board, together with a Neural Compute Stick Movidius to process the images gathered from a GoPro camera. MobileNet single shot detector (SSD) is the main framework to detect the moving objects in the environment. The final decision is made after fusing the information gathered from all the sources. The authors also apply the Amazon Alexa device for the voice communication between the guide dog robot and the visually impaired person. A prototype of the proposed system is implemented and tested. Experimental results show that the proposed framework can process the information at a traffic intersection scene and can guide a blind person to cross the street safely.

Keywords

Computer scienceIntersection (aeronautics)RobotComputer visionArtificial intelligenceProcess (computing)Object detectionPedestrianObject (grammar)Human–computer interaction

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