Cortical prostheses are devices implanted in the visual cortex that attempt to restore lost vision by electrically stimulating neurons. Currently, the vision provided by these devices is limited, and accurately predicting the visual percepts resulting from stimulation is an open challenge. We propose to address this challenge by utilizing 'brain-like' convolutional neural networks (CNNs), which have emerged as promising models of the visual system. To investigate the feasibility of adapting brain-like CNNs for modeling visual prostheses, we developed a proof-of-concept model to predict the perceptions resulting from electrical stimulation. We show that a neurologically-inspired decoding of CNN activations produces qualitatively accurate phosphenes, comparable to phosphenes reported by real patients. Overall, this is an essential first step towards building brain-like models of electrical stimulation, which may not just improve the quality of vision provided by cortical prostheses but could also further our understanding of the neural code of vision.
翻译:骨质假肢是植入视觉皮层的装置,试图通过刺激电动的神经神经恢复失去的视觉。目前,这些装置提供的视觉是有限的,准确预测刺激产生的视觉洞察力是一个公开的挑战。我们提议通过使用“脑类”的进化神经网络来应对这一挑战,这些网络已成为视觉系统的有希望的模式。为了调查将像大脑那样的CNN用于模拟视觉假肢的可行性,我们开发了一个验证概念模型,以预测电动产生的感知。我们显示,由神经学驱动的有线电视新闻网启动的解密产生了质量准确的磷,与实际病人报告的磷相类似。总体而言,这是建立像大脑的电动模型的第一步,它可能不仅仅是提高大脑假肢提供的视觉质量,而且还可以进一步加深我们对视觉神经代码的理解。