Papers
arxiv:2012.12412

Optical Braille Recognition Using Object Detection CNN

Published on Dec 22, 2020
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Abstract

An object detection convolutional neural network is used for robust Braille recognition, achieving high accuracy and performance across deformed and perspective-distorted images.

AI-generated summary

This paper proposes an optical Braille recognition method that uses an object detection convolutional neural network to detect whole Braille characters at once. The proposed algorithm is robust to the deformation of the page shown in the image and perspective distortions. It makes it usable for recognition of Braille texts being shoot on a smartphone camera, including bowed pages and perspective distorted images. The proposed algorithm shows high performance and accuracy compared to existing methods. We also introduce a new "Angelina Braille Images Dataset" containing 240 annotated photos of Braille texts. The proposed algorithm and dataset are available at GitHub.

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