...
首页> 外文期刊>Remote Sensing >Consistent Classification of Landsat Time Series with an Improved Automatic Adaptive Signature Generalization Algorithm
【24h】

Consistent Classification of Landsat Time Series with an Improved Automatic Adaptive Signature Generalization Algorithm

机译:改进的自动自适应签名综合算法对Landsat时间序列进行一致分类

获取原文
           

摘要

Classifying land cover is perhaps the most common application of remote sensing, yet classification at frequent temporal intervals remains a challenging task due to radiometric differences among scenes, time and budget constraints, and semantic differences among class definitions from different dates. The automatic adaptive signature generalization (AASG) algorithm overcomes many of these limitations by locating stable sites between two images and using them to adapt class spectral signatures from a high-quality reference classification to a new image, which mitigates the impacts of radiometric and phenological differences between images and ensures that class definitions remain consistent between the two classifications. We refined AASG to adapt stable site identification parameters to each individual land cover class, while also incorporating improved input data and a random forest classifier. In the Research Triangle region of North Carolina, our new version of AASG demonstrated an improved ability to update existing land cover classifications compared to the initial version of AASG, particularly for low intensity developed, mixed forest, and woody wetland classes. Topographic indices were particularly important for distinguishing woody wetlands from other forest types, while multi-seasonal imagery contributed to improved classification of water, developed, forest, and hay/pasture classes. These results demonstrate both the flexibility of the AASG algorithm and the potential for using it to produce high-quality land cover classifications that can utilize the entire temporal range of the Landsat archive in an automated fashion while maintaining consistent class definitions through time.
机译:对土地覆盖物进行分类可能是遥感技术最普遍的应用,但是由于场景之间的辐射度差异,时间和预算限制以及不同日期的类定义之间的语义差异,在频繁的时间间隔进行分类仍然是一项艰巨的任务。自动自适应特征标记归纳(AASG)算法通过在两幅图像之间定位稳定的位置,并使用它们来将类别光谱特征从高质量参考分类适应到新图像,从而克服了许多这些限制,从而减轻了辐射度和物候差异的影响在图像之间进行分类,并确保两个分类之间的类定义保持一致。我们对AASG进行了优化,以使稳定的站点识别参数适应每个单独的土地覆盖类别,同时还整合了改进的输入数据和随机森林分类器。在北卡罗来纳州的三角研究区,与原始版本的AASG相比,我们的新版本的AASG展示了更高的更新现有土地覆盖分类的能力,尤其是对于低强度发达,混交林和木质湿地类别。地形指数对于将木质湿地与其他森林类型区分开来特别重要,而多季节影像有助于改善水,发达,森林和干草/草场类别的分类。这些结果证明了AASG算法的灵活性以及使用它来产生高质量土地覆盖分类的潜力,该分类可以自动方式利用Landsat档案的整个时间范围,同时在整个时间范围内保持一致的类定义。

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