Video Object Detection for Privacy-Preserving Patient Monitoring in Intensive Care

Raphael Emberger, J. Boss, Daniel Baumann, Marko Seric, Shufan Huo, Lukas Tuggener, E. Keller, Thilo Stadelmann
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Abstract

Patient monitoring in intensive care units, although assisted by biosensors, needs continuous supervision of staff. To reduce the burden on staff members, IT infrastructures are built to record monitoring data and develop clinical decision support systems. These systems, however, are vulnerable to artifacts (e.g. muscle movement due to ongoing treatment), which are often indistinguishable from real and potentially dangerous signals. Video recordings could facilitate the reliable classification of biosignals using object detection (OD) methods to find sources of unwanted artifacts. Due to privacy restrictions, only blurred videos can be stored, which severely impairs the possibility to detect clinically relevant events such as interventions or changes in patient status with standard OD methods. Hence, new kinds of approaches are necessary that exploit every kind of available information due to the reduced information content of blurred footage and that are at the same time easily implementable within the IT infrastructure of a normal hospital. In this paper, we propose a new method for exploiting information in the temporal succession of video frames. To be efficiently implementable using off-the-shelf object detectors that comply with given hardware constraints, we repurpose the image color channels to account for temporal consistency, leading to an improved detection rate of the object classes. Our method outperforms a standard YOLOv5 baseline model by +1.7% mAP@.5 while also training over ten times faster on our proprietary dataset. We conclude that this approach has shown effectiveness in the preliminary experiments and holds potential for more general video OD in the future.
视频目标检测在重症监护监护中保护隐私
重症监护病房的病人监测虽然有生物传感器辅助,但仍需要工作人员的持续监督。为了减轻工作人员的负担,我们建立了资讯科技基础设施,以记录监测数据和开发临床决策支援系统。然而,这些系统容易受到人为因素(例如,由于持续治疗而引起的肌肉运动)的影响,这些人为因素通常与真实的和潜在危险的信号无法区分。视频记录可以利用物体检测(OD)方法促进生物信号的可靠分类,以找到不需要的人工制品的来源。由于隐私限制,只能存储模糊的视频,这严重削弱了使用标准OD方法检测临床相关事件(如干预或患者状态变化)的可能性。因此,由于模糊影像的信息内容减少,需要利用各种可用信息的新方法,同时在普通医院的IT基础设施中易于实施。本文提出了一种利用视频帧时间序列信息的新方法。为了使用符合给定硬件约束的现成对象检测器有效地实现,我们重新定义了图像颜色通道以考虑时间一致性,从而提高了对象类的检测率。我们的方法优于标准的YOLOv5基线模型+1.7% mAP@.5,同时在我们的专有数据集上训练速度也提高了十倍以上。我们得出结论,该方法在初步实验中显示出有效性,并且在未来具有更广泛的视频OD潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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