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首页> 外文期刊>Journal of spatial science >Delineating new foot trails within the US-Mexico border zone using semiautomatic linear object extraction methods and very high resolution imagery
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Delineating new foot trails within the US-Mexico border zone using semiautomatic linear object extraction methods and very high resolution imagery

机译:使用半自动线性物体提取方法和超高分辨率图像在美墨边境区域内划定新的人行步道

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摘要

A consequence of illegal immigration and border law enforcement practices has been the development of a complex foot trail network in remote areas of San Diego County near the US–Mexico border. Comprehensive monitoring of changes in trail networks requires multitemporal remote sensing analyses. Three semi-automated, commercially available object extraction routines were evaluated for delineating new trails. Three types of multitemporal image products were generated from two dates of scanned colour infrared (CIR) images of two US-Mexico border study sites, at four spatial resolutions (15, 30, 60 and 120 cm). Accuracy was assessed using reference data created by manual image interpretation. The semi-automated routines captured most of the new trail objects, but also contained gaps and high commission error. Products derived using a spatial contextual-based neural network classifier with CIR image difference or red band layer stack and 15 or 30 cm spatial resolution image inputs yielded the best extractions of new trails.
机译:非法移民和边境执法行为的后果是在美国-墨西哥边境附近的圣地亚哥县偏远地区开发了复杂的步道网络。对步道网络变化的全面监控需要多时相遥感分析。评估了三个半自动化的,可商购的对象提取例程,以描绘新路径。从两个美国-墨西哥边境研究地点的两个彩色红外(CIR)图像的扫描日期生成了三种类型的多时相图像产品,分别具有四种空间分辨率(15、30、60和120 cm)。使用通过手动图像解释创建的参考数据评估准确性。半自动化的例程捕获了大多数新的跟踪对象,但也包含差距和高佣金错误。使用具有CIR图像差异或红带层堆栈以及15或30 cm空间分辨率图像输入的基于空间上下文的神经网络分类器得出的产品产生了最佳的新轨迹提取。

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