Various Active Learning Strategies Analysis in Image Labeling: Maximizing Performance with Minimum Labeled Data

Book chapter


Tyagi, A., Aditya, H., Shelke, N., Khandelwal, R., Singh, J., Jadeja, Y. and Turukmane, A. 2024. Various Active Learning Strategies Analysis in Image Labeling: Maximizing Performance with Minimum Labeled Data. in: Santosh, K. C., Makkar, A., Conway, M., Singh, A. K., Vacavant, A., Abou el Kalam, A., Bouguelia, M. and Hegadi, R. (ed.) Recent Trends in Image Processing and Pattern Recognition Switzerland Springer. pp. 178-188
AuthorsTyagi, A., Aditya, H., Shelke, N., Khandelwal, R., Singh, J., Jadeja, Y. and Turukmane, A.
EditorsSantosh, K. C., Makkar, A., Conway, M., Singh, A. K., Vacavant, A., Abou el Kalam, A., Bouguelia, M. and Hegadi, R.
Abstract

The use of active learning in supervised machine learning is proposed in this study to reduce the expenses associated with labeling data. Active learning is a technique that includes iteratively selecting the most informative unlabeled data points and asking a human expert to label them. Active learning can achieve high accuracy while utilizing fewer labeled examples than typical supervised learning algorithms by selecting the most informative data points. This study conducts and provides an in-depth examination and analysis of numerous active learning algorithms and their applications to various machine learning labeling problems, especially focusing on image classification. The experiments are carried out using Fashion MNIST as a benchmark dataset. This study compares the performance of five popular active learning methods BALD, DBAL, coreset, least confidence and ensemble varR for the given problem. The best performing algorithm was BALD with a mean classification accuracy of 91.31%, when 50% of the data is considered labeled, closely followed by all other techniques, making each suitable for specific use cases. The trials conducted by the study illustrates how active learning may lower the time and cost of data labeling while also maintaining high accuracy.

KeywordsActive Learning; CNN; Data Labeling; Diversity Sampling; Ens-varR; Image Classification; Uncertainty Sampling
Page range178-188
Year2024
Book titleRecent Trends in Image Processing and Pattern Recognition
PublisherSpringer
Place of publicationSwitzerland
SeriesCommunications in Computer and Information Science
ISBN978-3-031-53082-1
ISSN1865-0937
Digital Object Identifier (DOI)https://doi.org/10.1007/978-3-031-53082-1_15
Web address (URL)https://link.springer.com/chapter/10.1007/978-3-031-53082-1_15
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All rights reserved
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Open
Output statusPublished
Publication dates
Online31 Jan 2024
Publication process dates
Deposited10 Dec 2024
Event6th International Conference: Recent Trends in Image Processing and Pattern Recognition
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