Visible to the public Discrete Cosine Transform Locality-Sensitive Hashes for Face Retrieval

TitleDiscrete Cosine Transform Locality-Sensitive Hashes for Face Retrieval
Publication TypeJournal Article
Year of Publication2014
AuthorsKafai, M., Eshghi, K., Bhanu, B.
JournalMultimedia, IEEE Transactions on
Volume16
Pagination1090-1103
Date PublishedJune
ISSN1520-9210
KeywordsBioID, cryptography, DCT hashing, Discrete Cosine Transform (DCT) hashing, discrete cosine transform hashing, discrete cosine transforms, Face, face databases, face descriptors, face indexing, face recognition, face retrieval, FEI, FERET, hash suppression, Image coding, image querying, image retrieval, index structures, indexing, Kernel, LFW, linear search, local binary patterns, Local Binary Patterns (LBP), locality-sensitive hashes, Locality-Sensitive Hashing (LSH), multiPIE, Probes, RaFD, retrieval efficiency, Vectors
Abstract

Descriptors such as local binary patterns perform well for face recognition. Searching large databases using such descriptors has been problematic due to the cost of the linear search, and the inadequate performance of existing indexing methods. We present Discrete Cosine Transform (DCT) hashing for creating index structures for face descriptors. Hashes play the role of keywords: an index is created, and queried to find the images most similar to the query image. Common hash suppression is used to improve retrieval efficiency and accuracy. Results are shown on a combination of six publicly available face databases (LFW, FERET, FEI, BioID, Multi-PIE, and RaFD). It is shown that DCT hashing has significantly better retrieval accuracy and it is more efficient compared to other popular state-of-the-art hash algorithms.

DOI10.1109/TMM.2014.2305633
Citation Key6737233