人工智能时代利用无人机进行动物监测的空中野生动物图像库。

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Sathishkumar Samiappan, B Santhana Krishnan, Damion Dehart, Landon R Jones, Jared A Elmore, Kristine O Evans, Raymond B Iglay
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引用次数: 0

摘要

无人机(无人驾驶飞机系统)已成为监测和保护野生动物的有效工具。利用人工智能(AI)进行动物自动检测和分类可大大降低后勤和财务成本,改善无人机勘测工作。然而,与其他领域相比,缺乏用于训练人工智能的注释动物图像是实现人工智能算法准确性能的关键瓶颈。为了弥补无人机图像的这一不足,帮助推进动物自动分类并使之标准化,我们创建了空中野生动物图像库(AWIR),这是一个动态的交互式数据库,其中包含使用可见光和热像仪从无人机平台捕获的带注释的图像。AWIR 为用户提供了第一个开放访问的资源库,用于上传、注释和整理从无人机获取的动物图像。AWIR 还提供了带注释的图像和基准数据集,用户可以下载这些数据集来训练人工智能算法,以自动检测和分类动物,并比较算法性能。AWIR 包含 1325 张可见光和热无人机图像中的 6587 个动物对象,主要是北美开阔地区 13 个物种的大型鸟类和哺乳动物。随着贡献者增加可用图像的分类和地理多样性,AWIR 将为人工智能研究开辟未来的途径,以改善使用无人机进行动物调查的保护应用。数据库网址:https://projectportal.gri.msstate.edu/awir/。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aerial Wildlife Image Repository for animal monitoring with drones in the age of artificial intelligence.

Drones (unoccupied aircraft systems) have become effective tools for wildlife monitoring and conservation. Automated animal detection and classification using artificial intelligence (AI) can substantially reduce logistical and financial costs and improve drone surveys. However, the lack of annotated animal imagery for training AI is a critical bottleneck in achieving accurate performance of AI algorithms compared to other fields. To bridge this gap for drone imagery and help advance and standardize automated animal classification, we have created the Aerial Wildlife Image Repository (AWIR), which is a dynamic, interactive database with annotated images captured from drone platforms using visible and thermal cameras. The AWIR provides the first open-access repository for users to upload, annotate, and curate images of animals acquired from drones. The AWIR also provides annotated imagery and benchmark datasets that users can download to train AI algorithms to automatically detect and classify animals, and compare algorithm performance. The AWIR contains 6587 animal objects in 1325 visible and thermal drone images of predominantly large birds and mammals of 13 species in open areas of North America. As contributors increase the taxonomic and geographic diversity of available images, the AWIR will open future avenues for AI research to improve animal surveys using drones for conservation applications. Database URL: https://projectportal.gri.msstate.edu/awir/.

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CiteScore
7.20
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4.30%
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