<p>Transportation-based metrics for comparing images have long been applied to analyze images, especially where one can interpret the pixel intensities (or derived quantities) as a distribution of 'mass' that can be transported without strict geometric constraints. Here we describe a new transportation-based framework for analyzing sets of images. More specifically, we describe a new transportation-related distance between pairs of images, which we denote as linear optimal transportation (LOT). The LOT can be used directly on pixel intensities, and is based on a linearized version of the Kantorovich-Wasserstein metric (an optimal transportation distance, as is the earth mover's distance). The new framework is especially well suited for comp...
Capturing visual similarity among images is the core of many computer vision and pattern recognition...
Optimal Transport is a well developed mathematical theory that defines robust metrics between probab...
[[abstract]]We present a new approach to learning image metrics. The main advantage of our method li...
Transportation-based metrics for comparing images have long been applied to analyze images, especial...
We introduce a new distance between two distributions that we call the Earth Mover’s Distance (EMD),...
We introduce a metric between two distributions that we call the Earth Mover's Distance (EMD). ...
The Kantorovich distance for images can be defined for grey valued images with equal total grey valu...
Abstract. We investigate the properties of a metric between two distributions, the Earth Mover’s Dis...
This paper introduces a new class of algorithms for optimization problems involving optimal transpor...
This article introduces a generalization of the discrete optimal transport, with applications to col...
International audienceThis paper introduces a new class of algorithms for optimization problems invo...
Optimal transportation theory is a powerful tool to deal with image interpolation. This wa...
Optimal transport distances have been used for more than a decade in machine learning to compare his...
International audienceThis work is about the use of regularized optimal-transport distances for conv...
Optimal transportation theory is a powerful tool to deal with image interpolation. This was first in...
Capturing visual similarity among images is the core of many computer vision and pattern recognition...
Optimal Transport is a well developed mathematical theory that defines robust metrics between probab...
[[abstract]]We present a new approach to learning image metrics. The main advantage of our method li...
Transportation-based metrics for comparing images have long been applied to analyze images, especial...
We introduce a new distance between two distributions that we call the Earth Mover’s Distance (EMD),...
We introduce a metric between two distributions that we call the Earth Mover's Distance (EMD). ...
The Kantorovich distance for images can be defined for grey valued images with equal total grey valu...
Abstract. We investigate the properties of a metric between two distributions, the Earth Mover’s Dis...
This paper introduces a new class of algorithms for optimization problems involving optimal transpor...
This article introduces a generalization of the discrete optimal transport, with applications to col...
International audienceThis paper introduces a new class of algorithms for optimization problems invo...
Optimal transportation theory is a powerful tool to deal with image interpolation. This wa...
Optimal transport distances have been used for more than a decade in machine learning to compare his...
International audienceThis work is about the use of regularized optimal-transport distances for conv...
Optimal transportation theory is a powerful tool to deal with image interpolation. This was first in...
Capturing visual similarity among images is the core of many computer vision and pattern recognition...
Optimal Transport is a well developed mathematical theory that defines robust metrics between probab...
[[abstract]]We present a new approach to learning image metrics. The main advantage of our method li...