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Remote Sensing Image Segmentation of Pipeline High Consequence Area Based on Bee Colony Strategy Fuzzy MRF Algorithm

机译:基于蜜蜂殖民策略模糊MRF算法的管道高后果面积遥感图像分割

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摘要

Oil pipeline is a kind of high-risk continuous transportation system. High consequence area refers to the area where public life as well as property are endangered and even the environment is polluted after pipeline leakage. Through the analysis of remote sensing images, the position of oil pipeline and the change of its surrounding environment can be determined, and the monitoring and protection of oil pipeline in high consequence area can be realized. Aiming at the problems of low segmentation accuracy, difficulty in obtaining global optimal solution and low efficiency caused by prior knowledge of classical Markov image segmentation. A fuzzy Markov random field algorithm based on artificial bee colony strategy is proposed. Firstly, according to the initial image segmentation results, pixels are divided into definite points and fuzzy points, and only fuzzy points are calculated. Secondly, a Markov algorithm based on artificial bee colony strategy is designed, which can adaptively select potential function parameters for different images. Finally, the improved algorithm is applied to remote sensing image segmentation in high consequence area of oil pipeline. By comparing multiple images, performance parameters and algorithms, it is proved that the improved algorithm has better optimization ability and convergence performance.
机译:石油管道是一种高风险的连续运输系统。高后果区域是指公共生活以及财产濒临灭绝的地区,甚至环境在管道泄漏后污染。通过对遥感图像的分析,可以确定石油管道的位置和其周围环境的变化,并且可以实现高后果区域中的石油管道的监测和保护。针对低分割准确性的问题,难以获得全球最佳解决方案和由经典马尔可夫图像分割的先验知识引起的低效率。提出了一种基于人工蜂殖民地战略的模糊马尔可夫随机场算法。首先,根据初始图像分割结果,像素被分成明确的点和模糊点,并且仅计算模糊点。其次,设计了一种基于人造蜂殖民地策略的马尔可夫算法,可以自适应地选择不同图像的潜在功能参数。最后,将改进的算法应用于石油管道高后果区域的遥感图像分割。通过比较多个图像,性能参数和算法,证明了改进的算法具有更好的优化能力和收敛性能。

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  • 来源
    《Canadian Journal of Remote Sensing》 |2021年第5期|749-772|共24页
  • 作者单位

    School of Electrical Information Engineering Northeast Petroleum University Daqing 163318 China Heilongjiang Provincial Key Laboratory of Networking and Intelligent Control Daqing 163318 China Bohai-rim Energy Research Institute of NEPU Qinhuangdao 066004 China;

    School of Electrical Information Engineering Northeast Petroleum University Daqing 163318 China Heilongjiang Provincial Key Laboratory of Networking and Intelligent Control Daqing 163318 China Bohai-rim Energy Research Institute of NEPU Qinhuangdao 066004 China;

    School of Electrical Information Engineering Northeast Petroleum University Daqing 163318 China Heilongjiang Provincial Key Laboratory of Networking and Intelligent Control Daqing 163318 China;

    School of Electrical Information Engineering Northeast Petroleum University Daqing 163318 China Heilongjiang Provincial Key Laboratory of Networking and Intelligent Control Daqing 163318 China;

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