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Denoising based on noise parameter estimation in speckled OCT images using neural network

机译:基于斑点的OCT图像中基于噪声参数估计的神经网络降噪

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This paper presents a neural network based technique to denoise speckled images in optical coherence tomography (OCT). Speckle noise is modeled as Rayleigh distribution, and the neural network estimates the noise parameter, sigma. Twenty features from each image are used as input for training the neural network, and the sigma value is the single output of the network. The certainty of the trained network was more than 91 percent. The promising image results were assessed with three No-Reference metrics, with the Signal-to-Noise ratio of the denoised image being considerably increased.
机译:本文提出了一种基于神经网络的技术来对光学相干断层扫描(OCT)中的斑点图像进行去噪。将斑点噪声建模为瑞利分布,并且神经网络估计噪声参数sigma。每个图像的二十个特征用作训练神经网络的输入,而sigma值是网络的单个输出。训练有素的网络的确定性超过91%。通过三个No-Reference指标评估了有希望的图像结果,其中去噪图像的信噪比大大提高。

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