Wayne State University, Department of Biomedical Engineering, Detroit, Michigan, United States.
Roma Tre University, Department of Applied Electronics, Rome, Italy.
J Biomed Opt. 2018 Jan;23(1):1-12. doi: 10.1117/1.JBO.23.1.016013.
Optical coherence tomography (OCT) is a prevalent, interferometric, high-resolution imaging method with broad biomedical applications. Nonetheless, OCT images suffer from an artifact called speckle, which degrades the image quality. Digital filters offer an opportunity for image improvement in clinical OCT devices, where hardware modification to enhance images is expensive. To reduce speckle, a wide variety of digital filters have been proposed; selecting the most appropriate filter for an OCT image/image set is a challenging decision, especially in dermatology applications of OCT where a different variety of tissues are imaged. To tackle this challenge, we propose an expandable learnable despeckling framework, we call LDF. LDF decides which speckle reduction algorithm is most effective on a given image by learning a figure of merit (FOM) as a single quantitative image assessment measure. LDF is learnable, which means when implemented on an OCT machine, each given image/image set is retrained and its performance is improved. Also, LDF is expandable, meaning that any despeckling algorithm can easily be added to it. The architecture of LDF includes two main parts: (i) an autoencoder neural network and (ii) filter classifier. The autoencoder learns the FOM based on several quality assessment measures obtained from the OCT image including signal-to-noise ratio, contrast-to-noise ratio, equivalent number of looks, edge preservation index, and mean structural similarity index. Subsequently, the filter classifier identifies the most efficient filter from the following categories: (a) sliding window filters including median, mean, and symmetric nearest neighborhood, (b) adaptive statistical-based filters including Wiener, homomorphic Lee, and Kuwahara, and (c) edge preserved patch or pixel correlation-based filters including nonlocal mean, total variation, and block matching three-dimensional filtering.
光学相干断层扫描(OCT)是一种流行的、干涉式、高分辨率成像方法,在广泛的生物医学应用中具有广泛的应用。然而,OCT 图像存在一种称为散斑的伪影,会降低图像质量。数字滤波器为临床 OCT 设备中的图像改进提供了机会,在这些设备中,硬件修改以增强图像的成本很高。为了减少散斑,已经提出了多种数字滤波器;为 OCT 图像/图像集选择最合适的滤波器是一项具有挑战性的决策,特别是在 OCT 皮肤科应用中,需要对不同种类的组织进行成像。为了解决这个挑战,我们提出了一个可扩展的可学习去斑框架,我们称之为 LDF。LDF 通过学习单一的质量指标(FOM)作为单一的定量图像评估度量来决定哪种去斑算法对给定的图像最有效。LDF 是可学习的,这意味着当在 OCT 机器上实现时,每个给定的图像/图像集都可以重新训练,并且可以提高其性能。此外,LDF 是可扩展的,这意味着任何去斑算法都可以很容易地添加到其中。LDF 的架构包括两个主要部分:(i)自编码器神经网络和(ii)滤波器分类器。自编码器基于从 OCT 图像中获得的几个质量评估度量来学习 FOM,包括信噪比、对比度噪声比、等效视数、边缘保持指数和平均结构相似指数。随后,滤波器分类器从以下类别中识别出最有效的滤波器:(a)滑动窗口滤波器,包括中值、均值和对称最近邻域;(b)基于自适应统计的滤波器,包括 Wiener、同态 Lee 和 Kuwahara;(c)基于边缘保持的斑块或像素相关滤波器,包括非局部均值、全变差和块匹配三维滤波。