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首页> 外文期刊>Ecological informatics: an international journal on ecoinformatics and computational ecology >'How many images do I need?' Understanding how sample size per class affects deep learning model performance metrics for balanced designs in autonomous wildlife monitoring
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'How many images do I need?' Understanding how sample size per class affects deep learning model performance metrics for balanced designs in autonomous wildlife monitoring

机译:“我需要多少图像?” 了解每个类的样本大小如何影响自主野生动物监测中平衡设计的深度学习模型性能指标

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摘要

Deep learning (DL) algorithms are the state of the art in automated classification of wildlife camera trap images. The challenge is that the ecologist cannot know in advance how many images per species they need to collect for model training in order to achieve their desired classification accuracy. In fact there is limited empirical evidence in the context of camera trapping to demonstrate that increasing sample size will lead to improved accuracy.
机译:深度学习(DL)算法是野生动物摄像机陷阱图像自动分类中的最新技术。 挑战是,生态学家提前知道每种物种需要收集多少张图像,以便实现所需的分类准确性。 事实上,在相机诱捕的背景下存在有限的经验证据,以证明增加的样本量将导致提高准确性。

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