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Detection of Bird Nests on Power Line Patrol Using Single Shot Detector

机译:使用单发检测器检测电力线巡逻中的鸟巢

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The presence of the bird nests on the electric power tower becomes a hazard to the safety and stability of the transmission line. In recent years, detecting the bird nests on the transmission line by using drones is being one of the essential missions of power inspection. The migration of image processing methods from computer vision to power image identification has increasingly becoming a trend. The detection method combining Single Shot Detector and HSV color space filter is proposed in this paper to identify the bird nests by making use of the image features with a large color span under different illumination angles. The fine-tuned Single Shot Detector network is trained and utilized to identify the bird nests and the detection result is clipped which called sub-images. Then the sub-images are filtered by the selector based on HSV color space, who contains none object of bird nests can be removed by the pixel percentage. The experimental results show that the proposed method can accurately detect the bird nests in the testing transmission line inspection images, and the accuracy can be up to 98.23%. Compared with other single traditional methods, the proposed bird nests detection method combining the deep learning and the HSV color space filter greatly enhances the detection accuracy.
机译:在电力塔上出现鸟巢会对传输线的安全性和稳定性造成危害。近年来,使用无人机检测传输线上的鸟巢是电力检查的基本任务之一。图像处理方法从计算机视觉到强大的图像识别的迁移已越来越成为一种趋势。提出了一种结合单镜头检测器和HSV彩色空间滤光片的检测方法,利用在不同照明角度下具有较大色跨的图像特征来识别燕窝。经过微调的单发检测器网络经过训练并用于识别鸟巢,并且将检测结果剪裁为所谓的子图像。然后,选择器根据HSV颜色空间对子图像进行过滤,其中不包含鸟巢的对象可以通过像素百分比去除。实验结果表明,该方法能够准确地检测出测试传输线检查图像中的鸟巢,准确率可达98.23%。与其他单一传统方法相比,提出的结合深度学习和HSV色彩空间滤镜的燕窝检测方法大大提高了检测精度。

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