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EYE DETECTION USING OPTIMAL WAVELET PACKETS AND RADIAL BASIS FUNCTIONS (RBFs)

机译:使用最佳小波包和径向基函数(RBF)进行眼睛检测

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The eyes are important facial landmarks, both for image normalization due to their relatively constant interocular distance, and for post processing due to the anchoring on model-based schemes. This paper introduces a novel approach for the eye detection task using optimal wavelet packets for eye representation and Radial Basis Functions (RBFs) for subsequent classification ("labeling") of facial areas as eye versus non-eye regions. Entropy minimization is the driving force behind the derivation of optimal wavelet packets. It decreases the degree of data dispersion and it thus facilitates clustering ("prototyping") and capturing the most significant characteristics of the underlying (eye regions) data. Entropy minimization is thus functionally compatible with the first operational stage of the RBF classifier, that of clustering, and this explains the improved RBF performance on eye detection. Our experiments on the eye detection task prove the merit of this approach as they show that eye images compressed using optimal wavelet packets lead to improved and robust performance of the RBF classifier compared to the case where original raw images are used by the RBF classifier.
机译:眼睛是重要的面部界标,由于其相对恒定的眼间距离,对于图像归一化以及由于基于模型的方案锚定,对于后处理而言,它们都是重要的。本文介绍了一种用于眼睛检测任务的新方法,该方法使用最优小波包进行眼睛表示,并采用径向基函数(RBF)对面部区域进行分类(“标记”)为眼睛区域与非眼睛区域。熵最小化是推导最优小波包的背后驱动力。它降低了数据分散的程度,因此有利于聚类(“原型设计”)并捕获基础(眼睛区域)数据的最重要特征。因此,熵最小化与RBF分类器的第一个操作阶段(即聚类)在功能上兼容,这说明了在眼睛检测方面改进的RBF性能。我们在眼睛检测任务上的实验证明了这种方法的优点,因为它们表明,与RBF分类器使用原始原始图像的情况相比,使用最佳小波包压缩的眼睛图像可提高RBF分类器的性能,使其性能更强健。

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