Shandong University (Weihai), Weihai 264200, China.
Comput Intell Neurosci. 2022 Jun 29;2022:4740234. doi: 10.1155/2022/4740234. eCollection 2022.
Dance is constantly discovering truth, goodness, and beauty in human social life, spreading truth, goodness, and beauty, and fully expressing the artistic pursuit of dance beauty. It shapes different dance images, expresses the aesthetic consciousness and feelings of dance, and resonates with the audience to meet their aesthetic needs through various forms of movement. Because the RBF neural network model is good at approximating functions, many researchers have begun to use the RBNN approximation model for engineering design. Due to the limited dance data available for research, this paper uses radial basis function neural network model to study the aesthetic characteristics of dance in the context of few-shot learning. When the time index reaches 50, the average ratio of the L-MBP algorithm is 33.4 percent, 32.5 percent for the RBNN algorithm, and 46.3 percent for this method. As can be seen, this method has the highest ratio of the three algorithms, giving it a distinct advantage in terms of dance aesthetics. As a result, this paper establishes a neural network model, trains and simulates the network model, studies and analyzes the influence of changes in influencing factors on the aesthetic characteristics of dance, and provides a new idea for the prediction of the aesthetic characteristics of dance and a reference for optimizing the design of the aesthetic system of dance using the prediction ability of radial basis function neural networks.
舞蹈不断在人类社会生活中发现真、善、美,传播真、善、美,并充分表达对舞蹈美的艺术追求。它塑造了不同的舞蹈形象,表达了舞蹈的审美意识和情感,通过各种运动形式与观众产生共鸣,满足他们的审美需求。由于 RBF 神经网络模型擅长逼近函数,许多研究人员开始将 RBNN 逼近模型用于工程设计。由于舞蹈研究可用的数据有限,本文使用径向基函数神经网络模型在少样本学习的背景下研究舞蹈的审美特征。当时间指标达到 50 时,L-MBP 算法的平均比率为 33.4%,RBNN 算法为 32.5%,而该方法为 46.3%。可以看出,该方法在三种算法中的比率最高,在舞蹈美学方面具有明显优势。因此,本文建立了神经网络模型,对网络模型进行训练和模拟,研究和分析了影响因素变化对舞蹈审美特征的影响,为舞蹈审美特征的预测提供了新的思路,为利用径向基函数神经网络的预测能力优化舞蹈审美系统的设计提供了参考。