Huang Ya
College of Music, Hunan International Economics University, Changsha, Hunan 024321, China.
Comput Intell Neurosci. 2022 Jul 21;2022:5135495. doi: 10.1155/2022/5135495. eCollection 2022.
Dance is a unique art with the human body movement as the main means, but dance is not limited to the human body movement itself. Like any art, dance is the product of human social behavior and a romantic behavior of human thoughts and emotions in the virtual world. Dances with different characteristics will also reflect different aesthetics, different cultural psychology, different living styles, and emotional trajectories of different times and different nationalities. People rely on the image of dance artists to develop and inherit the profound ideological connotation and philosophy of life. Viewers may form their own diversified and unique aesthetic characteristics. In the new era, in order to better promote the development, communication, and dissemination of dance art, it is very necessary to analyze and explore the connotation and aesthetic characteristics of dance art. Only through specific movements can the value and ideological connotation of works be expressed. Therefore, this paper comparatively analyzes dance movement aesthetic emotion based on deep learning. Experimentations are performed to systematically analyze the models from various perspectives. Findings of the evaluation show that CAP and CNN are effective models that can successfully extract high-level emotional features. The method proposes and effectively selects the best models among the five standard models based on key features and is, therefore, suitable in predicting the dancer's emotion and for the analysis of the dance movement in the future.
舞蹈是以人体动作作为主要手段的独特艺术,但舞蹈并不局限于人体动作本身。与任何艺术一样,舞蹈是人类社会行为的产物,是人类思想情感在虚拟世界中的一种浪漫行为。具有不同特点的舞蹈也会反映出不同的美学、不同的文化心理、不同的生活方式以及不同时代、不同民族的情感轨迹。人们依靠舞蹈艺术家的形象来传承和发展深刻的思想内涵和人生哲学。观众可能会形成自己多样化且独特的审美特点。在新时代,为了更好地推动舞蹈艺术的发展、交流与传播,分析和探究舞蹈艺术的内涵与审美特点非常必要。只有通过具体动作,作品的价值和思想内涵才能得以表达。因此,本文基于深度学习对舞蹈动作审美情感进行比较分析。进行实验以便从各个角度系统地分析模型。评估结果表明,CAP和CNN是能够成功提取高级情感特征的有效模型。该方法基于关键特征在五个标准模型中提出并有效选出最佳模型,因此适用于未来预测舞者情感以及分析舞蹈动作。