A multi-view sonar image fusion method based on the morphological wavelet and directional filters

Z. Zhigang, Bian Hongyu, Song Ziqi
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引用次数: 4

Abstract

In underwater object detection and identification of an unmanned underwater vehicle (UUV), high-frequency 2-D imaging sonar is an effective device for measuring distance accurately. Forward-looking sonar records a sequence of images of the object's surfaces, which continuously change as the UUV moves around the target. A single image usually describes partial structures or local regions of a large object surface, such as for ship hull inspection, and the surface detection of a pier or dam. To improve the capability of object detection and identification, we focus on the details and textures of sonar images, and use the image fusion method to take advantage of complementary information among redundant images. In our work, we consider the features of a sequence of images taken from different views, and which have different target intensities, object shapes and noise distribution. We present a sonar image fusion method based on directional filters banks and morphological wavelets, which combines the features of multiresolution wavelet analysis and nonlinear filters. Firstly, the noisy sonar images are transformed into the morphological wavelet domain, which can effectively decrease image noise. Then the high frequencies of the source images are fed into a directional filters bank, which uses the directional decomposition approach to provide exact details of the image whilst retaining the unchanged low frequency content. Finally, we fuse the multiscale and directions parts into the transforming domain, and reconstruct the fusion image. The result of applying this method to a sequence of sonar images from multi-views indicates that the fusion image can effectively describe the extra details in source images in terms of multiresolution and direction. It is also good at suppressing noise, especially for images with a higher noise level. Comparison of the experiments and real data supports our conclusions from subjective and objective evaluation, and shows that the regions in the fused images are effectively repaired and image quality is evidently improved.
基于形态小波和方向滤波器的多视点声纳图像融合方法
在无人潜航器的水下目标探测与识别中,高频二维成像声纳是精确测量距离的有效装置。前视声纳记录物体表面的一系列图像,当无人潜航器在目标周围移动时,这些图像会不断变化。单个图像通常描述一个大物体表面的部分结构或局部区域,例如用于船体检查,以及码头或水坝的表面检测。为了提高声纳图像的目标检测和识别能力,重点研究了声纳图像的细节和纹理特征,并利用图像融合方法利用冗余图像之间的互补信息。在我们的工作中,我们考虑了从不同角度拍摄的一系列图像的特征,这些图像具有不同的目标强度,物体形状和噪声分布。结合多分辨率小波分析和非线性滤波的特点,提出了一种基于方向滤波器组和形态小波的声纳图像融合方法。首先,对声纳图像进行形态学小波变换,有效降低图像噪声;然后将源图像的高频输入到一个方向滤波器组中,该滤波器组使用方向分解方法来提供图像的精确细节,同时保留不变的低频内容。最后,将多尺度部分和方向部分融合到变换域中,重建融合图像。将该方法应用于多视角声纳图像序列的结果表明,融合图像可以有效地描述源图像在多分辨率和方向上的额外细节。它在抑制噪声方面也很好,特别是对于噪声水平较高的图像。通过实验与实际数据的对比,验证了我们从主客观两方面评价得出的结论,表明融合后图像中的区域得到了有效修复,图像质量得到了明显改善。
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