The integration of the modern Machine Learning (ML) models into remote sensing and agriculture has expanded the scope of the application of satellite images in the agriculture domain. In this paper, we present how the accuracy of crop type identification improves as we move from medium-spatiotemporal-resolution (MSTR) to high-spatiotemporal-resolution (HSTR) satellite images. We further demonstrate that high spectral resolution in satellite imagery can improve prediction performance for low spatial and temporal resolutions (LSTR) images. The F1-score is increased by 7% when using multispectral data of MSTR images as compared to the best results obtained from HSTR images. Similarly, when crop season based time series of multispectral data is used we observe an increase of 1.2% in the F1-score. The outcome motivates further advancements in the field of synthetic band generation.
翻译:将现代机器学习模型纳入遥感和农业,扩大了卫星图像在农业领域的应用范围,在本文件中,我们介绍了作物类型识别的准确性如何随着我们从中等悬浮时间分辨率(MSTR)向高悬浮时间分辨率(HSTR)卫星图像的移动而得到改善。我们进一步表明,卫星图像的高光谱分辨率可以提高低空间和时空分辨率(LSTR)图像的预测性能。F1核心在使用多谱光谱数据时,与从HSTR图像中获得的最佳结果相比,增加了7%。同样,在使用以作物季节为基础的多谱数据时序时,我们观察到F1芯中增加了1.2%。结果鼓励了合成波段生成领域的进一步进展。