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Adaptive face space models with dynamic neural priors and sparse coding

机译:具有动态神经先验和稀疏编码的自适应面部空间模型

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Visual adaptation leads to certain changes in the perceived identity of a face depending on the previous faces an observer has been exposed to. The explicit effect of adaptation on face perception is not well understood. This work presents, for what is believed to be the first time, a mathematical model to capture the effect of adaptation on face identity perception. Our model is grounded in three assumptions that are consistent with recent neurobiological findings: (1) adaptation has the highest effect on the neural activities generated at the lowest levels of visual cortex; (2) neural activities in low-level visual areas are representatives of extracted features from a stimulus face, and as a result, encoding the stimulus face in the face space is affected by the adaptation process; and (3) a stimulus face is represented by a small number of simultaneously active neurons out of a large population (sparse coding). The rate of target identification with or without adaptation obtained by the proposed computational model resembles psyhometric functions obtained in prior studies using real subjects.
机译:视觉适应会根据观察者接触过的先前面孔,导致面孔的感知身份发生某些变化。适应对面部知觉的显式效果尚不十分清楚。这项工作首次提出了一个数学模型来捕捉适应对面部识别的影响。我们的模型建立在与最近的神经生物学发现相一致的三个假设的基础上:(1)适应对最低视觉皮层水平产生的神经活动具有最高影响; (2)低级视觉区域的神经活动代表从刺激面部提取的特征,因此,在面部空间中对刺激面部进行编码会受到适应过程的影响; (3)刺激面是由大量人口中的少量同时活跃的神经元代表的(稀疏编码)。通过拟议的计算模型获得的具有或不具有适应性的目标识别率与先前使用真实受试者的研究中获得的心理功能相似。

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