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Enhance Generative Adversarial Networks By Wavelet Transform To Denoise Low-Dose Ct Images

机译:通过小波变换增强生成对抗网络以对低剂量Ct图像进行降噪

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Computed Tomography (CT) has been widely used in clinical diagnosis, while its potential risk of X-ray radiation has attracted serious public concerns. Reconstructing high-quality images from low-dose CT devices is a promising solution. Whereas, existing methods mostly relied on the raw data of devices, and cannot be shared among different device suppliers. Inspired by the powerful learning ability of GAN and the structural information extraction ability of wavelet transform, we propose to combine the two together and design the WT-GAN, which extracts structure and noise information by wavelet transform and generates high-quality images by GAN. The two technologies are incorporated with each other by our well-designed loss functions. Experimental results show that the proposed WT-GAN achieves superior performance and can efficiently extract the noise while retaining the texture details. Furthermore, the WT-GAN is a postprocessing method imposed on full-size images, thus it is easy to integrate into any CT systems.
机译:计算机断层扫描(CT)已广泛用于临床诊断,而其X射线辐射的潜在风险引起了严重的公众问题。从低剂量CT器件重建高质量图像是一个有前途的解决方案。然而,现有方法主要依赖于设备的原始数据,并且不能在不同的设备供应商之间共享。灵感来自GaN的强大学习能力和小波变换的结构信息提取能力,我们建议将两者组合在一起并设计WT-GaN,由小波变换提取结构和噪声信息,并通过GaN产生高质量的图像。这两种技术通过我们设计的良好的损耗功能彼此结合。实验结果表明,提议的WT-GaN实现了卓越的性能,可以有效地提取噪音,同时保留纹理细节。此外,WT-GaN是对全尺寸图像施加的后处理方法,因此很容易集成到任何CT系统中。

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