Journal Article10.1016/j.array.2022.100258
Data augmentation: A comprehensive survey of modern approaches
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TL;DR: Data augmentation is the most effective way of alleviating the problem of data collection and annotation processes and consumes a lot of time and resources as mentioned in this paper , which is the main goal of data augmentation, to increase the volume, quality and diversity of training data.
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About: This article is published in Array. The article was published on 01 Nov 2022. The article focuses on the topics: Computer science & Computer science.
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