Conventional neural network models (CNN), loosely inspired by the primate visual system, have been shown to predict neural responses in the visual cortex. However, the relationship between CNNs and the visual system is incomplete due to many reasons. On one hand state of the art CNN architecture is very complex, yet can be fooled by imperceptibly small, explicitly crafted perturbations which makes it hard difficult to map layers of the network with the visual system and to understand what they are doing. On the other hand, we don't know the exact mapping between feature space of the CNNs and the space domain of the visual cortex, which makes it hard to accurately predict neural responses. In this paper we review the challenges and the methods that have been used to predict neural responses in the visual cortex and whole brain as part of The Algonauts Project 2021 Challenge: "How the Human Brain Makes Sense of a World in Motion".
翻译:由灵长类视觉系统随意启发的常规神经网络模型(CNN)被显示可以预测视觉皮层神经反应。 但是,CNN和视觉系统之间的关系由于许多原因并不完全。 一方面,CNN结构非常复杂,但可以被无法想象的微小、明确设计的扰动所愚弄,因此很难用视觉系统绘制网络层图,也难以了解它们正在做什么。另一方面,我们不知道CNN的特征空间与视觉皮层空间域间的确切绘图,这使得很难准确预测神经反应。 在本文中,我们审查了用于预测视觉皮层和整个大脑神经反应的挑战和方法,作为Algoautes项目2021挑战的一部分:“人类大脑如何在运动中制造世界的感知”。