Hirai Y
Biol Cybern. 1980;38(2):91-101. doi: 10.1007/BF00356035.
A template matching model for pattern recognition is proposed. By following a previously-proposed algorithm for synpatic modification (Hirai, 1980), the template of a stimulus pattern is self-organized as a spatial distribution pattern of matured synapses on the cells receiving modifiable synapses. Template matching is perfomed by the disinhibitory neural network cascaded beyond the neural layer composed of the cells receiving the modifiable synapses. The performance of the model has been simulated on a digital computer. After repetitive presentations of a stimulus pattern, a cell receiving the modifiable synapses comes to have the template of that pattern. And the cell in the latter layer of the disinhibitory neural network that receives the disinhibitory input from that cell becomes selectively sensitive to that pattern. Learning patterns are not restricted by previously learned ones. They can be subset or superset patterns of the ones previously learned. If an unknown pattern is presented to the model, no cell beyond the disinhibitory neural network will respond. However, if previously learned patterns are embedded in that pattern, the cells which have the templates of those patterns respond and are assumed to transmit the information to higher center. The computer simulation also show that the model can organize a clean template under a noisy environment.
提出了一种用于模式识别的模板匹配模型。通过遵循先前提出的突触修饰算法(平井,1980年),刺激模式的模板被自组织为接受可修饰突触的细胞上成熟突触的空间分布模式。模板匹配由级联在由接受可修饰突触的细胞组成的神经层之外的去抑制神经网络执行。该模型的性能已在数字计算机上进行了模拟。在重复呈现刺激模式后,接受可修饰突触的细胞会形成该模式的模板。并且在去抑制神经网络后一层中接收来自该细胞去抑制输入的细胞会对该模式产生选择性敏感。学习模式不受先前学习模式的限制。它们可以是先前学习模式的子集或超集模式。如果向模型呈现未知模式,去抑制神经网络之外的细胞不会做出反应。然而,如果先前学习的模式嵌入在该模式中,拥有这些模式模板的细胞会做出反应,并假定将信息传递到更高的中枢。计算机模拟还表明,该模型可以在噪声环境下组织出清晰的模板。