School of Information and Engineering, The Central University of Nationalities, Beijing, China.
Comput Intell Neurosci. 2012;2012:946589. doi: 10.1155/2012/946589. Epub 2012 Oct 30.
In this paper, we present a quantitative, highly structured cortex-simulated model, which can be simply described as feedforward, hierarchical simulation of ventral stream of visual cortex using biologically plausible, computationally convenient spiking neural network system. The motivation comes directly from recent pioneering works on detailed functional decomposition analysis of the feedforward pathway of the ventral stream of visual cortex and developments on artificial spiking neural networks (SNNs). By combining the logical structure of the cortical hierarchy and computing power of the spiking neuron model, a practical framework has been presented. As a proof of principle, we demonstrate our system on several facial expression recognition tasks. The proposed cortical-like feedforward hierarchy framework has the merit of capability of dealing with complicated pattern recognition problems, suggesting that, by combining the cognitive models with modern neurocomputational approaches, the neurosystematic approach to the study of cortex-like mechanism has the potential to extend our knowledge of brain mechanisms underlying the cognitive analysis and to advance theoretical models of how we recognize face or, more specifically, perceive other people's facial expression in a rich, dynamic, and complex environment, providing a new starting point for improved models of visual cortex-like mechanism.
本文提出了一种定量的、高度结构化的皮质模拟模型,可以简单地描述为使用生物上合理、计算上方便的尖峰神经网络系统对视觉皮层腹侧流进行前馈、分层模拟。这一动机直接来源于最近对视觉皮层腹侧流前馈通路的详细功能分解分析的开创性工作,以及人工尖峰神经网络 (SNN) 的发展。通过结合皮质层次结构的逻辑结构和尖峰神经元模型的计算能力,提出了一个实用的框架。作为原理验证,我们在几个面部表情识别任务上展示了我们的系统。所提出的皮质样前馈层次框架具有处理复杂模式识别问题的能力,这表明,通过将认知模型与现代神经计算方法相结合,皮质样机制的神经系统方法有可能扩展我们对大脑机制的理解,从而推进关于我们如何识别面部的理论模型,更具体地说,是在丰富、动态和复杂的环境中感知他人的面部表情,为改进视觉皮质样机制模型提供了新的起点。