Single view imaging data has been used in most previous research in computer vision and image understanding and lots of techniques have been developed. Recently with the fast development and dropping cost of multiple cameras, it has become possible to have many more views to achieve image processing tasks. This thesis will consider how to use the obtained multiple images in the application of target object recognition. In this context, we present two algorithms for object recognition based on scale- invariant feature points. The first is single view object recognition method (SOR), which operates on single images and uses a chirality constraint to reduce the recognition errors that arise when only a small number of feature points ar...
Image classification is a sub-field of computer vision that focuses on identifying objects within di...
With the widespread deployment of sensors and the Internet-of-Things, multi-view data have become mo...
This paper presents a multiview model of object categories, generally applicable to virtually any ty...
Methods based on local, viewpoint invariant features have proven capable of recognizing objects in s...
To recognize objects in a scene, a single view is sufficient if the scene is relatively simple consi...
Object recognition from a single view fails when the available features are not sufficient to determ...
We consider the problem of detecting a large number of different classes of objects in cluttered sce...
The life expectancy of humans increases due to better medical care, food quality and personal hygien...
Object recognition from a single view fails when the available features are not sufficient to determ...
This dissertation addresses the task of detecting instances of object categories in photographs. We ...
Machine vision systems can vary greatly in size and complexity depending on the task at hand. Howeve...
We present a novel Object Recognition approach based on affine invariant regions. It actively counte...
Institute for Adaptive and Neural ComputationDeveloping computer vision algorithms able to learn fr...
We present a fast object recognition system coding shape by viewpoint invariant geometric relations ...
The task of scene understanding involves recognizing the different objects present in the scene, seg...
Image classification is a sub-field of computer vision that focuses on identifying objects within di...
With the widespread deployment of sensors and the Internet-of-Things, multi-view data have become mo...
This paper presents a multiview model of object categories, generally applicable to virtually any ty...
Methods based on local, viewpoint invariant features have proven capable of recognizing objects in s...
To recognize objects in a scene, a single view is sufficient if the scene is relatively simple consi...
Object recognition from a single view fails when the available features are not sufficient to determ...
We consider the problem of detecting a large number of different classes of objects in cluttered sce...
The life expectancy of humans increases due to better medical care, food quality and personal hygien...
Object recognition from a single view fails when the available features are not sufficient to determ...
This dissertation addresses the task of detecting instances of object categories in photographs. We ...
Machine vision systems can vary greatly in size and complexity depending on the task at hand. Howeve...
We present a novel Object Recognition approach based on affine invariant regions. It actively counte...
Institute for Adaptive and Neural ComputationDeveloping computer vision algorithms able to learn fr...
We present a fast object recognition system coding shape by viewpoint invariant geometric relations ...
The task of scene understanding involves recognizing the different objects present in the scene, seg...
Image classification is a sub-field of computer vision that focuses on identifying objects within di...
With the widespread deployment of sensors and the Internet-of-Things, multi-view data have become mo...
This paper presents a multiview model of object categories, generally applicable to virtually any ty...