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A research of selected textural features for detection of asbestos-cement roofing sheets using orthoimages

机译:使用正射影像检测石棉水泥屋顶板的选定纹理特征的研究

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At present, there has been a great interest in the development of texture based image classification methods in many different areas. This study presents the results of research carried out to assess the usefulness of selected textural features for detection of asbestos-cement roofs in orthophotomap classification. Two different orthophotomaps of southern Poland (with ground resolution: 5 cm and 25 cm) were used. On both orthoimages representative samples for two classes: asbestos-cement roofing sheets and other roofing materials were selected. Estimation of texture analysis usefulness was conducted using machine learning methods based on decision trees (C5.0 algorithm). For this purpose, various sets of texture parameters were calculated in MaZda software. During the calculation of decision trees different numbers of texture parameters groups were considered. In order to obtain the best settings for decision trees models cross-validation was performed. Decision trees models with the lowest mean classification error were selected. The accuracy of the classification was held based on validation data sets, which were not used for the classification learning. For 5 cm ground resolution samples, the lowest mean classification error was 15.6%. The lowest mean classification error in the case of 25 cm ground resolution was 20.0%. The obtained results confirm potential usefulness of the texture parameter image processing for detection of asbestos-cement roofing sheets. In order to improve the accuracy another extended study should be considered in which additional textural features as well as spectral characteristics should be analyzed.
机译:当前,在许多不同领域中对基于纹理的图像分类方法的开发引起了极大的兴趣。这项研究提出了研究结果,以评估选定的纹理特征在正射影地图分类中检测石棉水泥屋顶的有用性。使用了波兰南部的两个不同的正射影像(地面分辨率:5 cm和25 cm)。在两个正射影像上,都选择了两类代表性的样品:石棉水泥屋顶板和其他屋顶材料。使用基于决策树(C5.0算法)的机器学习方法进行纹理分析有用性的估计。为此,在MaZda软件中计算了各种纹理参数集。在决策树的计算中,考虑了不同数量的纹理参数组。为了获得决策树模型的最佳设置,执行了交叉验证。选择具有最低平均分类误差的决策树模型。分类的准确性是根据验证数据集确定的,该数据集未用于分类学习。对于5厘米地面分辨率的样品,最低的平均分类误差为15.6%。在25 cm地面分辨率的情况下,最低的平均分类误差为20.0%。所获得的结果证实了纹理参数图像处理对于检测石棉水泥屋顶板的潜在有用性。为了提高准确性,应考虑另一项扩展研究,其中应分析其他纹理特征和光谱特征。

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