Benchmarking Invasive Alien Species Image Recognition Models for a Citizen Science Based Spatial Distribution Monitoring

T. Niers, J. Stenkamp, N. Jakuschona, T. Bartoschek, S. Schade
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Abstract

Abstract. Recent developments in image recognition technology including artificial intelligence and machine learning led to an intensified research in computer vision models. This progress also allows advances for the collection of spatio-temporal data on Invasive Alien Species (IAS), in order to understand their geographical distribution and impact on the biodiversity loss. Citizen Science (CS) approaches already show successful solutions how the public can be involved in collecting spatio-temporal data on IAS, e.g. by using mobile applications for monitoring. Our work analyzes recently developed image-based species recognition models suitable for the monitoring of IAS in CS applications. We demonstrate how computer vision models can be benchmarked for such a use case and how their accuracy can be evaluated by testing them with IAS of European Union concern. We found out that available models have different strengths. Depending on which criteria (e.g. high species coverage, costs, maintenance, high accuracies) are considered as most important, it needs to be decided individually which model fits best. Using only one model alone may not necessarily be the best solution, thus combining multiple models or developing a new custom model can be desirable. Generally, cooperation with the model providers can be advantageous.
基于公民科学的入侵外来物种空间分布监测基准图像识别模型
摘要包括人工智能和机器学习在内的图像识别技术的最新发展导致了对计算机视觉模型的深入研究。这一进展也有助于收集外来入侵物种的时空数据,以了解其地理分布及其对生物多样性丧失的影响。公民科学(CS)方法已经展示了成功的解决方案,即公众如何参与收集关于IAS的时空数据,例如通过使用移动应用程序进行监测。我们的工作分析了最近开发的基于图像的物种识别模型,适合在CS应用中监测IAS。我们演示了如何为这样的用例对计算机视觉模型进行基准测试,以及如何通过使用欧盟关注的IAS对其进行测试来评估其准确性。我们发现可用的模型有不同的优势。根据最重要的标准(例如,高物种覆盖率、成本、维护、高精度),需要单独决定哪种模型最适合。仅使用一个模型可能不一定是最好的解决方案,因此组合多个模型或开发一个新的自定义模型可能是可取的。一般来说,与模型提供者合作是有利的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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