Despeckling for side-scan sonar images based on adaptive block-matching and 3D filtering

Q3 Engineering 光电工程 Pub Date : 2020-07-30 DOI:10.12086/OEE.2020.190580
Chen Peng, Cai Xuanwei, Zhao Dongdong, Liang Ronghua, Guo Xinxin
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Abstract

Side-scan sonar (SSS) is an electronic device that utilizes the propagation characteristics of sound waves under water to complete underwater detection. Because the SSS produces images and maps according to the intensity of acoustic echo, speckle noise will be inevitably involved. A speckle denoising method based on block-matching and 3D filtering (BM3D) is proposed to filter the multiplicative speckle noise in SSS images. First, the SSS image is transformed by power and logarithm. The wavelet transform is used to estimate the general noisy level of the polluted image. Second, the parameters of the BM3D algorithm are updated according to the noise estimation results of each local patch. At last, after comparing the general noise estimation and the local noise estimation, the proposed algorithm chooses the best estimation to filter every patch separately to solve the problem that the noise is not evenly distributed. The experimental results show that the improved BM3D algorithm can effectively reduce the speckle noise in SSS images and obtain good visual effects. The Equivalent Number of Looks of the proposed algorithm is at least 6.83% higher, the Speckle Suppression Index is lower than traditional algorithm, and the Speckle Suppression and Mean Preservation Index is reduced by at least 3.30%. This method is mainly used for sonar image noise reduction, and has certain practical values for ultrasonic, radar or OCT images polluted by speckle noise.
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基于自适应块匹配和三维滤波的侧扫声纳图像去斑
侧扫声纳(SSS)是一种利用声波在水下的传播特性完成水下探测的电子设备。由于SSS根据声回波的强度生成图像和地图,因此不可避免地会涉及到散斑噪声。提出了一种基于分块匹配和三维滤波的散斑去噪方法(BM3D)来滤波SSS图像中的乘性散斑噪声。首先,对SSS图像进行幂和对数变换。利用小波变换估计污染图像的一般噪声水平。其次,根据每个局部patch的噪声估计结果更新BM3D算法的参数;最后,通过对一般噪声估计和局部噪声估计的比较,选择最优估计分别对每个patch进行滤波,解决了噪声分布不均匀的问题。实验结果表明,改进的BM3D算法可以有效地降低SSS图像中的散斑噪声,获得良好的视觉效果。该算法的等效外观数比传统算法提高了至少6.83%,斑点抑制指数低于传统算法,斑点抑制和均值保持指数降低了至少3.30%。该方法主要用于声纳图像降噪,对散斑噪声污染的超声、雷达或OCT图像具有一定的实用价值。
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来源期刊
光电工程
光电工程 Engineering-Electrical and Electronic Engineering
CiteScore
2.00
自引率
0.00%
发文量
6622
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