Kuzmina Margarita, Manykin Eduard, Surina Irina
Keldysh Institute of Applied Mathematics RAS, Miusskaya Sq. 4, 125047 Moscow, Russia.
Biosystems. 2004 Aug-Oct;76(1-3):43-53. doi: 10.1016/j.biosystems.2004.05.005.
An oscillatory network of columnar architecture located in 3D spatial lattice was recently designed by the authors as oscillatory model of the brain visual cortex. Single network oscillator is a relaxational neural oscillator with internal dynamics tunable by visual image characteristics - local brightness and elementary bar orientation. It is able to demonstrate either activity state (stable undamped oscillations) or "silence" (quickly damped oscillations). Self-organized nonlocal dynamical connections of oscillators depend on oscillator activity levels and orientations of cortical receptive fields. Network performance consists in transfer into a state of clusterized synchronization. At current stage grey-level image segmentation tasks are carried out by 2D oscillatory network, obtained as a limit version of the source model. Due to supplemented network coupling strength control the 2D reduced network provides synchronization-based image segmentation. New results on segmentation of brightness and texture images presented in the paper demonstrate accurate network performance and informative visualization of segmentation results, inherent in the model.
作者最近设计了一个位于三维空间晶格中的柱状结构振荡网络,作为大脑视觉皮层的振荡模型。单个网络振荡器是一个弛豫神经振荡器,其内部动力学可由视觉图像特征——局部亮度和基本条形方向调节。它能够表现出活动状态(稳定的无阻尼振荡)或“沉默”(快速阻尼振荡)。振荡器的自组织非局部动态连接取决于振荡器的活动水平和皮质感受野的方向。网络性能在于转移到聚类同步状态。在当前阶段,灰度图像分割任务由二维振荡网络执行,该网络是源模型的极限版本。由于补充了网络耦合强度控制,二维简化网络提供了基于同步的图像分割。本文中关于亮度和纹理图像分割的新结果展示了该模型固有的准确网络性能和分割结果的信息可视化。