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CINET:一种受大脑启发的用于解决模糊刺激的深度学习上下文整合神经网络模型。

CINET: A Brain-Inspired Deep Learning Context-Integrating Neural Network Model for Resolving Ambiguous Stimuli.

作者信息

Amerineni Rajesh, Gupta Resh S, Gupta Lalit

机构信息

Department of Electrical & Computer Engineering, Southern Illinois University, Carbondale, IL 62901, USA.

Vanderbilt Brain Institute, Vanderbilt University, Nashville, TN 37232, USA.

出版信息

Brain Sci. 2020 Jan 24;10(2):64. doi: 10.3390/brainsci10020064.

Abstract

The brain uses contextual information to uniquely resolve the interpretation of ambiguous stimuli. This paper introduces a deep learning neural network classification model that emulates this ability by integrating weighted bidirectional context into the classification process. The model, referred to as the CINET, is implemented using a convolution neural network (CNN), which is shown to be ideal for combining target and context stimuli and for extracting coupled target-context features. The CINET parameters can be manipulated to simulate congruent and incongruent context environments and to manipulate target-context stimuli relationships. The formulation of the CINET is quite general; consequently, it is not restricted to stimuli in any particular sensory modality nor to the dimensionality of the stimuli. A broad range of experiments is designed to demonstrate the effectiveness of the CINET in resolving ambiguous visual stimuli and in improving the classification of non-ambiguous visual stimuli in various contextual environments. The fact that the performance improves through the inclusion of context can be exploited to design robust brain-inspired machine learning algorithms. It is interesting to note that the CINET is a classification model that is inspired by a combination of brain's ability to integrate contextual information and the CNN, which is inspired by the hierarchical processing of information in the visual cortex.

摘要

大脑利用上下文信息来唯一地解析模糊刺激的解释。本文介绍了一种深度学习神经网络分类模型,该模型通过将加权双向上下文整合到分类过程中来模拟这种能力。该模型称为CINET,使用卷积神经网络(CNN)实现,结果表明CNN非常适合组合目标和上下文刺激以及提取耦合的目标-上下文特征。CINET的参数可以进行调整,以模拟一致和不一致的上下文环境,并操纵目标-上下文刺激关系。CINET的公式非常通用;因此,它不限于任何特定感觉模态中的刺激,也不限于刺激的维度。设计了广泛的实验来证明CINET在解析模糊视觉刺激以及改善各种上下文环境中无模糊视觉刺激的分类方面的有效性。通过纳入上下文而提高性能这一事实可用于设计强大的受大脑启发的机器学习算法。有趣的是,CINET是一种分类模型,它受到大脑整合上下文信息的能力与CNN的组合的启发,而CNN则受到视觉皮层中信息分层处理的启发。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/171b/7071366/aaefc3e5e3d5/brainsci-10-00064-g001.jpg

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