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Journal ArticleDOI

Active learning in multimedia annotation and retrieval: A survey

Meng Wang, +1 more
- 24 Feb 2011 - 
- Vol. 2, Iss: 2, pp 10
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TLDR
A survey on the efforts of leveraging active learning in multimedia annotation and retrieval, including semi-supervised learning, multilabel learning and multiple instance learning, focuses on two application domains: image/video annotation and content-based image retrieval.
Abstract: 
Active learning is a machine learning technique that selects the most informative samples for labeling and uses them as training data. It has been widely explored in multimedia research community for its capability of reducing human annotation effort. In this article, we provide a survey on the efforts of leveraging active learning in multimedia annotation and retrieval. We mainly focus on two application domains: image/video annotation and content-based image retrieval. We first briefly introduce the principle of active learning and then we analyze the sample selection criteria. We categorize the existing sample selection strategies used in multimedia annotation and retrieval into five criteria: risk reduction, uncertainty, diversity, density and relevance. We then introduce several classification models used in active learning-based multimedia annotation and retrieval, including semi-supervised learning, multilabel learning and multiple instance learning. We also provide a discussion on several future trends in this research direction. In particular, we discuss cost analysis of human annotation and large-scale interactive multimedia annotation.

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Citations
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Journal ArticleDOI

A survey on instance selection for active learning

TL;DR: This survey intends to provide a high-level summarization for active learning and motivates interested readers to consider instance-selection approaches for designing effective active learning solutions.
Journal ArticleDOI

Assistive tagging: A survey of multimedia tagging with human-computer joint exploration

TL;DR: A comprehensive survey of assistive tagging techniques for real-world multimedia data can be found in this paper, where the authors categorize existing assistive tag techniques into three paradigms: (1) tagging with data selection and organization; (2) tag recommendation; (3) tag processing.
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Less is More: Efficient 3-D Object Retrieval With Query View Selection

TL;DR: Results demonstrated that the proposed interactive 3-D object retrieval scheme not only significantly speeds up the retrieval process but also achieves encouraging retrieval performance.
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Exploring Representativeness and Informativeness for Active Learning

TL;DR: Wang et al. as discussed by the authors proposed a general active learning framework that effectively fuses the two active sampling criteria, namely representativeness and informativeness, without any assumption on data.
Journal ArticleDOI

Active deep learning method for semi-supervised sentiment classification

TL;DR: Experiments on five sentiment classification datasets show that ADN and IADN outperform classical semi-supervised learning algorithms, and deep learning techniques applied for sentiment classification.
References
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Journal ArticleDOI

On Estimation of a Probability Density Function and Mode

TL;DR: In this paper, the problem of the estimation of a probability density function and of determining the mode of the probability function is discussed. Only estimates which are consistent and asymptotically normal are constructed.
Journal ArticleDOI

Content-based image retrieval at the end of the early years

TL;DR: The working conditions of content-based retrieval: patterns of use, types of pictures, the role of semantics, and the sensory gap are discussed, as well as aspects of system engineering: databases, system architecture, and evaluation.
Proceedings ArticleDOI

Combining labeled and unlabeled data with co-training

TL;DR: A PAC-style analysis is provided for a problem setting motivated by the task of learning to classify web pages, in which the description of each example can be partitioned into two distinct views, to allow inexpensive unlabeled data to augment, a much smaller set of labeled examples.

Active Learning Literature Survey

Burr Settles
TL;DR: This report provides a general introduction to active learning and a survey of the literature, including a discussion of the scenarios in which queries can be formulated, and an overview of the query strategy frameworks proposed in the literature to date.