Image classification based on textural feature using artificial neural network

Rashmi Salavi, M. Sohani, A. Dhumal
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引用次数: 1

Abstract

Image classification plays an important part in the fields of Remote sensing, Image analysis and Pattern recognition. Image classification can be done using conventional methods. But conventional methods lead to misclassification due to strictly convex boundaries. Textural features are included for better classification but are inconvenient for conventional methods. The proposed system uses textural feature based image classification using neural network. Textural features are extracted using Gray level co-occurrence matrix and artificial neural network is developed for the classification of images into different classes. Neural network is trained by supervised learning using standard back propagation algorithm for the classification of images.
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基于纹理特征的人工神经网络图像分类
图像分类在遥感、图像分析和模式识别等领域有着重要的作用。图像分类可以用传统的方法来完成。但传统方法由于严格的凸边界导致分类错误。纹理特征是为了更好的分类,但不方便传统的方法。该系统采用基于纹理特征的神经网络图像分类方法。利用灰度共生矩阵提取纹理特征,并利用人工神经网络对图像进行分类。神经网络通过监督学习训练,使用标准的反向传播算法对图像进行分类。
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