The paper presents a robust approach to compute disparities on sparse sampled light field images based on Epipolar-Plane Image (EPI) analysis. The Relative Gradient is leveraged as a kernel density function to cope with radiometric changes in non-Lambertian scenes. To account for the sparse light field, a window-based filtering is introduced to handle the noisy and homogenous regions, decomposing the scene images into edge and non-edge regions. Separate score-volume filtering over these regions avoids boundary fattening effects common to stereo matching. Finally, a consistency measure detects unreliable pixels with false disparities, to which a disparity refinement is applied. Evaluation analysis is performed on the Disney light field datas...
International audienceIn this paper, we present a new Light Field representation for efficient Light...
International audienceIn this paper, we propose a new stereo matching algorithm able to reconstruct ...
Recent deep learning-based light field disparity estimation algorithms require millions of parameter...
An occlusion-aware framework is proposed to robustly estimate the disparities of light field images....
The aim of stereo matching is to find a corresponding point for each pixel in a reference image of a...
We present a new benchmark database to compare and evaluate existing and upcoming algorithms which a...
We present the complete set of results including those omit-ted in the paper, and further elaborate ...
We propose a robust stereo matching algorithm for images captured under varying radiometric conditio...
Abstract—We develop a continuous framework for the analysis of 4D light fields, and describe novel v...
We propose a hierarchical disparity estimation algorithm with energy-based regularization. Initial d...
The contributions of this thesis are new modeling and compression algorithms for stereo images, disp...
Dense stereo is a well studied problem in computer vision. Generally dense stereo algorithms provide...
International audienceThis paper proposes a learning based solution to disparity (depth) estimation ...
A number of high-quality depth imaged-based rendering (DIBR) pipelines have been developed to recons...
In contrast to traditional imaging, the higher dimensionality of a light field offers directional in...
International audienceIn this paper, we present a new Light Field representation for efficient Light...
International audienceIn this paper, we propose a new stereo matching algorithm able to reconstruct ...
Recent deep learning-based light field disparity estimation algorithms require millions of parameter...
An occlusion-aware framework is proposed to robustly estimate the disparities of light field images....
The aim of stereo matching is to find a corresponding point for each pixel in a reference image of a...
We present a new benchmark database to compare and evaluate existing and upcoming algorithms which a...
We present the complete set of results including those omit-ted in the paper, and further elaborate ...
We propose a robust stereo matching algorithm for images captured under varying radiometric conditio...
Abstract—We develop a continuous framework for the analysis of 4D light fields, and describe novel v...
We propose a hierarchical disparity estimation algorithm with energy-based regularization. Initial d...
The contributions of this thesis are new modeling and compression algorithms for stereo images, disp...
Dense stereo is a well studied problem in computer vision. Generally dense stereo algorithms provide...
International audienceThis paper proposes a learning based solution to disparity (depth) estimation ...
A number of high-quality depth imaged-based rendering (DIBR) pipelines have been developed to recons...
In contrast to traditional imaging, the higher dimensionality of a light field offers directional in...
International audienceIn this paper, we present a new Light Field representation for efficient Light...
International audienceIn this paper, we propose a new stereo matching algorithm able to reconstruct ...
Recent deep learning-based light field disparity estimation algorithms require millions of parameter...