Color Reduction by Using a new Self-Growing and Self-Organized Neural Network

A. Atsalakis, N. Papamarkos
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引用次数: 8

Abstract

A new method for the reduction of the number of colors in a digital image is proposed. The new method is based on the developed of a new neural network classifier that combines the advantages of the Growing Neural Gas (GNG) and the Kohonen Self-Organized Feature Map (SOFM) neural networks. We call the new neural network: Self-Growing and SelfOrganized Neural Gas (SGONG). Its main advantage is that it defines the number of the created neurons and their topology in an automatic way. As a consecutive, isolated color classes, which may correspond to significant image details, can be obtained. The SGONG is fed by the color components and additional spatial features. To speed up the entire algorithm and to reduce memory requirements, a fractal scanning sub-sampling technique is used. The method is applicable to any type of color images and it can accommodate any type of color space.
基于自生长自组织神经网络的色彩还原
提出了一种减少数字图像中颜色数量的新方法。该方法基于一种新的神经网络分类器的开发,该分类器结合了生长神经气体(GNG)和Kohonen自组织特征映射(SOFM)神经网络的优点。我们称这种新的神经网络为:自生长和自组织神经气体(SGONG)。它的主要优点是它以自动的方式定义创建的神经元的数量和它们的拓扑结构。作为一个连续的,孤立的颜色类,这可能对应重要的图像细节,可以得到。SGONG是由色彩成分和额外的空间特征馈送的。为了提高整个算法的速度和降低对内存的要求,采用了分形扫描子采样技术。该方法适用于任何类型的彩色图像,可以容纳任何类型的色彩空间。
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