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Detection of interest points in turbid underwater images

机译:检测浑浊水下图像中的兴趣点

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Our research is motivated by an evident lack of evaluation of recent image matching techniques for applications in underwater vision. This paper is a first step in this direction. This work compares the performance of popular salient keypoint detectors on images degraded by turbidity. We show that, as opposed to over-land, on images acquired in water medium, Hessian-based approaches outperform their Laplacian and Harris counterparts. Fast Hessian, the detector of the Speeded Up Robust Features (SURF) matching technique, is recognized to be the best method for scale-invariant detection. Conversely, when invariance to scale is not required, a combination of standard Hessian and Harris with sub-pixel accuracy and non-maxima suppression is more accurate. The objective of our work was also to create and distribute a reference set of turbid images, which can be used to evaluate processing, detection, description and matching techniques for underwater applications. We present a collection of 36 images acquired by a specially designed trinocular system under 12 gradually increasing turbidity levels. We also draw attention to image quality assessment method called SSIM, Structural SIMilarity index, which reliably quantifyes degradation of image quality caused by turbidity. As a whole, the major goal of this paper is to provide an updated reference for researchers dealing with keypoint detection in underwater imaging.
机译:我们的研究的动机是显然缺乏对用于水下视觉的最新图像匹配技术的评估。本文是朝着这个方向迈出的第一步。这项工作在浊度降低的图像上比较了流行的显着关键点检测器的性能。我们显示,与陆地相反,在水介质中获取的图像上,基于Hessian的方法优于Laplacian和Harris的方法。 Fast Hessian是加速鲁棒特征(SURF)匹配技术的检测器,被认为是尺度不变检测的最佳方法。相反,当不需要比例不变时,将标准Hessian和Harris与亚像素精度和非最大值抑制结合使用会更加准确。我们工作的目的还在于创建和分发一组混浊图像参考,这些参考图像可用于评估水下应用的处理,检测,描述和匹配技术。我们呈现了由经过特殊设计的三目系统在12逐渐增加的浊度水平下采集的36幅图像的集合。我们还提请人们注意称为SSIM的图像质量评估方法,即结构相似度指数,该方法可以可靠地量化由浊度引起的图像质量下降。总体而言,本文的主要目标是为从事水下成像关键点检测的研究人员提供更新的参考。

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