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Genetic Image Network for Image Classification

机译:用于图像分类的基因图像网络

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摘要

Automatic construction methods for image processing proposed till date approximate adequate image transformation from original images to their target images using a combination of several known image processing filters by evolutionary computation techniques. Genetic Image Network (GIN) is a recent automatic construction method for image processing. The representation of GIN is a network structure. In this paper, we propose a method of automatic construction of image classifiers based on GIN, designated as Genetic Image Network for Image Classification (GIN-IC). The representation of GIN-IC is a feed-forward network structure. GIN-IC transforms original images to easier-to-classify images using image transformation nodes, and selects adequate image features using feature extraction nodes. We apply GIN-IC to test problems involving multi-class categorization of texture images, and show that the use of image transformation nodes is effective for image classification problems.
机译:通过通过进化计算技术使用几种已知的图像处理滤波器的组合,提出了从原始图像到其目标图像的图像处理的自动施工方法。遗传图像网络(GIN)是最近的图像处理自动施工方法。 GIN的表示是网络结构。本文提出了一种自动构建基于杜松子的图像分类器的方法,被指定为用于图像分类的遗传图像网络(GIN-IC)。 GIN-IC的表示是前馈网络结构。 GIN-IC将原始图像转换为使用图像转换节点更轻松地进行分类图像,并使用特征提取节点选择足够的图像功能。我们将GIN-IC应用于测试涉及纹理图像多级分类的问题,并表明使用图像变换节点对于图像分类问题有效。

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