首页> 外文期刊>International journal of applied earth observation and geoinformation >Efficient collection of training data for sub-pixel land cover classification using neural networks
【24h】

Efficient collection of training data for sub-pixel land cover classification using neural networks

机译:使用神经网络有效收集用于亚像素土地覆盖分类的训练数据

获取原文
获取原文并翻译 | 示例
获取外文期刊封面目录资料

摘要

Artificial neural networks (ANNs) are a popular class of techniques for performing soft classifications of satellite images. They have successfully been applied for estimating crop areas through sub-pixel classification of medium to low resolution images. Before a network can be used for classification and estimation, however, it has to be trained. The collection of the reference area fractions needed to train an ANN is often both time-consuming and expensive. This study focuses on strategies for decreasing the efforts needed to collect the necessary reference data, without compromising the accuracy of the resulting area estimates. Two aspects were studied: the spatial sampling scheme (i) and the possibility for reusing trained networks in multiple consecutive seasons (ii). Belgium was chosen as the study area because of the vast amount of reference data available. Time series of monthly NDVI composites for both SPOTVGT and MODIS were used as the network inputs. The results showed that accurate regional crop area estimation (R2 > 80%) is possible using only 1% of the entire area for network training, provided that the training samples used are representative for the land use variability present in the study area. Limiting the training samples to a specific subset of the population, either geographically or thematically, significantly decreased the accuracy of the estimates. The results also indicate that the use of ANNs trained with data from one season to estimate area fractions in another season is not to be recommended. The interannual variability observed in the endmembers' spectral signatures underlines the importance of using up-todate training samples. It can thus be concluded that the representativeness of the training samples, both regarding the spatial and the temporal aspects, is an important issue in crop area estimation using ANNs that should not easily be ignored.
机译:人工神经网络(ANN)是用于对卫星图像进行软分类的一种流行的技术。它们已成功地用于通过中低分辨率图像的亚像素分类来估计作物面积。但是,在将网络用于分类和估计之前,必须对其进行培训。训练ANN所需的参考区域分数的收集通常既费时又昂贵。这项研究的重点是减少收集必要参考数据所需工作的策略,同时又不影响最终面积估计的准确性。研究了两个方面:空间采样方案(i)和在多个连续季节中重用经过训练的网络的可能性(ii)。比利时被选为研究区域是因为有大量可用的参考数据。 SPOTVGT和MODIS的每月NDVI复合物的时间序列用作网络输入。结果表明,只要使用的训练样本能够代表研究区域内土地利用的可变性,就可以仅使用整个区域的1%进行准确的区域作物面积估计(R2> 80%)。在地理上或主题上将训练样本限制在特定人群中,会大大降低估计的准确性。结果还表明,不建议使用经过一个季节训练的人工神经网络来估计另一个季节的面积分数。在最终成员的光谱特征中观察到的年际变化强调了使用最新训练样本的重要性。因此,可以得出结论,就空间和时间方面而言,训练样本的代表性是使用人工神经网络进行作物面积估计的重要问题,这一点不容忽视。

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