Title
Multicriteria-Based Active Discriminative Dictionary Learning for Scene Recognition.
Abstract
Scene recognition is a significant and challenging problem in the field of computer vision. One of the principal bottlenecks in applying machine learning techniques to scene recognition tasks is the requirement of a large number of labeled training data. However, labeling massive training data manually (especially labeling images and videos) is very expensive in terms of human time and effort. In this paper, we present a novel multicriteria-based active discriminative dictionary learning (M-ADDL) algorithm to reduce the human annotation effort and create a robust scene recognition model. The M-ADDL algorithm possesses three advantages. First, M-ADDL introduces an active learning strategy into the discriminative dictionary learning model so that the performance of discriminative dictionary learning can be improved when the number of labeled samples is small. Second, different from most existing active learning methods that measure either the informativeness or representativeness of unlabeled samples to select useful samples for expanding the training dataset, M-ADDL employs both informativeness and representativeness to query useful unlabeled samples and utilizes the manifold-preserving ability of unlabeled samples as an additional sample selection criterion. Finally, a more effective representativeness criterion is presented based on the reconstruction coefficients of the samples. The experimental results of four standard scene recognition databases demonstrate the feasibility and validity of the proposed M-ADDL algorithm.
Year
DOI
Venue
2018
10.1109/ACCESS.2017.2786672
IEEE ACCESS
Keywords
Field
DocType
Active learning,dictionary learning,multicriteria of sample selection,scene recognition
Algorithm design,Active learning,Annotation,Dictionary learning,Pattern recognition,Computer science,Representativeness heuristic,Artificial intelligence,Statistical classification,Sample selection,Discriminative model,Distributed computing
Journal
Volume
ISSN
Citations 
6
2169-3536
1
PageRank 
References 
Authors
0.35
0
7
Name
Order
Citations
PageRank
Caixia Zheng1172.88
Yugen Yi29215.25
Miao Qi3967.17
Fucong Liu4101.47
Chao Bi520.70
Jianzhong Wang621417.72
Jun Kong715814.14