Yu Guoshen, Slotine Jean-Jacques
Electrical and Computer Engineering Department, University of Minnesota, Twin Cities, MN 55455 USA.
IEEE Trans Neural Netw. 2009 Dec;20(12):1871-84. doi: 10.1109/TNN.2009.2031678. Epub 2009 Nov 13.
Distributed synchronization is known to occur at several scales in the brain, and has been suggested as playing a key functional role in perceptual grouping. State-of-the-art visual grouping algorithms, however, seem to give comparatively little attention to neural synchronization analogies. Based on the framework of concurrent synchronization of dynamical systems, simple networks of neural oscillators coupled with diffusive connections are proposed to solve visual grouping problems. The key idea is to embed the desired grouping properties in the choice of the diffusive couplings, so that synchronization of oscillators within each group indicates perceptual grouping of the underlying stimulative atoms, while desynchronization between groups corresponds to group segregation. Compared with state-of-the-art approaches, the same algorithm is shown to achieve promising results on several classical visual grouping problems, including point clustering, contour integration, and image segmentation.
众所周知,分布式同步在大脑的多个尺度上都会发生,并且有人认为它在感知分组中起着关键的功能作用。然而,目前最先进的视觉分组算法似乎相对较少关注神经同步类比。基于动态系统并发同步的框架,提出了由扩散连接耦合的简单神经振荡器网络来解决视觉分组问题。关键思想是将所需的分组属性嵌入到扩散耦合的选择中,这样每个组内振荡器的同步表示潜在刺激原子的感知分组,而组间的去同步对应于组分离。与目前最先进的方法相比,该算法在几个经典的视觉分组问题上,包括点聚类、轮廓整合和图像分割,都取得了有前景的结果。