Intelligent wayfinding vehicle design based on visual recognition
Zhanyu Guo, Shenyuan Guo, Jialong Wang, Yifan Feng

TL;DR
This paper presents an intelligent drug delivery trolley that uses visual recognition to identify routes and room numbers, enabling efficient, accurate, and cooperative delivery of drugs in a hospital setting.
Contribution
The design introduces a visual recognition-based navigation system and cooperative communication for drug delivery trolleys, enhancing accuracy and efficiency over traditional methods.
Findings
Accurately identifies room numbers and routes.
Demonstrates high-speed, precise drug delivery.
Enables cooperative operation between trolleys.
Abstract
Intelligent drug delivery trolley is an advanced intelligent drug delivery equipment. Compared with traditional manual drug delivery, it has higher drug delivery efficiency and lower error rate. In this project, an intelligent drug delivery car is designed and manufactured, which can recognize the road route and the room number of the target ward through visual recognition technology. The trolley selects the corresponding route according to the identified room number, accurately transports the drugs to the target ward, and can return to the pharmacy after the drugs are delivered. The intelligent drug delivery car uses DC power supply, and the motor drive module controls two DC motors, which overcomes the problem of excessive deviation of turning angle. The trolley line inspection function uses closed-loop control to improve the accuracy of line inspection and the controllability of…
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Taxonomy
TopicsRobotic Path Planning Algorithms · QR Code Applications and Technologies · Augmented Reality Applications
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
