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A Fine-grained Recognition Model of Air Targets Based on Bilayer Faster R-CNN with Feedback

机译:基于双层的空气目标识别模型,基于双层的R-CNN具有反馈

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The accuracy of air target identification is of great significance for air defense operations and civilian management. A finegrained recognition model of aerial target based on bilayer faster regions with convolution neural network (Faster R-CNN) with feedback is proposed in the paper. Faster R-CNN model is a typical target detection model based on deep learning. However, its ability to distinguish categories with subtle differences is not enough. In the proposed model. Faster R-CNN model is used for the first training to get a classification model and the clustering analysis of the classification result is used to get confused categories. Then the first training model is fine-tuned to retrain the confusing categories. The model is tested in the FGVC-Aircraft-2013b data set, and the average training accuracy is raised from 88.7% to 89.3%, the accuracy of the classification is raised from 88.98% to 91.21%, which shows that this model is effective in improving the fine-grained identification of air targets.
机译:空中目标识别的准确度是对防空作战和民用的管理具有重要意义。基于双层更快与反馈卷积神经网络(更快的R-CNN)区域空中目标的细粒识别模型在本文提出。更快的R-CNN模型是基于深学习的典型目标检测模型。然而,其细微的差别来区分类别的能力是不够的。在该模型。更快的R-CNN模型用于第一训练来获得分类模型和分类结果的聚类分析是用来获取混淆类别。然后第一个训练模式是微调,以重新训练混淆类别。该模型是在FGVC-飞机-2013b数据集进行测试,平均训练精度从88.7%提高到89.3%,分类的准确度从88.98%提高到91.21%,这表明,该模型是有效的提高细粒度识别空中目标。

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