基于深度学习算法的现代艺术设计系统

Yinan Zhang
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引用次数: 1

摘要

随着科技、计算机科学和全球化的快速发展,越来越多的大学和各种培训项目有望实现越来越多的终身教育。基于视觉饱和度的增加,其中一个方案无疑是视觉艺术创作。在现代艺术生产、审美观念的变化和社会变迁的背景下,有必要重新审视艺术教育和艺术项目的内容。在今天的课堂上,美术老师面临的最具挑战性的任务之一是解释艺术背后的意义,这些艺术有时被认为毫无意义或令人震惊。因此,本文提出将深度学习算法(Deep Learning Algorithm, DLA)应用于现代艺术教育。艺术界的深刻学习成果改变了人们的传统观念;越来越多的人认为,人工智能最终淘汰艺术家的路并不遥远。为了检验算法在实践中的表现,实验评估将其暴露于学习任务中。这些算法特征在学习模型时(即训练时)和应用学习模型时(即测试时)的性能方面经常被独立评估。本文讨论了深度学习在绘画、音乐、文学中的实现,并描述了这些艺术领域的经典模型和算法。利用深度学习技术的一个最重要的方面是它自己执行特征工程的能力。在这种技术中,算法搜索数据中相关的特征,然后将它们组合在一起,以便在没有明确指示的情况下更快地学习。拟议的方法支持一种全面的艺术教学方法,并概述了艺术教师在艺术内容、学生知识、教学、课程开发、学生学习成果评估、项目和教师效率方面的标准和技能。
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Modern Art Design System Based on the Deep Learning Algorithm
Depending on the rapid growth of technology and computer science and globalization, increasing universities and various training programs are expected to achieve increasing lifelong education currently. Based on the increase of visual saturation, one of these programs is undoubtedly visual arts creation. Nowadays, there is a need to reconsider the content of art education and arts programs in the light of modern art productions, changing aesthetic judgments, and social changes.One of the most challenging tasks an art teacher faces in today‘s classroom is explaining the meaning behind the art that is sometimes deemed meaningless or shocking. Hence, in this paper, Deep Learning Algorithm (DLA) has been proposed for modern art education.Profound learning outcomes in the art world shifted people’s traditional views; more and more people consider that when AI eventually eliminates artists, it is not a long way. To examine the algorithm’s performance in practise, experimental assessment exposes it to learning tasks. Such algorithmic features are frequently evaluated independently in terms of performance while learning a model, i.e. at training time, and performance while applying a learnt model, i.e. at test time. This article discusses the implementation of deep learning in drawing, music, literature, and describes the classical models and algorithms in those fields of art. One of the most significant aspects of utilising a deep learning technique is its capacity to perform feature engineering on its own. In this technique, an algorithm searches the data for characteristics that correlate and then combines together to facilitate quicker learning without being expressly directed to provide it. The proposed method supports a comprehensive approach to teaching and learning in the arts and outlines standards and skills for the art teacher in the content of art, knowledge of the students, instruction, curriculum development, and evaluation of student learning outcomes, program, and teacher effectiveness.
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