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Classification of hand movements using motion templates and geometrical based moments

机译:使用运动模板和基于几何时刻的手动运动分类

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This paper presents a method for hand gesture classification using a view-based approach for representation and artificial neural network for classification. This approach uses a cumulative image difference technique in which time between the sequences of images is implicitly captured in the representation of action. This results in the construction of motion history images. These images are used to compute the geometrical image moments, which are invariant to scale, rotation and translation. The classification is then performed using back propagation based multilayer perceptron (MLP) artificial neural network (ANN). The preliminary experiments show that such a system can classify human hand gestures with a classification accuracy of 96%.
机译:本文介绍了一种使用基于视图和人工神经网络进行分类的基于视图的方法的手势分类方法。该方法使用累积图像差异技术,其中在动作的表示中隐式捕获图像序列之间的时间。这导致运动历史图像的构建。这些图像用于计算几何图像时刻,其不变地缩放,旋转和转换。然后使用基于的基于多层的多层的MuligePtron(MLP)人工神经网络(ANN)进行分类。初步实验表明,这种系统可以将人类手势分类为96%的分类精度。

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