Computational Neuroscience Laboratory, Salk Institute for Biological Studies La Jolla, CA, USA.
Front Comput Neurosci. 2011 Feb 1;4:155. doi: 10.3389/fncom.2010.00155. eCollection 2011.
We examine how the representation of space is affected by receptive field (RF) characteristics of the encoding population. Spatial responses were defined by overlapping Gaussian RFs. These responses were analyzed using multidimensional scaling to extract the representation of global space implicit in population activity. Spatial representations were based purely on firing rates, which were not labeled with RF characteristics (tuning curve peak location, for example), differentiating this approach from many other population coding models. Because responses were unlabeled, this model represents space using intrinsic coding, extracting relative positions amongst stimuli, rather than extrinsic coding where known RF characteristics provide a reference frame for extracting absolute positions. Two parameters were particularly important: RF diameter and RF dispersion, where dispersion indicates how broadly RF centers are spread out from the fovea. For large RFs, the model was able to form metrically accurate representations of physical space on low-dimensional manifolds embedded within the high-dimensional neural population response space, suggesting that in some cases the neural representation of space may be dimensionally isomorphic with 3D physical space. Smaller RF sizes degraded and distorted the spatial representation, with the smallest RF sizes (present in early visual areas) being unable to recover even a topologically consistent rendition of space on low-dimensional manifolds. Finally, although positional invariance of stimulus responses has long been associated with large RFs in object recognition models, we found RF dispersion rather than RF diameter to be the critical parameter. In fact, at a population level, the modeling suggests that higher ventral stream areas with highly restricted RF dispersion would be unable to achieve positionally-invariant representations beyond this narrow region around fixation.
我们研究了空间表示如何受到编码群体的感受野(RF)特征的影响。空间响应由重叠的高斯 RF 定义。使用多维标度分析这些响应,以提取群体活动中隐含的全局空间表示。空间表示完全基于放电率,而不标记 RF 特征(例如,调谐曲线峰值位置),这与许多其他群体编码模型区分开来。由于响应未标记,因此该模型使用内在编码表示空间,提取刺激之间的相对位置,而不是外在编码,外在编码中已知的 RF 特征为提取绝对位置提供参考框架。两个参数特别重要:RF 直径和 RF 分散度,其中分散度表示 RF 中心从中央凹散开的程度。对于较大的 RF,该模型能够在低维流形上形成物理空间的度量精确表示,这些流形嵌入在高维神经群体反应空间中,这表明在某些情况下,空间的神经表示可能与 3D 物理空间在维度上同构。较小的 RF 大小会降低和扭曲空间表示,最小的 RF 大小(存在于早期视觉区域中)甚至无法在低维流形上恢复拓扑一致的空间表示。最后,尽管刺激反应的位置不变性长期以来一直与物体识别模型中的大 RF 相关,但我们发现 RF 分散度而不是 RF 直径是关键参数。实际上,在群体水平上,建模表明具有高度限制 RF 分散度的较高腹侧流区域将无法在固定点周围的这个狭窄区域之外实现位置不变的表示。