Task-based Regularization in Penalized Least-Squares for Binary Signal Detection Tasks in Medical Image Denoising
Wentao Chen, Tianming Xu, Weimin Zhou

TL;DR
This paper introduces a task-based regularization method for penalized least-squares in medical image denoising that enhances signal detectability without needing ground-truth data, outperforming traditional and CNN-based approaches.
Contribution
It proposes a novel task-based regularization strategy linked to linear test statistics likelihood, eliminating the need for ground-truth images and improving detection in denoised medical images.
Findings
Improves signal detectability in denoised images.
Effective without ground-truth image data.
Outperforms traditional regularization methods.
Abstract
Image denoising algorithms have been extensively investigated for medical imaging. To perform image denoising, penalized least-squares (PLS) problems can be designed and solved, in which the penalty term encodes prior knowledge of the object being imaged. Sparsity-promoting penalties, such as total variation (TV), have been a popular choice for regularizing image denoising problems. However, such hand-crafted penalties may not be able to preserve task-relevant information in measured image data and can lead to oversmoothed image appearances and patchy artifacts that degrade signal detectability. Supervised learning methods that employ convolutional neural networks (CNNs) have emerged as a popular approach to denoising medical images. However, studies have shown that CNNs trained with loss functions based on traditional image quality measures can lead to a loss of task-relevant…
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Taxonomy
TopicsImage and Signal Denoising Methods
