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Sleep posture classification with multi-stream CNN using vertical distance map

机译:使用垂直距离图的多流CNN睡眠姿势分类

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摘要

Sleep posture is closely related to sleep quality. Moreover, several studies reveal that an incorrect sleep position can result in physical pain. A non-invasive image-based method was proposed for identifying ten sleep postures with high accuracy. The positions of the legs and arms was considered and more complex but common sleep postures was classified, such as fatal left, yearner left, log left, fatal right, yearner right, log right, soldier down, faller down, soldier up, faller up. Input of depth images were preprocessed and a deep multi-stream convolutional neural network was adopted for classification. The work is available for natural scenarios in which people sleep with blanket or quilt covering. Finally, 22 subjects were participated for recording depth images of 10 types of sleep postures, and efficiency of the network was also evaluated.
机译:睡眠姿势与睡眠质量密切相关。此外,一些研究表明,不正确的睡眠位置会导致物理疼痛。提出了一种基于非侵入式图像的方法,用于识别高精度的十个睡眠姿势。腿部和手臂的位置被认为是更复杂但常见的睡眠姿势被归类,例如致命左,留下,日志左,致命的,致命的,原始,士兵下来,摔倒,士兵,凶手。深度图像的输入是预处理的,并采用了深度多流卷积神经网络进行分类。这项工作可用于自然情景,人们用毯子或被子覆盖睡眠。最后,参加了22个受试者参加了10种类型的睡眠姿势的录制深度图像,并且还评估了网络的效率。

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