Bonfring International Journal of Advances in Image Processing

Impact Factor: 0.245 | International Scientific Indexing(ISI) calculate based on International Citation Report(ICR)


Automatic Image Annotation and Retrieval using Multi-Instance Multi-Label Learning

T. Sumathi, C. Lakshmi Devasena, R. Revathi, S. Priya and Dr.M. Hemalatha


Abstract:

In this paper, we propose the MIML (Multi-Instance Multi-Label learning) framework which is associated with multiple class labels for Image Annotation. Compared to traditional learning frameworks, the MIML framework is more convenient and natural for representing complicated objects which have multiple semantic meanings. To learn from MIML examples we have taken a survey on MIML Boost, MIMLSVM, D-MIMLSVM, InsDif and SubCod algorithms. MIML Boost and MIML SVM are based on a simple degeneration strategy. Experiments based on this algorithm shows that solving problems involving complicated objects with multiple semantic meanings in the MIML framework can lead to good performance. As the degeneration process may lose information, we have considered D-MimlSvm algorithm which tackles MIML problems directly in a regularization framework. InsDif and SubCod algorithms works by transforming single-instances into the MIML representation for learning, while SubCod works by transforming single-label examples into the MIML representation for learning. We have compared the results of all the algorithms and have identified that InsDif framework leads to good performance rates. Installateur notdienst wien

Keywords: Machine Learning, Multi-Instance Multi-Label Learning, Multi-Label Learning, Multi-Instance Learning

Volume: 1 | Issue: Inaugural Special Issue

Pages: 01-05

Issue Date: December , 2011

DOI: 10.9756/BIJAIP.1001

Full Text

Email

Password

 


This Journal is an Open Access Journal to Facilitate the Research Community