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Remote Sensing Image Aircraft Target Detection Based on GIoU-YOLO v3

机译:基于Giou-Yolo V3的遥感图像飞机目标检测

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Based on the YOLO v3 target detection framework, this paper trains and learns the public remote sensing image aircraft target data, and optimizes the defects of the YOLO v3 loss function, and introduces the IoU (intersection ratio) between the ground-true box and the prediction box, experimental results show that the precision, recall ratio and F1 value of the YOLO v3 model for aircraft target detection in remote sensing images are 95.12%, 86.21% and 0.9045, respectively. Compared with the previous ones, the network precision, recall rate and F1 value of the optimized loss function have been improved by 12.57%, 5.11% and 0.0863 respectively.
机译:基于YOLO V3目标检测框架,本文列车并学习公共遥感图像飞机目标数据,并优化YOLO V3损耗功能的缺陷,并在地面真实框和地面之间引入IOO(交叉点) 预测箱,实验结果表明,遥感图像中飞机目标检测的yolo V3模型的精度,召回比率和F1值分别为95.12%,86.21%和0.9045。 与以前的比较,优化损失功能的网络精度,召回率和F1值分别提高了12.57%,5.11%和0.0863。

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