2020
DOI: 10.35940/ijitee.e2820.039520
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Machine Learning Based Braille Transliteration of O dia Language

Vinod Jha*,
Dr. K. Parvathi

Abstract: Braille transliteration of natural languages is required for providing a better opportunity of learning and creating opportunities of ceceity people. It allows a bigger diaspora of non-blind teachers to have written communication with blind people. The present paper proposes a method of Braille transliteration of Handwritten and printed Odia characters automatically into Braille. The current work proposes a method of Braille transliteration of Handwritten Odia text with industry applicable accuracy. The method… Show more

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Cited by 5 publications
(8 citation statements)
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“…Jha and Parvathi conducted a study that used an SVM classifier trained by extracting features using the histogram of oriented gradient (HOG) feature extraction method to translate handwritten Odia and Hindi text into Braille. Converting Odia [36] and Hindi [25] using this classification technique, 99% and 94.5% accuracies were achieved, respectively, into Braille. Using the same technique, 99% and 80% accuracies were achieved for converting handwritten English and Sinhala documents into Braille text [35].…”
Section: Discussionmentioning
confidence: 99%
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“…Jha and Parvathi conducted a study that used an SVM classifier trained by extracting features using the histogram of oriented gradient (HOG) feature extraction method to translate handwritten Odia and Hindi text into Braille. Converting Odia [36] and Hindi [25] using this classification technique, 99% and 94.5% accuracies were achieved, respectively, into Braille. Using the same technique, 99% and 80% accuracies were achieved for converting handwritten English and Sinhala documents into Braille text [35].…”
Section: Discussionmentioning
confidence: 99%
“…with accuracies of (99.95%, 99.95%, 99.85%, 99.85%, 99.80%, 99.64%, and 99.64%), with AUC (0.9899, 0.9997, 0.9992, 0.9495, 0.9615, 0.9495, and 0.9683, respectively) with TPR >90% and TNR >99%, as shown in Figure 4(b). For category-3 (27)(28)(29)(30)(31)(32)(33)(34)(35)(36)(37)(38)(39), Qaaf-Bri Yay ( ‫ے‬ ‫ﻕ‬ ), maximum TA of 100% is achieved for class 35 (Gol Hy), 37 (Hamza), and 28 (Kaaf ) ( ‫ﻩ‬ , ‫ء‬ , ‫ﻙ‬…”
Section: Svmmentioning
confidence: 99%
“…Braille has been converted into other languages like Urdu [40,41], Arabic [42][43][44], Hindi [19,45], Bengali [46,47] Tamil [22], Sinhala [23], Kannada [48], ODIA [49], Chinese [50,51], Korean [52] and Gujarati [53][54][55].…”
Section: Literature Reviewmentioning
confidence: 99%
“…This study used robust supervised machine learning techniques like SVM, KNN and Decision Trees to predict English Braille characters correctly. Even with small datasets, these algorithms are well-known for better text prediction [49]. These machine learning techniques were combined with the RICA-based feature extraction method, as it helps improve accuracy, reduce the risk of overfitting the model and speeds up the training process.…”
Section: English Braille Character Recognitionmentioning
confidence: 99%
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