Jehee Janneke F M, Lamme Victor A F, Roelfsema Pieter R
Department of Psychology, University of Amsterdam, Amsterdam, The Netherlands.
Vision Res. 2007 Apr;47(9):1153-65. doi: 10.1016/j.visres.2006.12.018.
We describe a model and simulations of boundary assignment by cortical neurons, a process that assigns edges to figural image regions, as opposed to the background regions on the other side of the edge. The model is composed of several areas, resembling the hierarchical feedforward-feedback organization of areas in the visual cortex. In each successive area along the hierarchy, the visual image is represented at a coarser resolution. Model neurons tend to assign edges to convex image regions. Because of high spatial resolution, information about convexity is not immediately available to all neurons in lower-level areas. In higher-level areas, however, spatial resolution is low, and convexity is coded more reliably. Feedback connections propagate this information to the high-resolution neurons of lower-level visual areas, making it available at all network levels and at all spatial resolutions. The proposed connection scheme assigns edges faster and more reliable to objects than one with only horizontal connections. The model accounts for both psychophysical and neurophysiological data on figural assignment.
我们描述了一种由皮层神经元进行边界分配的模型及模拟,该过程将边缘分配给图形图像区域,与边缘另一侧的背景区域相对。该模型由几个区域组成,类似于视觉皮层中区域的分层前馈-反馈组织。在沿着层次结构的每个连续区域中,视觉图像以更粗糙的分辨率表示。模型神经元倾向于将边缘分配给凸形图像区域。由于高空间分辨率,关于凸性的信息并非立即对较低层次区域的所有神经元可用。然而,在较高层次区域,空间分辨率较低,凸性编码更可靠。反馈连接将此信息传播到较低层次视觉区域的高分辨率神经元,使其在所有网络层次和所有空间分辨率下都可用。与仅具有水平连接的方案相比,所提出的连接方案能更快、更可靠地将边缘分配给物体。该模型解释了关于图形分配的心理物理学和神经生理学数据。