Asian Journal of Information Technology

Year: 2019
Volume: 18
Issue: 6
Page No. 173 - 179

Active Learning in Classification of Hyperspectral Imaging: A Review

Authors : R. Elakkiya, K. Thilagavathi and A. Vasuki

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