logo
banner

Journals & Publications

Publications Papers

Papers

Multi-View Multi-Instance Learning Based on Joint Sparse Representation and Multi-View Dictionary Learning
Dec 05, 2017Author:
PrintText Size A A

Title: Multi-View Multi-Instance Learning Based on Joint Sparse Representation and Multi-View Dictionary Learning

 Authors: Li, B; Yuan, CF; Xiong, WH; Hu, WM; Peng, HW; Ding, XM; Maybank, S

 Author Full Names: Li, Bing; Yuan, Chunfeng; Xiong, Weihua; Hu, Weiming; Peng, Houwen; Ding, Xinmiao; Maybank, Steve

 Source: IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 39 (12):2554-2560; 10.1109/TPAMI.2017.2669303 DEC 2017

 Language: English

 Abstract: In multi-instance learning (MIL), the relations among instances in a bag convey important contextual information in many applications. Previous studies on MIL either ignore such relations or simply model them with a fixed graph structure so that the overall performance inevitably degrades in complex environments. To address this problem, this paper proposes a novel multi-view multi-instance learning algorithm ((MIL)-I-2) that combines multiple context structures in a bag into a unified framework. The novel aspects are: (i) we propose a sparse epsilon-graph model that can generate different graphs with different parameters to represent various context relations in a bag, (ii) we propose a multi-view joint sparse representation that integrates these graphs into a unified framework for bag classification, and (iii) we propose a multi-view dictionary learning algorithm to obtain a multi-view graph dictionary that considers cues from all views simultaneously to improve the discrimination of the M2IL. Experiments and analyses in many practical applications prove the effectiveness of the M2IL.

 ISSN: 0162-8828

 eISSN: 1939-3539

 IDS Number: FL6ZQ

 Unique ID: WOS:000414395400017

 PubMed ID: 28212079

*Click Here to View Full Record