基于高时空节奏卫星图像的深度学习野外边界划分

Syed Roshaan Ali Shah, Obaid-ur-Rehman, Rana Ahmad Faraz Ishaq, Y. Shabbir, Ijaz Ahmad
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引用次数: 0

摘要

农田边界信息对作物健康监测、粮食安全工作和精准农业至关重要。在丹麦和荷兰等国家,实地包裹信息是可用的,而巴基斯坦缺乏这样的数据集。选择丹麦2018年的田野边界数据进行模型的训练。下载了四个日期的卫星图像并进行了预处理,以捕捉地面上的作物动态。使用语义分割架构在图像上训练模型,并使用诸如交集超过联盟(IoU)和f1分数等指标评估结果。结果表明,采用SENet154骨干网的UNet架构比其他架构-骨干网组合具有更好的性能。在图像日期方面,7月27日的数据获得了更高的IoU得分。为模型提供输入掩码的方法对指标影响最大,导致IoU增加了35%。多日期卫星图像的时间叠加被证明是增加边界划分信息含量的有效方法,与单日期模型相比,IoU提高了6.5%。最终的时间堆叠模型的IoU得分约为0.72。经过训练的模型能够描绘边界,并且与可用的地面真实值相比显示出良好的结果。迁移学习到新领域的结果表明,使用这种技术是有潜力的,但需要考虑进一步的因素来改进指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning on High Spatial and Temporal Cadence Satellite Imagery for Field Boundary Delineation
Agriculture field boundary information is vital in crop health monitoring, food security efforts, and precision agriculture. In countries like Denmark and the Netherlands field parcel information is available whereas Pakistan lacks such datasets.Denmark field boundary data for year 2018 was selected for the training of the model. Satellite imagery of four dates was downloaded and preprocessed to capture crop dynamics on the ground. Semantic segmentation architectures were used to train the models on the imagery, and results were assessed using metrics such as Intersection over Union(IoU) and f1-scores.The results show that UNet architecture with SENet154 backbone performs better than other architecture-backbone combinations. In terms of dates of imagery, data from 27th July achieved a higher IoU score. The method of providing input mask to the model had the most impact on the metrics and resulted in a 35% increase in IoU. Temporal stacking of multi-date satellite imagery proved to be an effective way of increasing information content for boundary delineation and improved the IoU by 6.5% in comparison to a single-date model. The final temporal stacked model had an IoU score of around 0.72.The trained model was able to delineate boundaries and showed good results in comparison to the available ground truth. The results of transfer learning to new areas suggest that there is potential in using such techniques, but further factors need to be considered to improve the metrics.
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