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2021 | OriginalPaper | Chapter

Deep Visual Attention Based Transfer Clustering

Authors : Akshaykumar Gunari, Shashidhar Veerappa Kudari, Sukanya Nadagadalli, Keerthi Goudnaik, Ramesh Ashok Tabib, Uma Mudenagudi, Adarsh Jamadandi

Published in: Advances in Computing and Network Communications

Publisher: Springer Singapore

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Abstract

In this paper, we propose a methodology to improvise the technique of Deep Transfer Clustering (DTC) when applied to the less variant data distribution. Clustering can be considered as the most important unsupervised learning problem. A simple definition of clustering can be stated as “the process of organizing objects into groups, whose members are similar in some way”. Image clustering is a crucial but challenging task in the domain machine learning and computer vision. We have discussed the clustering of the data collection where the data is less variant. We have discussed the improvement by using attention-based classifiers rather than regular classifiers as the initial feature extractors in the Deep Transfer Clustering. We have enforced the model to learn only the required region of interest in the images to get the differentiable and robust features that do not take into account the background. This paper is the improvement of the existing Deep Transfer clustering for less variant data distribution.

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Metadata
Title
Deep Visual Attention Based Transfer Clustering
Authors
Akshaykumar Gunari
Shashidhar Veerappa Kudari
Sukanya Nadagadalli
Keerthi Goudnaik
Ramesh Ashok Tabib
Uma Mudenagudi
Adarsh Jamadandi
Copyright Year
2021
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-33-6987-0_29