On the one hand, the solution of computer vision tasks is associated with the development of various kinds of images or random fields mathematical models, i.e., algorithms, that are called traditional image processing. On the other hand, nowadays, deep learning methods play an important role in image recognition tasks. Such methods are based on convolutional neural networks that perform many matrix multiplication operations with model parameters and local convolutions and pooling operations. However, the modern artificial neural network architectures, such as transformers, came to the field of machine vision from natural language processing. Image transformers operate with embeddings, in the form of mosaic blocks of picture and the links be...
There are several methods for categorizing images, the most of which are statistical, geometric, mod...
Many computer vision applications require a comparison between two objects, or between an object and...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
This book will serve as a foundation for a variety of useful applications of graph theory to compute...
Many approaches to image classification tend to transform an image into an unstructured set of numer...
From its early stages, the community of Pattern Recognition and Computer Vision has considered the i...
In graphical pattern recognition, each data is represented as an arrangement of elements, that encod...
In a world where new technologies emerge every year, the field of computer vision becomes more and m...
International audienceIn this paper we will try to characterize the role that graphs are conquering ...
We present three new algorithms to model images with graph primitives. Our main goal is to propose a...
http://greyc.stlo.unicaen.fr/lezoray/IPAG/International audienceThe last two decades have witnessed ...
An image contains a lot of information, and that information can be used in high-level complex syste...
With recent developments in deep networks, there have been significant advances in visual object det...
This diploma thesis describes and implements the design of a graph neural network usedfor 2D segment...
About 300 years ago, when studying Seven Bridges of Königsberg problem - a famous problem concerning...
There are several methods for categorizing images, the most of which are statistical, geometric, mod...
Many computer vision applications require a comparison between two objects, or between an object and...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
This book will serve as a foundation for a variety of useful applications of graph theory to compute...
Many approaches to image classification tend to transform an image into an unstructured set of numer...
From its early stages, the community of Pattern Recognition and Computer Vision has considered the i...
In graphical pattern recognition, each data is represented as an arrangement of elements, that encod...
In a world where new technologies emerge every year, the field of computer vision becomes more and m...
International audienceIn this paper we will try to characterize the role that graphs are conquering ...
We present three new algorithms to model images with graph primitives. Our main goal is to propose a...
http://greyc.stlo.unicaen.fr/lezoray/IPAG/International audienceThe last two decades have witnessed ...
An image contains a lot of information, and that information can be used in high-level complex syste...
With recent developments in deep networks, there have been significant advances in visual object det...
This diploma thesis describes and implements the design of a graph neural network usedfor 2D segment...
About 300 years ago, when studying Seven Bridges of Königsberg problem - a famous problem concerning...
There are several methods for categorizing images, the most of which are statistical, geometric, mod...
Many computer vision applications require a comparison between two objects, or between an object and...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...