Center for Brain Science, Harvard University, Cambridge, MA 02138, USA.
Proc Natl Acad Sci U S A. 2010 Nov 9;107(45):19525-30. doi: 10.1073/pnas.1006076107. Epub 2010 Oct 11.
Humans can resolve the fine details of visual stimuli although the image projected on the retina is constantly drifting relative to the photoreceptor array. Here we demonstrate that the brain must take this drift into account when performing high acuity visual tasks. Further, we propose a decoding strategy for interpreting the spikes emitted by the retina, which takes into account the ambiguity caused by retinal noise and the unknown trajectory of the projected image on the retina. A main difficulty, addressed in our proposal, is the exponentially large number of possible stimuli, which renders the ideal Bayesian solution to the problem computationally intractable. In contrast, the strategy that we propose suggests a realistic implementation in the visual cortex. The implementation involves two populations of cells, one that tracks the position of the image and another that represents a stabilized estimate of the image itself. Spikes from the retina are dynamically routed to the two populations and are interpreted in a probabilistic manner. We consider the architecture of neural circuitry that could implement this strategy and its performance under measured statistics of human fixational eye motion. A salient prediction is that in high acuity tasks, fixed features within the visual scene are beneficial because they provide information about the drifting position of the image. Therefore, complete elimination of peripheral features in the visual scene should degrade performance on high acuity tasks involving very small stimuli.
尽管投射在视网膜上的图像相对于光感受器不断漂移,但人类仍然能够分辨视觉刺激的细微差别。本文中,我们证明了大脑在进行高分辨率视觉任务时必须考虑到这种漂移。此外,我们还提出了一种解码策略,用于解释视网膜发出的尖峰,该策略考虑了视网膜噪声引起的模糊性以及投射在视网膜上的图像的未知轨迹。在我们的提议中,解决的一个主要难点是可能的刺激数量呈指数增长,这使得理想的贝叶斯解决方案在计算上难以处理。相比之下,我们提出的策略暗示了在视觉皮层中进行现实实现的可能性。该策略涉及两个细胞群体,一个用于跟踪图像的位置,另一个用于表示图像本身的稳定估计。来自视网膜的尖峰被动态路由到两个群体,并以概率方式进行解释。我们考虑了可以实现该策略的神经电路结构及其在人类固视眼动的测量统计下的性能。一个显著的预测是,在高分辨率任务中,视觉场景中的固定特征是有益的,因为它们提供了有关图像漂移位置的信息。因此,在涉及非常小刺激的高分辨率任务中,完全消除视觉场景中的外围特征应该会降低性能。