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Gesture Recognition using Hybrid SOM/DHMM

机译:使用混合SOM / DHMM进行手势识别

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This paper describes a method for the recognition of dynamic gestures using a combination Neural Network/ discrete Hideen Markov Model. This work deals with four topics. First a reliable and robust person localization task is presented. Then we focus on the view-based recognition of the user's static gestural instructions from a predefined vocabulary based on both a skin color model and statistical normalized moment invariants. The segmentation of the postures occurs by means of the skin color model based on the Mahalanobis metric. From the resulting binary image containing only regions which have been classified as skin candidates we extract translation and scale invariant moments. Further a Kohonen Self Organizing Map (SOM) is used to cluster the feature space. After the self-organizing process we modify the SOM weight vectors using the Learning Vector Quantization (LVQ) method causing the weights to approach the decision boundaries and we quantize each of them into a symbol. Finally, the symbol sequence extracted from time-sequential images is used as input for a system of discrete Hidden Markov Models (DHMMs).
机译:本文介绍了一种使用组合神经网络/离散Hideen Markov模型的动态手势识别方法。这项工作涉及四个主题。首先,提出了一个可靠而强大的人员本地化任务。然后,我们基于肤色模型和统计归一化矩不变式,着重从预定义词汇中对用户的静态手势指令进行基于视图的识别。通过基于Mahalanobis度量的肤色模型可以对姿势进行分割。从仅包含已被分类为皮肤候选区域的区域生成的二进制图像中,我们提取平移和缩放不变矩。此外,还使用了Kohonen自组织图(SOM)来对要素空间进行聚类。在自组织过程之后,我们使用学习向量量化(LVQ)方法修改SOM权重向量,使权重接近决策边界,然后将它们中的每一个量化为一个符号。最后,将从时间序列图像中提取的符号序列用作离散隐马尔可夫模型(DHMM)系统的输入。

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