Le Liu, Haseeb Jan, Chen Tang, Hongxuan He, Liao Zhang, Zhenkun Lei
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引用次数: 0
摘要
众所周知,在保持细节结构的同时抑制噪声一直是图像增强领域的难题,尤其是对于彩色视网膜图像。本文提出了一种名为扩张洗牌生成对抗网络(DS-GAN)的双通道轻量级 GAN 来解决上述问题。该轻量级生成器由用于红蓝通道的 RB 分支和用于绿色通道的 GN 分支组成。然后将这两个分支与猫函数整合,生成增强图像。RB 分支级联六个相同的 RB 增强模块,并添加跳转连接。GN 分支的结构与 RB 分支类似。生成器同时利用了正常卷积的局部上下文提取能力和扩张卷积的全局信息提取能力。此外,它还通过通道洗牌促进了通道间特征信息的融合和交流。此外,我们还利用轻量级图像分类模型 ShuffleNetV2 作为判别器来区分增强图像和相应标签。我们还利用传统方法构建了彩色视网膜图像增强数据集,并通过结合 MS-SSIM 和感知损失的混合损失函数来训练生成器。利用提出的数据集和损失函数,我们成功地训练了 DS-GAN。我们在四个公开数据集(Messidor、DIARETDB0、DRIVE 和 FIRE)和一个来自中国天津眼科医院的临床数据集上测试了我们的方法,并将其与现有的六种图像增强方法进行了比较。结果表明,在彩色视网膜图像增强中,所提出的方法能同时抑制噪声、保留结构和增强对比度。在所有情况下,它都能获得比其他方法更好的效果。此外,该模型的参数较少,为便携式设备的实时图像增强提供了可能。
Dual-channel lightweight GAN for enhancing color retinal images with noise suppression and structural protection.
As we all know, suppressing noise while maintaining detailed structure has been a challenging problem in the field of image enhancement, especially for color retinal images. In this paper, a dual-channel lightweight GAN named dilated shuffle generative adversarial network (DS-GAN) is proposed to solve the above problems. The lightweight generator consists of the RB branch used in the red-blue channels and the GN branch used in the green channel. The branches are then integrated with a cat function to generate enhanced images. The RB branch cascades six identical RB-enhanced modules and adds skip connections. The structure of the GN branch is similar to that of the RB branch. The generator simultaneously leverages the local context extraction capability of the normal convolution and the global information extraction capability of the dilated convolution. In addition, it facilitates the fusion and communication of feature information between channels through channel shuffle. Additionally, we utilize the lightweight image classification model ShuffleNetV2 as a discriminator to distinguish between enhanced images and corresponding labels. We also constructed a dataset for color retinal image enhancement by using traditional methods and a hybrid loss function by combining the MS-SSIM and perceptual loss for training the generator. With the proposed dataset and loss function, we train the DS-GAN successfully. We test our method on four publicly available datasets (Messidor, DIARETDB0, DRIVE, and FIRE) and a clinic dataset from the Tianjin Eye Hospital (China), and compare it with six existing image enhancement methods. The results show that the proposed method can simultaneously suppress noise, preserve structure, and enhance contrast in color retinal image enhancement. It gets better results than the compared methods in all cases. Furthermore, the model has fewer parameters, which provides the possibility of real-time image enhancement for portable devices.
期刊介绍:
The Journal of the Optical Society of America A (JOSA A) is devoted to developments in any field of classical optics, image science, and vision. JOSA A includes original peer-reviewed papers on such topics as:
* Atmospheric optics
* Clinical vision
* Coherence and Statistical Optics
* Color
* Diffraction and gratings
* Image processing
* Machine vision
* Physiological optics
* Polarization
* Scattering
* Signal processing
* Thin films
* Visual optics
Also: j opt soc am a.