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Image Denoising with Deep Convolutional and Multi-directional LSTM Networks under Poisson Noise Environments

机译:用泊松噪声环境下与深卷积和多向LSTM网络的图像去噪

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Image denoising especially in low-light conditions is a very challenging task because the noise characteristics of different noise sources contributed in varying proportions at different signal levels are difficult to capture. Inaccurate modeling of the noise often results in producing undesirable artifacts in the restored images. This paper presents a new image denoising method in Poisson noise called Deep Convolutional and Multidirectional Long-short Term Memory Networks (DCSLNet). Deep Convolutional Neural Network (CNN) is firstly used to extract features and estimate noise components of the images. Multi-directional Long-short Term Memory (LSTM) network is then introduced in the second stage to effectively capture the long-range correlations of the noise in the deeper CNN layers. The proposed DCSLNet is trainable end-to-end to restore the clean image from the input noisy image. Experimental results in both subjective and objective qualities show that the proposed DCSLNet is very competitive in denoising low-light images under heavy-noise conditions compared with the other state-of-the-art Poisson image denoising methods.
机译:图像去噪特别是在低光条件下是一个非常具有挑战性的任务,因为在不同信号水平的不同比例中贡献的不同噪声源的噪声特性难以捕获。噪声的不准确建模通常导致在恢复的图像中产生不良伪像。本文介绍了泊松噪声的新图像去噪方法,称为深度卷积和多向长短短期内存网络(DCSLNET)。首先用于深卷积神经网络(CNN)来提取图像的特征和估计噪声分量。然后在第二阶段引入多向长短术语存储器(LSTM)网络,以有效地捕获更深的CNN层中噪声的远程相关性。所提出的DCSLNET是从输入噪声图像恢复清洁图像的可培训端到端。对于主体和客观品质的实验结果表明,与其他最先进的泊松图像去噪方法相比,所提出的DCSLNET在重质噪声条件下的低光图像中具有非常竞争力的竞争性。

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