Self-supervised image denoising techniques emerged as convenient methods that allow training denoising models without requiring ground-truth noise-free data. Existing methods usually optimize loss metrics that are calculated from multiple noisy realizations of similar images, e.g., from neighboring tomographic slices. However, those approaches fail to utilize the multiple contrasts that are routinely acquired in medical imaging modalities like MRI or dual-energy CT. In this work, we propose the new self-supervised training scheme Noise2Contrast that combines information from multiple measured image contrasts to train a denoising model. We stack denoising with domain-transfer operators to utilize the independent noise realizations of different image contrasts to derive a self-supervised loss. The trained denoising operator achieves convincing quantitative and qualitative results, outperforming state-of-the-art self-supervised methods by 4.7-11.0%/4.8-7.3% (PSNR/SSIM) on brain MRI data and by 43.6-50.5%/57.1-77.1% (PSNR/SSIM) on dual-energy CT X-ray microscopy data with respect to the noisy baseline. Our experiments on different real measured data sets indicate that Noise2Contrast training generalizes to other multi-contrast imaging modalities.
翻译:自监督图像脱色技术作为方便的方法出现,使培训模型无需地面真实无噪音数据就能消除污染的模型成为方便的方法。现有方法通常最优化损失衡量标准,这些衡量标准是从对类似图像的多次噪音实现中计算出来的,例如相邻图像切片;然而,这些方法未能利用医学成像模式(如MRI或双能CT)中经常获得的多重对比。在这项工作中,我们提议采用新的自监督培训计划Nise2 Contrast,将来自多种测量图像对比的信息合并起来,以培训脱色模型。我们与域传输操作员堆放脱色,以便利用不同图像对比的独立噪音实现情况,以获得自我监督的损失。经过培训的脱色操作者取得了令人信服的定量和定性结果,超过了在诸如MRI或双能CT的自我监督方法中通常获得的4.7-10.0/4.8.7-7.3%(PSNR/SSIM)关于大脑MRI数据的数据,以及43.6-50.71-77.1 %(PNSR/SSIM)关于双向两能系统进行独立噪音实验,用我们测量的X光基比其他数据进行不同的数据。