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Segment Optimization and Data-Driven Thresholding for Knowledge-Based Landslide Detection by Object-Based Image Analysis

机译:基于对象的图像分析在基于知识的滑坡检测中的分割优化和数据驱动阈值

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摘要

To detect landslides by object-based image analysis using criteria based on shape, color, texture, and, in particular, contextual information and process knowledge, candidate segments must be delineated properly. This has proved challenging in the past, since segments are mainly created using spectral and size criteria that are not consistent for landslides. This paper presents an approach to select objectively parameters for a region growing segmentation technique to outline landslides as individual segments and also addresses the scale dependence of landslides and false positives occurring in a natural landscape. Multiple scale parameters were determined using a plateau objective function derived from the spatial autocorrelation and intrasegment variance analysis, allowing for differently sized features to be identified. While a high-resolution Resourcesat-1 Linear Imaging and Self Scanning Sensor IV (5.8 m) multispectral image was used to create segments for landslide recognition, terrain curvature derived from a digital terrain model based on Cartosat-1 (2.5 m) data was used to create segments for subsequent landslide classification. Here, optimal segments were used in a knowledge-based classification approach with the thresholds of diagnostic parameters derived from If-means cluster analysis, to detect landslides of five different types, with an overall recognition accuracy of 76.9%. The approach, when tested in a geomorphologically dissimilar area, recognized landslides with an overall accuracy of 77.7%, without modification to the methodology. The multiscale classification-based segment optimization procedure was also able to reduce the error of commission significantly in comparison to a single-optimal-scale approach.
机译:要使用基于形状,颜色,纹理(尤其是上下文信息和过程知识)的标准通过基于对象的图像分析来检测滑坡,必须正确划定候选路段。过去已证明这具有挑战性,因为主要使用与滑坡不一致的光谱和尺寸标准来创建分段。本文提出了一种为区域增长分割技术客观选择参数的方法,以将滑坡概述为单个片段,并解决了自然景观中发生的滑坡和假阳性的规模依赖性。使用从空间自相关和段内方差分析得出的平稳目标函数确定多个尺度参数,从而可以识别大小不同的特征。使用高分辨率的Resourcesat-1线性成像和自扫描传感器IV(5.8 m)多光谱图像创建滑坡识别段时,使用了基于Cartosat-1(2.5 m)数据的数字地形模型得出的地形曲率为后续的滑坡分类创建分段。在此,基于基于知识的分类方法中的最佳路段与从If-means聚类分析得出的诊断参数阈值一起使用,以检测五种不同类型的滑坡,总体识别精度为76.9%。当在地貌不同的地区进行测试时,该方法在不对方法进行任何修改的情况下,识别出滑坡的总体准确率为77.7%。与单最佳规模方法相比,基于多尺度分类的细分优化程序还能够显着减少佣金错误。

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