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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Domain adaptation for land use classification: A spatio-temporal knowledge reusing method
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Domain adaptation for land use classification: A spatio-temporal knowledge reusing method

机译:土地利用分类的领域适应:时空知识重用方法

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摘要

Land use classification requires a significant amount of labeled data, which may be difficult and time consuming to obtain. On the other hand, without a sufficient number of training samples, conventional classifiers are unable to produce satisfactory classification results. This paper aims to overcome this issue by proposing a new model, TrCbrBoost, which uses old domain data to successfully train a classifier for mapping the land use types of target domain when new labeled data are unavailable. TrCbrBoost adopts a fuzzy CBR (Case Based Reasoning) model to estimate the land use probabilities for the target (new) domain, which are subsequently used to estimate the classifier performance. Source (old) domain samples are used to train the classifiers of a revised TrAdaBoost algorithm in which the weight of each sample is adjusted according to the classifier's performance. This method is tested using time-series SPOT images for land use classification. Our experimental results indicate that TrCbrBoost is more effective than traditional classification models, provided that sufficient amount of old domain data is available. Under these conditions, the proposed method is 9.19% more accurate.
机译:土地用途分类需要大量带标签的数据,这可能很难且耗时。另一方面,在没有足够数量的训练样本的情况下,常规分类器无法产生令人满意的分类结果。本文旨在通过提出一种新模型TrCbrBoost来解决此问题,该模型使用旧的域数据来成功训练分类器,以在没有新的标签数据时映射目标域的土地使用类型。 TrCbrBoost采用模糊CBR(基于案例的推理)模型来评估目标(新)域的土地使用概率,随后将其用于评估分类器的性能。源(旧)域样本用于训练修订的TrAdaBoost算法的分类器,其中,根据分类器的性能调整每个样本的权重。使用时间序列SPOT图像对土地利用分类进行了测试。我们的实验结果表明,只要有足够数量的旧域数据可用,TrCbrBoost比传统分类模型更有效。在这种情况下,所提方法的准确性提高了9.19%。

著录项

  • 来源
  • 作者

    Yilun Liu; Xia Li;

  • 作者单位

    School of Geography and Planning, Sun Yat-sen University, 135 West Xingang Rd., 510275 Guangzhou, People's Republic of China, Guangdong Key Laboratory for Urbanization and Geo-simulation, Sun Yat-sen University, 135 West Xingang Rd., 510275 Guangzhou, People's Republic of China;

    School of Geography and Planning, Sun Yat-sen University, 135 West Xingang Rd., 510275 Guangzhou, People's Republic of China, Guangdong Key Laboratory for Urbanization and Geo-simulation, Sun Yat-sen University, 135 West Xingang Rd., 510275 Guangzhou, People's Republic of China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Domain adaptation; Transfer learning; Land use classification; k-Nearest neighbors; TrAdaBoost; TrCbrBoost;

    机译:领域适应;转移学习;土地用途分类;k最近邻居;TrAdaBoost;TrCbr助推器;

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