Hyperspectral Target Detection Using Long Short-Term Memory and Spectral Angle Mapper

B. Demirel, Omer Özdil, Yunus Emre Esin, Şafak Öztürk
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引用次数: 1

Abstract

Hyperspectral images are obtained by dividing the electromagnetic spectrum into hundreds of narrow bands. Thanks to this feature, hyperspectral imaging is successful in distinguishing surface materials and is frequently used in target detection. In this study, long short-term memory and spectral angle mapper are used to detect targets in images obtained from the VNIR sensor. Deep neural networks require annotated data related to each target and also background classes for target detection in hyperspectral images. In this study, the background objects are eliminated by using the spectral angle mapper as a kind of filter, and the long short-term memory is only trained on the candidate target signatures. Therefore, data annotation activities are carried out only for candidate target classes and data annotation cost is reduced. In addition, the experimental results show that the long short-term memory model, which is trained on signatures collected from 30 meter heights, detects targets successfully independently of height.
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基于长短期记忆和光谱角成像仪的高光谱目标检测
高光谱图像是通过将电磁波谱划分为数百个窄带而获得的。由于这一特点,高光谱成像在识别表面材料方面取得了成功,并经常用于目标检测。在本研究中,利用长短期记忆和光谱角度成像仪对近红外传感器获得的图像进行目标检测。深度神经网络需要与每个目标相关的注释数据以及用于高光谱图像中目标检测的背景类。在本研究中,利用谱角映射器作为一种滤波器来消除背景目标,只对候选目标特征进行长短期记忆训练。因此,只对候选目标类进行数据注释活动,降低了数据注释成本。此外,实验结果表明,长短期记忆模型能够独立于高度对目标进行识别。
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