In this paper, we describe a supervised four-dimensional (4D) light field segmentation method that uses a graph-cut algorithm. Since 4D light field data has implicit depth information and contains redundancy, it differs from simple 4D hyper-volume. In order to preserve redundancy, we define two neighboring ray types (spatial and angular) in light field data. To obtain higher segmentation accuracy, we also design a learning-based likelihood, called objectness, which utilizes appearance and disparity cues. We show the effectiveness of our method via numerical evaluation and some light field editing applications using both synthetic and real-world light fields
Computer vision tasks, such as motion estimation, depth estimation, object detection, etc., are bett...
By imaging a scene from different viewpoints, a light field allows capturing a lot of information ab...
International audienceWe present a new method for reconstructing a 4D light field from a random set ...
2016 IEEE International Conference on Computational Photography (ICCP),Evanston, IL, USA,13-15 May 2...
International audienceIn this paper, we introduce a novel graph representation forinteractive light ...
We present the first variational framework for multi-label segmentation on the ray space of 4D light...
Image-based models have recently become an alternative to geometry-based models for computer graphic...
We present a new benchmark database to compare and evaluate existing and upcoming algorithms which a...
Automatic image over-segmentation into superpixels has attracted increasing attention from researche...
The contributions of this thesis are new modeling and compression algorithms for stereo images, disp...
This work is about the analysis of 4D light fields. In the context of this work a light field is a ...
Abstract—We develop a continuous framework for the analysis of 4D light fields, and describe novel v...
International audienceThis paper proposes a learning based solution to disparity (depth) estimation ...
4D Light Field (LF) imaging, since it conveys both spatial and angular scene information, can facili...
Light fields have been populated as a new geometry representation of 3D scenes, which is composed of...
Computer vision tasks, such as motion estimation, depth estimation, object detection, etc., are bett...
By imaging a scene from different viewpoints, a light field allows capturing a lot of information ab...
International audienceWe present a new method for reconstructing a 4D light field from a random set ...
2016 IEEE International Conference on Computational Photography (ICCP),Evanston, IL, USA,13-15 May 2...
International audienceIn this paper, we introduce a novel graph representation forinteractive light ...
We present the first variational framework for multi-label segmentation on the ray space of 4D light...
Image-based models have recently become an alternative to geometry-based models for computer graphic...
We present a new benchmark database to compare and evaluate existing and upcoming algorithms which a...
Automatic image over-segmentation into superpixels has attracted increasing attention from researche...
The contributions of this thesis are new modeling and compression algorithms for stereo images, disp...
This work is about the analysis of 4D light fields. In the context of this work a light field is a ...
Abstract—We develop a continuous framework for the analysis of 4D light fields, and describe novel v...
International audienceThis paper proposes a learning based solution to disparity (depth) estimation ...
4D Light Field (LF) imaging, since it conveys both spatial and angular scene information, can facili...
Light fields have been populated as a new geometry representation of 3D scenes, which is composed of...
Computer vision tasks, such as motion estimation, depth estimation, object detection, etc., are bett...
By imaging a scene from different viewpoints, a light field allows capturing a lot of information ab...
International audienceWe present a new method for reconstructing a 4D light field from a random set ...