Ursino Mauro, La Cara Giuseppe-Emiliano
Department of Electronics, Computer Science, and Systems, University of Bologna, Cesena, Italy.
Network. 2004 May;15(2):69-89.
The present study analyses the problem of binding and segmentation of a visual scene by means of a network of neural oscillators, laying emphasis on the problems of fragmentation, perception of details at different scales and spatial attention. The work is based on a two-layer model: a second layer of Wilson-Cowan oscillators is inhibited by information from the first layer. Moreover, the model uses a global inhibitor (GI) to segment objects. Spatial attention consists of an excitatory input, surrounded by an inhibitory annulus. A single object is identified by synchronous oscillatory activity of neural groups. The main idea of this work is that segmentation of objects at different detail levels can be achieved by linking parameters of the GI (i.e. the threshold and the inhibition strength) with the dimension of the zone selected by attention and with the dimension of the smaller objects to be detected. Simulations show that three possible kinds of behavior can be attained with the model, through proper choice of the GI parameters and attention input: (i) large objects in the visual scene are perceived, while small details are suppressed; (ii) large objects are perceived, while details are assembled together to constitute a single 'noise term'; (iii) if attention is focused on a smaller area and the GI parameters modulated accordingly (i.e. the threshold and attention strength are reduced) details are individually perceived as separate objects. These results suggest that the GI and attention may represent two concurrent aspects of the same attentive mechanism, i.e. they should work together to provide flexible management of a visual scene at different levels of detail.
本研究通过神经振荡器网络分析视觉场景的绑定和分割问题,重点关注碎片化、不同尺度细节的感知以及空间注意力问题。该工作基于一个两层模型:第二层的威尔逊 - 考恩振荡器受到来自第一层信息的抑制。此外,该模型使用全局抑制剂(GI)来分割物体。空间注意力由一个兴奋性输入组成,周围环绕着一个抑制性环带。单个物体通过神经群体的同步振荡活动来识别。这项工作的主要思想是,通过将GI的参数(即阈值和抑制强度)与注意力选择区域的维度以及要检测的较小物体的维度相联系,可以实现不同细节水平的物体分割。模拟表明,通过适当选择GI参数和注意力输入,该模型可以实现三种可能的行为:(i)感知视觉场景中的大物体,同时抑制小细节;(ii)感知大物体,同时将细节组合在一起构成一个单一的“噪声项”;(iii)如果注意力集中在较小区域并相应地调制GI参数(即降低阈值和注意力强度),细节会被单独感知为独立的物体。这些结果表明,GI和注意力可能代表同一注意力机制的两个并发方面,即它们应该共同作用,以便在不同细节水平上灵活管理视觉场景。