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Automated Identification of Tile Lines from Remotely Sensed Data

机译:根据遥感数据自动识别瓷砖线

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Although subsurface drainage provides many agronomic and environmental benefits, extensive subsurface drainage systems have important implications for surface water quality and hydrology. Due to limited information on subsurface drainage extent, it is difficult to understand the hydrology of intensively tile-drained watersheds. In order to address this problem, a methodology was developed to use image processing techniques for automated detection of tile drains from multiple dates of aerial photography at the Agronomy Center for Research and Education (ACRE), West Lafayette, Indiana. A stepwise approach was adopted to first identify potential tile-drained fields from the GIS-based analysis of land use class, soil drainage class, and surface slope using decision tree classification. Based on preliminary classification of potential tile-drained area from the decision tree classifier, a combination of image processing techniques such as directional edge enhancement filtering, density slice classification, Hough transformation, and automatic vectorization were used to identify individual tile lines from images of 1976, 1998, and 2002. Accuracy assessment of the predicted tile line maps (Hough transformed and untransformed) was accomplished by comparing the locations of predicted tile lines with the known tile lines mapped through manual digitization from historic design diagrams using both a confusion matrix approach and drainage density. Forty-eight percent of tile lines were correctly predicted for the Hough transformed map and 58% for the untransformed map based on the producer accuracy. Similarly, 73% of non-tile area was correctly predicted for Hough transformed and 68% for untransformed lines. Based on drainage density calculation, 60% of tile lines were predicted from the aerial image of 1976 and 50% from the aerial image of 2002 for both techniques, while 72% of tile lines were predicted from the aerial image of 1998 for untransformed and 50% for Hough transformed lines. The Hough transformation provided the best results in producing a map without discontinuity between lines. The overall performance of the image processing techniques used in this study shows that these techniques can be successfully applied to identify tile lines from aerial photographs over a large area.
机译:尽管地下排水提供了许多农业和环境效益,但广泛的地下排水系统对地表水质量和水文学具有重要意义。由于有关地下排水程度的信息有限,因此很难了解密集排水的流域的水文状况。为了解决这个问题,在印第安纳州西拉斐特的农学研究与教育中心(ACRE),开发了一种使用图像处理技术从多个航拍日期自动检测瓷砖排水的方法。首先采用逐步方法,首先通过基于决策树分类的基于GIS的土地利用类别,土壤排水类别和地表坡度分析确定潜在的地砖排水领域。根据来自决策树分类器的潜在瓷砖排水区域的初步分类,结合了诸如方向性边缘增强滤波,密度切片分类,Hough变换和自动矢量化等图像处理技术,以从1976年的图像中识别出单个瓷砖线,分别是1998年和2002年。对预测瓷砖线图(霍夫变换和未变换)的准确性评估是通过比较预测瓷砖线的位置与通过使用混淆矩阵法和排水密度。根据生产者的准确性,对于霍夫变换图正确预测了48%的平铺线,对于未变换图正确预测了58%的平铺线。同样,正确预测了Hough转化的非块状区域的73%,未转化的品系的占68%。根据排水密度计算,两种技术均从1976年的航拍图像中预测出60%的瓷砖线,从2002年的航空中预测出50%的瓷砖线,而从1998年的航空中预测出的72%瓷砖线未转换, %用于霍夫变换线。霍夫变换在产生地图时最好的结果是线之间不间断。本研究中使用的图像处理技术的整体性能表明,这些技术可以成功地应用于从大面积的航拍照片中识别平铺线。

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