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A Scale-Adaptive Matching Algorithm for Underwater Acoustic and Optical Images

机译:水下声学和光学图像的比例 - 自适应匹配算法

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摘要

Underwater acoustic and optical data fusion has been developed in recent decades. Matching of underwater acoustic and optical images is a fundamental and critical problem in underwater exploration because it usually acts as the key step in many applications, such as target detection, ocean observation, and joint positioning. In this study, a method of matching the same underwater object in acoustic and optical images was designed, consisting of two steps. First, an enhancement step is used to enhance the images and ensure the accuracy of the matching results based on iterative processing and estimate similarity. The acoustic and optical images are first pre-processed with the aim of eliminating the influence of contrast degradation, contour blur, and image noise. A method for image enhancement was designed based on iterative processing. In addition, a new similarity estimation method for acoustic and optical images is also proposed to provide the enhancement effect. Second, a matching step is used to accurately find the corresponding object in the acoustic images that appears in the underwater optical images. In the matching process, a correlation filter is applied to determine the correlation for matching between images. Due to the differences of angle and imaging principle between underwater optical and acoustic images, there may be major differences of size between two images of the same object. In order to eliminate the effect of these differences, we introduce the Gaussian scale-space, which is fused with multi-scale detection to determine the matching results. Therefore, the algorithm is insensitive to scale differences. Extensive experiments demonstrate the effectiveness and accuracy of our proposed method in matching acoustic and optical images.
机译:近几十年来开发了水下声学和光学数据融合。水下声学和光学图像的匹配是水下勘探中的基本和危重问题,因为它通常用作许多应用中的关键步骤,例如目标检测,海洋观察和联合定位。在该研究中,设计了一种匹配相同的水下物体在声学和光学图像中的方法,由两个步骤组成。首先,使用增强步骤来增强图像,并确保基于迭代处理和估计相似性的匹配结果的准确性。首先预处理声学和光学图像,目的是消除对比度劣化,轮廓模糊和图像噪声的影响。基于迭代处理设计了一种图像增强方法。另外,还提出了一种用于声学和光学图像的新的相似性估计方法来提供增强效果。其次,使用匹配步骤来精确地在水下光学图像中出现的声学图像中的相应对象。在匹配过程中,应用相关滤波器以确定用于图像之间匹配的相关性。由于水下光学和声学图像之间的角度和成像原理的差异,在同一对象的两个图像之间可能存在大小的大小。为了消除这些差异的效果,我们介绍了高斯尺度空间,其与多尺度检测融合以确定匹配结果。因此,该算法对规模差异不敏感。广泛的实验证明了我们在匹配声学和光学图像方面所提出的方法的有效性和准确性。

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