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Manta Matcher: automated photographic identification of manta rays using keypoint features

机译:蝠ta匹配器:使用关键点功能自动对蝠ta进行摄影识别

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摘要

For species which bear unique markings, such as natural spot patterning, field work has become increasingly more reliant on visual identification to recognize and catalog particular specimens or to monitor individuals within populations. While many species of interest exhibit characteristic markings that in principle allow individuals to be identified from photographs, scientists are often faced with the task of matching observations against databases of hundreds or thousands of images. We present a novel technique for automated identification of manta rays (Manta alfredi and Manta birostris) by means of a pattern-matching algorithm applied to images of their ventral surface area. Automated visual identification has recently been developed for several species. However, such methods are typically limited to animals that can be photographed above water, or whose markings exhibit high contrast and appear in regular constellations. While manta rays bear natural patterning across their ventral surface, these patterns vary greatly in their size, shape, contrast, and spatial distribution. Our method is the first to have proven successful at achieving high matching accuracies on a large corpus of manta ray images taken under challenging underwater conditions. Our method is based on automated extraction and matching of keypoint features using the Scale-Invariant Feature Transform (SIFT) algorithm. In order to cope with the considerable variation in quality of underwater photographs, we also incorporate preprocessing and image enhancement steps. Furthermore, we use a novel pattern-matching approach that results in better accuracy than the standard SIFT approach and other alternative methods. We present quantitative evaluation results on a data set of 720 images of manta rays taken under widely different conditions. We describe a novel automated pattern representation and matching method that can be used to identify individual manta rays from photographs. The method has been incorporated into a website (mantamatcher.org) which will serve as a global resource for ecological and conservation research. It will allow researchers to manage and track sightings data to establish important life-history parameters as well as determine other ecological data such as abundance, range, movement patterns, and structure of manta ray populations across the world.
机译:对于带有独特标记(例如自然斑点图案)的物种,野外工作越来越依赖视觉识别来识别和分类特定样本或监视种群中的个体。尽管许多感兴趣的物种都显示出特征性标记,这些标记原则上可以从照片中识别出个人,但科学家经常面临着将观察结果与成百上千个图像的数据库进行匹配的任务。我们提出了一种新颖的技术,用于通过将模式匹配算法应用于其腹表面积的图像来自动识别蝠ta(曼塔alfredi和蝠ta)。最近已经为几种物种开发了自动视觉识别。但是,这种方法通常限于可以在水上拍照的动物,或者其标记显示出高对比度并出现在规则的星座中。尽管蝠ta在其腹面具有自然图案,但这些图案的大小,形状,对比度和空间分布差异很大。我们的方法是第一个被证明能够成功地在具有挑战性的水下条件下拍摄的大型蝠ta图像上实现高匹配精度的方法。我们的方法基于使用尺度不变特征变换(SIFT)算法自动提取和匹配关键点特征。为了应付水下照片质量的巨大差异,我们还结合了预处理和图像增强步骤。此外,我们使用一种新颖的模式匹配方法,与标准的SIFT方法和其他替代方法相比,其准确性更高。我们提出了在广泛不同的条件下拍摄的720幅蝠ta图像的数据评估结果。我们描述了一种新颖的自动模式表示和匹配方法,可用于从照片中识别单个蝠individual。该方法已被整合到一个网站(mantamatcher.org)中,该网站将作为生态和保护研究的全球资源。它将使研究人员能够管理和跟踪目击数据,以建立重要的生命历史参数,并确定其他生态数据,例如世界各地的蝠man种群的丰度,范围,移动方式和结构。

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