Authors
Serhat S Bucak, Rong Jin, Anil K Jain
Publication date
2013/11/4
Source
IEEE Transactions on Pattern Analysis and Machine Intelligence
Volume
36
Issue
7
Pages
1354-1369
Publisher
IEEE
Description
Multiple kernel learning (MKL) is a principled approach for selecting and combining kernels for a given recognition task. A number of studies have shown that MKL is a useful tool for object recognition, where each image is represented by multiple sets of features and MKL is applied to combine different feature sets. We review the state-of-the-art for MKL, including different formulations and algorithms for solving the related optimization problems, with the focus on their applications to object recognition. One dilemma faced by practitioners interested in using MKL for object recognition is that different studies often provide conflicting results about the effectiveness and efficiency of MKL. To resolve this, we conduct extensive experiments on standard datasets to evaluate various approaches to MKL for object recognition. We argue that the seemingly contradictory conclusions offered by studies are due to different …
Total citations
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Scholar articles
SS Bucak, R Jin, AK Jain - IEEE Transactions on Pattern Analysis and Machine …, 2013