In both terrestrial and marine ecology, physical tagging is a frequently used method to study population dynamics and behavior. However, such tagging techniques are increasingly being replaced by individual re-identification using image analysis. This paper introduces a contrastive learning-based model for identifying individuals. The model uses the first parts of the Inception v3 network, supported by a projection head, and we use contrastive learning to find similar or dissimilar image pairs from a collection of uniform photographs. We apply this technique for corkwing wrasse, Symphodus melops, an ecologically and commercially important fish species. Photos are taken during repeated catches of the same individuals from a wild population, where the intervals between individual sightings might range from a few days to several years. Our model achieves a one-shot accuracy of 0.35, a 5-shot accuracy of 0.56, and a 100-shot accuracy of 0.88, on our dataset.
翻译:在陆地和海洋生态中,物理标记是研究人口动态和行为的一种常用方法,然而,这种标记技术正越来越多地被利用图像分析进行的个人再识别所取代。本文介绍了一种以对比性学习为基础的个人识别模型。模型使用受孕V3网络的第一部分,由投影头提供支持,我们用对比性学习从一套统一照片中找到相似或不同的图像配对。我们用这种技术来研究在生态和商业上都很重要的鱼种,在野生人口中重复捕捉同一批人时摄取照片,其中个别目击的间隔可能从几天到几年不等。我们的模型在数据集上实现了0.35的一发准确度、0.56的精确度和0.88的100分准确度。