支持泰米尔语听障学生的智能系统

Ahamed Thahseen, W.N.I. Tissera, S. Vidhanaarachchi, N. Aaron., D.C.N Rajapaksha, P.V Fernando, Thisuru Dias, Thatamathy Fernando
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摘要

这篇研究论文介绍了一个开创性的智能系统,旨在帮助听力受损的学生理解泰米尔语口语,这是斯里兰卡的第二语言。该系统通过结合尖端的深度学习技术,包括卷积神经网络、隐马尔可夫模型和循环神经网络,在自动语音识别框架内实现高效的特征提取和序列建模,解决了这些学生面临的挑战。此外,本文还提出了一种利用先进的手势识别算法和泰米尔语手语综合数据集自动识别泰米尔语手势的新方法。该系统包含四种主要分类方法,可将泰米尔语手语转换为文本。文本到泰米尔语手语,唇读到泰米尔语手语,正常声音到泰米尔语手语-手语到正常声音和物理对象识别文本和泰米尔语手语。值得注意的是,该系统取得了显著的效果,其准确率达到了0.99%,超过了现有的自动语音识别和文本到语音系统。这一重大突破在改善泰米尔语地区听障学生的学习体验方面具有巨大潜力。此外,该系统的适应性允许未来扩展以支持其他语言,使其在不同的教育和交流环境中具有高度的通用性。
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Smart System to Support Hearing Impaired Students in Tamil
This research paper introduces a groundbreaking smart system designed to assist hearing-impaired students in comprehending spoken Tamil, the second language in Sri Lanka. The system addresses the challenges faced by these students by incorporating cutting-edge deep learning techniques, including Convolutional Neural Networks, Hidden Markov Models, and Recurrent Neural Networks, for efficient feature extraction and sequence modeling within an Automatic Speech Recognition framework. Additionally, the paper proposes a novel method for automatically recognizing Tamil Sign Language gestures using advanced hand gesture recognition algorithms and a comprehensive dataset of Tamil Sign Language. The system encompasses four primary classification approaches, enabling the conversion of Tamil Sign Language to Text. Text to Tamil Sign Language, lip reading to Tamil Sign Language, Normal voice to Tamil Sign Language -Sign Language to Normal Voice and physical object identification to both text and Tamil Sign Language. Notably, the system achieves remarkable results, boasting an impressive accuracy rate of 0.99% surpassing existing Automatic Speech Recognition and Text-to-Speech systems. This significant breakthrough holds immense potential in enhancing the learning experience of hearing-impaired students in Tamil-speaking regions. Furthermore, the system’s adaptability allows for future expansion to support additional languages, making it highly versatile for diverse educational and communication settings.
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