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DeepSpace: Mood-based Image Texture Generation for Virtual Reality from Music

机译:深度:基于情绪的图像纹理生成虚拟现实的音乐

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Affective virtual spaces are of interest for many VR applications in areas of wellbeing, art, education, and entertainment. Creating content for virtual environments is a laborious task involving multiple skills like 3D modeling, texturing, animation, lighting, and programming. One way to facilitate content creation is to automate sub-processes like assignment of textures and materials within virtual environments. To this end, we introduce the DeepSpace approach that automatically creates and applies image textures to objects in procedurally created 3D scenes. The main novelty of our DeepSpace approach is that it uses music to automatically create kaleidoscopic textures for virtual environments designed to elicit emotional responses in users. Specifically, DeepSpace exploits the modeling power of deep neural networks, which have shown great performance in image generation tasks, to achieve mood-based image generation. Our study results indicate the virtual environments created by DeepSpace elicit positive emotions and achieve high presence scores.
机译:情感虚拟空间对于许多VR应用程序在福利,艺术,教育和娱乐领域的应用感兴趣。为虚拟环境创建内容是一种艰苦的任务,涉及多种技能,如3D建模,纹理,动画,照明和编程。促进内容创建的一种方法是自动化虚拟环境中纹理和材料的分配等子进程。为此,我们介绍了自动创建的DeepSpace方法,并将图像纹理应用于程序创建的3D场景中的对象。我们的深度方法的主要新颖性是它使用音乐来自动为虚拟环境创建万花筒纹理,旨在引发用户的情绪反应。具体而言,DeepSpace利用深神经网络的建模力,这在图像生成任务中表现出了很大的性能,以实现基于情绪的图像生成。我们的研究结果表明深度产生积极情绪并实现高效分数创建的虚拟环境。

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