基于自组织映射和生长自组织神经网络的图像色彩还原

Guojian Cheng, Jinquan Yang, Kuisheng Wang, Xiaoxiao Wang
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引用次数: 11

摘要

颜色是物体检测中最重要的属性之一。图像的彩色还原(CRI)是图像分割、压缩、呈现和传输的一个重要因素。CRI的主要目的是减少图像存储空间和计算时间。Kohonen自组织映射(KSOM)可以生成从高维信号空间到低维拓扑结构的映射。KSOM的主要特点是拓扑保持特征映射的形成和输入概率分布的逼近。生长自组织神经网络(growth Self-Organizing Neural Network, GSONN)在过去的十年中得到了越来越多的关注,以克服KSOM的一些局限性。解决CRI问题的一种有效方法是将其视为一个聚类问题,并采用KSOM和GSONN等自适应聚类方法进行求解。本文首先介绍了KSOM和神经气体网络。然后,我们讨论了一个典型的GSONN,生长神经气体。然后,对KSOM和GSONN在CRI中的性能进行了比较。最后给出了一些结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Color Reduction Based on Self-Organizing Maps and Growing Self-Organizing Neural Networks
Color is one of the most important properties for object detection. Color Reduction of Image (CRI) is an important factor for segmentation, compression, presentation and transmission of images. The main purpose of CRI is to cut off the image storage spaces and computation time. Kohonen¿s Self-Organizing Maps (KSOM) can generate mappings from high-dimensional signal spaces to lower dimensional topological structures. The main characteristics of KSOM are formation of topology preserving feature maps and approximation of input probability distribution. Growing Self-Organizing Neural Network (GSONN) has got more and more attentions in the past decade, to overcome some limitations of KSOM. An effective approach to solve CRI problem is to consider it as a clustering problem and solve it by using some adaptive clustering methods, such as KSOM and GSONN. This paper first gives an introduction to KSOM and neural gas network. Then, we discuss a typical GSONN, growing neural gas. After that, a performance comparison of KSOM and GSONN for CRI is given. It is ended with some conclusions.
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