NL-CoWNet:一种用于非局部和子带调制DT-CWT块的OCT散斑消除的深度卷积编码器-解码器结构

P. S. Arun;Bibin Francis;Varun P. Gopi
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引用次数: 0

摘要

光学相干断层扫描(OCT)是一种用于识别和治疗各种眼部疾病的无创诊断技术,但在成像过程中由于引入斑点而导致图像质量下降,影响了疾病诊断的准确性。研究人员提出了许多深度卷积网络来解决OCT图像中的斑点伪影。本文提出了一种新的深度卷积编码器-解码器框架,称为NL-CoWNet,用于消除OCT图像中的斑点。该去噪架构包括一个具有ResNet34拓扑结构的编码器网络,其某些特征向量通过非局部(NL)神经网络块和一个新的子带调制双树复小波变换(DT-CWT)块传递,然后是一个具有上采样层和信道挤压和激励(CSE)卷积块的解码器单元。我们的网络架构经过大量的消融研究后得到了验证。定性和定量评估与当代和既定的方法已经证明,NL-CoWNet在斑点去除显著卓越,同时保留图像的结构特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NL-CoWNet: A Deep Convolutional Encoder–Decoder Architecture for OCT Speckle Elimination Using Nonlocal and Subband Modulated DT-CWT Blocks
Optical coherence tomography (OCT), a noninvasive diagnostic technology for identifying and treating various ocular diseases, encounters a loss of image quality due to the introduction of speckles during the image creation process, compromising the precision of disease diagnosis. Researchers have proposed numerous deep convolutional networks to address speckle artifacts in OCT images. This article presents a novel deep convolutional encoder–decoder framework called NL-CoWNet for speckle elimination in OCT images. This despeckling architecture consists of an encoder network having the topology of ResNet34, whose certain feature vectors are passed through nonlocal (NL) neural network blocks and a novel subband modulated dual-tree complex wavelet (CoW) transform (DT-CWT) blocks, followed by a decoder unit with upsampling layers and channel-wise squeeze and excitation (CSE) convolutional blocks. Our network architecture has been validated after numerous ablation studies. Qualitative and quantitative assessments with contemporary and established methodologies have proven that NL-CoWNet excels conspicuously in speckle removal while preserving the structural features of the image.
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