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Airport Aircraft Target Detection Based on Space Spectrum Feature Fusion

机译:基于空间谱特征融合的机场飞机目标检测

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Due to the complexity of airport background, the traditional method of aircraft target detection usually brings a lot of false alarms or missed detection. In this paper, the full convolution network is used to extract spatial features, which are combined with spectral features, and the active learning method is used to select the hyperspectral image target detection algorithm of training samples. By combining the spectral characteristics of pixels and the spatial correlation between adjacent pixels, the comprehensive features which can reflect the spatial spectral joint characteristics of pixels are extracted, and the expression ability of pixel features is improved. The experimental results on multiple data sets show that the proposed method is suitable for the detection of small and weak targets with certain structural information, and has a good effect on the detection of aircraft targets in airport background.
机译:由于机场背景的复杂性,传统的飞机目标检测方法通常会带来大量的误报或漏检。本文采用全卷积网络提取空间特征并结合光谱特征,采用主动学习方法选择训练样本的高光谱图像目标检测算法。通过结合像素的光谱特征和相邻像素之间的空间相关性,提取出能够反映像素的空间光谱联合特征的综合特征,提高了像素特征的表达能力。在多个数据集上的实验结果表明,该方法适用于具有一定结构信息的小目标和弱目标的检测,对机场背景下飞机目标的检测有很好的效果。

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