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Algorithm for training the minimum error one-class classifier of images

机译:训练图像最小误差一类分类器的算法

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We propose a training algorithm for one-class classifiers in order to minimize the classification error. The aim is to choose the optimal value of the slack parameter, which controls the selectiveness of a classifier. The one-class classifier based on the coordinated clusters representation of images is trained and then used for the classification of texture images. As the slack parameter C varies through a range of values, for each C, the misclassification rate is computed using only the training samples. The value of C that yields the minimum misclassification rate, estimated over the training set, is taken as the optimal value, C_(opt). Finally, the optimized classifier is tested on the extended database of images. Experimental results demonstrate the validity of the proposed method. In our experiments, classification efficiency approaches, or is equal to, 100percent, after the optimal training of the classifier.
机译:为了最小化分类错误,我们提出了一种针对一类分类器的训练算法。目的是选择松弛参数的最佳值,该参数控制分类器的选择性。训练基于图像的协调簇表示的一类分类器,然后将其用于纹理图像的分类。由于松弛参数C在一个值的范围内变化,因此对于每个C,仅使用训练样本即可计算出误分类率。在训练集上估计的产生最小错误分类率的C值被视为最佳值C_(opt)。最后,在扩展的图像数据库上测试优化的分类器。实验结果证明了该方法的有效性。在我们的实验中,在对分类器进行最佳训练之后,分类效率接近或等于100%。

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