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.

Highlights

  • The goal of this paper is to develop a versatile deep learning neural network classification model that improves the interpretation of ambiguous and degraded stimuli through the inclusion of context during the training and testing phases

  • The deep learning neural network selected for the classification model is the convolution neural network (CNN) because it offers an effective way to integrate context stimuli with a target stimulus for the purpose of extracting features that are coupled across the target and context stimuli

  • The CINET is inspired by the context effect, which is the influence of the surrounding environment on the perception of stimuli [1,2,3]

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Summary

Introduction

The goal of this paper is to develop a versatile deep learning neural network classification model that improves the interpretation of ambiguous and degraded stimuli through the inclusion of context during the training and testing phases. Numerous studies related to the context effect have shown that the integration of contextual information improves the interpretation of spoken words [4,5], written letters and words [6,7,8], physical objects [9,10,11], sounds [12,13], smells [14], tastes [15], threats [16], colors [17], and facial emotions [18,19,20]. The context effect has been widely studied to show how contextual information is used to uniquely resolve the interpretation of ambiguous stimuli [7,8,21,22,23,24,25,26]

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