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Unsupervised Hyperspectral Target Detection Using Spectral Residual of Deep Autoencoder Networks

机译:使用深度自编码器网络的频谱残差进行无监督的高光谱目标检测

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Unsupervised hyperspectral target detection has attracted considerable attention in different applicable fields like environmental protection, agriculture monitoring, human rescue and etc. Due to the complexity of the background of hyperspectral images, accurate detection of target pixels using background estimation are faces lots of challenges which cause low accurate detection rates and high false alarm rates. In this paper we proposed an approach to estimate the background using a deep autoencoder neural networks architecture, then spectral residual error between the original hyperspectral image and the estimated one is considered for target detection using an exponential function. For evaluating the effectiveness and potency of the proposed method, several experiments are carried out on the well-known and challenging Hyperion dataset and the results are compared with some state-of-the-art methods. The visual and quantitative assessments show how spectral residual point of view using autoencoder networks can make high detection rates and low false alarms simultaneously.
机译:无监督的高光谱目标检测已在环境保护,农业监测,人类救援等不同应用领域引起了广泛关注。由于高光谱图像背景的复杂性,使用背景估计进行目标像素的精确检测面临着许多挑战,这些挑战导致准确率低,误报率高。在本文中,我们提出了一种使用深层自动编码器神经网络体系结构估计背景的方法,然后考虑使用指数函数对原始高光谱图像和估计的图像之间的光谱残留误差进行目标检测。为了评估所提出方法的有效性和效力,在众所周知且具有挑战性的Hyperion数据集上进行了一些实验,并将结果与​​一些最新方法进行了比较。视觉和定量评估显示了使用自动编码器网络的频谱残留视点如何能够同时实现高检测率和低误报。

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