Behpour Sahar, Field David J, Albert Mark V
Department of Information Science, University of North Texas, Denton, TX, United States.
Department of Psychology, Cornell University, Ithaca, NY, United States.
Front Physiol. 2021 Oct 27;12:695431. doi: 10.3389/fphys.2021.695431. eCollection 2021.
Correlated, spontaneous neural activity is known to play a necessary role in visual development, but the higher-order statistical structure of these coherent, amorphous patterns has only begun to emerge in the past decade. Several computational studies have demonstrated how this endogenous activity can be used to train a developing visual system. Models that generate spontaneous activity analogous to retinal waves have shown that these waves can serve as stimuli for efficient coding models of V1. This general strategy in development has one clear advantage: The same learning algorithm can be used both before and after eye-opening. This same insight can be applied to understanding LGN/V1 spontaneous activity. Although lateral geniculate nucleus (LGN) activity has been less discussed in the literature than retinal waves, here we argue that the waves found in the LGN have a number of properties that fill the role of a training pattern. We make the case that the role of "innate learning" with spontaneous activity is not only possible, but likely in later stages of visual development, and worth pursuing further using an efficient coding paradigm.
相关的自发神经活动在视觉发育中起着必要作用,这一点已为人所知,但这些连贯的、无定形模式的高阶统计结构在过去十年才刚刚开始显现。一些计算研究已经证明了这种内源性活动如何用于训练发育中的视觉系统。生成类似于视网膜波的自发活动的模型表明,这些波可以作为初级视觉皮层(V1)高效编码模型的刺激。这种发育中的一般策略有一个明显的优势:睁眼前后可以使用相同的学习算法。同样的见解可以应用于理解外侧膝状体(LGN)/V1的自发活动。尽管文献中对外侧膝状体(LGN)活动的讨论少于视网膜波,但我们在此认为,在LGN中发现的波具有许多充当训练模式的属性。我们认为,利用自发活动进行“先天学习”不仅在视觉发育后期是可能的,而且很有可能,值得进一步采用高效编码范式进行研究。