基于摄像机陷阱图像的德克萨斯州野生物种识别的深度神经网络保护监测

Sazida B. Islam, Damian Valles
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引用次数: 9

摘要

保护濒危物种需要持续监测和更新有关其栖息地的存在、位置和行为变化的信息。远程激活相机或“相机陷阱”是一种可靠而有效的照片记录当地种群规模、运动和野生物种捕食-猎物关系的方法。然而,从大量图像和捕获的视频中手动处理数据是非常费力、耗时和昂贵的。近年来,深度学习方法在图像对象和物种识别方面取得了很大进展。本文提出了一种利用计算机视觉算法和机器学习技术进行图像分类的野生动物自动监测系统。目标是训练和验证卷积神经网络(CNN),该网络将能够从相机陷阱图像中检测蛇,蜥蜴和蟾蜍/青蛙。最初的实验意味着使用从不同公民科学项目的标准基准数据集积累的标记图像构建一个灵活的CNN架构。在获得满意的精度后,新的相机陷阱图像数据(从德克萨斯州巴斯特罗普县收集)将被应用到模型中以检测物种。性能将根据其分类内预测的准确性进行评估。建议的硬件和软件框架将提供有效的监测系统,加快野生动物调查分析,并制定资源管理决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Wild Species in Texas from Camera-trap Images using Deep Neural Network for Conservation Monitoring
Protection of endangered species requires continuous monitoring and updated information about the existence, location, and behavioral alterations in their habitat. Remotely activated camera or “camera traps” is a reliable and effective method of photo documentation of local population size, locomotion, and predator-prey relationships of wild species. However, manual data processing from a large volume of images and captured videos is extremely laborious, time-consuming, and expensive. The recent advancement of deep learning methods has shown great outcomes for object and species identification in images. This paper proposes an automated wildlife monitoring system by image classification using computer vision algorithms and machine learning techniques. The goal is to train and validate a Convolutional Neural Network (CNN) that will be able to detect Snakes, Lizards and Toads/Frogs from camera trap images. The initial experiment implies building a flexible CNN architecture with labeled images accumulated from standard benchmark datasets of different citizen science projects. After accessing satisfactory accuracy, new camera-trap imagery data (collected from Bastrop County, Texas) will be implemented to the model to detect species. The performance will be evaluated based on the accuracy of prediction within their classification. The suggested hardware and software framework will offer an efficient monitoring system, speed up wildlife investigation analysis, and formulate resource management decisions.
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