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Biologically Inspired Visual Model With Preliminary Cognition and Active Attention Adjustment

机译:具有初步认知和主动注意力调节的生物启发视觉模型

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摘要

Recently, many computational models have been proposed to simulate visual cognition process. For example, the hierarchical Max-Pooling (HMAX) model was proposed according to the hierarchical and bottom-up structure of V1 to V4 in the ventral pathway of primate visual cortex, which could achieve position- and scale-tolerant recognition. In our previous work, we have introduced memory and association into the HMAX model to simulate visual cognition process. In this paper, we improve our theoretical framework by mimicking a more elaborate structure and function of the primate visual cortex. We will mainly focus on the new formation of memory and association in visual processing under different circumstances as well as preliminary cognition and active adjustment in the inferior temporal cortex, which are absent in the HMAX model. The main contributions of this paper are: 1) in the memory and association part, we apply deep convolutional neural networks to extract various episodic features of the objects since people use different features for object recognition. Moreover, to achieve a fast and robust recognition in the retrieval and association process, different types of features are stored in separated clusters and the feature binding of the same object is stimulated in a loop discharge manner and 2) in the preliminary cognition and active adjustment part, we introduce preliminary cognition to classify different types of objects since distinct neural circuits in a human brain are used for identification of various types of objects. Furthermore, active cognition adjustment of occlusion and orientation is implemented to the model to mimic the top-down effect in human cognition process. Finally, our model is evaluated on two face databases CAS-PEAL-R1 and AR. The results demonstrate that our model exhibits its efficiency on visual recognition process with much lower memory storage requirement and a better performance compared with the traditional purely computational me- hods.
机译:最近,已经提出了许多计算模型来模拟视觉认知过程。例如,根据灵长类动物视皮层腹侧通路中V1至V4的分层和自下而上的结构,提出了分层最大池(HMAX)模型,该模型可以实现位置和尺度的识别。在我们之前的工作中,我们将记忆和关联引入到HMAX模型中以模拟视觉认知过程。在本文中,我们通过模仿灵长类动物视觉皮层的更精细的结构和功能来改进理论框架。我们将主要关注在不同情况下视觉处理中记忆和联想的新形成,以及下颞叶皮层的初步认知和主动调节,这在HMAX模型中是不存在的。本文的主要贡献是:1)在记忆和关联部分,由于人们使用不同的特征进行对象识别,因此我们应用深度卷积神经网络来提取对象的各种情节特征。此外,为了在检索和关联过程中实现快速而强大的识别,将不同类型的特征存储在单独的群集中,并以循环放电的方式刺激同一对象的特征绑定; 2)在初步识别和主动调整中部分,由于人类大脑中不同的神经回路用于识别各种类型的物体,因此我们引入了对不同类型的物体进行分类的初步认知。此外,对模型进行了遮挡和朝向的主动认知调整,以模仿人类认知过程中的自上而下的效果。最后,我们的模型在两个人脸数据库CAS-PEAL-R1和AR上进行了评估。结果表明,与传统的纯计算方法相比,我们的模型在视觉识别过程中具有较高的效率,具有更低的内存存储需求和更好的性能。

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