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Accepted to ARRS 2026

Evaluating the Impact of Radiographic Noise on Chest X-ray Semantic Segmentation and Disease Classification Using a Scalable Noise Injection Framework

Derek Jiu, Nishant Chinta, Ryan Bui

Abstract

This study presents a scalable noise injection framework to evaluate how radiographic noise affects chest X-ray analysis. We systematically inject various types and levels of noise into chest X-ray images to measure the impact on semantic segmentation of anatomical structures and disease classification accuracy. Our framework enables researchers to assess model robustness and develop more noise-resilient medical imaging algorithms. [arXiv link TBA]

Citation

Derek Jiu, Nishant Chinta, Ryan Bui. "Evaluating the Impact of Radiographic Noise on Chest X-ray Semantic Segmentation and Disease Classification Using a Scalable Noise Injection Framework". Accepted to ARRS 2026.

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Details

Conference
Accepted to ARRS 2026
Authors
3 authors

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