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Aircraft Detection in Remote Sensing Imagery with Lightweight Feature Pyramid Network

机译:具有轻量级特征金字塔网络的遥感图像中的飞机检测

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Object detection is an important part of remote sensing image processing and analysis. Traditional object detection methodsin remote sensing imagery encounter with tough challenges when detecting small objects such as aircrafts and automobiles,due to complex background clutter, small target size, variation of visual angle, etc. We propose a targets detection networkto detect the aircrafts in large-format remote sensing imagery based on deep convolutional neural network. Our methodutilizes the Feature Pyramid Network (FPN [1]) to extract and inosculate multi-scale convolutional features to model thecharacteristics of targets and background. Moreover, in order to reduce the computational complexity of convolutionalneural network, we utilize MobileNet [2] as backbone network and propose a computational efficient region proposalstructure. We collect and manually annotate a dataset for aircrafts detection in remote sensing imagery in order to evaluatethe proposed method. We achieve an average precision (AP) of 0.91 on the dataset, which is superior to other state-of-theartmethods, while our model is still faster and more compact than other models.
机译:对象检测是遥感图像处理和分析的重要组成部分。传统物体检测方法在遥感图像中,在检测飞机和汽车等小型物体时遇到艰难的挑战,由于复杂的背景杂乱,小目标大小,视角变化等。我们提出了目标检测网络基于深卷积神经网络检测大型遥感图像中的飞机。我们的方法利用特征金字塔网络(FPN [1])来提取和侵入多尺度卷积功能以模拟目标与背景的特征。此外,为了降低卷积的计算复杂性神经网络,我们利用MobileNet [2]作为骨干网络,提出计算有效的区域提案结构体。我们在遥感图像中收集并手动注释用于飞机检测的数据集,以便评估所提出的方法。我们在数据集上达到0.91的平均精度(AP),其优于其他状态方法,而我们的模型仍然比其他型号更快且更紧凑。

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