An Investigation of Automating Fungus Inspection Process of Aircraft Fuel Tank via Image Processing

Sin Y. Beh, V. L. Jauw, C. S. Lim, Leong L. Chee
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Abstract

Fungus growth in the fuel tank can be harmful to the safety of an aircraft due to its corrosive nature and the sludge it produced. Thus, maintenance is often conducted within a definite period of time by draining the fuel tank to inspect the presence of fungus manually via limited access points. This hinders the full view of the tank resulting in the undiscovered fungus growth, which is contrary to the aim of the inspection, at the expense of resources. This study aims at automating the inspection process to detect the presence of fungus colonies in the aircraft's fuel tank based on the camera's image. It was observed that fungus colonies are often formed irregularly surrounding the bolts of the tank's inner structure. This makes it challenging to differentiate as the color of bolt's edge and fungus colonies is similar. The proposed algorithm aims at addressing the challenge through background and edge removal by Gaussian filtering, adaptive thresholding, convolution for eliminating rogue pixels and boundary calculation. It was tested against the images taken from both experimental rig and aircraft's fuel tank, where the algorithm detected the fungus colonies from the experimental rig with 100% accuracy. In contrary, there were several false detections observed in detecting the fungus grown in the aircraft's fuel tank but it is still satisfactory.
基于图像处理的飞机油箱真菌检测自动化过程研究
由于其腐蚀性和产生的污泥,油箱中的真菌生长可能对飞机的安全有害。因此,维修通常是在一定的时间内进行的,通过有限的接入点,通过排干油箱来手动检查真菌的存在。这妨碍了对储罐的全面观察,导致未发现的真菌生长,这与检查的目的相反,以牺牲资源为代价。本研究的目的是基于相机的图像,自动化检测飞机油箱中真菌菌落的存在。据观察,真菌菌落经常不规则地形成在水箱内部结构的螺栓周围。这使得区分具有挑战性,因为螺栓边缘和真菌菌落的颜色相似。该算法旨在通过高斯滤波、自适应阈值、卷积消除流氓像素和边界计算来消除背景和边缘的挑战。该算法与从实验台和飞机油箱拍摄的图像进行了测试,其中算法以100%的准确率检测到来自实验台的真菌菌落。相反,在检测飞机燃料箱中生长的真菌时发现了几次误检,但仍然令人满意。
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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