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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >FIDOS: A generalized Fisher based feature extraction method for domain shift
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FIDOS: A generalized Fisher based feature extraction method for domain shift

机译:FIDOS:基于通用Fisher的域偏移特征提取方法

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摘要

Traditional pattern recognition techniques often assume that the data sets used for training and testing follow the same distribution. However, this assumption is usually not true for many real world problems as data from the same classes but different domains, e.g., data are collected under different conditions, may show different characteristics. We introduce FIDOS, a generalized FIsher based method for DOmain Shift problem, that aims at learning invariant features across domains in a supervised manner. Different from classical Fisher feature extraction, FIDOS aims to minimize not only the within-class scatter but also the difference in distributions between domains. Therefore, the subspace constructed by FIDOS reduces the drift in distributions among different domains and at the same time preserves the discriminants across classes. Another advantage of FIDOS over classical Fisher is that FIDOS extracts more features when multiple source domains are available in the training set; this is essential for a good classification especially when the number of classes is small. Experimental results on both artificial and real data and comparisons with other methods demonstrate the efficiency of our method in classifying objects under domain shift situations.
机译:传统的模式识别技术通常假定用于训练和测试的数据集遵循相同的分布。但是,对于许多现实世界中的问题,这种假设通常是不正确的,因为来自相同类别但不同域的数据(例如,在不同条件下收集的数据)可能显示出不同的特征。我们介绍FIDOS,这是一种基于通用FIsher的DOmain Shift问题的方法,旨在以有监督的方式跨域学习不变特征。与经典的Fisher特征提取不同,FIDOS的目标不仅是最大程度地减少类内散布,而且要最大程度地减小域之间分布的差异。因此,由FIDOS构造的子空间减少了不同域之间分布的漂移,同时保留了跨类的判别式。与经典Fisher相比,FIDOS的另一个优点是,当训练集中有多个源域可用时,FIDOS会提取更多功能。这对于良好的分类是必不可少的,尤其是在类数较少的情况下。人工和真实数据的实验结果以及与其他方法的比较证明了我们的方法在域移位情况下对对象进行分类的效率。

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