论文标题

一个基于深度学习的可穿戴医疗IOT设备

A Deep Learning based Wearable Healthcare IoT Device for AI-enabled Hearing Assistance Automation

论文作者

Young, Fraser, Zhang, L, Jiang, Richard, Liu, Han, Wall, Conor

论文摘要

随着最近的人工智能(AI)(尤其是深度学习技术)的蓬勃发展,数字医疗保健是可以从AI-a-Sable功能中获得好处的普遍领域之一。这项研究提出了一种新型的AI启用AI Internet(IoT)设备,从ESP-8266平台运行,能够协助那些患有听力或耳聋障碍的人与其他人在对话中与其他人进行交流。在拟议的解决方案中,创建了一个服务器应用程序,该应用程序利用Google的在线语音识别服务将接收到的对话转换为文本,然后部署到附加到眼镜的微型播放中,以向聋哑人展示对话内容,以启用与普通人群的正常对话。此外,为了提高流量或危险场景的警报,使用深度学习模型Inception-V4开发了“城市急剧”分类器,并通过转移学习来检测/识别警报/警报声音,例如喇叭声或火警警报,并带有生成前瞻性用户的文本。 Inception-V4的培训是在消费者桌面PC上进行的,然后在基于AI的IoT应用程序中实施。经验结果表明,开发的原型系统的精度为92%,用于通过实时性能进行声音识别和分类。

With the recent booming of artificial intelligence (AI), particularly deep learning techniques, digital healthcare is one of the prevalent areas that could gain benefits from AI-enabled functionality. This research presents a novel AI-enabled Internet of Things (IoT) device operating from the ESP-8266 platform capable of assisting those who suffer from impairment of hearing or deafness to communicate with others in conversations. In the proposed solution, a server application is created that leverages Google's online speech recognition service to convert the received conversations into texts, then deployed to a micro-display attached to the glasses to display the conversation contents to deaf people, to enable and assist conversation as normal with the general population. Furthermore, in order to raise alert of traffic or dangerous scenarios, an 'urban-emergency' classifier is developed using a deep learning model, Inception-v4, with transfer learning to detect/recognize alerting/alarming sounds, such as a horn sound or a fire alarm, with texts generated to alert the prospective user. The training of Inception-v4 was carried out on a consumer desktop PC and then implemented into the AI based IoT application. The empirical results indicate that the developed prototype system achieves an accuracy rate of 92% for sound recognition and classification with real-time performance.

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