Object recognition using graph-matching techniques can be viewed as a two-stage process: extracting suitable object primitives from an image and corresponding models, and matching graphs constructed from these two sets of object primitives. In this paper we concentrate mainly on the latter issue of graph matching, for which we derive a technique based on probabilistic relaxation graph labelling. The new method was evaluated on two standard data sets, SOIL47 and COIL100, in both of which objects must be recognised from a variety of different views. The results indicated that our method is comparable with the best of other current object recognition techniques. The potential of the method was also demonstrated on challenging examples of objec...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
Object recognition using graph-matching techniques can be viewed as a two-stage process: extracting ...
Our objective in this thesis is to develop a method for establishing an object recognition system ba...
Our objective in this thesis is to develop a method for establishing an object recognition system ba...
Abstract-In this paper, we develop the theory of probabilistic relaxation for matching features extr...
We address the problem of object recognition in computer vision. We rep-resent each model and the sc...
Attributed Relational Graph (ARG) is a powerful representation for model based object recognition du...
International audienceMany tasks in computer vision and pattern recognition are formulated as graph ...
International audienceMany tasks in computer vision and pattern recognition are formulated as graph ...
. This paper presents a new similarity measure for object recognition from large libraries of line-p...
Object recognition can be formulated as matching image features to model features. When recognition ...
As a fundamental problem in pattern recognition, graph matching has applications in a variety of fie...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
Object recognition using graph-matching techniques can be viewed as a two-stage process: extracting ...
Our objective in this thesis is to develop a method for establishing an object recognition system ba...
Our objective in this thesis is to develop a method for establishing an object recognition system ba...
Abstract-In this paper, we develop the theory of probabilistic relaxation for matching features extr...
We address the problem of object recognition in computer vision. We rep-resent each model and the sc...
Attributed Relational Graph (ARG) is a powerful representation for model based object recognition du...
International audienceMany tasks in computer vision and pattern recognition are formulated as graph ...
International audienceMany tasks in computer vision and pattern recognition are formulated as graph ...
. This paper presents a new similarity measure for object recognition from large libraries of line-p...
Object recognition can be formulated as matching image features to model features. When recognition ...
As a fundamental problem in pattern recognition, graph matching has applications in a variety of fie...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...
A recent paper posed the question: "Graph Matching: What are we really talking about?". Far from pro...