Ozertem Umut, Erdogmus Deniz
Yahoo! Labs, Santa Clara, CA 95054, USA.
IEEE Trans Neural Netw. 2009 Jul;20(7):1195-203. doi: 10.1109/TNN.2009.2021473. Epub 2009 Jun 2.
Given the knowledge of class probability densities, a priori probabilities, and relative risk levels, Bayes classifier provides the optimal minimum-risk decision rule. Specifically, focusing on the two-class (detection) scenario, under certain symmetry assumptions, matched filters provide optimal results for the detection problem. Noticing that the Bayes classifier is in fact a nonlinear projection of the feature vector to a single-dimensional statistic, in this paper, we develop a smooth nonlinear projection filter constrained to the estimated span of class conditional distributions as does the Bayes classifier. The nonlinear projection filter is designed in a reproducing kernel Hilbert space leading to an analytical solution both for the filter and the optimal threshold. The proposed approach is tested on typical detection problems, such as neural spike detection or automatic target detection in synthetic aperture radar (SAR) imagery. Results are compared with linear and kernel discriminant analysis, as well as classification algorithms such as support vector machine, AdaBoost and LogitBoost.
已知类概率密度、先验概率和相对风险水平,贝叶斯分类器提供了最优的最小风险决策规则。具体而言,聚焦于两类(检测)场景,在某些对称假设下,匹配滤波器为检测问题提供了最优结果。注意到贝叶斯分类器实际上是特征向量到单维统计量的非线性投影,在本文中,我们开发了一种平滑非线性投影滤波器,它与贝叶斯分类器一样,受限于类条件分布的估计跨度。非线性投影滤波器在再生核希尔伯特空间中设计,从而得到滤波器和最优阈值的解析解。所提出的方法在典型检测问题上进行了测试,如神经尖峰检测或合成孔径雷达(SAR)图像中的自动目标检测。结果与线性和核判别分析以及支持向量机、AdaBoost和LogitBoost等分类算法进行了比较。