基于无人机监控系统的洪水区域检测

D. Popescu, L. Ichim, Traian Caramihale
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引用次数: 38

摘要

本文提出了一种利用无人机拍摄的航拍图像对洪区进行检测、定位、分割和大小评估的方法。该方法基于滑动盒法和纹理特征分析。特征选择过程考虑了从假阳性和假阴性情况中获得的性能程度。我们结合了图像的不同属性,如颜色、纹理和分形类型。基于部分特征的聚类特性,建立洪水类和非洪水类,并采用相似度准则对洪水区进行划分。最后提出了洪水规模的评价方法。对10幅洪区图像进行了测试,准确率达到98.87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flood areas detection based on UAV surveillance system
In this paper we propose a methodology for detection, localization, segmentation and size evaluation of flood areas from aerial images which are taken with drones. The approach is based on sliding box method and texture features analyses. The process of feature selection takes into account a performance degree obtained from false positive and false negative cases. We combined different properties of the images like color, texture and fractal types. A class of flood and one of non-flood were established based on clustering properties of some features and a criterion of similarity is used to segment the flood zones. Finally, the evaluation of the flood size is proposed. The method was tested on 10 images of flood zones and a rate of accuracy of 98.87% was obtained.
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