用 YOLO-v4 计算方法设计和实现毫米波雷达护理安全系统

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
J. Chiu, Guan-Yi Lee, Chi-Yang Hsieh, Qing-You Lin
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引用次数: 0

摘要

在计算机视觉和图像处理领域,从传统照相机到新兴传感工具(如手势识别和物体检测)的转变解决了隐私问题。本研究利用毫米波信号作为雷达,通过卷积神经网络(CNN)模型进行事件感知,引领综合传感与通信(ISAC)时代的到来。我们的重点是利用深度学习来检测安全关键手势,将毫米波参数转换为点云图像,并提高识别精度。CNN 给深度学习带来了复杂性挑战。为此,我们开发了灵活的量化方法,用 8 位定点数表示简化了 "只看一遍"(YOLO)-v4 操作。交叉模拟验证表明,基于CPU的量化将速度提高了300%,而精度损失却很小,在GPU环境下甚至能将YOLO-tiny模型的速度提高一倍。我们建立了一个基于 Raspberry Pi 4 的系统,将简化的深度学习与消息队列遥测传输(MQTT)物联网(IoT)技术相结合,用于护理工作。我们的量化方法将识别速度大幅提高了近 2.9 倍,从而实现了嵌入式系统中的毫米波传感。此外,我们还实现了基于硬件的量化,直接量化图像或权重文件中的数据,从而进行电路合成和芯片设计。这项工作将人工智能与毫米波传感器集成在护理安全和硬件实现领域,以提高识别准确性和计算效率。与捕捉和分析病人或住户外观的传统相机相比,在医疗机构或家庭中采用毫米波雷达能有效解决隐私问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Implementation of Nursing-Secure-Care System with mmWave Radar by YOLO-v4 Computing Methods
In computer vision and image processing, the shift from traditional cameras to emerging sensing tools, such as gesture recognition and object detection, addresses privacy concerns. This study navigates the Integrated Sensing and Communication (ISAC) era, using millimeter-wave signals as radar via a Convolutional Neural Network (CNN) model for event sensing. Our focus is on leveraging deep learning to detect security-critical gestures, converting millimeter-wave parameters into point cloud images, and enhancing recognition accuracy. CNNs present complexity challenges in deep learning. To address this, we developed flexible quantization methods, simplifying You Only Look Once (YOLO)-v4 operations with an 8-bit fixed-point number representation. Cross-simulation validation showed that CPU-based quantization improves speed by 300% with minimal accuracy loss, even doubling the YOLO-tiny model’s speed in a GPU environment. We established a Raspberry Pi 4-based system, combining simplified deep learning with Message Queuing Telemetry Transport (MQTT) Internet of Things (IoT) technology for nursing care. Our quantification method significantly boosted identification speed by nearly 2.9 times, enabling millimeter-wave sensing in embedded systems. Additionally, we implemented hardware-based quantization, directly quantifying data from images or weight files, leading to circuit synthesis and chip design. This work integrates AI with mmWave sensors in the domain of nursing security and hardware implementation to enhance recognition accuracy and computational efficiency. Employing millimeter-wave radar in medical institutions or homes offers a strong solution to privacy concerns compared to conventional cameras that capture and analyze the appearance of patients or residents.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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