智能肺音诊断的研究进展与展望:模型、轻量化设计与硬件平台实现。

Xudong Lu, Jiehong Fang, Wan'ang Xiao, Jingzhu Wu
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引用次数: 0

摘要

肺音作为人体重要的生理信号,在呼吸系统疾病的诊断和监测中起着至关重要的作用。近年来,基于深度学习的肺声智能识别技术在医疗辅助诊断领域取得了重大进展,特别是在边缘设备上部署深度学习模型,实现了局部推理和低延迟诊断。这已成为肺声识别系统发展的一个关键方向。本文系统回顾了肺音识别与分析的基本过程,重点介绍了肺音分类模型的构建、模型轻量化设计以及在嵌入式系统、FPGA等硬件平台上部署肺音分类模型的最新研究进展。展望了该技术在智能肺声识别领域的应用前景和发展趋势。特别是,基于嵌入式和边缘平台的硬件软件协同设计的部署路径将进一步推动健康监测系统的发展。本文为理解肺声识别技术从算法研究到硬件实现的关键方面提供了全面的参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research progress and future prospects in intelligent lung sound diagnosis: models, lightweight design, and hardware platform implementation.

Lung sounds, as an important physiological signal of human body, play a crucial role in the diagnosis and monitoring of respiratory diseases. In recent years, deep learning-based lung sound intelligent recognition technology has made significant progress in the field of medical auxiliary diagnosis, particularly with the deployment of deep learning models on edge devices to achieve local inference and low-latency diagnosis. This has become a key direction in the development of lung sound recognition systems. This paper systematically reviews the fundamental processes of lung sound recognition and analysis, focusing on the construction of lung sound classification models, model lightweight design, and the latest research progress in deploying these models on embedded systems, FPGA, and other hardware platforms. Additionally, the paper looks forward to the application prospects and development trends of this technology in the field of intelligent lung sound recognition. In particular, deployment pathways grounded in hardware-software co-design on embedded and edge platforms are poised to further advance health monitoring systems. This paper provides a comprehensive reference for understanding the key aspects of lung sound recognition technology, from algorithm research to hardware implementation.

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