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Research on Parallel Detection Technology of Remote Sensing Object Based on Deep Learning

机译:基于深度学习的遥感目标并行检测技术研究

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In recent years, methods based on deep learning have become a hot spot and trend in the field of remote sensing object detection, and a series of encouraging results have been achieved. With the development of science and technology, people's technology and ability to acquire remote sensing data have been comprehensively improved, and high-resolution large-scale remote sensing image data has increased dramatically. However, the current mainstream object detection models cannot directly input large-scale high-resolution images for prediction. This paper proposes a remote sensing object parallel detection algorithm, which uses the mpi4py module to realize multi-CPU+GPU distributed parallel processing. Based on the yolov4 object detection model, it can detect remote sensing images of any scale without reducing the prediction accuracy. And shorten the object detection time according to the number of distributed nodes. The experimental results show that the parallel algorithm has a high speedup ratio, and the parallel detection technology has a good development prospect in the field of remote sensing image object detection.
机译:近年来,基于深度学习的方法已成为遥感目标检测领域的热点和趋势,并取得了一系列令人鼓舞的成果。随着科学技术的发展,人们获取遥感数据的技术和能力得到了全面提高,高分辨率的大规模遥感图像数据急剧增加。然而,目前主流的目标检测模型无法直接输入大规模高分辨率图像进行预测。提出了一种遥感目标并行检测算法,利用mpi4py模块实现多CPU+GPU分布式并行处理。基于yolov4目标检测模型,它可以在不降低预测精度的情况下检测任何尺度的遥感图像。根据分布式节点的数量,缩短目标检测时间。实验结果表明,并行算法具有较高的加速比,并行检测技术在遥感图像目标检测领域具有良好的发展前景。

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