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Human Action Unit detection of patient using geometric feature analysis

机译:使用几何特征分析的人体活动单元检测患者

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Human Action Units are based on head, hand and leg movements. Head movements include 11 action units, hand movements show 13 action units whereas leg movements have 16 action units. The measurement parameters are local feature points of body parts and global feature points of whole body. For each body parts such as head, left hand, right hand, left leg, right leg and torso, local descriptors are obtained from the histogram of local features of body parts. Global descriptors includes measurement parameters related to the position and orientation of different parts of body, It also includes area, perimeter, centroid, and eccentricity. Body features are used to detect predetermined action units of head, hand and leg. Rule based logic is developed to detect negative emotion of patient considering 3 head gestures, 4 hand gestures and 4 leg gestures. The proposed algorithm gives promising results for leg action unit detection, moderate results for head and hand action units detection. The body gesture recognition produced promising results. Efficiency of hand movements and leg movements was 90 % where as head movements produced efficiency of 85 %.
机译:人类行动单位基于头部,手部和腿部的动作。头部动作包含11个动作单位,手部动作包含13个动作单位,而腿部动作包含16个动作单位。测量参数是身体部位的局部特征点和全身的整体特征点。对于每个身体部位,例如头部,左手,右手,左腿,右腿和躯干,从身体部位局部特征的直方图获得局部描述符。全局描述符包括与人体不同部位的位置和方向有关的测量参数,还包括面积,周长,质心和偏心率。身体特征用于检测头部,手部和腿部的预定动作单位。开发了基于规则的逻辑,以考虑3个头部手势,4个手势和4个腿部手势来检测患者的负面情绪。该算法为腿部动作单元检测提供了有希望的结果,为头部和手部动作单元检测提供了中等的结果。身体手势识别产生了可喜的结果。手部和腿部动作的效率为90%,而头部动作产生的效率为85%。

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