Nowadays, due to the exponential growth of user generated images and videos, there is an increasing interest in learning-based hashing methods. In computer vision, the hash functions are learned in such a way that the hash codes can preserve essential properties of the original space (or label information). Then the Hamming distance of the hash codes can approximate the data similarity. On the other hand, vector quantization methods quantize the data into different clusters based on the criteria of minimal quantization error, and then perform the search using look-up tables. While hashing methods using Hamming distance can achieve faster search speed, their accuracy is often outperformed by quantization methods with the same code length, du...
Recent years have witnessed the effectiveness and efficiency of learning-based hashing methods which...
For unsupervised data-dependent hashing, the two most important requirements are to preserve similar...
In hash-based image retrieval systems, degraded or transformed inputs usually generate different cod...
Hashing has been widely applied to approximate nearest neighbor search for large-scale multimedia re...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
In computer vision there has been increasing interest in learning hashing codes whose Hamming distan...
This paper proposes a deep hashing framework, namely, unsupervised deep video hashing (UDVH), for la...
This paper proposes a deep hashing framework, namely, unsupervised deep video hashing (UDVH), for la...
Hashing techniques are powerful for approximate nearest neighbour (ANN) search.Existing quantization...
Techniques to learn hash codes which can store and retrieve large dimensional multimedia data effici...
Image hashing is a principled approximate nearest neighbor approach to find similar items to a query...
Deep hashing methods utilize an end-to-end framework to mutually learn feature representations and h...
Recently, learning based hashing methods have become popular for indexing large-scale media data. Ha...
Hashing is a popular approximate nearest neighbor search approach for large-scale image retrieval. S...
Recently, hashing has been evidenced as an efficient and effective method to facilitate large-scale ...
Recent years have witnessed the effectiveness and efficiency of learning-based hashing methods which...
For unsupervised data-dependent hashing, the two most important requirements are to preserve similar...
In hash-based image retrieval systems, degraded or transformed inputs usually generate different cod...
Hashing has been widely applied to approximate nearest neighbor search for large-scale multimedia re...
Due to the storage and retrieval efficiency, hashing has been widely deployed to approximate nearest...
In computer vision there has been increasing interest in learning hashing codes whose Hamming distan...
This paper proposes a deep hashing framework, namely, unsupervised deep video hashing (UDVH), for la...
This paper proposes a deep hashing framework, namely, unsupervised deep video hashing (UDVH), for la...
Hashing techniques are powerful for approximate nearest neighbour (ANN) search.Existing quantization...
Techniques to learn hash codes which can store and retrieve large dimensional multimedia data effici...
Image hashing is a principled approximate nearest neighbor approach to find similar items to a query...
Deep hashing methods utilize an end-to-end framework to mutually learn feature representations and h...
Recently, learning based hashing methods have become popular for indexing large-scale media data. Ha...
Hashing is a popular approximate nearest neighbor search approach for large-scale image retrieval. S...
Recently, hashing has been evidenced as an efficient and effective method to facilitate large-scale ...
Recent years have witnessed the effectiveness and efficiency of learning-based hashing methods which...
For unsupervised data-dependent hashing, the two most important requirements are to preserve similar...
In hash-based image retrieval systems, degraded or transformed inputs usually generate different cod...