标签睡眠 3D

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Pub Date : 2024-03-06 DOI:10.1145/3643512
Chen Liu, Zixuan Dong, Li Huang, Wenlong Yan, Xin Wang, Dingyi Fang, Xiaojiang Chen
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引用次数: 0

摘要

睡眠姿势对保持良好的睡眠质量和整体健康起着至关重要的作用。因此,长期监测三维睡眠姿势对于睡眠分析和慢性疾病预防具有重要意义。要识别睡眠姿势,传统方法要么使用摄像头记录图像数据,要么要求用户佩戴可穿戴设备或睡在压力床垫上。然而,这些方法可能会引起隐私方面的担忧,并在睡眠过程中造成不适。因此,基于射频(RF)的方法成为一种有前途的替代方法。尽管这些方法大多能高精度地对睡眠姿势进行分类,但由于难以捕捉静态身体关节的三维位置,它们在检索三维睡眠姿势方面却举步维艰。在这项工作中,我们提出 TagSleep3D 来解决上述所有问题。具体来说,受 RFID 标签床单概念的启发,我们探索了通过在床单下部署 RFID 标签阵列来识别三维睡眠姿势的可能性。当用户在床上睡觉时,一些标签的信号可能会被睡姿阻挡或反射,从而产生身体印记。我们随后提出了一种由注意力机制和卷积神经网络组成的新型深度学习模型,并结合两种数据增强方法,通过分析这些身体印记来检索三维睡眠姿势。我们通过 43 位用户对 TagSleep3D 进行了评估,共收集了 27,300 个睡眠姿势样本。广泛的实验证明,TagSleep3D 可以识别人体骨骼上的每个关节,对可见用户的中位数 MPJPE(平均每个关节位置误差)为 4.76 厘米,对未可见用户的中位数 MPJPE(平均每个关节位置误差)为 7.58 厘米。
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TagSleep3D
Sleep posture plays a crucial role in maintaining good morpheus quality and overall health. As a result, long-term monitoring of 3D sleep postures is significant for sleep analysis and chronic disease prevention. To recognize sleep postures, traditional methods either use cameras to record image data or require the user to wear wearable devices or sleep on pressure mattresses. However, these methods could raise privacy concerns and cause discomfort during sleep. Accordingly, the RF (Radio Frequency) based method has emerged as a promising alternative. Despite most of these methods achieving high precision in classifying sleep postures, they struggle to retrieve 3D sleep postures due to difficulties in capturing 3D positions of static body joints. In this work, we propose TagSleep3D to resolve all the above issues. Specifically, inspired by the concept of RFID tag sheets, we explore the possibility of recognizing 3D sleep posture by deploying an RFID tag array under the bedsheet. When a user sleeps in bed, the signals of some tags could be blocked or reflected by the sleep posture, which can produce a body imprint. We then propose a novel deep learning model composed of the attention mechanism, convolutional neural network, and together with two data augmentation methods to retrieve the 3D sleep postures by analyzing these body imprints. We evaluate TagSleep3D with 43 users and we totally collect 27,300 sleep posture samples. Our extensive experiments demonstrate that TagSleep3D can recognize each joint on the human skeleton with a median MPJPE (Mean Per Joint Position Error) of 4.76 cm for seen users and 7.58 cm for unseen users.
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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
自引率
0.00%
发文量
154
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