Diffusion-Based Feature Denoising and Using NNMF for Robust Brain Tumor Classification
Hiba Adil Al-kharsan, R\'obert Rajk\'o

TL;DR
This paper introduces a robust brain tumor classification framework combining NNMF, lightweight CNNs, and diffusion-based feature purification to enhance adversarial robustness in MRI analysis.
Contribution
It proposes a novel integration of NNMF, CNNs, and diffusion-based purification for improved robustness and interpretability in brain tumor classification.
Findings
Achieves competitive accuracy on MRI tumor classification.
Significantly improves robustness against adversarial attacks.
Demonstrates effectiveness of diffusion-based feature purification.
Abstract
Brain tumor classification from magnetic resonance imaging, which is also known as MRI, plays a sensitive role in computer-assisted diagnosis systems. In recent years, deep learning models have achieved high classification accuracy. However, their sensitivity to adversarial perturbations has become an important reliability concern in medical applications. This study suggests a robust brain tumor classification framework that combines Non-Negative Matrix Factorization (NNMF or NMF), lightweight convolutional neural networks (CNNs), and diffusion-based feature purification. Initially, MRI images are preprocessed and converted into a non-negative data matrix, from which compact and interpretable NNMF feature representations are extracted. Statistical metrics, including AUC, Cohen's d, and p-values, are used to rank and choose the most discriminative components. Then, a lightweight CNN…
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