基于快速学习人工神经网络(FLANN)的R-G-B-S-V聚类空间彩色图像分割

Xuejie Zhang, A. Tay
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引用次数: 21

摘要

在之前的一篇论文中,我们介绍了一种受生物启发的双目视觉系统,CogV,它展示了人类视觉和注意力的部分特征。为了进一步开展工作,研究重点是将图像空间划分为可能模拟外生注意的兴趣区域。人类感知环境的第一步是通过一系列的注意力线索,这些线索可能会召唤部分边缘、区域、颜色和流行的想法,以了解流行的环境。通过这个过程,大脑决定将注意力集中在某个区域,从中提取进一步的信息。本文提出了一种可用于视觉的快速彩色图像分割算法。该方法基于快速学习人工神经网络(FLANN),基于相邻像素之间的相干性进行聚类和分割。本文提出的分割算法已被纳入现有的CogV系统作为一个简化的模型,我们松散地联系到上丘(SC)。该模块的目的是获得对环境的初步整体感知,并突出显示感知系统可能关注的感兴趣的区域。在此过程中,SC提供了一种检测外源刺激的方法,从而减少了对物体位置的初始搜索域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Learning Artificial Neural Network (FLANN) Based Color Image Segmentation in R-G-B-S-V Cluster Space
In a previous paper, we introduced a biologically inspired binocular vision system, the CogV, that exhibits partial characteristics of human vision and attention. To further the work, the investigation focused onto partitioning the image space into regions of interests that may simulate exogenous attention. The first step for human to perceive an environment is through a series of attention cues that may summon portions of edges, regions, colors, and prevailing thoughts in order to understand the prevailing environment. Through this process, the brain then decides to focus on some region to extract further information from it. This paper proposes a fast color image segmentation algorithm which may be used for vision applications. This approach is based on Fast Learning Artificial Neural Networks (FLANN) clustering and segmentation based on coherence between neighboring pixels. The proposed segmentation algorithm has been incorporated into the existing CogV system as a simplified model that we relate loosely to the superior colliculus (SC). The purpose of this module is to gain an initial overall perception of the environment and highlight regions of interest that the perceptual system may concern itself with. In the process, the SC provides a means to detect exogenous stimuli and thus reducing the initial search domain for object positions.
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