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Application of image segmentation based on the artificial bee colony algorithm in fire detection of mine belt conveyor

机译:基于人工蜂群算法的图像分割在矿带输送机火灾探测中的应用

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The traditional method of mine belt conveyor fire accident detection is limited. A novel image processing method is proposed in this paper, which combines 2D-Dimensional Otsu, Canny dge detection and Artificial Bee Colony algorithm. The noise interference of image is reduced by using median filtering techniques. In order to obtain gray value and neighborhood gray scale average, 2-Dimensional histogram of image is constructed. The fitness function of Artificial Bee Colony algorithm is designed by 2-Dimensional Otsu method and the maximum value of the fitness function is the optimal threshold for image segmentation. Finally, the canny edge detection and grayscale morphology were used to extract the target. Theoretical analysis and simulation results show that the proposed method is effective to detect fire accident of mine belt conveyor in complex undeground environment.
机译:矿井带式输送机火灾事故检测的传统方法是有限的。提出了一种结合二维二维大津,Canny dge检测和人工蜂群算法的图像处理方法。通过使用中值滤波技术可以减少图像的噪声干扰。为了获得灰度值和邻域灰度平均值,构造图像的二维直方图。通过二维Otsu方法设计了人工蜂群算法的适应度函数,适应度的最大值是图像分割的最佳阈值。最后,使用canny边缘检测和灰度形态学提取目标。理论分析和仿真结果表明,该方法可有效检测复杂地下环境下矿带输送机的火灾事故。

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