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MORA: A Generative Approach to Extract Spatiotemporal Information Applied to Gesture Recognition

机译:莫拉:一种提取应用于手势识别时的生长信息的生成方法

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Gestures are related to a non-verbal language used on the interaction between subjects. Due to its applicability in several contexts, gesture recognition has been investigated by different researches, often investing on the capture of motion and appearance on videos. However, most of these methods do not properly explore the well-defined gesture temporal structure and are not suitable to deal with an increasing number of classes. Thus, we propose the Multi-Output Recurrent Autoencoders (MORA), an approach that relies on the representation of each gesture class independently. MORA employs a specific autoencoder model per class, composed by convolutional (3D) and a Gated Recurrent Unit (GRU) layer, what allows spatiotemporal information extraction and scalability in terms of number of classes. To validate MORA, experiments are conducted on SKIG and ChaLearn IsoGD datasets, for which the approach achieved accuracies comparable to state-of-the-art methods.
机译:手势与对象之间的互动使用的非言语语言有关。由于其在若干语境中的适用性,通过不同的研究已经研究了手势识别,通常投资在视频上捕获运动和外观。然而,这些方法中的大多数不正确地探索明确定义的手势时间结构,并且不适合处理越来越多的类。因此,我们提出了多输出复发性AutoEncoders(Mora),一种方法是独立地依赖于每个手势级别的表示。 Mora采用每类特定的AutoEncoder模型,由卷积(3D)和门控复发单元(GRU)层组成,允许在类别数量方面允许时空信息提取和可扩展性。为了验证Mora,实验是在Skig和Chalearn Isogd数据集上进行的,其中方法实现了与最先进的方法相当的准确性。

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