HyDRA: Hybrid Denoising Regularization for Measurement-Only DEQ Training

Abstract

Solving image reconstruction problems of the form \(A x = y\) remains challenging due to ill-posedness and the lack of large-scale supervised datasets. Deep Equilibrium (DEQ) models have been used successfully but typically require supervised pairs \((x,y)\). In many practical settings, only measurements \(y\) are available. We introduce HyDRA (Hybrid Denoising Regularization Adaptation), a measurement-only framework for DEQ training that combines measurement consistency with an adaptive denoising regularization term, together with a data-driven early stopping criterion. Experiments on sparse-view CT demonstrate competitive reconstruction quality and fast inference.

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