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Hierarchical Human Action Recognition around Sleeping Using Obscured Posture Information

机译:使用模糊的姿势信息睡觉周围的人为行动识别

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This paper presents a new approach for human action recognition around sleeping with the human body parts locations and the positional relationship between human and sleeping environment. Body parts are estimated from the depth image obtained by a time-of-flight (TOF) sensor using oriented 3D normal vector. Issues in action recognition of sleeping situation are the demand of availability in darkness, and hiding of the human body by duvets. Therefore, the extraction of image features is difficult since color and edge features are obscured by covers. Thus, first in our method, positions of four parts of the body (head, torso, thigh, and lower leg) are estimated by using the shape model of bodily surface constructed by oriented 3D normal vector. This shape model can represent the surface shape of rough body, and is effective in robust posture estimation of the body hidden with duvets. Then, action descriptor is extracted from the position of each body part. The descriptor includes temporal variation of each part of the body and spatial vector of position of the parts and the bed. Furthermore, this paper proposes hierarchical action classes and classifiers to improve the indistinct action classification. Classifiers are composed of two layers, and recognize human action by using the action descriptor. First layer focuses on spatial descriptor and classifies action roughly. Second layer focuses on temporal descriptor and classifies action finely. This approach achieves a robust recognition of obscured human by using the posture information and the hierarchical action recognition.
机译:本文介绍了人体行动识别的新方法,与人体部位位置和人体零件位置睡觉和人体和睡眠环境之间的位置关系。使用由面向3D正常矢量的飞行时间(TOF)传感器获得的深度图像估计身体部位。行动识别睡眠情况的问题是在黑暗中可用的需求,并通过羽绒被隐藏人体。因此,自盖子遮住颜色和边缘特征,因此难以提取图像特征。因此,首先在我们的方法中,通过使用由定向的3D正常向量构造的身体表面的形状模型来估计身体的四个部分(头部,躯干,大腿和小腿)的位置。这种形状模型可以代表粗糙的身体的表面形状,并且具有稳健的姿势估计身体隐藏的羽绒被。然后,从每个主体部分的位置提取动作描述符。描述符包括身体的每个部分的时间变化和部件和床的位置的空间矢量。此外,本文提出了分层动作类和分类器来提高模糊行动分类。分类器由两层组成,并通过使用动作描述符来识别人类的行动。第一层侧重于空间描述符并大致对动作进行分类。第二层侧重于时间描述符并精细对动作进行分类。这种方法通过使用姿势信息和分层动作识别来实现对遮光的人的鲁棒识别。

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