Large-Scale Plant Classification with Deep Neural Networks

Ignacio Heredia
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引用次数: 22

Abstract

This paper discusses the potential of applying deep learning techniques for plant classification and its usage for citizen science in large-scale biodiversity monitoring. We show that plant classification using near state-of-the-art convolutional network architectures like ResNet50 achieves significant improvements in accuracy compared to the most widespread plant classification application in test sets composed of thousands of different species labels. We find that the predictions can be confidently used as a baseline classification in citizen science communities like iNaturalist (or its Spanish fork, Natusfera) which in turn can share their data with biodiversity portals like GBIF.
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基于深度神经网络的大规模植物分类
本文讨论了深度学习技术在植物分类中的应用潜力及其在大规模生物多样性监测中的公民科学应用。我们表明,与由数千个不同物种标签组成的测试集中最广泛的植物分类应用相比,使用接近最先进的卷积网络架构(如ResNet50)的植物分类在准确性方面取得了显着提高。我们发现,这些预测可以被iNaturalist(或其西班牙分支Natusfera)等公民科学社区自信地用作基线分类,而这些社区又可以与GBIF等生物多样性门户网站分享他们的数据。
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