Underwater Acoustic Point-cloud Filtering via Adaptive Unsharp Masking

Jisong Wang, Xuewu Zhang, Xiaolong Xu, Ke-Pu Song
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Abstract

Owing to the complex water environment, the acoustic point-cloud model formed by the detection method based on acoustic reflection mechanism is inevitably disturbed by the noise, which seriously affects the reconstruction effect of the underwater targets. Distinguishing between geometric features and noise is of paramount importance for the underwater point-cloud model filtering. Inspired by the classic image detail enhancement method of unsharp masking, we take the geometric coordinate information of the point as the research object and design a geometric feature-preserving adaptive unsharp masking filtering for the underwater point-cloud model. First, the proposed method directly performed a low-pass filtering using the neighborhood information to obtain the main structure of the input point-cloud model. Second, the detail layer was yielded by the difference between the input point-cloud model and the base layer. Third, the different scaling factors measuring the importance of the points with respect to the whole base layer were used to adaptively enhance the detail layer. Experimental results show that the proposed algorithm can effectively remove noise while maintaining the geometric characteristics of the model, which is obviously better than other comparison methods.
基于自适应非锐化掩蔽的水声点云滤波
由于水环境复杂,基于声反射机制的探测方法所形成的声点云模型不可避免地受到噪声的干扰,严重影响水下目标的重建效果。在水下点云模型滤波中,几何特征和噪声的区分是至关重要的。在经典图像细节增强方法的启发下,以点的几何坐标信息为研究对象,设计了一种水下点云模型的几何特征保持自适应非锐利掩蔽滤波。首先,该方法直接利用邻域信息进行低通滤波,得到输入点云模型的主体结构;其次,根据输入点云模型与基础层的差值生成细节层;第三,利用不同的尺度因子来衡量点相对于整个基础层的重要性,自适应增强细节层。实验结果表明,该算法在保持模型几何特征的同时,能够有效地去除噪声,明显优于其他比较方法。
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