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Simultaneous Feature Selection and Classifier Training via Linear Programming: A Case Study for Face Expression Recogniton

机译:通过线性规划同时特征选择和分类器培训:面部表达识别函数的案例研究

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A linear programming technique is introduced that jointly performs feature selection and classifier training so that a subset of features is optimally selected together with the classifier. Because traditional classification methods in computer vision have used a two-step approach: feature selection followed by classifier training, feature selection has often been ad hoc, using heuristics or requiring a time-consuming forward and backward search process. Moreover, it is difficult to determine which features to use and how many features to use when these two steps are sepa-rated. The linear programming technique used in this pa-per, which we call feature selection via linear programming (FSLP), can determine the number of features and "which features to use in the resulting classification function based on recent results in optimization. We analyze why FSLP can avoid the curse of dimensionality problem based on margin analysis. As one demonstration of the performance of this FSLP technique for computer vision tasks, we apply it to the problem of face expression recognition. Recognition accuracy is compared with results using Support Vector Ma-chines, the AdaBoost algorithm, and a Bayes classifier.
机译:引入线性编程技术,该技术共同执行特征选择和分类器训练,以便与分类器一起最佳地选择特征子集。由于计算机视觉中的传统分类方法使用了两步方法:特征选择,后跟分类器培训,功能选择通常是临时,使用启发式或需要耗时的前向和后向搜索过程。此外,很难确定使用哪些功能以及在这两个步骤是SEPA级时使用的功能。通过线性编程(FSLP)调用特征选择的PA-PER中使用的线性编程技术可以确定特征数量和“在所产生的分类功能中使用的功能,基于最近的优化结果。我们分析为什么FSLP可以避免基于边缘分析的维度问题的诅咒。作为这种FSLP技术对计算机视觉任务的表现的一个演示,我们将其应用于面部表达识别问题。将识别准确度与使用支持向量MA的结果进行比较 - 中文,adaboost算法和贝叶斯分类器。

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