基于lstm的手语检测增强可访问性

None Azees Abdul, None Adithya Valapa, None Abdul Kayom Md Khairuzzaman
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摘要

手语是聋人和重听人交流的重要手段。然而,由于手语的复杂性和缺乏标准化的全球框架,识别手语构成了一项重大挑战。机器学习的最新进展,特别是长短期记忆(LSTM)算法,为手语手势识别领域提供了希望。本研究介绍了一种利用LSTM的创新方法,LSTM是一种用于处理顺序输入的递归神经网络。我们的目标是创建一个高度精确的系统,能够准确地预测和再现手语运动。LSTM的独特功能通过捕捉手语中固有的时间关系和精细细节来增强对复杂手势的识别。本研究的结果表明,基于LSTM的方法优于现有的最先进的技术,突出了LSTM在手语识别中的有效性,以及它们在促进聋人和听力群体之间交流方面的潜力。
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Enhancing Accessibility with LSTM-Based Sign Language Detection
Sign language serves as a vital means of communication for the deaf and hard of hearing community. However, identifying sign language poses a significant challenge due to its complexity and the lack of a standardized global framework. Recent advances in machine learning, particularly Long Short-Term Memory (LSTM) algorithms, offer promise in the field of sign language gesture recognition. This research introduces an innovative method that leverages LSTM, a type of recurrent neural network designed for processing sequential input. Our goal is to create a highly accurate system capable of anticipating and reproducing sign language motions with precision. LSTM's unique capabilities enhance the recognition of complex gestures by capturing the temporal relationships and fine details inherent in sign language. The results of this study demonstrate that LSTM-based approaches outperform existing state-of-the-art techniques, highlighting the effectiveness of LSTM in sign language recognition and their potential to facilitate communication between the deaf and hearing communities.
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