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Polar Sine Based Siamese Neural Network for Gesture Recognition

机译:基于极性正弦的暹罗神经网络,用于识别识别

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Our work focuses on metric learning between gesture sample signatures using Siamese Neural Networks(SNN), which aims at modeling semantic relations between classes to extract discriminative features. Our contribution is the notion of polar sine which enables a redefinition of the angular problem. Our final proposal improves inertial gesture classification in two challenging test scenarios, with respective average classification rates of 0.934±- 0.011 and 0.776±0.025.
机译:我们的工作侧重于使用暹罗神经网络(SNN)的手势样本签名之间的度量学习,旨在建模类之间的语义关系来提取歧视特征。我们的贡献是极性正弦的概念,它能够重新定义角度问题。我们的最终提议在两个具有挑战性的测试场景中提高了惯性手势分类,各自的平均分类率为0.934±0.011和0.776±0.025。

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