Random Data Augmentation based Enhancement: A Generalized Enhancement Approach for Medical Datasets
Sidra Aleem, Teerath Kumar, Suzanne Little, Malika Bendechache, Rob, Brennan, Kevin McGuinness

TL;DR
This paper introduces a randomized data augmentation technique that enhances medical images by adjusting brightness and contrast within a range, improving deep learning performance across various datasets without overfitting.
Contribution
It presents a generalized, data-independent enhancement method using random hyperparameters, addressing overfitting and dataset-specific limitations of existing approaches.
Findings
Outperforms state-of-the-art methods on multiple medical datasets
Improves classification and segmentation accuracy
Demonstrates robustness across grayscale and RGB images
Abstract
Over the years, the paradigm of medical image analysis has shifted from manual expertise to automated systems, often using deep learning (DL) systems. The performance of deep learning algorithms is highly dependent on data quality. Particularly for the medical domain, it is an important aspect as medical data is very sensitive to quality and poor quality can lead to misdiagnosis. To improve the diagnostic performance, research has been done both in complex DL architectures and in improving data quality using dataset dependent static hyperparameters. However, the performance is still constrained due to data quality and overfitting of hyperparameters to a specific dataset. To overcome these issues, this paper proposes random data augmentation based enhancement. The main objective is to develop a generalized, data-independent and computationally efficient enhancement approach to improve…
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Taxonomy
TopicsAI in cancer detection · Generative Adversarial Networks and Image Synthesis · COVID-19 diagnosis using AI
