论文标题
JBFNET-低剂量CT通过可训练的关节双边滤波降解
JBFnet -- Low Dose CT Denoising by Trainable Joint Bilateral Filtering
论文作者
论文摘要
深度神经网络在低剂量CT DeNoisis中表现出了巨大的成功。但是,这些深神经网络中的大多数都有数十万可训练的参数。这与神经网络的固有非线性相结合,使深度神经网络的困难以低责任感理解。在这项研究中,我们介绍了一种用于低剂量CT denoising的神经网络JBFNET。 JBFNET的架构实现了迭代双边滤波。联合双侧过滤器(JBF)的滤光片功能是通过浅卷积网络学习的。指导图像由深度神经网络估算。 JBFNET分为四个滤波块,每个滤块都执行关节双边滤波。每个JBF块由112个可训练的参数组成,使删除噪声过程可理解。过滤后添加噪声图(NM)以保持高水平的特征。我们使用10例患者的身体扫描数据来训练JBFNET,并在AAPM低剂量CT大挑战数据集上对其进行测试。我们将JBFNET与最先进的深度学习网络进行比较。 JBFNET在测试数据集上优于CPCE3D,GAN和DEEP GFNET,而在保留结构的同时,在降噪方面优于降噪方面。我们进行了几项消融研究,以测试我们的网络体系结构和培训方法的性能。我们当前的设置实现了最佳性能,同时仍保持行为责任。
Deep neural networks have shown great success in low dose CT denoising. However, most of these deep neural networks have several hundred thousand trainable parameters. This, combined with the inherent non-linearity of the neural network, makes the deep neural network diffcult to understand with low accountability. In this study we introduce JBFnet, a neural network for low dose CT denoising. The architecture of JBFnet implements iterative bilateral filtering. The filter functions of the Joint Bilateral Filter (JBF) are learned via shallow convolutional networks. The guidance image is estimated by a deep neural network. JBFnet is split into four filtering blocks, each of which performs Joint Bilateral Filtering. Each JBF block consists of 112 trainable parameters, making the noise removal process comprehendable. The Noise Map (NM) is added after filtering to preserve high level features. We train JBFnet with the data from the body scans of 10 patients, and test it on the AAPM low dose CT Grand Challenge dataset. We compare JBFnet with state-of-the-art deep learning networks. JBFnet outperforms CPCE3D, GAN and deep GFnet on the test dataset in terms of noise removal while preserving structures. We conduct several ablation studies to test the performance of our network architecture and training method. Our current setup achieves the best performance, while still maintaining behavioural accountability.