首页> 外文会议>Conference on earth resources and environmental remote sensing/GIS applications >Long-term Satellite Image Time Series for the Assessment of Land Use/Cover Change in the Brazilian Amazon Rainforest
【24h】

Long-term Satellite Image Time Series for the Assessment of Land Use/Cover Change in the Brazilian Amazon Rainforest

机译:评估巴西亚马逊雨林土地利用/覆盖变化的长期卫星图像时间序列

获取原文

摘要

The regular acquisition of Earth Observations by remote sensing satellites provides long-term Satellite Image Time Series (SITS). Land surface spectral variability provides the capacity for the assessment of Land Use/Cover Change (LUCC) information through SITS. As the reduction of deforestation rates is a matter of global concern, we selected a test area in the Brazilian Amazon Rainforest to assess LUCC information through long-term SITS. Top of Atmosphere reflectance images acquired from Landsat satellites between 1984 and 2017 were downloaded. A filtering process was carried out through the analysis of cloud and shadow masks. A total of 279 images were used to build a long-term Normalized Difference Vegetation Index (NDVI) SITS for every pixel. Images from across 7 years were used to identify SITS for the classes No Change, Anthropic Change, and Natural Change in order to define reference SITS. The Fast-Dynamic Time Warping (FastDTW) algorithm was used to compute the similarity between the reference SITS and the SITS to be labeled. The K-Nearest Neighbor algorithm was applied to classify the SITS based on the similarity measurements. Two different values of the FastDTW radius parameter were used to build two LUCC maps. The overall accuracies of the LUCC maps were 58.06% and 55.02%, for the radius parameter of one and 20, respectively. It was observed that atmospheric effects, clouds, cloud shadows, smoke, among other noisy agents, can modify the real SITS shape. As a result, the use of raw SITS can lead to a reduction in the accuracy of LUCC maps. Furthermore, high cloud coverage in the Brazilian Amazon Rainforest results in high-frequency irregularity in the SITS, which further reduces the accuracy of the LUCC maps. However, the study showed that the long-term NDVI SITS can describe land cover types and the classes defined despite the constraints mentioned.
机译:遥感卫星对地球观测的定期采集可提供长期的卫星图像时间序列(SITS)。地表光谱变异性提供了通过SITS评估土地利用/覆盖变化(LUCC)信息的能力。由于砍伐森林率的降低是全球关注的问题,因此我们选择了巴西亚马逊雨林中的一个测试区域,以通过长期SITS评估LUCC信息。下载了1984年至2017年之间从Landsat卫星获取的大气反射率图像的顶部。通过分析云和阴影蒙版进行了过滤过程。总共279张图像用于为每个像素建立长期归一化植被指数(NDVI)SITS。为了定义参考SITS,使用了7年中的图像来识别“不变”,“人类变化”和“自然变化”类别的SITS。快速动态时间规整(FastDTW)算法用于计算参考SITS与要标记的SITS之间的相似度。应用K最近邻算法基于相似性度量对SITS进行分类。 FastDTW半径参数的两个不同值用于构建两个LUCC映射。对于1和20的半径参数,LUCC图的总体精度分别为58.06%和55.02%。据观察,大气影响,云,云阴影,烟雾以及其他嘈杂的因素都可以改变SITS的真实形状。结果,使用原始SITS可能会导致LUCC映射的准确性降低。此外,巴西亚马逊雨林中的高云覆盖率导致SITS中的高频不规则性,这进一步降低了LUCC地图的准确性。但是,研究表明,尽管提到了限制因素,但长期NDVI SITS可以描述土地覆被类型和定义的类别。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号