Deep Learning for Recognizing Mobile Targets in Satellite Imagery

M. D. Pritt
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引用次数: 7

Abstract

There is an increasing demand for software that automatically detects and classifies mobile targets such as airplanes, cars, and ships in satellite imagery. Applications of such automated target recognition (ATR) software include economic forecasting, traffic planning, maritime law enforcement, and disaster response. This paper describes the extension of a convolutional neural network (CNN) for classification to a sliding window algorithm for detection. It is evaluated on mobile targets of the xView dataset, on which it achieves detection and classification accuracies higher than 95%.
基于深度学习的卫星图像移动目标识别
在卫星图像中自动检测和分类飞机、汽车、船舶等移动目标的软件的需求正在增加。这种自动目标识别(ATR)软件的应用包括经济预测、交通规划、海事执法和灾难响应。本文描述了将卷积神经网络(CNN)用于分类扩展到用于检测的滑动窗口算法。在xView数据集的移动目标上进行了评估,检测和分类准确率均在95%以上。
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