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Finding the Sweet Spot: A Study of Data Augmentation Intensity for Small-Scale Image Classification Cover

Finding the Sweet Spot: A Study of Data Augmentation Intensity for Small-Scale Image Classification

By: Windra Swastika  
Open Access
|Dec 2025

Abstract

Finding the optimal level of data augmentation intensity remains one of the most challenging aspects of training deep learning models on small-scale datasets, which is particularly relevant for resource-constrained environments in robotics and automation systems. While data augmentation is universally recognized as essential for preventing overfitting and improving generalization, excessive augmentation can paradoxically harm model performance by introducing too much variability in the training data. This research investigates the “sweet spot” of augmentation intensity through a comprehensive study of six distinct augmentation strategies on CIFAR-10, a representative small-scale image classification benchmark commonly used in mobile robotics applications. We designed a controlled experiment comparing: No Augmentation (baseline), Basic torchvision transforms, Light Advanced albumentations, Moderate Advanced geometric-photometric combinations, Strong Advanced with noise injection, and AutoAugment Style with complex transformations. Our findings reveal a clear relationship between augmentation intensity and model performance, with peak performance achieved at moderate intensity levels (Basic strategy with intensity score [IS] 0.49). The Basic augmentation strategy achieved 79.84% validation accuracy, significantly outperforming both minimal augmentation (77.49%) and excessive augmentation (71.64%). Through statistical analysis including correlation studies (Pearson r = –0.759, p = 0.080; Spearman ρ = –0.714, p = 0.111), the “sweet spot" lies in balanced augmentation that provides regularization benefits without overwhelming the learning process.

DOI: https://doi.org/10.14313/jamris-2025-038 | Journal eISSN: 2080-2145 | Journal ISSN: 1897-8649
Language: English
Page range: 94 - 101
Submitted on: Jun 28, 2025
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Accepted on: Aug 22, 2025
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Published on: Dec 24, 2025
In partnership with: Paradigm Publishing Services
Publication frequency: 4 issues per year

© 2025 Windra Swastika, published by Łukasiewicz Research Network – Industrial Research Institute for Automation and Measurements PIAP
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.