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A crop phenology knowledge-based approach for monthly monitoring of construction land expansion using polarimetric synthetic aperture radar imagery

机译:一种基于作物物候学知识的方法,使用偏振合成孔径雷达图像每月监测建设用地扩展

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Synthetic aperture radar (SAR) remote sensing, which is independent of weather conditions, can monitor construction land expansion at short intervals for early prevention of unauthorized land use. However, seasonal crop growth creates land cover changes that are hardly distinguishable from land developments by using the traditional approach that employs two SAR images for detection. This study proposes a knowledge-based approach based on crop phenology to detect monthly construction land expansion by using consecutive polarimetric SAR imagery. The innovation of the proposed approach is the utilization of crop phenology knowledge to remove errors introduced by seasonal crop growth. In this approach, using crop phenology knowledge as a basis, a knowledge-based system is built to automatically determine when seasonal crop growth yields considerable errors. Monthly land developments are normally detected by comparing two consecutive images, but in the periods when the errors from crop growth are considerable, monthly detection results are calibrated using an additional third consecutive image, which is utilized to identify the errors based on the difference in temporal land cover change between land development and crop growth. A comparison was made between the proposed approach and the traditional approach for the monthly monitoring of construction land expansion. We found that seasonal paddy growth created many errors by using the traditional approach. The proposed approach substantially reduced these errors. Compared with the traditional approach, the proposed approach reduced errors by up to 87.33% with an average overall error rate of only 0.24%. The results indicated that the proposed approach outperforms the traditional approach in monitoring monthly construction land expansion and suppressing the disturbance from seasonal crop growth. (C) 2017 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:合成孔径雷达(SAR)遥感不受天气条件的影响,可以在较短的间隔内监视建筑用地的扩展,以尽早防止擅自使用土地。但是,季节性作物生长会产生土地覆盖变化,这很难通过使用采用两个SAR图像进行检测的传统方法与土地开发区分开来。这项研究提出了一种基于作物物候的基于知识的方法,通过使用连续的极化SAR图像来检测每月建设用地的扩展。所提出方法的创新之处在于利用作物物候学知识来消除季节性作物生长带来的误差。在这种方法中,以作物物候学知识为基础,建立了一个基于知识的系统,可以自动确定季节性作物生长何时会产生可观的误差。通常通过比较两个连续的图像来检测每月的土地开发情况,但是在农作物生长造成的误差相当大的时期内,使用另外的第三幅连续的图像来校准每月的检测结果,该图像用于根据时间上的差异来识别误差。土地覆盖在土地开发和农作物生长之间发生变化。在提议的方法和传统方法之间进行了比较,以每月监测建设用地的扩展。我们发现,季节性稻谷使用传统方法会造成许多错误。所提出的方法大大减少了这些错误。与传统方法相比,该方法将错误减少了多达87.33%,平均总错误率仅为0.24%。结果表明,在监测每月建设用地扩张和抑制季节性作物生长的干扰方面,该方法优于传统方法。 (C)2017国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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