In recent times, large high-dimensional datasets have become ubiquitous. Video and image repositories, financial, and sensor data are just a few examples of such datasets in practice. Many applications that use such datasets require the retrieval of data items similar to a given query item, or the nearest neighbors (NN or k -NN) of a given item. Another common query is the retrieval of multiple sets of nearest neighbors, i.e., multi k -NN, for different query items on the same data. With commodity multi-core CPUs becoming more and more widespread at lower costs, developing parallel algorithms for these search problems has become increasingly important. While the core nearest neighbor search problem is relatively easy to parallelize, it is c...
As databases increasingly integrate different types of information such as time-series, multimedia a...
IEEE International Conference on Image Processing 2013International audienceWe propose a new method ...
The K-Nearest Neighbors (KNN) algorithm is a simple but powerful technique used in the field of data...
Cataloged from PDF version of article.In recent times, large high-dimensional datasets have become u...
We develop methods for accelerating metric similarity search that are effective on modern hardware. ...
To retrieve similar videos to a query clip from a large database, each video is often represented by...
To retrieve similar database videos to a query clip, each video is typically represented by a sequen...
To retrieve similar database videos to a query clip, each video is typically represented by a sequen...
In this project, we introduce and present a new search method for fast nearest-neighbor search in hi...
In this work, we extend the auto-tuning process of the state-of-the-art TVM framework with XFeatur; ...
Applications like multimedia retrieval require efficient support for similarity search on large data...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
When searching on unstructured data (video, images, etc.), response times are a critical factor. In ...
A proper theoretical analysis implies that with high probability, the RCT returns a proper query lea...
As databases increasingly integrate different types of information such as time-series, multimedia a...
IEEE International Conference on Image Processing 2013International audienceWe propose a new method ...
The K-Nearest Neighbors (KNN) algorithm is a simple but powerful technique used in the field of data...
Cataloged from PDF version of article.In recent times, large high-dimensional datasets have become u...
We develop methods for accelerating metric similarity search that are effective on modern hardware. ...
To retrieve similar videos to a query clip from a large database, each video is often represented by...
To retrieve similar database videos to a query clip, each video is typically represented by a sequen...
To retrieve similar database videos to a query clip, each video is typically represented by a sequen...
In this project, we introduce and present a new search method for fast nearest-neighbor search in hi...
In this work, we extend the auto-tuning process of the state-of-the-art TVM framework with XFeatur; ...
Applications like multimedia retrieval require efficient support for similarity search on large data...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
Most similarity search techniques map the data objects into some high-dimensional feature space. The...
When searching on unstructured data (video, images, etc.), response times are a critical factor. In ...
A proper theoretical analysis implies that with high probability, the RCT returns a proper query lea...
As databases increasingly integrate different types of information such as time-series, multimedia a...
IEEE International Conference on Image Processing 2013International audienceWe propose a new method ...
The K-Nearest Neighbors (KNN) algorithm is a simple but powerful technique used in the field of data...