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Principal Component Analysis Neural Network Hybrid Classification Approach for Galaxies Images

机译:主体成分分析星系图像的神经网络混合分类方法

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This article presents an automatic hybrid approach for galaxies images classification based on principal component analysis (PCA) neural network and moment-based features extraction algorithms. The proposed approach is consisted of four phases; namely image denoising, feature extraction, reduct generation, and classification phases. For the denoising phase, noise pixels are removed from input images, then input galaxy image is normalized to a uniform scale and Hu seven invariant moment algorithm is applied to reduce the dimensionality of the feature space during the feature extraction phase. Subsequently, for reduct generation phase, attributes in the information system table that is more important to the knowledge is generated as a subset of attributes. Rough set is used as feature reduction approach. The subset of attributed, which is called a reduct, is fully characterizing the knowledge in the database. Finally, during the classification phase, principal component analysis neural network algorithm is utilized for classifying the input galaxies images into one of four obtained source catalogue types. Experimental results showed that combining PCA and rough set as feature reduction techniques along with invariant moments for feature extraction provided better classification results than having no rough set feature reduction technique applied. It is also concluded that a small set of features is sufficient to classify galaxy images and provide a fast classification.
机译:本文介绍了基于主成分分析(PCA)神经网络和基于时刻的特征提取算法的星系图像分类的自动混合方法。所提出的方法由四个阶段组成;即图像去噪,特征提取,减少生成和分类阶段。对于去噪阶段,从输入图像中移除噪声像素,然后将输入的星系图像标准化为均匀的刻度,并且施加HU七个不变时刻算法以减少特征提取阶段期间特征空间的维度。随后,对于减阶段,信息系统表中的属性是生成对知识更重要的是属性的子集。粗糙集用作特征减少方法。归属于归因于折叠的子集完全表征了数据库中的知识。最后,在分类阶段期间,主要成分分析神经网络算法用于将输入的星系图像分类为四种获得的源目录类型中的一个。实验结果表明,与特征提取的不变矩相结合PCA和粗糙设定的特征矩,提供了比没有应用粗糙集特征减少技术的更好的分类结果。还得出结论,一小组特征足以分类银河图像并提供快速分类。

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