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首页> 外文期刊>International journal of applied mechanics >Bidirectional Segmented Detection of Land Use Change Based on Object-Level Multivariate Time Series
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Bidirectional Segmented Detection of Land Use Change Based on Object-Level Multivariate Time Series

机译:基于物体多变量时间序列的双向分段检测土地利用变化

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摘要

High-precision information regarding the location, time, and type of land use change is integral to understanding global changes. Time series (TS) analysis of remote sensing images is a powerful method for land use change detection. To address the complexity of sample selection and the salt-and-pepper noise of pixels, we propose a bidirectional segmented detection (BSD) method based on object-level, multivariate TS, that detects the type and time of land use change from Landsat images. In the proposed method, based on the multiresolution segmentation of objects, three dimensions of object-level TS are constructed using the median of the following indices: the normalized difference vegetation index (NDVI), the normalized difference built index (NDBI), and the modified normalized difference water index (MNDWI). Then, BSD with forward and backward detection is performed on the segmented objects to identify the types and times of land use change. Experimental results indicate that the proposed BSD method effectively detects the type and time of land use change with an overall accuracy of 90.49% and a Kappa coefficient of 0.86. It was also observed that the median value of a segmented object is more representative than the commonly used mean value. In addition, compared with traditional methods such as LandTrendr, the proposed method is competitive in terms of time efficiency and accuracy. Thus, the BSD method can promote efficient and accurate land use change detection.
机译:有关地点,时间和类型的土地利用变化类型的高精度信息是了解全局变化的一体化。遥感图像的时间序列(TS)分析是一种强大的土地利用变化检测方法。为了解决样本选择的复杂性和像素的盐和辣椒噪声,我们提出了一种基于物体级的双向分段检测(BSD)方法,该方法多变量TS,可检测到Landsat图像的土地使用变化的类型和时间。在所提出的方法中,基于对象的多分辨率分割,使用以下指数中值构建物体级TS的三个维度:归一化差异植被指数(NDVI),标准化差异构建索引(NDBI),以及改进的归一化差异水指数(MNDWI)。然后,在分段对象上执行具有前向和后向检测的BSD,以识别土地使用变化的类型和时间。实验结果表明,所提出的BSD方法有效地检测土地利用变化的类型和时间,总精度为90.49%,kappa系数为0.86。还观察到,分段对象的中值比常用平均值更具代表性。此外,与诸如Landtrendr等传统方法相比,所提出的方法在时间效率和准确性方面具有竞争力。因此,BSD方法可以促进有效和准确的土地利用变化检测。

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