Adapting low‐dose CT denoisers for texture preservation using zero‐shot local noise‐level matching
Youngjun Ko,
Seongjong Song,
Jongduk Baek
et al.
Abstract:BackgroundOn enhancing the image quality of low‐dose computed tomography (LDCT), various denoising methods have achieved meaningful improvements. However, they commonly produce over‐smoothed results; the denoised images tend to be more blurred than the normal‐dose targets (NDCTs). Furthermore, many recent denoising methods employ deep learning(DL)‐based models, which require a vast amount of CT images (or image pairs).PurposeOur goal is to address the problem of over‐smoothed results and design an algorithm th… Show more
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