Open AccessProceedings Article
Maximum Margin Multi-Instance Learning
Hua Wang,Heng Huang,Farhad Kamangar,Feiping Nie,Chris Ding +4 more
- 12 Dec 2011
- Vol. 24, pp 1-9
TL;DR: This paper proposes a novel Maximum Margin Multi-Instance Learning (M3I) approach to parameterize the C2B distance by introducing the class specific distance metrics and the locally adaptive significance coefficients and applies this approach to the automatic image categorization tasks on three data sets.
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Abstract: Multi-instance learning (MIL) considers input as bags of instances, in which labels are assigned to the bags. MIL is useful in many real-world applications. For example, in image categorization semantic meanings (labels) of an image mostly arise from its regions (instances) instead of the entire image (bag). Existing MIL methods typically build their models using the Bag-to-Bag (B2B) distance, which are often computationally expensive and may not truly reflect the semantic similarities. To tackle this, in this paper we approach MIL problems from a new perspective using the Class-to-Bag (C2B) distance, which directly assesses the relationships between the classes and the bags. Taking into account the two major challenges in MIL, high heterogeneity on data and weak label association, we propose a novel Maximum Margin Multi-Instance Learning (M3I) approach to parameterize the C2B distance by introducing the class specific distance metrics and the locally adaptive significance coefficients. We apply our new approach to the automatic image categorization tasks on three (one single-label and two multi-label) benchmark data sets. Extensive experiments have demonstrated promising results that validate the proposed method.
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Citations
Multi-Instance Learning With Emerging Novel Class
TL;DR: This paper focuses on the Multi-Instance learning with Emerging Novel class (MIEN) problem, and formulates MIEN from a metric learning perspective, and proposes the MIEN-metric method, comparable with state-of-the-art MIL algorithms for binary classification in the traditional MIL setting.
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Learning Multi-instance Enriched Image Representations via Non-greedy Ratio Maximization of the l1-Norm Distances
Kai Liu,Hua Wang,Feiping Nie,Hao Zhang +3 more
- 01 Jun 2018
TL;DR: This paper proposes a novel image representation learning method that can integrate the local patches of an input image and its holistic representation into one single-vector representation and derives a new efficient non-greedy iterative algorithm and rigorously proves its convergence.
Visual object tracking with online weighted chaotic multiple instance learning
TL;DR: The experimental results reveal that the proposed chaotic multiple instance learning tracker based on chaos theory for a robust and efficient online tracking is more effective and robust than the state-of-the-art trackers on various challenging sequences.
25
•Proceedings Article
Multi-instance learning with distribution change
Weijia Zhang,Zhi-Hua Zhou +1 more
- 27 Jul 2014
TL;DR: This paper proposes the MICS approach by considering both bag-level and instance-level distribution change, and shows that MICS is almost always significantly better than many state-of-theart multi-instance learning algorithms when distribution change occurs.
References
The Pascal Visual Object Classes (VOC) Challenge
TL;DR: The state-of-the-art in evaluated methods for both classification and detection are reviewed, whether the methods are statistically different, what they are learning from the images, and what the methods find easy or confuse.
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.
BoosTexter: A Boosting-based Systemfor Text Categorization
Robert E. Schapire,Yoram Singer +1 more
TL;DR: In this article, a new and improved family of boosting algorithms is proposed for text categorization tasks, called BoosTexter, which learns from examples to perform multiclass text and speech categorization.
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