论文标题
神经形状过滤器设计的进化观点
An evolutionary perspective on the design of neuromorphic shape filters
论文作者
论文摘要
已经投入了大量的时间和精力来使用Connectionist(神经网络)原理来开发机器视觉。这项工作的大部分受到神经科学家和行为主义者对皮质系统如何存储刺激信息的理论的启发。这些理论要求信息通过几个神经元种群之间的连接流动,最初的连接是随机的(或至少非功能性的)。然后,通过训练试验来修改连接的强度或位置,以实现有效的输出,例如识别对象的能力。这些理论忽略了一个没有皮质的动物,例如鱼,可以展示超过最佳神经网络模型的视觉技能。数亿年的演变已经预先编程了允许立即有效视力和快速学习的神经回路,并且在孵化后不久就可以使用视觉技能。皮质系统可能正在提供高级图像处理,但很可能使用已证明在简单系统中有效的设计原理。本文提供了用于注册形状信息的视网膜和皮质机制的简要概述,希望它可以有助于设计形状编码电路的设计,从而更匹配生物视觉的机制。
A substantial amount of time and energy has been invested to develop machine vision using connectionist (neural network) principles. Most of that work has been inspired by theories advanced by neuroscientists and behaviorists for how cortical systems store stimulus information. Those theories call for information flow through connections among several neuron populations, with the initial connections being random (or at least non-functional). Then the strength or location of connections are modified through training trials to achieve an effective output, such as the ability to identify an object. Those theories ignored the fact that animals that have no cortex, e.g., fish, can demonstrate visual skills that outpace the best neural network models. Neural circuits that allow for immediate effective vision and quick learning have been preprogrammed by hundreds of millions of years of evolution and the visual skills are available shortly after hatching. Cortical systems may be providing advanced image processing, but most likely are using design principles that had been proven effective in simpler systems. The present article provides a brief overview of retinal and cortical mechanisms for registering shape information, with the hope that it might contribute to the design of shape-encoding circuits that more closely match the mechanisms of biological vision.