首页> 外文期刊>Journal of Applied Remote Sensing >Change detection of land use and land cover in an urban region with SPOT-5 images and partial Lanczos extreme learning machine
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Change detection of land use and land cover in an urban region with SPOT-5 images and partial Lanczos extreme learning machine

机译:利用SPOT-5图像和部分Lanczos极限学习机来检测城市地区的土地利用和土地覆盖变化

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Satellite remote sensing technology and the science associated with evaluation of land use and land cover (LULC) in an urban region makes use of the wide range images and algorithms. Improved land management capacity is critically dependent on real-time or near real-time monitoring of land-use/land cover change (LUCC) to the extent to which solutions to a whole host of urban/rural interface development issues may be well managed promptly. Yet previous processing with LULC methods is often time-consuming, laborious, and tedious making the outputs unavailable within the required time window. This paper presents a new image classification approach based on a novel neural computing technique that is applied to identify the LULC patterns in a fast growing urban region with the aid of 2.5-meter resolution SPOT-5 image products. The classifier was constructed based on the partial Lanczos extreme learning machine (PL-ELM), which is a novel machine learning algorithm with fast learning speed and outstanding generalization performance. Since some different classes of LULC may be linked with similar spectral characteristics, texture features and vegetation indexes were extracted and included during the classification process to enhance the discernability. A validation procedure based on ground truth data and comparisons with some classic classifiers prove the credibility of the proposed PL-ELM classification approach in terms of the classification accuracy as well as the processing speed. A case study in Dalian Development Area (DDA) with the aid of the SPOT-5 satellite images collected in the year of 2003 and 2007 and PL-ELM fully supports the monitoring needs and aids in the rapid change detection with respect to both urban expansion and coastal land reclamations.
机译:卫星遥感技术以及与城市地区土地利用和土地覆盖评估(LULC)相关的科学都利用了广泛的图像和算法。土地管理能力的提高在很大程度上取决于对土地使用/土地覆被变化(LUCC)的实时或近实时监控,从而可以迅速管理整个城市/农村界面开发问题的解决方案。然而,先前使用LULC方法的处理通常是费时,费力且乏味的,从而使得输出在所需的时间窗口内不可用。本文提出了一种基于新型神经计算技术的图像分类新方法,该技术可用于借助2.5米分辨率SPOT-5图像产品识别快速增长的城市区域中的LULC模式。该分类器是基于部分Lanczos极限学习机(PL-ELM)构建的,该学习机是一种学习速度快,泛化性能优异的新型机器学习算法。由于LULC的某些不同类别可能与相似的光谱特征相关联,因此在分类过程中提取并包括了纹理特征和植被指数,以增强可分辨性。基于地面真实数据的验证程序以及与一些经典分类器的比较证明了所提出的PL-ELM分类方法在分类准确性和处理速度方面的可靠性。借助大连开发区(DDA)的案例研究,借助2003年和2007年收集的SPOT-5卫星图像以及PL-ELM,充分满足了监测需求,并有助于快速检测城市扩展方面的变化和沿海土地开垦。

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