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Boxing Motions Classification through Combining Fuzzy Gaussian Inference with a Context-Aware Rule-Based System

机译:通过将模糊高斯推断与基于背景的规则的系统相结合的拳击动作分类

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This paper continues to explore the potential of newly introduced Fuzzy Gaussian Inference (FGI) [1]. It aims at constructing fuzzy membership functions by modelling hidden probability distributions underlying human motions. A fuzzy rule-based system has been employed to assist boxing motion classification from natural human Motion Capture data. In this experiment, FGI alone is able to recognise seven different boxing stances simultaneously with an accuracy superior to a GMM-based classifier. Results indicate that adding a Fuzzy Inference Engine on top of FGI improves the accuracy of the classifier in a consistent way.
机译:本文继续探讨新推出的模糊高斯推理(FGI)的潜力[1]。它旨在通过建模隐藏的概率分布来构建模糊会员函数。已经采用模糊规则的系统来协助自然人运动捕获数据的拳击运动分类。在该实验中,单独的FGI能够同时识别七种不同的拳击姿势,精度优于基于GMM的分类器。结果表明,在FGI之上添加模糊推理引擎以一致的方式提高了分类器的准确性。

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