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Semi-Automatic Calibration Method for a Bed-Monitoring System Using Infrared Image Depth Sensors

机译:使用红外图像深度传感器的床监控系统的半自动校准方法

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摘要

With the aging of society, the number of fall accidents has increased in hospitals and care facilities, and some accidents have happened around beds. To help prevent accidents, mats and clip sensors have been used in these facilities but they can be invasive, and their purpose may be misinterpreted. In recent years, research has been conducted using an infrared-image depth sensor as a bed-monitoring system for detecting a patient getting up, exiting the bed, and/or falling; however, some manual calibration was required initially to set up the sensor in each instance. We propose a bed-monitoring system that retains the infrared-image depth sensors but uses semi-automatic rather than manual calibration in each situation where it is applied. Our automated methods robustly calculate the bed region, surrounding floor, sensor location, and attitude, and can recognize the spatial position of the patient even when the sensor is attached but unconstrained. Also, we propose a means to reconfigure the spatial position considering occlusion by parts of the bed and also accounting for the gravity center of the patient’s body. Experimental results of multi-view calibration and motion simulation showed that our methods were effective for recognition of the spatial position of the patient.
机译:随着社会的老龄化,医院和护理机构中摔倒事故的数量增加,并且床周围发生了一些事故。为了帮助预防事故,在这些设施中使用了垫子和夹式传感器,但它们可能具有侵入性,并且可能会误解其目的。近年来,使用红外图像深度传感器作为床监测系统进行了研究,以检测患者起床,出床和/或跌倒;但是,在每种情况下,最初都需要进行一些手动校准才能设置传感器。我们提出一种床监控系统,该系统可保留红外图像深度传感器,但在每种情况下都使用半自动而不是手动校准。我们的自动化方法可以可靠地计算出床的区域,周围的地板,传感器的位置和姿态,并且即使传感器已安装但不受约束,也可以识别患者的空间位置。另外,我们提出一种方法,考虑到床的某些部分被遮挡并考虑到患者身体的重心,从而重新配置空间位置。多视图校准和运动模拟的实验结果表明,我们的方法可有效识别患者的空间位置。

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