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Modeling prosopagnosia using dynamic artificial neural networks

机译:用动态人工神经网络建模促波尔多瓦索里亚

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Prosopagnosia is a brain disorder causing the inability to recognize faces. Previous studies have shown that the lesions producing the disorder can occur in diverse areas of the brain. However, the most common region is the “fusiform face area” (FFA). In order to model the basic properties of prosopagnosia two networks have been used concurrently: the Feature Extracting Bidirectional Associative Memory (FEBAM-SOM) and the Bidirectional Associative Memory (BAM). The FEBAM-SOM creates a 2D topological map from correlated inputs through the categorization of various exemplars (faces and various objects). This model has the advantage of using a sparse representation which encompass both localist and distributed encoding. This process simulates the FFA in the brain by exhibiting attractor-like behavior for the categorization of all faces. Once the faces have been learned, the BAM model associates specific faces (and objects) to their corresponding semantic labels. Simulations were performed to study the recall performance in function of the size of the lesions. Results show that the recall performance of the names associated with faces decrease with the size of lesion without affecting the performance of the objects.
机译:Prosopagnosia是一种脑障碍,导致无法识别面孔。以前的研究表明,产生这种疾病的病变可能在大脑的不同地区发生。然而,最常见的区域是“梭形面部面积”(FFA)。为了模拟prupagnosia的基本属性,两种网络已同时使用:提取双向关联存储器(FEBAM-SOM)和双向关联存储器(BAM)的特征。 FEBAM-SOM通过分类各种示例(FACE和各种对象),从相关输入创建2D拓扑图。该模型具有使用稀疏表示的优点,它包含两个定位主义者和分布式编码。通过表现出所有面部分类的吸引子样行为,这一过程通过表现出绘制的吸引力的行为来模拟大脑中的FFA。一旦学习了面,BAM模型将特定的面(和对象)与其相应的语义标签相关联。进行仿真以研究病变尺寸的召回性能。结果表明,与面部相关的名称的召回性能随着病变的大小而减小,而不会影响物体的性能。

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