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Fuzzy logic and differential evolution-based hybrid system for gesture recognition using Kinect sensor

机译:基于Kinect传感器的基于模糊逻辑和差分进化的混合手势识别系统

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The paper introduces a novel approach to gesture recognition aimed at physical disorder identification capable of handling variations in disorder expressions. The gestures are captured by Microsoft's Kinect sensor. The work is segmented into four main parts. The first stage describes a relax posture through four centroids depicting four portions of the skeletal structure. In the second stage, when the subject is showing symptoms of any one of the 16 physical disorders, then the skeletal structure distorts; the bilateral structure is lost, and concept of centroid computation does not seem relevant. Hence, in the second stage, motion points depicting shifted centroids for the distorted posture are computed by distance maximization with respect to the four corresponding centroids obtained for the relax posture. This process is carried out by adapting the weights assigned to each joint by differential evolution. In the third stage, eight features are figured out on the basis of Euclidean distances and angles among the motion points of the distorted gesture. In the final stage, gestures are recognized using an interval type-2 fuzzy set-based classifier with 91.37% accuracy.
机译:本文介绍了一种新的手势识别方法,旨在识别身体疾病,该疾病能够处理疾病表达的变化。手势由Microsoft的Kinect传感器捕获。这项工作分为四个主要部分。第一阶段通过四个质心描述骨架结构的四个部分的放松姿势。在第二阶段,当受试者表现出16种身体不适中任何一种的症状时,骨骼结构就会扭曲;双边结构丢失,质心计算的概念似乎不相关。因此,在第二阶段中,通过相对于为放松姿势而获得的四个相应质心的距离最大化来计算描绘针对扭曲姿势的偏移质心的运动点。该过程是通过差分演化调整分配给每个关节的权重来执行的。在第三阶段中,基于变形手势的运动点之间的欧几里得距离和角度来找出八个特征。在最后阶段,使用基于间隔类型2模糊集的分类器以91.37%的精度识别手势。

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