This article presents an interactive method for 3D cloud animation at the landscape scale by employing machine learning. To this end, we utilize deep convolutional generative adversarial network (DCGAN) on GPU for training on home-captured cloud videos and producing coherent animation frames. We limit the size of input images provided to DCGAN, thereby reducing the training time and yet producing detailed 3D animation frames. This is made possible through our preprocessing of the source videos, wherein several corrections are applied to the extracted frames to provide an adequate input training data set to DCGAN. A significant advantage of the presented cloud animation is that it does not require any underlying physics simulation. We presen...
This paper demonstrates a production workflow for a volumetric-rendering-based short animation about...
Physically-based cloud simulation is an effective approach for synthesizing realistic cloud. However...
With the increasing number of Machine and Deep Learning applications in High Energy Physics, easy ac...
Background. Previous studies in the area of video generation using generative adversarial networks h...
Clouds play an important role in enhancing the realism of outdoor scenes in computer graphics (CG). ...
In this paper, we investigate the possibility of leveraging the predictive power of machine learning...
Computer Graphics (CG) is a key technology for producing visual contents. Currently computer generat...
Volumetric cloud generation and rendering algorithms are well-developed to meet the need for a reali...
In this paper, we present a physics-driven procedural method for the interactive animation of realis...
Abstract Studying representation learning and generative modelling has been at the core of the 3D le...
Deep Convolutional Neuronal Networks (DCNNs) are showing remarkable performance on many computer vis...
Modeling and animating complex volumetric natural phenomena, such as clouds, is a difcult task. Most...
The graphics rendering pipeline is key to generating realistic images, and is a vital process of com...
The simulation of clouds can make virtual environments appear more realistic. This project produces ...
Art is an artistic method of using digital technologies as a part of the generative or creative proc...
This paper demonstrates a production workflow for a volumetric-rendering-based short animation about...
Physically-based cloud simulation is an effective approach for synthesizing realistic cloud. However...
With the increasing number of Machine and Deep Learning applications in High Energy Physics, easy ac...
Background. Previous studies in the area of video generation using generative adversarial networks h...
Clouds play an important role in enhancing the realism of outdoor scenes in computer graphics (CG). ...
In this paper, we investigate the possibility of leveraging the predictive power of machine learning...
Computer Graphics (CG) is a key technology for producing visual contents. Currently computer generat...
Volumetric cloud generation and rendering algorithms are well-developed to meet the need for a reali...
In this paper, we present a physics-driven procedural method for the interactive animation of realis...
Abstract Studying representation learning and generative modelling has been at the core of the 3D le...
Deep Convolutional Neuronal Networks (DCNNs) are showing remarkable performance on many computer vis...
Modeling and animating complex volumetric natural phenomena, such as clouds, is a difcult task. Most...
The graphics rendering pipeline is key to generating realistic images, and is a vital process of com...
The simulation of clouds can make virtual environments appear more realistic. This project produces ...
Art is an artistic method of using digital technologies as a part of the generative or creative proc...
This paper demonstrates a production workflow for a volumetric-rendering-based short animation about...
Physically-based cloud simulation is an effective approach for synthesizing realistic cloud. However...
With the increasing number of Machine and Deep Learning applications in High Energy Physics, easy ac...