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Analysis of Robust Soft Learning Vector Quantization and an application to Facial Expression Recognition

机译:鲁棒软学习矢量量化分析及其在面部表情识别中的应用

摘要

Learning Vector Quantization (LVQ) is a popular method for multiclass classification. Several variants of LVQ have been developed recently, of which Robust Soft Learning Vector Quantization (RSLVQ) is a promising one. Although LVQ methods have an intuitive design with clear updating rules, their dynamics are not yet well understood.In simulations within a controlled environment RSLVQ performed very close to optimal. This controlled environment enabled us to perform a mathematical analysis as a first step in obtaining a better theoretical understanding of the learning dynamics. In this talk I will discuss the theoretical analysis and its results. Moreover, I will focus on the practical application of RSLVQ to a real world dataset containing extracted features from facial expression data.
机译:学习矢量量化(LVQ)是一种用于多类分类的流行方法。 LVQ的几种变体最近已经开发出来,其中稳健的软学习矢量量化(RSLVQ)是有前途的。尽管LVQ方法具有直观的设计和清晰的更新规则,但其动态性尚未得到很好的了解。这种受控的环境使我们能够进行数学分析,以此作为获得对学习动力的更好理论理解的第一步。在本次演讲中,我将讨论理论分析及其结果。此外,我将重点介绍RSLVQ在包含面部表情数据提取特征的真实世界数据集上的实际应用。

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