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GANReDL: Medical Image Enhancement Using a Generative Adversarial Network with Real-Order Derivative Induced Loss Functions

机译:GANReDL:使用具有实阶导数诱导损失函数的生成对抗网络增强医学图像

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Deep (convolutional) neural networks (DCNN) have recently gained popularity, and shown improved performance in the field of image enhancement (de-noising and super-resolution, for instance). However, the central issue of recovering finer texture details in images still remains unsolved. State-of-the-art objective functions used in DCNN mostly focus on minimizing the mean squared reconstruction error. The resulting image estimates have high peak signal-to-noise ratios, but they are often lacking high-frequency details, and are therefore error-prone with respect to fine-scale, possibly clinically relevant details. In this article, we present GANReDL, a generative adversarial network (GAN) for image enhancement equipped with a real-order derivative induced loss functions (ReDL) which we will show gives improved images, in particular wrt to the reconstruction of fine-scale details. To the best of our knowledge, this is the first framework that incorporates non-integer order derivatives in loss functions. To this aim, we propose a discriminator network that is trained to differentiate between the enhanced images and ground-truth images, and propose a new loss function motivated by real-order derivatives which is capable of also capturing global image features rather than pixel-wise features only. We show, with several numerical experiments, that GANReDL is better in reconstructing the high-frequency image details, and therefore show improved performance for image enhancement over other state-of-the-art methods.
机译:深度(卷积)神经网络(DCNN)最近获得了普及,并且在图像增强领域(例如,降噪和超分辨率)表现出更高的性能。但是,恢复图像中更精细的纹理细节的中心问题仍然没有解决。 DCNN中使用的最新目标函数主要集中在最小化均方重构误差上。所得的图像估计值具有较高的峰值信噪比,但它们通常缺少高频细节,因此就精细范围(可能与临床相关的细节)而言,容易出错。在本文中,我们介绍了GANReDL,这是一种用于图像增强的生成对抗网络(GAN),配备了实阶导数诱导的损失函数(ReDL),我们将展示其提供改进的图像,尤其是细微细节重建时的图像。据我们所知,这是第一个在损失函数中包含非整数阶导数的框架。为此,我们提出了一种鉴别器网络,该网络经过训练以区分增强图像和地面真实图像,并提出一种由实阶导数驱动的新损失函数,该函数还可以捕获全局图像特征,而不是逐个像素地捕获。仅功能。我们通过几个数值实验表明,GANReDL在重构高频图像细节方面更好,因此,与其他最新技术相比,GANReDL显示了更高的图像增强性能。

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