International audienceNeural Style Transfer (NST) refers to a class of algorithms able to manipulate an element, most often images, to adopt the appearance or style of another one. Each element is defined as a combination of Content and Style: the Content can be conceptually defined as the "what" and the Style as the "how" of said element. In this context, we propose a custom NST framework for transferring a set of styles to the motion of a robotic manipulator, e.g., the same robotic task can be carried out in an "angry", "happy", "calm", or "sad" way. An autoencoder architecture extracts and defines the Content and the Style of the target robot motions. A Twin Delayed Deep Deterministic Policy Gradient (TD3) network generates the robot con...
Designing logos, typefaces, and other decorated shapes can require professional skills. In this pape...
When creating a 3D scene, the artistic style determines what atmosphere the environment brings to th...
Neural style transfer (NST) is a technique based on the deep learning of a convolutional neural netw...
International audienceNeural Style Transfer (NST) refers to a class of algorithms able to manipulate...
Neural Style Transfer (NST) is an algorithm that creates an image by combining the stylistic feature...
Style transfer techniques have seen wide adoption in recent years, with the CUT and CycleGAN network...
For hundred years, artists engage into art creation to present their understanding of subjective and...
It is a very challenging task for image processing techniques to render the semantic contents of one...
Neural Policy Style Transfer with Twin-Delayed DDPG (NPST3) dataset. The research leading to these ...
Neural Style Transfer (NST) is a class of software algorithms that allows us to transform scenes, ch...
International audienceWe focus on style transfer for sequential data in a supervised setting. Assumi...
International audienceIn this meta paper we discuss image-based artistic rendering (IB-AR) based on ...
Neural Style Transfer has shown very exciting results enabling new forms of image manipulation. Here...
The first algorithm for neural style transfer was proposed by Gatys et al (2015), since then, Style ...
This thesis puts forward a novel way of control for robotic morphologies. Taking inspiration from Be...
Designing logos, typefaces, and other decorated shapes can require professional skills. In this pape...
When creating a 3D scene, the artistic style determines what atmosphere the environment brings to th...
Neural style transfer (NST) is a technique based on the deep learning of a convolutional neural netw...
International audienceNeural Style Transfer (NST) refers to a class of algorithms able to manipulate...
Neural Style Transfer (NST) is an algorithm that creates an image by combining the stylistic feature...
Style transfer techniques have seen wide adoption in recent years, with the CUT and CycleGAN network...
For hundred years, artists engage into art creation to present their understanding of subjective and...
It is a very challenging task for image processing techniques to render the semantic contents of one...
Neural Policy Style Transfer with Twin-Delayed DDPG (NPST3) dataset. The research leading to these ...
Neural Style Transfer (NST) is a class of software algorithms that allows us to transform scenes, ch...
International audienceWe focus on style transfer for sequential data in a supervised setting. Assumi...
International audienceIn this meta paper we discuss image-based artistic rendering (IB-AR) based on ...
Neural Style Transfer has shown very exciting results enabling new forms of image manipulation. Here...
The first algorithm for neural style transfer was proposed by Gatys et al (2015), since then, Style ...
This thesis puts forward a novel way of control for robotic morphologies. Taking inspiration from Be...
Designing logos, typefaces, and other decorated shapes can require professional skills. In this pape...
When creating a 3D scene, the artistic style determines what atmosphere the environment brings to th...
Neural style transfer (NST) is a technique based on the deep learning of a convolutional neural netw...