A key problem in model-based object recognition is selection, namely, the problem of isolating regions in an image that are likely to come from a single object. This isolation can be either based solely on image data (data-driven) or can incorporate the knowledge of the model object (model-driven). In this paper we present an approach that exploits the property of closely-spaced parallelism between lines on objects to achieve data and model-driven selection. Specifically, we present a method of identifying groups of closely-spaced parallel lines in images that generates a linear number of small-sized and reliable groups thus meeting several of the desirable requirements of a grouping scheme for recognition. The line groups g...
In this paper, a new visual selection model is proposed, which combines both early visual features a...
International audienceThe problem of object recognition in computer vision is addressed. A method fo...
Gestalt grouping principles provide important cues for organizing visual inputs into coherent percep...
A key problem in model-based object recognition is selection, namely, the problem of determining w...
A key problem in object recognition is selection, namely, the problem of identifying regions in an...
Distribution of this document is unlimited 13. ABSTRACT (Maximum 200 words) A key problem in model-b...
We propose a computational model for detecting and localizing instances from an object class in stat...
We present a new approach to appearance-based object recognition, which captures the relationships b...
This paper presents a parallel feature selection method for classification that scales up to very hi...
Abstract—A novel contour grouping method was recently proposed for the difficult task of detecting a...
We propose a computational model for detecting and localizing instances from an object class in stat...
This paper presents a new method of grouping edges in order to recognize objects. This grouping me...
This paper addresses the problem of generating possible object locations for use in object recogniti...
In model-based vision, there are a huge number of possible ways to match model features to image f...
During the last years a wide range of algorithms and devices have been made available to easily acqu...
In this paper, a new visual selection model is proposed, which combines both early visual features a...
International audienceThe problem of object recognition in computer vision is addressed. A method fo...
Gestalt grouping principles provide important cues for organizing visual inputs into coherent percep...
A key problem in model-based object recognition is selection, namely, the problem of determining w...
A key problem in object recognition is selection, namely, the problem of identifying regions in an...
Distribution of this document is unlimited 13. ABSTRACT (Maximum 200 words) A key problem in model-b...
We propose a computational model for detecting and localizing instances from an object class in stat...
We present a new approach to appearance-based object recognition, which captures the relationships b...
This paper presents a parallel feature selection method for classification that scales up to very hi...
Abstract—A novel contour grouping method was recently proposed for the difficult task of detecting a...
We propose a computational model for detecting and localizing instances from an object class in stat...
This paper presents a new method of grouping edges in order to recognize objects. This grouping me...
This paper addresses the problem of generating possible object locations for use in object recogniti...
In model-based vision, there are a huge number of possible ways to match model features to image f...
During the last years a wide range of algorithms and devices have been made available to easily acqu...
In this paper, a new visual selection model is proposed, which combines both early visual features a...
International audienceThe problem of object recognition in computer vision is addressed. A method fo...
Gestalt grouping principles provide important cues for organizing visual inputs into coherent percep...