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Minimum Bayes error features for visual recognition by sequential feature selection and extraction

机译:通过顺序特征选择和提取实现视觉识别的最小贝叶斯误差特征

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The extraction of optimal features, in a classification sense, is still quite challenging in the context of large-scale classification problems (such as visual recognition), involving a large number of classes and significant amounts of training data per class. We present an optimal, in the minimum Bayes error sense, algorithm for feature design that combines the most appealing properties of the two strategies that are currently dominant: feature extraction (FE) and feature selection (FS). The new algorithm proceeds by interleaving pairs of FS and FE steps, which amount to a sequential search for the most discriminant directions in a collection of two dimensional subspaces. It combines the fast convergence rate of FS with the ability of FE to uncover optimal features that are not part of the original basis functions, leading to solutions that are better than those achievable by either FE or FS alone, in a small number of iterations. Because the basic iteration has very low complexity, the new algorithm is scalable in the number of classes of the recognition problem, a property that is currently only available for feature extraction methods that are either sub-optimal or optimal under restrictive assumptions that do not hold for generic recognition. Experimental results show significant improvements over these methods, either through much greater robustness to local minima or by achieving significantly faster convergence.
机译:在分类意义上,从大规模分类问题(例如视觉识别)的角度来看,最优特征的提取仍然具有很大的挑战性,涉及大量的类并且每个类大量的训练数据。我们提出了一种在最小贝叶斯误差意义上的最优特征设计算法,该算法结合了当前占主导地位的两种策略的最吸引人的特性:特征提取(FE)和特征选择(FS)。新算法通过交错成对的FS和FE步骤来进行,这相当于对二维子空间集合中最有区别的方向进行顺序搜索。它将FS的快速收敛速度与FE的能力相结合,以发现不是原始基本函数一部分的最佳功能,从而在少数迭代中得出的解决方案要比单独使用FE或FS可获得的解决方案要好。由于基本迭代的复杂度非常低,因此新算法可在识别问题的类别数量上进行扩展,该特性当前仅适用于在条件不成立的限制性假设下次优或最优的特征提取方法进行通用识别。实验结果表明,通过对局部极小值的更大鲁棒性或实现明显更快的收敛,这些方法均获得了显着改进。

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