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New learning subspace method for image feature extraction

机译:图像特征提取的新学习子空间方法

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摘要

A new method of Windows Minimum/Maximum Module Learning Subspace Algorithm (WMMLSA) for image feature extraction is presented. The WMMLSM is insensitive to the order of the training samples and can regulate effectively the radical vectors of an image feature subspace through selecting the study samples for subspace iterative learning algorithm,so it can improve the robustness and generalization capacity of a pattern subspace and enhance the recognition rate of a classifier. At the same time,a pattern subspace is built by the PCA method. The classifier based on WMMLSM is successfully applied to recognize the pressed characters on the gray-scale images. The results indicate that the correct recognition rate on WMMLSM is higher than that on Average Learning Subspace Method,and that the training speed and-the classification speed are both improved. The new method is more applicable and efficient.
机译:提出了一种Windows最小/最大模块学习子空间算法(WMMLSA)用于图像特征提取的新方法。 WMMLSM对训练样本的顺序不敏感,并且可以通过选择用于子空间迭代学习算法的研究样本来有效地调节图像特征子空间的根向量,从而可以提高模式子空间的鲁棒性和泛化能力,并增强图像特征空间的鲁棒性和泛化能力。分类器的识别率。同时,通过PCA方法建立模式子空间。基于WMMLSM的分类器已成功应用于识别灰度图像上的按下字符。结果表明,WMMLSM的正确识别率高于平均学习子空间方法,并且训练速度和分类速度都有所提高。新方法更加适用和高效。

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