基于ai边缘的语音响应智能耳机,用于用户上下文感知

V. V, K. M, G. Reddy
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引用次数: 1

摘要

最近便携式设备领域的发展取得了巨大的发展,特别是音频/音乐信息传输系统,如耳机,使用有线或无线连接移动/便携式设备。这种带有连接耳机的便携式设备的使用日益增加,用户的移动性几乎遍及所有人类年龄组和领域,如旅行、工作场所、家庭场所、步行路径等。这种用法在用户与外部世界的交互以及上下文情况、动作和响应方面存在问题。这些问题会导致用户不参与、不方便或完全破坏。这取决于周围的情况和可能导致事故或危及生命的伤害的相关危险事件。为了解决这些问题,我们设计了一款基于边缘的AI语音响应智能耳机,为用户提供上下文感知和警报系统。该模型使用基于边缘的机器学习长短期记忆(LSTM)算法进行语音识别,可以在耳机或与其连接的设备中运行。在这里,语音/声音识别和提醒用户,可以处理许多上下文情况,如通过名字进行的正常交互,旁观者发出的危险的可怕情景声音或外部声音。原型模型是为一些语音记录/声音开发的,使用基于张量流ml的算法在低占用设备上,如手机或STM 32微控制器。测试和验证了一些声音/声音场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-edge based voice responsive smart headphone for user context-awarenes
Recent developments in the areas of portable devices have taken enormous developments, especially the audio/music information delivery systems like headphones either using wired or wireless connectivity with mobile/portable devices. Usage of such portable devices with connected headphones is increasing day by day with user mobility in almost all the human age groups and sectors like traveling, workplaces, home places, walk paths, etc. This usage has an issue with the user interaction with the external world and also the contextual situations, actions and responses. Such issues lead to non-involvement and inconvenience or total destruction to the user. This depends on the surrounding situation and contextual hazardous events that may lead to accidents or life-threatening injuries. In order to handle such issues, we have designed an edge-based AI Voice responsive smart headphone for context awareness and alert system to the user. This model uses an edge-based machine learning Long Short Term Memory (LSTM) algorithm for voice recognition, runs either in the headphone or the device to which it is connected. Here the voice/sound recognition and alerting the user, can handle many contextual situations like normal interactions by name, hazardous scary situational sounds either by a bystander, or external sounds. Prototype models are developed for some of the voice records/ sounds using tensor flow ML-based algorithms over low footprint devices like mobile phones or STM 32 microcontrollers. Tested and validated for some of the voice/sound scenarios.
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