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Detection and Classification of Land Crude Oil Spills Using Color Segmentation and Texture Analysis

机译:基于颜色分割和纹理分析的陆地原油泄漏检测与分类

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Crude oil spills have negative consequences on the economy, environment, health and society in which they occur, and the severity of the consequences depends on how quickly these spills are detected once they begin. Several methods have been employed for spill detection, including real time remote surveillance by flying aircrafts with surveillance teams. Other methods employ various sensors, including visible sensors. This paper presents an algorithm to automatically detect the presence of crude oil spills in images acquired using visible light sensors. Images of crude oil spills used in the development of the algorithm were obtained from the Shell Petroleum Development Company (SPDC) Nigeria website The major steps of the detection algorithm are image preprocessing, crude oil color segmentation, sky elimination segmentation, Region of Interest (ROI) extraction, ROI texture feature extraction, and ROI texture feature analysis and classification. The algorithm was developed using 25 sample images containing crude oil spills and demonstrated a sensitivity of 92% and an FPI of 1.43. The algorithm was further tested on a set of 56 case images and demonstrated a sensitivity of 82% and an FPI of 0.66. This algorithm can be incorporated into spill detection systems that utilize visible sensors for early detection of crude oil spills.
机译:原油泄漏会对其发生的经济,环境,健康和社会造成负面影响,后果的严重程度取决于这些泄漏一旦开始就被发现的速度。已经采用了几种方法来进行泄漏检测,包括由带有监视团队的飞机进行实时远程监视。其他方法采用各种传感器,包括可见传感器。本文提出了一种算法,可自动检测使用可见光传感器采集的图像中是否存在原油泄漏。该算法开发中使用的原油泄漏图像可从壳牌石油开发公司(SPDC)尼日利亚网站获得。检测算法的主要步骤是图像预处理,原油颜色分割,天空消除分割,感兴趣区域(ROI) )提取,ROI纹理特征提取以及ROI纹理特征分析和分类。该算法是使用25个包含原油泄漏的样本图像开发的,并显示出92%的灵敏度和1.43的FPI。该算法在一组56个案例图像上进行了进一步测试,并显示出82%的灵敏度和0.66的FPI。该算法可以并入到泄漏检测系统中,该系统利用可见传感器对原油泄漏进行早期检测。

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