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首页> 外文期刊>International Journal of Advanced Networking and Applications >Classifying content-based Images using Self Organizing Map Neural Networks Based on Nonlinear Features
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Classifying content-based Images using Self Organizing Map Neural Networks Based on Nonlinear Features

机译:使用基于非线性特征的自组织地图神经网络对基于内容的图像进行分类

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Classifying similar images is one of the most interesting and essential image processing operations. Presented methods have some disadvantages like: low accuracy in analysis step and low speed in feature extraction process. In this paper, a new method for image classification is proposed in which similarity weight is revised by means of information in related and unrelated images. Based on researchers’ idea, most of real world similarity measurement systems are nonlinear. Thus, traditional linear methods are not capable of recognizing nonlinear relationship and correlation in such systems. Undoubtedly, Self Organizing Map neural networks are strongest networks for data mining and nonlinear analysis of sophisticated spaces purposes. In our proposed method, we obtain images with the most similarity measure by extracting features of our target image and comparing them with the features of other images. We took advantage of NLPCA algorithm for feature extraction which is a nonlinear algorithm that has the ability to recognize the smallest variations even in noisy images. Finally, we compare the run time and efficiency of our proposed method with previous proposed methods.
机译:对相似图像进行分类是最有趣且必不可少的图像处理操作之一。提出的方法有一些缺点,例如:分析步骤的准确性低和特征提取过程的速度低。本文提出了一种新的图像分类方法,该方法利用相关和不相关图像中的信息来修正相似度。根据研究人员的想法,现实世界中的大多数相似度测量系统都是非线性的。因此,传统的线性方法不能识别这种系统中的非线性关系和相关性。毫无疑问,自组织映射神经网络是用于数据挖掘和复杂空间非线性分析的最强大的网络。在我们提出的方法中,我们通过提取目标图像的特征并将其与其他图像的特征进行比较来获得具有最相似度量的图像。我们利用NLPCA算法进行特征提取,这是一种非线性算法,即使在嘈杂的图像中也能够识别出最小的变化。最后,我们将我们提出的方法与以前提出的方法的运行时间和效率进行了比较。

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