International audienceThis paper tackles the task of storing a large collection of vectors, such as visual descriptors, and of searching in it. To this end, we propose to approximate database vectors by constrained sparse coding, where possible atom weights are restricted to belong to a finite subset. This formulation encompasses, as particular cases, previous state-of-the-art methods such as product or residual quantization. As opposed to traditional sparse coding methods, quantized sparse coding includes memory usage as a design constraint, thereby allowing us to index a large collection such as the BIGANN billion-sized benchmark. Our experiments , carried out on standard benchmarks, show that our formulation leads to competitive solution...
International audienceThis paper proposes a binarization scheme for vectors of high dimension based ...
Abstract — This paper introduces a product quantization based approach for approximate nearest neigh...
Abstract—Vector quantization for image compression requires expensive encoding time to find the clos...
International audienceThis paper tackles the task of storing a large collection of vectors, such as ...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
The quantization techniques have shown competitive performance in approximate nearest neighbor searc...
This paper addresses the problem of Approximate Nearest Neighbor (ANN) search in pattern recognition...
We propose a new vector encoding scheme (tree quan-tization) that obtains lossy compact codes for hi...
This paper presents a novel compact coding ap-proach, composite quantization, for approximate neares...
© 2018 by authors.All right reserved. Embedding representation learning via neural networks is at th...
Combinatorial vector compression is the task of expressing a set of vectors as accurately as possibl...
We propose an approximate nearest neighbor search method based on quantization. It uses, in particul...
Abstract. Images can be coded accurately using a sparse set of vectors from a learned overcomplete d...
Many feature extraction techniques for image recognition in recent years implement some variant of s...
Increasing sizes of databases and data stores mean that the traditional tasks, such as locating a ne...
International audienceThis paper proposes a binarization scheme for vectors of high dimension based ...
Abstract — This paper introduces a product quantization based approach for approximate nearest neigh...
Abstract—Vector quantization for image compression requires expensive encoding time to find the clos...
International audienceThis paper tackles the task of storing a large collection of vectors, such as ...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
The quantization techniques have shown competitive performance in approximate nearest neighbor searc...
This paper addresses the problem of Approximate Nearest Neighbor (ANN) search in pattern recognition...
We propose a new vector encoding scheme (tree quan-tization) that obtains lossy compact codes for hi...
This paper presents a novel compact coding ap-proach, composite quantization, for approximate neares...
© 2018 by authors.All right reserved. Embedding representation learning via neural networks is at th...
Combinatorial vector compression is the task of expressing a set of vectors as accurately as possibl...
We propose an approximate nearest neighbor search method based on quantization. It uses, in particul...
Abstract. Images can be coded accurately using a sparse set of vectors from a learned overcomplete d...
Many feature extraction techniques for image recognition in recent years implement some variant of s...
Increasing sizes of databases and data stores mean that the traditional tasks, such as locating a ne...
International audienceThis paper proposes a binarization scheme for vectors of high dimension based ...
Abstract — This paper introduces a product quantization based approach for approximate nearest neigh...
Abstract—Vector quantization for image compression requires expensive encoding time to find the clos...