Deep artificial neural networks (ANNs) play a major role in modeling the visual pathways of primate and rodent. However, they highly simplify the computational properties of neurons compared to their biological counterparts. Instead, Spiking Neural Networks (SNNs) are more biologically plausible models since spiking neurons encode information with time sequences of spikes, just like biological neurons do. However, there is a lack of studies on visual pathways with deep SNNs models. In this study, we model the visual cortex with deep SNNs for the first time, and also with a wide range of state-of-the-art deep CNNs and ViTs for comparison. Using three similarity metrics, we conduct neural representation similarity experiments on three neural datasets collected from two species under three types of stimuli. Based on extensive similarity analyses, we further investigate the functional hierarchy and mechanisms across species. Almost all similarity scores of SNNs are higher than their counterparts of CNNs with an average of 6.6%. Depths of the layers with the highest similarity scores exhibit little differences across mouse cortical regions, but vary significantly across macaque regions, suggesting that the visual processing structure of mice is more regionally homogeneous than that of macaques. Besides, the multi-branch structures observed in some top mouse brain-like neural networks provide computational evidence of parallel processing streams in mice, and the different performance in fitting macaque neural representations under different stimuli exhibits the functional specialization of information processing in macaques. Taken together, our study demonstrates that SNNs could serve as promising candidates to better model and explain the functional hierarchy and mechanisms of the visual system.
翻译:深层人工内心网络(ANNs)在模拟灵长类和鼠齿类的视觉路径方面发挥着主要作用。然而,它们与生物类同相比,高度简化神经神经的计算特性。相反,Spiking神经网络(SNNs)在生物类同中更具生物貌似模范。相反,Spiking神经网络(SNNS)是更具有生物学上更可信的模型。因为Spiking神经网络(SNNS)与生物类同,它像生物神经科一样,将信息与时间序列加码信息编码。然而,缺乏关于深层SNNNNS模型的视觉路径的研究。在这项研究中,我们第一次用深层的SNNNNNPs做视觉路径模型模拟视觉皮层皮层皮层皮层皮层皮层皮层皮层皮层皮层骨部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部部</s>