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A Deep Learning-Based Recognition Approach for the Conversion of Multilingual Braille Images 被引量:2
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作者 abdulmalik alsalman Abdu Gumaei +1 位作者 Amani alsalman Suheer Al-Hadhrami 《Computers, Materials & Continua》 SCIE EI 2021年第6期3847-3864,共18页
Braille-assistive technologies have helped blind people to write,read,learn,and communicate with sighted individuals for many years.These technologies enable blind people to engage with society and help break down com... Braille-assistive technologies have helped blind people to write,read,learn,and communicate with sighted individuals for many years.These technologies enable blind people to engage with society and help break down communication barriers in their lives.The Optical Braille Recognition(OBR)system is one example of these technologies.It plays an important role in facilitating communication between sighted and blind people and assists sighted individuals in the reading and understanding of the documents of Braille cells.However,a clear gap exists in current OBR systems regarding asymmetric multilingual conversion of Braille documents.Few systems allow sighted people to read and understand Braille documents for self-learning applications.In this study,we propose a deep learning-based approach to convert Braille images into multilingual texts.This is achieved through a set of effective steps that start with image acquisition and preprocessing and end with a Braille multilingual mapping step.We develop a deep convolutional neural network(DCNN)model that takes its inputs from the second step of the approach for recognizing Braille cells.Several experiments are conducted on two datasets of Braille images to evaluate the performance of the DCNN model.The rst dataset contains 1,404 labeled images of 27 Braille symbols representing the alphabet characters.The second dataset consists of 5,420 labeled images of 37 Braille symbols that represent alphabet characters,numbers,and punctuation.The proposed model achieved a classication accuracy of 99.28%on the test set of the rst dataset and 98.99%on the test set of the second dataset.These results conrm the applicability of the DCNN model used in our proposed approach for multilingual Braille conversion in communicating with sighted people. 展开更多
关键词 Optical Braille recognition OBR Braille cells BLIND sighted deep learning deep convolutional neural network
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