2020
DOI: 10.48550/arxiv.2010.05212
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GuCNet: A Guided Clustering-based Network for Improved Classification

Abstract: We deal with the problem of semantic classification of challenging and highly-cluttered dataset. We present a novel, and yet a very simple classification technique by leveraging the ease of classifiability of any existing well separable dataset for guidance. Since the guide dataset which may or may not have any semantic relationship with the experimental dataset, forms well separable clusters in the feature set, the proposed network tries to embed class-wise features of the challenging dataset to those distinc… Show more

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