International audienceMany nearest neighbor search algorithms rely on encoding real vectors into binary vectors. The most common strategy projects the vectors onto random directions and takes the sign to produce so-called sketches. This paper discusses the sub-optimality of this choice, and proposes a better encoding strategy based on the quantization and reconstruction points of view. Our second contribution is a novel asymmetric estimator for the cosine similarity. Similar to previous asymmetric schemes, the query is not quantized and the similarity is computed in the compressed domain. Both our contribution leads to improve the quality of nearest neighbor search with binary codes. Its efficiency compares favorably against a recent encodi...
International audienceIn this paper, we propose an algorithm for learning a general class of similar...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
International audienceHandling large amounts of data, such as large image databases, requires the us...
International audienceMany nearest neighbor search algorithms rely on encoding real vectors into bin...
We propose an approximate nearest neighbor search method based on quantization. It uses, in particul...
This paper addresses the problem of Approximate Nearest Neighbor (ANN) search in pattern recognition...
This paper focuses on the problem of learning binary codes for efficient retrieval of high-dimension...
© 1992-2012 IEEE. Large-scale search methods are increasingly critical for many content-based visual...
International audienceWe propose an approximate nearest neighbor search method based on product quan...
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...
International audienceMany approximate nearest neighbor search algorithms operate under memory const...
We introduce a binary embedding framework, called Proximity Preserving Code (PPC), which learns simi...
The technological developments of the last twenty years are leading the world to a new era. The inve...
Abstract—In this work, we consider two fast nearest-neighbor search methods based on the projections...
International audienceIn this paper, we propose an algorithm for learning a general class of similar...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
International audienceHandling large amounts of data, such as large image databases, requires the us...
International audienceMany nearest neighbor search algorithms rely on encoding real vectors into bin...
We propose an approximate nearest neighbor search method based on quantization. It uses, in particul...
This paper addresses the problem of Approximate Nearest Neighbor (ANN) search in pattern recognition...
This paper focuses on the problem of learning binary codes for efficient retrieval of high-dimension...
© 1992-2012 IEEE. Large-scale search methods are increasingly critical for many content-based visual...
International audienceWe propose an approximate nearest neighbor search method based on product quan...
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...
International audienceMany approximate nearest neighbor search algorithms operate under memory const...
We introduce a binary embedding framework, called Proximity Preserving Code (PPC), which learns simi...
The technological developments of the last twenty years are leading the world to a new era. The inve...
Abstract—In this work, we consider two fast nearest-neighbor search methods based on the projections...
International audienceIn this paper, we propose an algorithm for learning a general class of similar...
This paper introduces a new local asymmetric weighting scheme for the nearest neighbor classificatio...
International audienceHandling large amounts of data, such as large image databases, requires the us...