Solving the binding problem with feature integration theory

H. Kume, Y. Osana, M. Hagiwara
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引用次数: 3

Abstract

We propose a neural network model of visual system based on the feature integration theory. The proposed model has a structure based on the hierarchical structure of visual system and selectiveness of information by visual attention. The proposed model consists of two stages: the feature recognition stage and the feature integration stage. In the feature recognition stage, there are two modules: the form recognition module and the color recognition module. In these modules, information of form and color is separately processed in parallel. The form recognition module is constructed using the neocognitron, and the color recognition module is based on the LVQ neural network. The feature integration stage is based on the feature integration theory, which is a representative theory for explaining all phenomena occurring in visual system as a consistent process. We carried out computer simulations and confirmed that the proposed model can recognize plural objects and solve the binding problem.
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用特征集成理论解决绑定问题
提出了一种基于特征集成理论的视觉系统神经网络模型。该模型具有基于视觉系统的层次结构和视觉注意对信息的选择性的结构。该模型分为两个阶段:特征识别阶段和特征集成阶段。在特征识别阶段,有两个模块:形状识别模块和颜色识别模块。在这些模块中,形式信息和颜色信息分别并行处理。形状识别模块采用neocognitron构建,颜色识别模块采用LVQ神经网络构建。特征整合阶段以特征整合理论为基础,特征整合理论是将视觉系统中发生的所有现象解释为一个一致过程的代表性理论。通过计算机仿真,验证了该模型能够识别多个目标并解决绑定问题。
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