大草原农业用地分类的机器学习技术比较:以加拿大萨斯喀彻温省为例

IF 1.1 Q3 AGRONOMY
Xin Zhou, Todd Han, Kevin McCullum, Peng Wu
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引用次数: 0

摘要

遥感在土地利用分类中起着至关重要的作用,为解决各种环境问题提供了必要的信息。将机器学习技术纳入遥感,包括随机森林(rf),支持向量机(svm)和人工神经网络(ANN),由于其在遥感图像中有效分类土地覆盖的潜力而引起了极大的关注。然而,在农业用地分类的背景下应用机器学习存在挑战,针对这一特定目的探索这些技术的研究有限。本研究旨在研究机器学习技术在萨斯喀彻温省南部草原地区的表现,重点是农业用地分类。利用欧洲航天局(European Space Agency)公开提供的Sentinel-2卫星图像,通过分层随机抽样,共分析了133,080个样本,其中70%分配给训练子集,30%分配给测试子集。准确性评估涉及多个指标。结果表明,随机森林表现出最高的总体精度,而支持向量机表现出最低的精度。另一方面,与其他机器学习技术相比,人工神经网络显示出明显的优势。本研究为机器学习在农业土地利用分类中的应用提供了有价值的见解,强调了在这一具有挑战性的领域进一步探索和完善的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Comparison of Machine Learning Techniques for Agricultural Land Use Classifications in the Prairies: A Case Study in Saskatchewan, Canada

Remote sensing (RS) plays a crucial role in land use classification, providing essential information to address various environmental issues. The incorporation of machine learning techniques into remote sensing, including random forests (RFs), support vector machines (SVMs), and artificial neural networks (ANN)s, has garnered significant attention due to its potential for efficient land cover classification in remotely sensed images. However, applying machine learning in the context of agricultural land classification presents challenges, with limited research exploring these techniques for this specific purpose. This study aims to investigate the performance of machine learning techniques in the southern prairie region of Saskatchewan, focusing on agricultural land classifications. Utilizing Sentinel-2 satellite images, publicly available from the European Space Agency, a total of 133,080 samples were analyzed through stratified random sampling, with 70% allocated to training and 30% to testing subsets. Accuracy assessment involved various indicators. Results indicate that random forests exhibit the highest overall accuracy, whereas support vector machines demonstrate the lowest accuracy. Artificial neural networks, on the other hand, display distinct advantages compared to other machine learning techniques. This research contributes valuable insights into the application of machine learning for agricultural land use classifications, emphasizing the need for further exploration and refinement in this challenging domain.

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来源期刊
CiteScore
3.80
自引率
0.00%
发文量
24
期刊介绍: The main objective of this initiative is to promote agricultural research and development. The journal will publish high quality original research papers and critical reviews on emerging fields and concepts for providing future directions. The publications will include both applied and basic research covering the following disciplines of agricultural sciences: Genetic resources, genetics and breeding, biotechnology, physiology, biochemistry, management of biotic and abiotic stresses, and nutrition of field crops, horticultural crops, livestock and fishes; agricultural meteorology, environmental sciences, forestry and agro forestry, agronomy, soils and soil management, microbiology, water management, agricultural engineering and technology, agricultural policy, agricultural economics, food nutrition, agricultural statistics, and extension research; impact of climate change and the emerging technologies on agriculture, and the role of agricultural research and innovation for development.
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