The recent years have witnessed the emerging of vector quantization (VQ) techniques for efficient similarity search. VQ partitions the feature space into a set of codewords and encodes data points as integer indices using the codewords. Then the distance between data points can be efficiently approximated by simple memory lookup operations. By the compact quantization, the storage cost and searching complexity are significantly reduced, thereby facilitating efficient large-scale similarity search. However, the performance of several celebrated VQ approaches degrades significantly when dealing with noisy data. Additionally, it can barely facilitate a wide range of applications as the distortion measurement only limits to ℓ2 norm. To address ...
[[abstract]]The encoding process of vector quantization (VQ) is computational complex and time consu...
A fundamental recurring task in many machinelearning applications is the search for the Nearest Neig...
As databases increasingly integrate different types of information such as time-series, multimedia a...
The technological developments of the last twenty years are leading the world to a new era. The inve...
Iterative Quantization (ITQ) is one of the most successful hashing based nearest-neighbor search met...
Abstract. Adaptable similarity queries based on quadratic form distance functions are widely popular...
Vector quantization (VQ) techniques are widely used in similarity search for data compression, compu...
Increasing sizes of databases and data stores mean that the traditional tasks, such as locating a ne...
Vector quantization (VQ) has found application in very low-rate speech and image encoding, together ...
The concept of similarity is used as the basis for many data exploration and data mining tasks. Near...
We propose a new vector encoding scheme (tree quan-tization) that obtains lossy compact codes for hi...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
Nearest neighbor searching is an important geometric subproblem in vector quanti-zation. Existing st...
In this article, we propose a new fast nearest neighbor search algorithm, based on vector quantizati...
International audienceWe propose an approximate nearest neighbor search method based on product quan...
[[abstract]]The encoding process of vector quantization (VQ) is computational complex and time consu...
A fundamental recurring task in many machinelearning applications is the search for the Nearest Neig...
As databases increasingly integrate different types of information such as time-series, multimedia a...
The technological developments of the last twenty years are leading the world to a new era. The inve...
Iterative Quantization (ITQ) is one of the most successful hashing based nearest-neighbor search met...
Abstract. Adaptable similarity queries based on quadratic form distance functions are widely popular...
Vector quantization (VQ) techniques are widely used in similarity search for data compression, compu...
Increasing sizes of databases and data stores mean that the traditional tasks, such as locating a ne...
Vector quantization (VQ) has found application in very low-rate speech and image encoding, together ...
The concept of similarity is used as the basis for many data exploration and data mining tasks. Near...
We propose a new vector encoding scheme (tree quan-tization) that obtains lossy compact codes for hi...
A recently proposed product quantization method is efficient for large scale approximate nearest nei...
Nearest neighbor searching is an important geometric subproblem in vector quanti-zation. Existing st...
In this article, we propose a new fast nearest neighbor search algorithm, based on vector quantizati...
International audienceWe propose an approximate nearest neighbor search method based on product quan...
[[abstract]]The encoding process of vector quantization (VQ) is computational complex and time consu...
A fundamental recurring task in many machinelearning applications is the search for the Nearest Neig...
As databases increasingly integrate different types of information such as time-series, multimedia a...