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Seeing Under the Cover: A Physics Guided Learning Approach for In-bed Pose Estimation

机译:幕后观察:床下姿势估计的物理指导学习方法

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Human in-bed pose estimation has huge practical values in medical and healthcare applications yet still mainly relies on expensive pressure mapping (PM) solutions. In this paper, we introduce our novel physics inspired vision-based approach that addresses the challenging issues associated with the in-bed pose estimation problem including monitoring a fully covered person in complete darkness. We reformulated this problem using our proposed Under the Cover Imaging via Thermal Diffusion (UCITD) method to capture the high resolution pose information of the body even when it is fully covered by using a long wavelength IR technique. We proposed a physical hyperparameter concept through which we achieved high quality groundtruth pose labels in different modalities. A fully annotated in-bed pose dataset called Simultaneously-collected multimodal Lying Pose (SLP) is also formed/released with the same order of magnitude as most existing large-scale human pose datasets to support complex models' training and evaluation. A network trained from scratch on it and tested on two diverse settings, one in a living room and the other in a hospital room showed pose estimation performance of 98.0% and 96.0% in PCK0.2 standard, respectively. Moreover, in a multi-factor comparison with a state-of-the art in-bed pose monitoring solution based on PM, our solution showed significant superiority in all practical aspects by being 60 times cheaper, 300 times smaller, while having higher pose recognition granularity and accuracy.
机译:人体床内姿势估计在医疗和保健应用中具有巨大的实用价值,但仍主要依靠昂贵的压力映射(PM)解决方案。在本文中,我们介绍了一种新颖的,受物理启发的基于视觉的方法,该方法解决了与床内姿势估计问题相关的挑战性问题,包括在完全黑暗的环境中监控一个完全被遮盖的人。我们使用拟议的“通过热扩散进行覆盖成像”(UCITD)方法重新构造了此问题,以捕获人体的高分辨率姿态信息,即使使用长波长红外技术完全覆盖了人体也是如此。我们提出了物理超参数概念,通过该概念我们以不同的方式获得了高质量的地面真实姿势标签。还以与大多数现有的大型人体姿态数据集相同的数量级来形成/发布一个完全注释的床内姿态数据集,称为同时收集的多模态躺姿(SLP),以支持复杂模型的训练和评估。从头开始训练的网络并在两种不同的环境下进行了测试,一种在起居室中,另一种在病房中进行了测试,在PCK0.2标准中,姿势估计性能分别为98.0%和96.0%。此外,通过与基于PM的最新床内姿势监控解决方案进行多因素比较,我们的解决方案在所有实际方面均显示出显着优势,其价格便宜60倍,缩小300倍,同时具有更高的姿势识别能力粒度和准确性。

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