Local features have repeatedly shown their effectiveness for object recognition during the last years, and they have consequently become the preferred descriptor for this type of problems. The solution of the correspondence problem is traditionally approached with exact or approximate techniques. In this paper we are interested in methods that solve the correspondence problem via the definition of a kernel function that makes it possible to use local features as input to a support vector machine. We single out the match kernel, an exact approach, and the pyramid match kernel, that uses instead an approximate strategy. We present a thorough experimental evaluation of the two methods on three different databases. Results show that the exact m...
This paper mainly focuses on how to effectively and efficiently measure visual similarity for local ...
International audienceThe success of kernel methods including support vector machines (SVMs) strongl...
International audienceThe success of kernel methods including support vector machines (SVMs) strongl...
Local features have repeatedly shown their effectiveness for object recognition during the last year...
Local features have repeatedly shown their effectiveness for object recognition during the last year...
Recent developments in computer vision have shown that local features can provide efficient represen...
Recent developments in computer vision have shown that local features can provide efficient represen...
Recent developments in computer vision have shown that local features can provide efficient represen...
Recent developments in computer vision have shown thai local features can provide efficient represen...
Discriminative learning is challenging when examples are sets of features, and the sets vary in card...
The popular bag-of-features representation for object recognition collects signatures of local image...
The popular bag-of-features representation for object recognition collects signatures of local image...
In this paper, we propose a new class of kernels for object recognition based on local image feature...
This paper mainly focuses on how to effectively and efficiently measure visual similarity for local ...
This paper mainly focuses on how to effectively and efficiently measure visual similarity for local ...
This paper mainly focuses on how to effectively and efficiently measure visual similarity for local ...
International audienceThe success of kernel methods including support vector machines (SVMs) strongl...
International audienceThe success of kernel methods including support vector machines (SVMs) strongl...
Local features have repeatedly shown their effectiveness for object recognition during the last year...
Local features have repeatedly shown their effectiveness for object recognition during the last year...
Recent developments in computer vision have shown that local features can provide efficient represen...
Recent developments in computer vision have shown that local features can provide efficient represen...
Recent developments in computer vision have shown that local features can provide efficient represen...
Recent developments in computer vision have shown thai local features can provide efficient represen...
Discriminative learning is challenging when examples are sets of features, and the sets vary in card...
The popular bag-of-features representation for object recognition collects signatures of local image...
The popular bag-of-features representation for object recognition collects signatures of local image...
In this paper, we propose a new class of kernels for object recognition based on local image feature...
This paper mainly focuses on how to effectively and efficiently measure visual similarity for local ...
This paper mainly focuses on how to effectively and efficiently measure visual similarity for local ...
This paper mainly focuses on how to effectively and efficiently measure visual similarity for local ...
International audienceThe success of kernel methods including support vector machines (SVMs) strongl...
International audienceThe success of kernel methods including support vector machines (SVMs) strongl...