基于svm的非参数判别分析,在人脸检测中的应用

R. Fransens, J. D. Prins, L. Gool
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引用次数: 39

摘要

检测决策面的优势法线方向是一种成熟的高维分类问题特征选择技术。为了使这一战略更易于实施,已经提出了几种方法,但从实用主义的观点来看,它们仍然显示出一些重要的缺点。本文提出了一种将法向思想与支持向量机分类器相结合的方法。这两者形成了一种自然而有力的匹配,因为SVs位于附近,并且充分描述了决策面。该方法可以从广泛的数据集优雅地纳入高性能分类器的训练中。这种潜力得到了实验的证实,包括合成数据和真实数据,后者是人脸检测实验。在这个实验中,我们演示了我们的方法如何显著减少cpu时间,而分类性能的损失可以忽略不计。
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SVM-based nonparametric discriminant analysis, an application to face detection
Detecting the dominant normal directions to the decision surface is an established technique for feature selection in high dimensional classification problems. Several approaches have been proposed to render this strategy more amenable to practice, but they still show a number of important shortcomings from a pragmatic point of view. This paper introduces a novel such approach, which combines the normal directions idea with support vector machine classifiers. The two make a natural and powerful match, as SVs are located nearby, and fully describe the decision surfaces. The approach can be included elegantly into the training of performant classifiers from extensive datasets. The potential is corroborated by experiments, both on synthetic and real data, the latter on a face detection experiment. In this experiment we demonstrate how our approach can lead to a significant reduction of CPU-time, with neglectable loss of classification performance.
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