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Vision-based Posture Recognition Using an Ensemble Classifier and a Vote Filter

机译:使用集成分类器和投票过滤器的基于视觉的姿势识别

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Posture recognition is a very important Human-Robot Interaction (HRI) way. To segment effective posture from an image, we propose an improved region grow algorithm which combining with the Single Gauss Color Model. The experiment shows that the improved region grow algorithm can get the complete and accurate posture than traditional Single Gauss Model and region grow algorithm, and it can eliminate the similar region from the background at the same time. In the posture recognition part, and in order to improve the recognition rate, we propose a CNN ensemble classifier, and in order to reduce the misjudgments during a continuous gesture control, a vote filter is proposed and applied to the sequence of recognition results. Comparing with CNN classifier, the CNN ensemble classifier we proposed can yield a 96.27% recognition rate, which is better than that of CNN classifier, and the proposed vote filter can improve the recognition result and reduce the misjudgments during the consecutive gesture switch.
机译:姿势识别是一种非常重要的人机交互(HRI)方法。为了从图像中分割有效姿势,我们提出了一种改进的区域增长算法,该算法结合了单高斯色彩模型。实验表明,与传统的单高斯模型和区域增长算法相比,改进后的区域增长算法可以获得完整,准确的姿态,并且可以同时从背景中消除相似区域。在姿势识别部分,为了提高识别率,我们提出了一种CNN集成分类器,并且为了减少连续手势控制过程中的误判,提出了一种投票滤波器,并将其应用于识别结果的序列。与CNN分类器相比,我们提出的CNN集成分类器可产生96.27%的识别率,优于CNN分类器,并且所提出的投票过滤器可以改善识别结果并减少连续手势切换过程中的误判。

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