Deep learning for automatic facial detection and recognition in Japanese macaques: illuminating social networks.

IF 1.3 4区 生物学 Q2 ZOOLOGY
Primates Pub Date : 2024-07-01 Epub Date: 2024-05-17 DOI:10.1007/s10329-024-01137-5
Julien Paulet, Axel Molina, Benjamin Beltzung, Takafumi Suzumura, Shinya Yamamoto, Cédric Sueur
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引用次数: 0

Abstract

Individual identification plays a pivotal role in ecology and ethology, notably as a tool for complex social structures understanding. However, traditional identification methods often involve invasive physical tags and can prove both disruptive for animals and time-intensive for researchers. In recent years, the integration of deep learning in research has offered new methodological perspectives through the automatisation of complex tasks. Harnessing object detection and recognition technologies is increasingly used by researchers to achieve identification on video footage. This study represents a preliminary exploration into the development of a non-invasive tool for face detection and individual identification of Japanese macaques (Macaca fuscata) through deep learning. The ultimate goal of this research is, using identification done on the dataset, to automatically generate a social network representation of the studied population. The current main results are promising: (i) the creation of a Japanese macaques' face detector (Faster-RCNN model), reaching an accuracy of 82.2% and (ii) the creation of an individual recogniser for the Kōjima Island macaque population (YOLOv8n model), reaching an accuracy of 83%. We also created a Kōjima population social network by traditional methods, based on co-occurrences on videos. Thus, we provide a benchmark against which the automatically generated network will be assessed for reliability. These preliminary results are a testament to the potential of this approach to provide the scientific community with a tool for tracking individuals and social network studies in Japanese macaques.

Abstract Image

用于日本猕猴面部自动检测和识别的深度学习:照亮社交网络。
个体识别在生态学和伦理学中起着举足轻重的作用,尤其是作为一种了解复杂社会结构的工具。然而,传统的识别方法往往涉及侵入性的物理标签,可能会对动物造成干扰,也会耗费研究人员大量的时间。近年来,深度学习在研究中的应用为复杂任务的自动化提供了新的方法论视角。研究人员越来越多地利用物体检测和识别技术来实现视频片段的识别。本研究是通过深度学习开发日本猕猴(Macaca fuscata)人脸检测和个体识别非侵入式工具的初步探索。这项研究的最终目标是,通过对数据集进行识别,自动生成所研究种群的社会网络表征。目前的主要成果令人欣喜:(i) 创建了日本猕猴的人脸检测器(Faster-RCNN 模型),准确率达到 82.2%;(ii) 创建了光岛猕猴种群的个体识别器(YOLOv8n 模型),准确率达到 83%。我们还采用传统方法,根据视频中的共现情况创建了一个小岛种群社会网络。因此,我们提供了一个基准,用于评估自动生成网络的可靠性。这些初步结果证明了这种方法为科学界提供追踪个体和日本猕猴社会网络研究工具的潜力。
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来源期刊
Primates
Primates 生物-动物学
CiteScore
3.10
自引率
17.60%
发文量
71
审稿时长
>12 weeks
期刊介绍: Primates is an international journal of primatology whose aim is to provide a forum for the elucidation of all aspects of primates. The oldest primatological journal, Primates publishes original papers that advance the scientific study of primates, and its scope embraces work in diverse fields covering biological bases of behavior, socio-ecology, learning and cognition, social processes, systematics, evolution, and medicine. Contributions relevant to conservation of natural populations and welfare of captive primates are welcome. Studies focusing on nonprimate species may be considered if their relevance to primatology is clear. Original Articles as well as Review Articles, News and Perspectives, and Book Reviews are included. All manuscripts received are initially screened for suitability by members of the Editorial Board, taking into account style and ethical issues, leading to a swift decision about whether to send the manuscript for external review.
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