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Automatic blur type classification via ensemble SVM

机译:通过集合SVM自动模糊类型分类

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摘要

Automatic classification of blur type is critical to blind image restoration. In this paper, we propose an original solution for blur type classification of digital images using ensemble Support Vector Machine (SVM) structure. It is assumed that each image is subject to at most one of three blur types: haze, motion, and defocus In the proposed technique, 35 blur features are first calculated from image spatial and transform domains, and then ranked using the SVM-Recursive Feature Elimination (SVM-RFE) method, which is also adopted to optimize the parameters of the Radial Basis Function (RBF) kernel of SVMs. Moreover, Support Vector Rate (SVR) is used to quantify the optimal number of features to be included in the classifiers. Finally, the bagging random sampling method is utilized to construct the ensemble SVM classifier based on a weighted voting mechanism to classify the types of blurred images. Numerical experiments are conducted over a sample dataset to be called Beihang Univ. Blur Image Database (BHBID) that consists of 1188 simulated blurred images and 1202 natural blurred images collected from popular national and international websites (Baidu.com, Flicker.com, Pabse.com, etc.). The experiments demonstrate the superior performance of the proposed ensemble SVM classifier by comparing it with single SVM classifiers as well as other state-of-the-art blur classification methods.
机译:模糊类型的自动分类对于盲目图像恢复至关重要。在本文中,我们向使用集合支持向量机(SVM)结构提出了一种原始解决数字图像的模糊分类。假设每个图像在三种模糊类型中的大多数中受到以下大多数:雾度,运动和散焦在所提出的技术中,首先从图像空间和变换域计算35个模糊特征,然后使用SVM递归特征进行排序消除(SVM-RFE)方法,也采用了优化SVMS径向基函数(RBF)内核的参数。此外,支持向量速率(SVR)用于量化要包含在分类器中的最佳功能数量。最后,利用袋装随机采样方法基于加权投票机制构建集合SVM分类器,以对模糊图像的类型进行分类。数值实验在样本数据集上进行,称为北旺大学。模糊图像数据库(BHBID)由1188模拟模拟模糊图像和1202自然模糊图像,从流行的国家和国际网站收集(Baidu.com,Flicker.com,Pabse.com等)。实验通过将其与单个SVM分类器以及其他最先进的模糊分类方法进行比较,证明了所提出的集合SVM分类器的优异性能。

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