International audienceOne of the most successful method to link all similar images within a large collection is min-Hash, which is a way to significantly speed-up the comparison of images when the underlying image representation is bag-of-words. However, the quantization step of min-Hash introduces important information loss. In this paper, we propose a generalization of min-Hash, called Sim-min-Hash, to compare sets of real-valued vectors. We demonstrate the effectiveness of our approach when combined with the Hamming embedding similarity. Experiments on large-scale popular benchmarks demonstrate that Sim-min-Hash is more accurate and faster than min-Hash for similar image search. Linking a collection of one million images described by 2 b...
This thesis is concerned with improving the effectiveness of nearest neighbour search. Nearest neig...
International audienceThis paper introduces recent methods for large scale image search. State-of-th...
Hash-based methods achieve fast similarity search by representing high-dimensional data with compact...
International audienceOne of the most successful method to link all similar images within a large co...
International audienceOne of the most successful method to link all similar images within a large co...
International audienceOne of the most successful method to link all similar images within a large co...
This paper proposes two novel image similarity measures for fast indexing via locality sensitive has...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
We propose a novel hashing scheme for image retrieval, clustering and automatic object discovery. Un...
Matching local features across images is often useful when comparing or recognizing objects or scene...
Abstract. In this paper, we propose Partition min-Hash (PmH), a novel hashing scheme for discovering...
This report presents a scalable method for automatically discovering frequent visual objects in larg...
International audienceThis article improves recent methods for large scale image search. We first an...
International audienceThis paper introduces recent methods for large scale image search. State-of-th...
International audienceThis article improves recent methods for large scale image search. We first an...
This thesis is concerned with improving the effectiveness of nearest neighbour search. Nearest neig...
International audienceThis paper introduces recent methods for large scale image search. State-of-th...
Hash-based methods achieve fast similarity search by representing high-dimensional data with compact...
International audienceOne of the most successful method to link all similar images within a large co...
International audienceOne of the most successful method to link all similar images within a large co...
International audienceOne of the most successful method to link all similar images within a large co...
This paper proposes two novel image similarity measures for fast indexing via locality sensitive has...
In this thesis we explore methods which learn compact hash coding schemes to encode image databases ...
We propose a novel hashing scheme for image retrieval, clustering and automatic object discovery. Un...
Matching local features across images is often useful when comparing or recognizing objects or scene...
Abstract. In this paper, we propose Partition min-Hash (PmH), a novel hashing scheme for discovering...
This report presents a scalable method for automatically discovering frequent visual objects in larg...
International audienceThis article improves recent methods for large scale image search. We first an...
International audienceThis paper introduces recent methods for large scale image search. State-of-th...
International audienceThis article improves recent methods for large scale image search. We first an...
This thesis is concerned with improving the effectiveness of nearest neighbour search. Nearest neig...
International audienceThis paper introduces recent methods for large scale image search. State-of-th...
Hash-based methods achieve fast similarity search by representing high-dimensional data with compact...