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arxiv: 2205.04821 · v1 · pith:R535CK7Xnew · submitted 2022-05-10 · 📡 eess.IV · cs.CV

Self-supervised regression learning using domain knowledge: Applications to improving self-supervised denoising in imaging

classification 📡 eess.IV cs.CV
keywords denoisingregressionlearningself-superviseddomainknowledgessrlapplications
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Regression that predicts continuous quantity is a central part of applications using computational imaging and computer vision technologies. Yet, studying and understanding self-supervised learning for regression tasks - except for a particular regression task, image denoising - have lagged behind. This paper proposes a general self-supervised regression learning (SSRL) framework that enables learning regression neural networks with only input data (but without ground-truth target data), by using a designable pseudo-predictor that encapsulates domain knowledge of a specific application. The paper underlines the importance of using domain knowledge by showing that under different settings, the better pseudo-predictor can lead properties of SSRL closer to those of ordinary supervised learning. Numerical experiments for low-dose computational tomography denoising and camera image denoising demonstrate that proposed SSRL significantly improves the denoising quality over several existing self-supervised denoising methods.

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