Learning a Deep Convolutional Network for Speckle Noise Reduction in Underwater Sonar Images

Yuxu Lu, R. W. Liu, Fenge Chen, Liang Xie
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引用次数: 9

Abstract

Underwater sonar imaging system has been widely utilized to detect and identify the submerged objects of interest. However, imaging quality often suffers from the undesirable signal-dependent speckle noise during signal acquisition and transmission. The speckle noise will restrict the practical applications, such as object detection, tracking and recognition, etc. To enhance the sonar imaging performance, we propose a deep learning approach to directly estimate the speckle noise in logarithmic domain based on the convolutional neural network. Once the speckle noise is obtained, the latent sharp image can then be easily calculated according to the image degradation model. The patch-based loss function, i.e., structural similarity metric, is adopted to preserve the important geometrical structures during speckle noise reduction. Experiments have been implemented on different noise levels to demonstrate the effectiveness of the proposed deep learning approach. Experimental results have illustrated that it outperforms several widely-used speckle noise reduction methods.
基于深度卷积网络的水下声纳图像散斑降噪研究
水下声纳成像系统已被广泛用于探测和识别水下目标。然而,在信号采集和传输过程中,成像质量经常受到信号相关散斑噪声的影响。散斑噪声的存在将制约其在目标检测、跟踪和识别等方面的实际应用。为了提高声纳成像性能,提出了一种基于卷积神经网络的深度学习方法,在对数域直接估计散斑噪声。一旦获得散斑噪声,就可以根据图像退化模型轻松地计算出潜在的尖锐图像。在散斑降噪过程中,采用基于patch的损失函数即结构相似性度量来保留重要的几何结构。在不同的噪声水平下进行了实验,以证明所提出的深度学习方法的有效性。实验结果表明,该方法优于几种常用的散斑降噪方法。
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