© 2016 IEEE. Undoing the image formation process and therefore decomposing appearance into its intrinsic properties is a challenging task due to the under-constrained nature of this inverse problem. While significant progress has been made on inferring shape, materials and illumination from images only, progress in an unconstrained setting is still limited. We propose a convolutional neural architecture to estimate reflectance maps of specular materials in natural lighting conditions. We achieve this in an end-to-end learning formulation that directly predicts a reflectance map from the image itself. We show how to improve estimates by facilitating additional supervision in an indirect scheme that first predicts surface orientation and afte...
In this thesis, we try to reverse the image formation process, enabling computers to factor images i...
We investigate the use of photometric invariance and deep learning to compute intrinsic images (albe...
Estimating material properties and modeling the appearance of an object under varying illumination c...
Undoing the image formation process and therefore decomposing appearance into its intrinsic properti...
Rematas K., Ritschel T., Fritz M., Gavves E., Tuytelaars T., ''Deep reflectance maps'', 29th IEEE co...
In this paper, we present a method that estimates reflectance and illumination information from a si...
—In this paper, we present a method that estimates reflectance and illumination information from a s...
In this paper we are extracting surface reflectance and natural environmental illumination from a re...
Recovering natural illumination from a single Low-Dynamic Range (LDR) image is a challenging task. T...
International audienceIn this work, we propose a convolutional neural network based approach to esti...
We propose a deep representation of appearance, i. e., the relation of color, surface orientation, v...
We develop a new approach to inferring lightness, the perceived reflectance of surfaces, from a sing...
Material appearance is a complex composite of its geometry, underlying physical model, and the illum...
Creating realistic computer generated imagery is essential for modern movies and video games. Recrea...
International audienceTexture, highlights, and shading are some of many visual cues that allow human...
In this thesis, we try to reverse the image formation process, enabling computers to factor images i...
We investigate the use of photometric invariance and deep learning to compute intrinsic images (albe...
Estimating material properties and modeling the appearance of an object under varying illumination c...
Undoing the image formation process and therefore decomposing appearance into its intrinsic properti...
Rematas K., Ritschel T., Fritz M., Gavves E., Tuytelaars T., ''Deep reflectance maps'', 29th IEEE co...
In this paper, we present a method that estimates reflectance and illumination information from a si...
—In this paper, we present a method that estimates reflectance and illumination information from a s...
In this paper we are extracting surface reflectance and natural environmental illumination from a re...
Recovering natural illumination from a single Low-Dynamic Range (LDR) image is a challenging task. T...
International audienceIn this work, we propose a convolutional neural network based approach to esti...
We propose a deep representation of appearance, i. e., the relation of color, surface orientation, v...
We develop a new approach to inferring lightness, the perceived reflectance of surfaces, from a sing...
Material appearance is a complex composite of its geometry, underlying physical model, and the illum...
Creating realistic computer generated imagery is essential for modern movies and video games. Recrea...
International audienceTexture, highlights, and shading are some of many visual cues that allow human...
In this thesis, we try to reverse the image formation process, enabling computers to factor images i...
We investigate the use of photometric invariance and deep learning to compute intrinsic images (albe...
Estimating material properties and modeling the appearance of an object under varying illumination c...