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Aesthetic Preferences for Eastern and Western Traditional Visual Art: Identity Matters.东西方传统视觉艺术的审美偏好:身份认同至关重要。
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Aesthetic preference recognition of 3D shapes using EEG.利用脑电图进行3D形状的审美偏好识别。
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基于脑电图的中国舞蹈姿势跨主体审美偏好识别

Cross-subject aesthetic preference recognition of Chinese dance posture using EEG.

作者信息

Li Jing, Wu Shen-Rui, Zhang Xiang, Luo Tian-Jian, Li Rui, Zhao Ying, Liu Bo, Peng Hua

机构信息

Academy of Arts, Shaoxing University, Shaoxing, 312000 China.

Department of Computer Science and Engineering, Shaoxing University, Shaoxing, 312000 China.

出版信息

Cogn Neurodyn. 2023 Apr;17(2):311-329. doi: 10.1007/s11571-022-09821-2. Epub 2022 Jun 7.

DOI:10.1007/s11571-022-09821-2
PMID:37007204
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10050299/
Abstract

Due to the differences in knowledge, experience, background, and social influence, people have subjective characteristics in the process of dance aesthetic cognition. To explore the neural mechanism of the human brain in the process of dance aesthetic preference, and to find a more objective determining criterion for dance aesthetic preference, this paper constructs a cross-subject aesthetic preference recognition model of Chinese dance posture. Specifically, Dai nationality dance (a classic Chinese folk dance) was used to design dance posture materials, and an experimental paradigm for aesthetic preference of Chinese dance posture was built. Then, 91 subjects were recruited for the experiment, and their EEG signals were collected. Finally, the transfer learning method and convolutional neural networks were used to identify the aesthetic preference of the EEG signals. Experimental results have shown the feasibility of the proposed model, and the objective aesthetic measurement in dance appreciation has been implemented. Based on the classification model, the accuracy of aesthetic preference recognition is 79.74%. Moreover, the recognition accuracies of different brain regions, different hemispheres, and different model parameters were also verified by the ablation study. Additionally, the experimental results reflected the following two facts: (1) in the visual aesthetic processing of Chinese dance posture, the occipital and frontal lobes are more activated and participate in dance aesthetic preference; (2) the right brain is more involved in the visual aesthetic processing of Chinese dance posture, which is consistent with the common knowledge that the right brain is responsible for processing artistic activities.

摘要

由于知识、经验、背景和社会影响的差异,人们在舞蹈审美认知过程中具有主观特性。为了探究人类大脑在舞蹈审美偏好过程中的神经机制,并找到一个更客观的舞蹈审美偏好判定标准,本文构建了中国舞蹈姿态的跨主体审美偏好识别模型。具体而言,以傣族舞蹈(一种经典的中国民间舞蹈)为素材设计舞蹈姿态,并建立了中国舞蹈姿态审美偏好的实验范式。然后,招募91名受试者进行实验,采集他们的脑电信号。最后,采用迁移学习方法和卷积神经网络对脑电信号的审美偏好进行识别。实验结果验证了所提模型的可行性,并实现了舞蹈鉴赏中的客观审美测量。基于分类模型,审美偏好识别准确率为79.74%。此外,通过消融研究还验证了不同脑区、不同半球以及不同模型参数的识别准确率。另外,实验结果反映了以下两个事实:(1)在中国舞蹈姿态的视觉审美处理中,枕叶和额叶被更强烈地激活并参与舞蹈审美偏好;(2)右脑更多地参与中国舞蹈姿态的视觉审美处理,这与右脑负责处理艺术活动的常识相符。