利用增强现实技术和机器学习识别手势语

Mohammed Asif, Sameer Shrikhande, Hardik Pingale, Abhishek Joshi, Prof. Priyanka Sonawane
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引用次数: 0

摘要

有效的交流是人类互动的基石,能够促进社会的凝聚力和发展。纵观历史,交流从原始的图画发展到复杂的语言,塑造了我们的社会结构。然而,在这一发展过程中,有语言和听力障碍的人往往在沟通方面面临巨大挑战。尽管他们是少数群体,但他们的需求至关重要,不容忽视。由于语言分为口头语言和非口头语言,因此非口头语言显然起着至关重要的作用,尤其是对听力和言语障碍人士(IWSHI)而言。这些人依靠非语言交流方式与周围的世界进行互动,但由于缺乏理解和无障碍环境,他们常常面临障碍。为了应对这一挑战,HSLR 应用程序成为一种变革性工具,使 IWSHI 能够自信地进行交流。利用增强现实(AR)和机器学习(ML)等技术,我们的应用程序可以实时识别手势,提供即时翻译,实现无缝沟通。此外,AR 技术的集成还能增强用户体验,提供身临其境的互动手语交流平台。由于我们提供了充足的数据集,实时使用的 MediaPipe 模型在识别手语方面达到了很高的准确率。关键字:手语识别(HSLR)、增强现实(AR)、机器学习(ML)、美国手语(ASL)、计算机视觉、MediaPipe
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HAND SIGN LANGUAGE RECOGNITION USING AUGMENTED REALITY & MACHINE LEARNING
Effective communication is a cornerstone of human interaction, fostering societal cohesion and development. Throughout history, communication has evolved from primitive drawings to complex languages, shaping our societys fabric. However, amidst this progression, individuals with speech and hearing impairments have often faced significant challenges in communication. Despite constituting a minority, their needs are paramount and must not be overlooked. Recognizing the diverse classification of languages into verbal and non-verbal forms, it becomes evident that non-verbal languages play a crucial role, especially for Individuals with Hearing and Speech Impairments (IWSHI). These individuals rely on non-verbal communication methods to interact with the world around them, yet they often face barriers due to the lack of understanding and accessibility. To address this challenge, the HSLR app serves as a transformative tool, enabling IWSHI to communicate confidently. Leveraging technologies such as Augmented Reality (AR) and Machine Learning (ML), our app facilitates real-time recognition of hand signs, providing instantaneous translations for seamless communication. Additionally, the integration of AR technology enhances the user experience, offering immersive and interactive sign-language communication platforms. The MediaPipe model used in real-time achieves high accuracy in recognizing sign language due to the ample dataset we provided. KEY WORDS: Hand Sign Language Recognition (HSLR), Augmented Reality (AR), Machine Learning (ML), American Sign Language (ASL), Computer Vision, MediaPipe
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