论文标题

胸部区域分割在沉睡的患者的深度图像中

Chest Area Segmentation in Depth Images of Sleeping Patients

论文作者

Goldstein, Yoav, Schätz, Martin, Avigal, Mireille

论文摘要

尽管近年来睡眠研究领域已经大大发展,但检测睡眠问题的最常见和有效的方法仍然是在睡眠实验室中进行的睡眠检查,该手术称为多肌仪(PSG)。该检查使用与患者身体相连的多个传感器在整夜的睡眠期间测量了几个重要信号。然而,尽管是黄金标准,但传感器和陌生环境的联系不可避免地会影响患者睡眠和检查本身的质量。因此,随着新的更准确,更负担得起的3D传感设备的开发,出现了非接触式睡眠研究的新方法。这些方法利用不同的技术来提取相同的睡眠参数,但远程消除了对患者身体的任何物理连接的需求。但是,为了实现可靠的远程提取,这些方法需要准确识别感兴趣的基本区域(ROI),即患者的胸部区域,该任务目前阻止了开发过程,因为它是为每个患者手动执行的。在这项研究中,我们提出了一种自动胸部区域分割算法,该算法给定了一个熟睡的患者的3D帧集,输出与与胸部区域相对应的像素的分割图像,然后可以用作后续睡眠分析算法的输入。除了显着加快非接触式方法的开发过程外,准确的自动分割还可以实现更精确的特征提取,并且证明与手动ROI选择相比,它已经提高了先前溶液的敏感性平均46.9%。所有提到的都将把非接触式方法的提取算法作为替代当今现有传统方法的领先候选人。

Although the field of sleep study has greatly developed over the recent years, the most common and efficient way to detect sleep issues remains a sleep examination performed in a sleep laboratory, in a procedure called Polysomnography (PSG). This examination measures several vital signals during a full night's sleep using multiple sensors connected to the patient's body. Yet, despite being the golden standard, the connection of the sensors and the unfamiliar environment inevitably impact the quality of the patient's sleep and the examination itself. Therefore, with the novel development of more accurate and affordable 3D sensing devices, new approaches for non-contact sleep study emerged. These methods utilize different techniques with the purpose to extract the same sleep parameters, but remotely, eliminating the need of any physical connections to the patient's body. However, in order to enable reliable remote extraction, these methods require accurate identification of the basic Region of Interest (ROI) i.e. the chest area of the patient, a task that is currently holding back the development process, as it is performed manually for each patient. In this study, we propose an automatic chest area segmentation algorithm, that given an input set of 3D frames of a sleeping patient, outputs a segmentation image with the pixels that correspond to the chest area, and can then be used as an input to subsequent sleep analysis algorithms. Except for significantly speeding up the development process of the non-contact methods, accurate automatic segmentation can also enable a more precise feature extraction and it is shown it is already improving sensitivity of prior solutions on average 46.9% better compared to manual ROI selection. All mentioned will place the extraction algorithms of the non-contact methods as a leading candidate to replace the existing traditional methods used today.

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