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人工神经网络与虚拟现实技术在环境艺术设计中的应用。

The Application of Artificial Neural Network Combined with Virtual Reality Technology in Environment Art Design.

机构信息

School of Art and Design, Shaoyang University, Shaoyang 422000, Hunan, China.

School of Design, NingboTech University, Ningbo 315100, Zhejiang, China.

出版信息

Comput Intell Neurosci. 2022 May 14;2022:7562167. doi: 10.1155/2022/7562167. eCollection 2022.

Abstract

Virtual reality is a computer technology that produces a simulated environment. It is completely immersive and gives users the viewpoint that they are somewhere else. In recent times, it has become a highly interactive and visualization tool that has gained interest among educators and scholars. Art learning is a teaching-learning approach that is dependent on learning "" and ";" it can be a procedure in which art develops the medium of teaching-learning and an important model in some subjects of the curriculum. In this work, we develop a grey wolf optimization with the residual network form of virtual reality application for environmental art learning (GWORN-EAL) technique. It aims to provide metacognitive actions to improve environmental art learning for young children or adults. The GWORN-EAL technique is mainly based on the stimulation of particular features of the target painting over a default image. The color palette of the recognized image of the Fauve painter was mapped to the target image using the Fauve vision of the painter and represented by vivid colors. For optimal hyperparameter tuning of the ResNet model, the GWO algorithm is employed. The experimental results indicated that the GWORN-EAL technique has accomplished effectual outcomes in several aspects. A brief experimental study highlighted the improvement of the GWORN-EAL technique compared to existing models.

摘要

虚拟现实是一种产生模拟环境的计算机技术。它完全沉浸式,给用户一种他们在其他地方的视角。最近,它已成为一种高度交互和可视化的工具,引起了教育工作者和学者的兴趣。艺术学习是一种教学学习方法,依赖于“学习”和“;”它可以是艺术发展教学媒介的过程,也是课程某些学科的重要模式。在这项工作中,我们开发了一种灰狼优化与虚拟现实应用的残差网络形式的环境艺术学习(GWORN-EAL)技术。它旨在提供元认知行为,以提高幼儿或成人的环境艺术学习。GWORN-EAL 技术主要基于对默认图像上目标绘画特定特征的刺激。使用画家的野兽派视觉将识别出的野兽派画家图像的调色板映射到目标图像,并以生动的颜色表示。为了对 ResNet 模型进行最佳超参数调整,使用了 GWO 算法。实验结果表明,GWORN-EAL 技术在几个方面都取得了有效的成果。一项简短的实验研究强调了 GWORN-EAL 技术相对于现有模型的改进。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a21b/9124091/c86a9c2bc7fd/CIN2022-7562167.001.jpg

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