UNDERGROUND CRUDE OIL PIPELINE LEAKAGE DETECTION USING DEXINED DEEP LEARNING TECHNIQUES AND LAB COLOR SPACE

Muhammad H. Obaid
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Abstract

Computer vision plays a big role in pipeline leakage detection systems and is one of the latest techniques. Still, it requires a powerful image-processing algorithm to detect objects. The purpose of this work is to develop and implement spill detection in oil pipes caused by leakage using images taken by a drone equipped with a Raspberry Pi 4. The acquired images are sent to the base station along with the global positioning system (GPS) location of the captured images via the message queuing telemetry transport Internet of Things (MQTT IoT) protocol. At the base station, images are processed to identify contours by dense extreme inception networks for edge detection(DexiNed) deep learning techniques based on holistically-nested edge detection(HED) and extreme inception (Xception) networks. This algorithm is capable of finding many contours in images. To find a contour with black color, the CIELAB color space (LAB) has been used. The proposed algorithm removes small contours and computes the area of the remaining contours. If the contour is above the threshold value, it is considered a spill; otherwise, it will be saved in a database for further inspection. For testing purposes, three different spill areas were implemented with spill sizes of (1 m^2,2 m^2 ,and 3 m^2). Images have been captured at three different heights (5 m, 10 m, and 15 m) by the drone used to capture the images. The result shows that effective detection has been obtained at 10 meters high. To monitor the entire system, a web application has been integrated into the base station.
利用定义深度学习技术和实验室色彩空间进行地下原油管道泄漏检测
计算机视觉在管道泄漏检测系统中起着重要的作用,是最新的检测技术之一。不过,它需要一个强大的图像处理算法来检测物体。这项工作的目的是利用配备树莓派4的无人机拍摄的图像,开发和实施漏油检测。通过消息队列遥测传输物联网(MQTT IoT)协议,将采集的图像与全球定位系统(GPS)位置一起发送到基站。在基站,通过密集的极限初始网络来处理图像以识别轮廓,用于边缘检测(dexine)基于整体嵌套边缘检测(HED)和极限初始(Xception)网络的深度学习技术。该算法能够在图像中发现许多轮廓。为了寻找带有黑色的轮廓,使用了CIELAB色彩空间(LAB)。该算法去除小轮廓并计算剩余轮廓的面积。如果轮廓线高于阈值,则认为是泄漏;否则,它将被保存在数据库中以供进一步检查。为了测试目的,我们采用了三个不同的泄漏区域,泄漏大小分别为(1m ^2、2m ^2和3m ^2)。用于捕获图像的无人机在三个不同的高度(5米,10米和15米)捕获了图像。结果表明,在10米的高度上,实现了有效的探测。为了监控整个系统,一个web应用程序已经集成到基站中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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