International audienceThe problem of finding nearest neighbours in terms of Euclidean distance, Hamming distance or other distance metric is a very common operation in computer vision and pattern recognition. In order to accelerate the search for the nearest neighbour in large collection datasets, many methods rely on the coarse-fine approach. In this paper we propose to combine Product Quantization (PQ) and binary neural associative memories to perform the coarse search. Our motivation lies in the fact that neural network dimensions of the representation associated with a set of k vectors is independent of k. We run experiments on TEXMEX SIFT1M and MNIST databases and observe significant improvements in terms of complexity of the search co...
International audienceA new method is introduced that makes use of sparse image representations to s...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
The top-performing systems for billion-scale high-dimensional approximate nearest neighbor (ANN) sea...
International audienceThe problem of finding nearest neighbours in terms of Euclidean distance, Hamm...
International audienceAssociative memories aim at matching an input noisy vector with a stored one. ...
International audienceWe propose an approximate nearest neighbor search method based on product quan...
Increasing sizes of databases and data stores mean that the traditional tasks, such as locating a ne...
Abstract — This paper introduces a product quantization based approach for approximate nearest neigh...
The technological developments of the last twenty years are leading the world to a new era. The inve...
We propose an approximate nearest neighbor search method based on quantization. It uses, in particul...
Nearest neighbor search is a very active field in machine learning. It appears in many application c...
Product quantization is an effective vector quantization approach to compactly encode high-dimension...
Copyright © 2018, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
A fundamental recurring task in many machinelearning applications is the search for the Nearest Neig...
This paper proposes a simple nearest neighbor search algorithm, which provides the exact solution in...
International audienceA new method is introduced that makes use of sparse image representations to s...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
The top-performing systems for billion-scale high-dimensional approximate nearest neighbor (ANN) sea...
International audienceThe problem of finding nearest neighbours in terms of Euclidean distance, Hamm...
International audienceAssociative memories aim at matching an input noisy vector with a stored one. ...
International audienceWe propose an approximate nearest neighbor search method based on product quan...
Increasing sizes of databases and data stores mean that the traditional tasks, such as locating a ne...
Abstract — This paper introduces a product quantization based approach for approximate nearest neigh...
The technological developments of the last twenty years are leading the world to a new era. The inve...
We propose an approximate nearest neighbor search method based on quantization. It uses, in particul...
Nearest neighbor search is a very active field in machine learning. It appears in many application c...
Product quantization is an effective vector quantization approach to compactly encode high-dimension...
Copyright © 2018, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
A fundamental recurring task in many machinelearning applications is the search for the Nearest Neig...
This paper proposes a simple nearest neighbor search algorithm, which provides the exact solution in...
International audienceA new method is introduced that makes use of sparse image representations to s...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
The top-performing systems for billion-scale high-dimensional approximate nearest neighbor (ANN) sea...