Banknote Recognition for Visually Impaired People (Case of Ethiopian note)
Nuredin Ali Abdelkadir

TL;DR
This paper presents a mobile app using AI/ML to recognize Ethiopian banknotes, aiding visually impaired individuals by providing voice descriptions of currency with high accuracy.
Contribution
The paper introduces a mobile application with a trained model achieving 98.9% accuracy for Ethiopian banknote recognition, tailored for visually impaired users.
Findings
Achieved 98.9% classification accuracy on dataset
Developed a voice-enabled app for Ethiopian currency recognition
Accessible for visually impaired users in Ethiopia
Abstract
Currency is used almost everywhere to facilitate business. In most developing countries, especially the ones in Africa, tangible notes are predominantly used in everyday financial transactions. One of these countries, Ethiopia, is believed to have one of the world highest rates of blindness (1.6%) and low vision (3.7%). There are around 4 million visually impaired people; With 1.7 million people being in complete vision loss. Those people face a number of challenges when they are in a bus station, in shopping centers, or anywhere which requires the physical exchange of money. In this paper, we try to provide a solution to this issue using AI/ML applications. We developed an Android and IOS compatible mobile application with a model that achieved 98.9% classification accuracy on our dataset. The application has a voice integrated feature that tells the type of the scanned currency in…
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Taxonomy
TopicsCurrency Recognition and Detection
