利用面部相似性改进人工智能驱动的海龟照片识别系统

Lukas Adam, Kostas Papafitsoros, Claire Jean, Alan Rees
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摘要

动物照片识别(photo-ID)是指根据动物独特而稳定的形态特征识别动物个体的过程。在对海龟的各种研究中,它已被证明是一种特别有用的工具,可以增加对海龟生态的了解,并为保护工作提供信息。海龟的照片识别过程主要基于其头部两侧鳞片的几何图案,每个个体的鳞片都是独一无二的,而且两侧的鳞片也各不相同。因此,手动和自动照片识别技术都是在特定侧面图像检索设置下进行的。在这种情况下,显示未知个体左侧或右侧单个轮廓的查询图像只能与之前识别出的显示同一侧面的个体图像进行比较。在这里,通过使用最近推出的最先进的深度特征提取器 MegaDescriptor,我们首次展示了三个海龟物种中相同个体的左右面部轮廓之间的继承性深度视觉相似性。我们发现,同一个体的左右面部轮廓在几何形状、颜色和色素沉积方面的相似性平均高于不同个体面部轮廓之间的相似性。即使图像拍摄时间相隔数年,并且在不同的环境和条件下拍摄,也能检测到相似性。我们在模拟现实海龟照片-ID 匹配过程的场景下进行了多次图像检索实验,我们还允许在匹配过程中对没有空间重叠的对立面进行比较。我们表明,与传统的特定侧面图像检索设置相比,检测和利用这种相似性可提高准确率。值得注意的是,迄今为止最先进的海龟照片自动识别方法(如基于 SIFT 的方法)无法检测到这种相似性,因此也无法利用这种相似性。我们的工作改变了海龟照片识别工作流程的模式,基于深度特征的再识别方法的不断改进将进一步促进这种模式的改变,并为其他动物物种采用类似的工作流程铺平了道路。
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Exploiting facial side similarities to improve AI-driven sea turtle photo-identification systems
Animal Photo-identification (photo-ID) denotes the process of identifying individual animals based on their unique and stable morphological characteristics. It has been proven to be a particularly useful tool for a variety of studies on sea turtles increasing the knowledge of their ecology and informing conservation efforts. The photo-ID process in sea turtles is predominantly based on the geometric patterns of the scales of their two head sides which are unique to every individual, and also different from side to side. As such, both manual and automated photo-ID techniques are performed under a side-specific image retrieval setting. There, a query image showing a single profile of an unknown individual, either left or right, is only compared to images of previously identified individuals showing the same side. Here, by employing the recently introduced state-of-the-art deep feature extractor MegaDescriptor, we show for the first time an inherit deep visual similarity between left and right facial profiles of the same individuals in three sea turtle species. We show that the similarity between the left and right profiles of the same individual with respect to geometry, coloration and pigmentation, is on average higher than the similarity between profiles of different individuals. The similarity is detectable even when images are taken years apart and under diverse settings and conditions. We perform several image retrieval experiments under scenarios which mimic realistic sea turtle photo-ID matching processes, where we also allow comparisons of opposite sides in the matching process which have no spatial overlap. We show that the detection and exploitation of this similarity is translated to improved accuracies when compared to the traditional side-specific image retrieval setting. Notably this similarity cannot be detected and thus neither explored by the so-far state-of-the-art sea turtle photo-ID automated methods such as those based on SIFT. Our work leads to a change of paradigm for the sea turtle photo-ID workflows which will be further facilitated by the constant improvement of deep feature-based re-identification methods and paves the path for adopting similar workflows in other animal species as well.
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