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Multi-Task Convolutional Neural Network for Patient Detection and Skin Segmentation in Continuous Non-Contact Vital Sign Monitoring

机译:连续非接触式生命体征监测中用于患者检测和皮肤分割的多任务卷积神经网络

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Patient detection and skin segmentation are important steps in non-contact vital sign monitoring as skin regions contain pulsatile information required for the estimation of vital signs such as heart rate, respiratory rate and peripheral oxygen saturation (SpO2). Previous methods based on face detection or colour-based image segmentation are less reliable in a hospital setting. In this paper, we develop a multi-task convolutional neural network (CNN) for detecting the presence of a patient and segmenting the patient's skin regions. The multi-task model has a shared core network with two branches: a segmentation branch which was implemented using a fully convolutional network, and a classification branch which was implemented using global average pooling. The whole network was trained using images from a clinical study conducted in the neonatal intensive care unit (NICU) of the John Radcliffe hospital, Oxford, UK. Our model can produce accurate results and is robust to changes in different skin tones, pose variations, lighting variations, and routine interaction of clinical staff.
机译:患者检测和皮肤分割是非接触式生命体征监测中的重要步骤,因为皮肤区域包含估算生命体征所需的搏动信息,例如心率,呼吸频率和外周血氧饱和度(SpO2)。在医院环境中,基于面部检测或基于颜色的图像分割的先前方法不太可靠。在本文中,我们开发了一种多任务卷积神经网络(CNN),用于检测患者的存在并分割患者的皮肤区域。多任务模型具有一个共享的核心网络,该网络具有两个分支:使用完全卷积网络实现的分段分支和使用全局平均池实现的分类分支。整个网络使用在英国牛津约翰·拉德克利夫医院新生儿重症监护室(NICU)进行的临床研究中的图像进行训练。我们的模型可以产生准确的结果,并且对于不同肤色,姿势变化,光线变化以及临床人员的日常互动具有鲁棒性。

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