Learning and recognition methods for image search and video retrieval
Document Type
Syllabus
Publication Date
1-1-2017
Abstract
Effective learning and recognitionmethods play an important role in intelligent image search and video retrieval. This chapter therefore reviews some popular learning and recognitionmethods that are broadly applied for image search and video retrieval. First some popular deep learning methods are discussed, such as the feedforward deep neural networks, the deep autoencoders, the convolutional neural networks, and the Deep Boltzmann Machine (DBM). Second, Support Vector Machine (SVM), which is one of the popular machine learning methods, is reviewed. In particular, the linear support vector machine, the soft-margin support vector machine, the non-linear support vector machine, the simplified support vector machine, the efficient Support Vector Machine (eSVM), and the applications of SVM to image search and video retrieval are discussed. Finally, other popular kernel methods and new similarity measures are briefly reviewed.
Identifier
85018512984 (Scopus)
Publication Title
Intelligent Systems Reference Library
External Full Text Location
https://doi.org/10.1007/978-3-319-52081-0_2
e-ISSN
18684408
ISSN
18684394
First Page
21
Last Page
43
Volume
121
Recommended Citation
Puthenputhussery, Ajit; Chen, Shuo; Lee, Joyoung; Spasovic, Lazar; and Liu, Chengjun, "Learning and recognition methods for image search and video retrieval" (2017). Faculty Publications. 9918.
https://digitalcommons.njit.edu/fac_pubs/9918
