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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Depth of treatment sensitive noise resistant dynamic artificial neural networks model of recall in people with prosopagnosia
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Depth of treatment sensitive noise resistant dynamic artificial neural networks model of recall in people with prosopagnosia

机译:治疗深度敏感人群的记忆敏感抗噪声动态人工神经网络模型

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摘要

The Fusiform Face Area (FFA) is the brain region considered to be responsible for face recognition. Prosopagnosia is a brain disorder causing the inability to a recognise faces that is said to mainly affect the FFA. We put forward a model that simulates the capacity to retrieve label associated with faces and objects depending on the depth of treatment of the information. Akin to prosopagnosia, various localised "lesions" were inserted into the network in order to evaluate the degradation of performance. The network is first composed of a Feature Extracting Bidirectional Associative Memory (FEBAM-SOM) to represent the topological maps allowing the categorisation of all faces. The second component of the network is a Bidirectional Heteroassociative Memory (BHM) that links those representations to their semantic label. For the latter, specific semantic labels were used as well as more general ones. The inputs were images representing faces and various objects. Just like in the visual perceptual system, the images were pre-processed using a low-pass filter. Results showed that the network is able to associate the extracted map with the correct label information. The network is able to generalise and is robust to noise. Moreover, results showed that the recall performance of names associated with faces decrease with the size of lesion without affecting the performance of the objects. Finally, results obtained with the network are also consistent with human ones in that higher level, more general labels are more robust to lesion compared to low level, specific labels.
机译:梭形面部区域(FFA)是被认为负责面部识别的大脑区域。失语症是一种大脑疾病,导致无法识别面部,据说主要影响FFA。我们提出了一个模型,该模型模拟了根据信息处理的深度来检索与面部和物体关联的标签的能力。类似于围绝经期,将各种局部“病变”插入网络以评估性能下降。该网络首先由特征提取双向关联内存(FEBAM-SOM)组成,以表示允许对所有面孔进行分类的拓扑图。网络的第二个组件是双向异种联想记忆(BHM),它将这些表示链接到它们的语义标签。对于后者,使用了特定的语义标签以及更通用的语义标签。输入是代表面部和各种物体的图像。就像在视觉感知系统中一样,使用低通滤波器对图像进行预处理。结果表明,网络能够将提取的地图与正确的标签信息相关联。网络能够泛化并且对噪声具有鲁棒性。此外,结果表明,与面部相关的名称的召回性能随病变的大小而降低,而不会影响对象的性能。最后,通过网络获得的结果也与人类的结果一致,因为与低水平的特定标签相比,更高水平的标签,更通用的标签对病变更坚固。

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