Fuzzy classification of image pixels

C. Castiello, G. Castellano, L. Caponetti, A. Fanelli
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引用次数: 11

Abstract

We present a neuro-fuzzy approach for classification of image pixels into three classes: contour, regular or texture points. Exploiting the processing capabilities of a neural network, fuzzy classification rules are derived by learning from data and applied to classify pixels in grey-level images. To derive a proper set of training data, the spatial properties of the image features and a multiscaled representation of images are considered. The effectiveness of the proposed approach is illustrated on some sample images.
图像像素的模糊分类
我们提出了一种神经模糊方法将图像像素分为三类:轮廓点、规则点或纹理点。利用神经网络的处理能力,从数据中学习得到模糊分类规则,并将其应用于灰度图像的像素分类。为了得到一组合适的训练数据,考虑了图像特征的空间属性和图像的多尺度表示。在一些样本图像上验证了该方法的有效性。
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