Plebe Alessio, Domenella Rosaria Grazia
Department of Cognitive Science, University of Messina, V. Concezione 8, Messina, Italy.
Neural Netw. 2007 Sep;20(7):763-80. doi: 10.1016/j.neunet.2007.04.027. Epub 2007 Jun 2.
Object recognition is one of the most important functions of the human visual system, yet one of the least understood, this despite the fact that vision is certainly the most studied function of the brain. We understand relatively well how several processes in the cortical visual areas that support recognition capabilities take place, such as orientation discrimination and color constancy. This paper proposes a model of the development of object recognition capability, based on two main theoretical principles. The first is that recognition does not imply any sort of geometrical reconstruction, it is instead fully driven by the two dimensional view captured by the retina. The second assumption is that all the processing functions involved in recognition are not genetically determined or hardwired in neural circuits, but are the result of interactions between epigenetic influences and basic neural plasticity mechanisms. The model is organized in modules roughly related to the main visual biological areas, and is implemented mainly using the LISSOM architecture, a recent neural self-organizing map model that simulates the effects of intercortical lateral connections. This paper shows how recognition capabilities, similar to those found in brain ventral visual areas, can develop spontaneously by exposure to natural images in an artificial cortical model.
物体识别是人类视觉系统最重要的功能之一,但也是最不为人所理解的功能之一,尽管视觉无疑是大脑研究最多的功能。我们相对较好地理解了支持识别能力的皮质视觉区域中的几个过程是如何发生的,比如方向辨别和颜色恒常性。本文基于两个主要理论原则提出了一个物体识别能力发展的模型。第一个原则是,识别并不意味着任何形式的几何重建,相反,它完全由视网膜捕获的二维视图驱动。第二个假设是,识别中涉及的所有处理功能不是由基因决定的,也不是在神经回路中硬连接的,而是表观遗传影响和基本神经可塑性机制之间相互作用的结果。该模型由大致与主要视觉生物区域相关的模块组成,主要使用LISSOM架构实现,LISSOM是一种最近的神经自组织映射模型,可模拟皮质间横向连接的效果。本文展示了在人工皮质模型中,通过接触自然图像,如何能够自发地发展出类似于大脑腹侧视觉区域中发现的识别能力。