DocumentCode :
3601371
Title :
Supervised Hashing Using Graph Cuts and Boosted Decision Trees
Author :
Guosheng Lin ; Chunhua Shen ; van den Hengel, Anton
Author_Institution :
Australian Res. Council Centre of Excellence for Robotic Vision, Univ. of Adelaide, Adelaide, SA, Australia
Volume :
37
Issue :
11
fYear :
2015
Firstpage :
2317
Lastpage :
2331
Abstract :
To build large-scale query-by-example image retrieval systems, embedding image features into a binary Hamming space provides great benefits. Supervised hashing aims to map the original features to compact binary codes that are able to preserve label based similarity in the binary Hamming space. Most existing approaches apply a single form of hash function, and an optimization process which is typically deeply coupled to this specific form. This tight coupling restricts the flexibility of those methods, and can result in complex optimization problems that are difficult to solve. In this work we proffer a flexible yet simple framework that is able to accommodate different types of loss functions and hash functions. The proposed framework allows a number of existing approaches to hashing to be placed in context, and simplifies the development of new problem-specific hashing methods. Our framework decomposes the hashing learning problem into two steps: binary code (hash bit) learning and hash function learning. The first step can typically be formulated as binary quadratic problems, and the second step can be accomplished by training a standard binary classifier. For solving large-scale binary code inference, we show how it is possible to ensure that the binary quadratic problems are submodular such that efficient graph cut methods may be used. To achieve efficiency as well as efficacy on large-scale high-dimensional data, we propose to use boosted decision trees as the hash functions, which are nonlinear, highly descriptive, and are very fast to train and evaluate. Experiments demonstrate that the proposed method significantly outperforms most state-of-the-art methods, especially on high-dimensional data.
Keywords :
Hamming codes; binary codes; decision trees; file organisation; graph theory; image retrieval; learning (artificial intelligence); optimisation; pattern classification; binary Hamming space; binary classifier; binary code inference; binary code learning; binary quadratic problems; boosted decision trees; compact binary codes; graph cut methods; hash bit learning; hash function learning; hashing learning problem; label based similarity; optimization process; query-by-example image retrieval systems; supervised hashing; Binary codes; Decision trees; Hamming distance; Inference algorithms; Kernel; Optimization; Training; Binary Codes; Decision Trees; Graph Cuts; Hashing; Image Retrieval; Nearest Neighbour Search; binary codes; decision trees; graph cuts; image retrieval; nearest neighbour search;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2015.2404776
Filename :
7044591
Link To Document :
بازگشت