基于粗糙集和人工神经网络的图像分类

D. Vasundhara, M. Seetha
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引用次数: 3

摘要

空间图像分类是指从空间图像数据集中提取有意义的知识信息类的机制。传统的基于像素的图像分类技术有支持向量机(SVM)、人工神经网络(ANN)、模糊方法、决策树(DT)等。这些图像分类方法的性能和准确性取决于网络结构和输入的数量。在本文中,我们提出了一种逐步提高神经网络分类性能的机制,即使用粗糙集方法来选择图像像素的特征/属性。对本文提出的算法进行了复杂性分析,并与现有的基于感兴趣区域特征的分类技术进行了机制比较。
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Rough-set and artificial neural networks based image classification
Spatial image classification meant to the mechanism of extracting meaningful knowledge information classes from spatial images dataset. Many traditional pixel based image classification techniques such as Support Vector Machines (SVM), ANN, Fuzzy methods, Decision Trees (DT) etc. exist. The performance and accuracy of these image classification methods depends upon the network structure and number of inputs. Here, in this paper, we have proposed an step-wise mechanism to significantly improve the classification performance of neural network, that uses rough sets approach for purpose of features/attributes selection of image pixels. The complexity analysis of the proposed algorithm and the comparison of mechanism, presented here, with existing classification techniques based on features over the interest area is carried out.
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