探索定制深度学习模型在相机陷阱分析本地城市物种中的潜在应用

IF 1.7 4区 环境科学与生态学 Q2 BIODIVERSITY CONSERVATION
Somin Park, Mingyun Cho, Suryeon Kim, Jaeyeon Choi, Wonkyong Song, Wheemoon Kim, Youngkeun Song, Hyemin Park, Jonghyun Yoo, Seung Beom Seo, Chan Park
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引用次数: 0

摘要

随着生物多样性监测需求的不断增长,相机诱捕(CT)与深度学习自动化的整合前景广阔。然而,很少有研究探讨这种方法在亚洲城市地区的应用潜力。研究人员收集了 4064 幅针对韩国 18 种城市野生动物的 CT 图像,并利用这些图像对预先训练好的物体检测模型进行了微调。对定制模型的性能进行了三级评估:动物过滤、哺乳动物和鸟类分类以及物种分类,以评估其适用性。为了测试自定义模型的实用性,还与现有的通用模型进行了比较。定制模型在动物过滤和物种分类方面的准确率分别约为 94% 和 85%,在某些方面优于通用模型。此外,还提供了有关 CT 安装距离和夜间数据采集的建议。重要的是,这些结果对陆地监测具有实际意义,尤其是对本地物种的分析。图像过滤和物种分类的自动化有助于高效分析大型 CT 数据集,使更多人能够参与野生动物监测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Exploring the potential application of a custom deep learning model for camera trap analysis of local urban species

Exploring the potential application of a custom deep learning model for camera trap analysis of local urban species

With increasing demands for biodiversity monitoring, the integration of camera trapping (CT) and deep learning automation holds significant promise. However, few studies have addressed the application potential of this approach in urban areas in Asia. 4064 CT images targeting 18 species of urban wildlife in South Korea were collected and used to fine-tune a pre-trained object detection model. The performance of the custom model was evaluated across three levels: animal filtering, mammal and bird classification, and species classification, to assess its applicability. A comparison with existing universal models was conducted to test the utility of the custom model. The custom model demonstrated approximately 94% and 85% accuracy in animal filtering and species classification, respectively, outperforming universal models in some aspects. In addition, recommendations regarding CT installation distances and the acquisition of nighttime data were provided. Importantly, these results have practical implications for terrestrial monitoring, especially focusing on the analysis of local species. Automating image filtering and species classification facilitates efficient analysis of large CT datasets and enables broader participation in wildlife monitoring.

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来源期刊
Landscape and Ecological Engineering
Landscape and Ecological Engineering BIODIVERSITY CONSERVATION-ECOLOGY
CiteScore
3.50
自引率
5.00%
发文量
41
审稿时长
>12 weeks
期刊介绍: Landscape and Ecological Engineering is published by the International Consortium of Landscape and Ecological Engineering (ICLEE) in the interests of protecting and improving the environment in the face of biodiversity loss, desertification, global warming, and other environmental conditions. The journal invites original papers, reports, reviews and technical notes on all aspects of conservation, restoration, and management of ecosystems. It is not limited to purely scientific approaches, but welcomes technological and design approaches that provide useful and practical solutions to today''s environmental problems. The journal''s coverage is relevant to universities and research institutes, while its emphasis on the practical application of research will be important to all decision makers dealing with landscape planning and management problems.
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