Computing with Biologically Inspired Neural Oscillators: Application to Colour Image Segmentation

A. Belatreche, L. Maguire, T. Mcginnity, L. McDaid, A. Ghani
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引用次数: 3

Abstract

This paper investigates the computing capabilities and potential applications of neural oscillators, a biologically inspired neural model, to grey scale and colour image segmentation, an important task in image understanding and object recognition. A proposed neural system that exploits the synergy between neural oscillators and Kohonen self-organising maps (SOMs) is presented. It consists of a two-dimensional grid of neural oscillators which are locally connected through excitatory connections and globally connected to a common inhibitor. Each neuron is mapped to a pixel of the input image and existing objects, represented by homogenous areas, are temporally segmented through synchronisation of the activity of neural oscillators that are mapped to pixels of the same object. Self-organising maps form the basis of a colour reduction system whose output is fed to a 2D grid of neural oscillators for temporal correlation-based object segmentation. Both chromatic and local spatial features are used. The system is simulated in Matlab and its demonstration on real world colour images shows promising results and the emergence of a new bioinspired approach for colour image segmentation. The paper concludes with a discussion of the performance of the proposed system and its comparison with traditional image segmentation approaches.
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生物学启发的神经振荡器计算:彩色图像分割的应用
本文研究了神经振荡器(一种受生物学启发的神经模型)在图像理解和对象识别中的重要任务——灰度和彩色图像分割中的计算能力和潜在应用。提出了一种利用神经振荡器和Kohonen自组织映射(SOMs)之间协同作用的神经系统。它由神经振子的二维网格组成,这些振子局部通过兴奋性连接连接,全局连接到一个共同的抑制剂。每个神经元被映射到输入图像的一个像素,而由同质区域表示的现有物体,通过映射到同一物体像素的神经振荡器活动的同步被暂时分割。自组织地图构成了色彩还原系统的基础,该系统的输出被馈送到二维神经振荡器网格,用于基于时间相关的对象分割。彩色和局部空间特征都被使用。该系统在Matlab中进行了仿真,并在真实世界的彩色图像上进行了演示,显示了令人鼓舞的结果,并出现了一种新的生物灵感彩色图像分割方法。最后讨论了该系统的性能,并与传统的图像分割方法进行了比较。
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