Multi-scale Fast Detection of Objects in High Resolution Remote Sensing Images

Longwei Li, Jiangbo Xi, Wandong Jiang, Ming Cong, Ling Han, Yun Yang
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Abstract

Objects detection in high resolution (HR) remote sensing images plays an important role in modern military, national defense, and commercial field. Because of a variety of object types and different sizes, it is difficulty to realize the rapid detection of multi-scale high resolution remote sensing objects, and provides support for succeeding decision making responses. This paper proposes a multi-scale fast detection method of remote sensing image objects with deep learning model, named YOLOv3. The COCO data model is used to establish the high resolution remote sensing image set based on the NWPU data. The proposed model can realize automatic learning of object features, which has good properties on generalization and robustness. It can also overcome the deficiency of traditional object detection method needing manual feature design for different objects. The experimental results show that the average detection accuracy of objects with different sizes in high resolution remote sensing images can reach 93.50%, which demonstrates that the proposed method can achieve rapid detection of different types of multi-scale objects.
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高分辨率遥感图像中目标的多尺度快速检测
高分辨率遥感图像目标检测在现代军事、国防和商业领域发挥着重要作用。由于目标类型多样、大小不一,难以实现多尺度高分辨率遥感目标的快速检测,为后续的决策响应提供支持。本文提出了一种基于深度学习模型的遥感影像目标多尺度快速检测方法YOLOv3。利用COCO数据模型,建立了基于NWPU数据的高分辨率遥感影像集。该模型能够实现对象特征的自动学习,具有良好的泛化和鲁棒性。它还可以克服传统目标检测方法需要针对不同目标进行人工特征设计的不足。实验结果表明,高分辨率遥感图像中不同尺寸目标的平均检测精度可达93.50%,表明该方法可以实现不同类型多尺度目标的快速检测。
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