Cocci Giacomo, Barbieri Davide, Citti Giovanna, Sarti Alessandro
Department of Electrical, Electronic, and Information Engineering "Guglielmo Marconi," University of Bologna, 40136 Bologna, Italy
Department of Mathematics, Autonomous University of Madrid, Facultad de Ciencias, 28049 Madrid, Spain
Neural Comput. 2015 Jun;27(6):1252-93. doi: 10.1162/NECO_a_00738. Epub 2015 Mar 31.
The visual systems of many mammals, including humans, are able to integrate the geometric information of visual stimuli and perform cognitive tasks at the first stages of the cortical processing. This is thought to be the result of a combination of mechanisms, which include feature extraction at the single cell level and geometric processing by means of cell connectivity. We present a geometric model of such connectivities in the space of detected features associated with spatiotemporal visual stimuli and show how they can be used to obtain low-level object segmentation. The main idea is to define a spectral clustering procedure with anisotropic affinities over data sets consisting of embeddings of the visual stimuli into higher-dimensional spaces. Neural plausibility of the proposed arguments will be discussed.
包括人类在内的许多哺乳动物的视觉系统,能够在皮层处理的第一阶段整合视觉刺激的几何信息并执行认知任务。这被认为是多种机制共同作用的结果,这些机制包括单细胞水平的特征提取以及通过细胞连接进行的几何处理。我们提出了一种在与时空视觉刺激相关的检测特征空间中的此类连接的几何模型,并展示了如何利用它们来获得低级别的对象分割。主要思想是在由视觉刺激嵌入到高维空间组成的数据集中定义一种具有各向异性亲和力的谱聚类过程。将讨论所提出论点的神经合理性。