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A mixture of sparse coding models explaining properties of face neurons related to holistic and parts-based processing

机译:稀疏编码模型的混合物,其解释与整体和零件的处理相关的面神经元的特性

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Experimental studies have revealed evidence of both parts-based and holistic representations of objects and faces in the primate visual system. However, it is still a mystery how such seemingly contradictory types of processing can coexist within a single system. Here, we propose a novel theory called mixture of sparse coding models, inspired by the formation of category-specific subregions in the inferotemporal (IT) cortex. We developed a hierarchical network that constructed a mixture of two sparse coding submodels on top of a simple Gabor analysis. The submodels were each trained with face or non-face object images, which resulted in separate representations of facial parts and object parts. Importantly, evoked neural activities were modeled by Bayesian inference, which had a top-down explaining-away effect that enabled recognition of an individual part to depend strongly on the category of the whole input. We show that this explaining-away effect was indeed crucial for the units in the face submodel to exhibit significant selectivity to face images over object images in a similar way to actual face-selective neurons in the macaque IT cortex. Furthermore, the model explained, qualitatively and quantitatively, several tuning properties to facial features found in the middle patch of face processing in IT as documented by Freiwald, Tsao, and Livingstone (2009). These included, in particular, tuning to only a small number of facial features that were often related to geometrically large parts like face outline and hair, preference and anti-preference of extreme facial features (e.g., very large/small inter-eye distance), and reduction of the gain of feature tuning for partial face stimuli compared to whole face stimuli. Thus, we hypothesize that the coding principle of facial features in the middle patch of face processing in the macaque IT cortex may be closely related to mixture of sparse coding models.
机译:实验研究揭示了灵长类动物视觉系统中的基于部分和整体表示的零件和整体表示。但是,它仍然是一种神秘的矛盾,如何在一个系统内共存。在这里,我们提出了一种称为稀疏编码模型的混合物的新颖理论,灵感来自于中普朗尔(IT)皮质中的特异性特异性亚区的形成。我们开发了一种分层网络,其构建了两个稀疏编码子模型的混合,在简单的Gabor分析之上。子模型各自接受面部或非面对象图像训练,导致面部部件和物体部件的单独表示。重要的是,唤起神经活动被贝叶斯推断为模型,这具有自上而下的解释效果,使得能够识别各个部分以强烈依赖于整个输入的类别。我们表明,该解释效果确实对面子模型中的单元表现出显着的选择性,以以与猕猴中的猕猴中的实际面部选择性神经元相似的对象图像面对图像的显着选择性。此外,该模型解释了,定性和定量地,以由Freiwald,Tsao和Livingstone(2009)中的脸部脸部中间处理中发现的面部特征的几种调整特征。特别地,这些包括少量的面部特征,通常与几何大部分相似,如面部轮廓和毛发,偏好和极端面部特征的偏好和抗偏好(例如,非常大/小距离)与全面刺激相比,将部分刺激的特征调谐的增益降低。因此,我们假设在猕猴中的猕猴中脸部中间斑块中的面部特征的编码原理可以与稀疏编码模型的混合密切相关。

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