基于ClassRBM和自由能量最小化的视觉图像记忆召回

Yiren Liu, Yanjiang Wang, Limiao Deng, Mingyue Gao, Weifeng Liu
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引用次数: 0

摘要

越来越多的证据表明,大脑是以贝叶斯方式工作的。基于贝叶斯理论的概率推理模型在人类记忆建模中得到了广泛的应用,如联想记忆搜索(SAM)和有效记忆检索(REM)。然而,这些记忆模型行只能确定记忆回忆过程中测试图像的类别。他们无法回忆起测试的视觉图像,这在认知心理学中被称为心理意象。为了解决这一问题,本文首先提出了一种基于分类RBM的记忆模型(ClassRBM),该模型由500-800-500个单元组成一个三层神经网络。输入层和输出层分别表示视觉感官图像和相应的标签,隐藏层存储编码后的视觉信息。然后我们运用自由能量最小化原理来训练模型,其中我们假设人脑的记忆存储和回忆过程涉及自由能量最小化。最后,通过在隐藏单元上对视觉单元进行概率采样来重建学习到的视觉图像。综合实验表明,所提出的记忆模型能够回忆已学习过的图像,并可应用于大脑中心理图像的建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visual Images Memory Recall Based on ClassRBM and Free Energy Minimization
Mounting evidence suggests that the brain works in a Bayesian way. Probabilistic inference models based on Bayesian theory have been widely applied in human memory modeling, such as search of associative memory (SAM) and retrieving effectively from memory (REM). However, these lines of memory models can only determine the class of the test images during memory recall. They fail to recall the test visual image, which is referred to as mental imagery in cognitive psychology. In order to address this issue, in this paper, we first propose a memory model based on classification RBM (ClassRBM), in which a three-layer neural network is constructed with 500-800-500 units. The input layer and output layer represent the visual sensory images and corresponding labels, respectively, while the hidden layer stores the encoded visual information. Then we apply free energy minimization principle to train the model, in which we assume that the storage and recall processes of memory in human brain involve free energy minimization. Finally, the learned visual images can be reconstructed by probabilistically sampling the visual units over the hidden units. Comprehensive experiments show that the proposed memory model is capable of recalling images studied and can be applied to the modeling of mental images in the mind.
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