SPAILGNCSep 19, 2024

Optimizing food taste sensory evaluation through neural network-based taste electroencephalogram channel selection

arXiv:2410.03559v112 citationsh-index: 12
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for food sensory evaluation researchers, addressing channel selection in EEG data.

The paper tackled the problem of high computational cost in taste EEG analysis by proposing a channel selection method called CAM-Attention, which effectively distinguished four tastes and reduced computational burden.

The taste electroencephalogram (EEG) evoked by the taste stimulation can reflect different brain patterns and be used in applications such as sensory evaluation of food. However, considering the computational cost and efficiency, EEG data with many channels has to face the critical issue of channel selection. This paper proposed a channel selection method called class activation mapping with attention (CAM-Attention). The CAM-Attention method combined a convolutional neural network with channel and spatial attention (CNN-CSA) model with a gradient-weighted class activation mapping (Grad-CAM) model. The CNN-CSA model exploited key features in EEG data by attention mechanism, and the Grad-CAM model effectively realized the visualization of feature regions. Then, channel selection was effectively implemented based on feature regions. Finally, the CAM-Attention method reduced the computational burden of taste EEG recognition and effectively distinguished the four tastes. In short, it has excellent recognition performance and provides effective technical support for taste sensory evaluation.

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