论文标题
迈向自动鲸类照片识别:海洋生态学中的细粒度,几乎没有学习的框架
Towards Automatic Cetacean Photo-Identification: A Framework for Fine-Grain, Few-Shot Learning in Marine Ecology
论文作者
论文摘要
照片识别(Photo-ID)是海洋研究人员用于监测鲸类(海豚,鲸鱼和孢子虫)的主要非侵入捕获回收方法之一。从历史上看,由于收集了大量图像,该方法一直在手动执行高工作量和成本。最近,已经开发了自动化辅助工具来帮助加速照相ID,尽管它们在处理中通常是不相交的,并且没有利用所有可用的识别信息。本文介绍的工作旨在创建一个全自动的照片ID辅助工具,能够根据所有可用信息提供最有可能的匹配,而无需进行数据预处理(例如裁剪)。这是通过计算机视觉模型和后处理技术的管道来实现的,该技术旨在检测未经编辑的现场图像中的鲸类动物,然后再将它们传递给下游以进行单个级别的目录匹配。由于目录相似性比较,该系统能够处理以前未经致电的个体并将其标记为调查。我们针对多个现实的照片ID目录评估了该系统,分别在坦桑尼亚和英国的目录中获得了背鳍检测的任务,并获得了MAP@iou [0.5] = 0.91,0.96,以及83.1,97.5%的前10位前10位准确性,以实现来自英国和美国的个人分类。
Photo-identification (photo-id) is one of the main non-invasive capture-recapture methods utilised by marine researchers for monitoring cetacean (dolphin, whale, and porpoise) populations. This method has historically been performed manually resulting in high workload and cost due to the vast number of images collected. Recently automated aids have been developed to help speed-up photo-id, although they are often disjoint in their processing and do not utilise all available identifying information. Work presented in this paper aims to create a fully automatic photo-id aid capable of providing most likely matches based on all available information without the need for data pre-processing such as cropping. This is achieved through a pipeline of computer vision models and post-processing techniques aimed at detecting cetaceans in unedited field imagery before passing them downstream for individual level catalogue matching. The system is capable of handling previously uncatalogued individuals and flagging these for investigation thanks to catalogue similarity comparison. We evaluate the system against multiple real-life photo-id catalogues, achieving mAP@IOU[0.5] = 0.91, 0.96 for the task of dorsal fin detection on catalogues from Tanzania and the UK respectively and 83.1, 97.5% top-10 accuracy for the task of individual classification on catalogues from the UK and USA.