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Multi-task Joint Sparse and Low-rank Representation Target Detection for Hyperspectral Image

机译:高光谱图像的多任务联合稀疏和低秩表示目标检测

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摘要

Target detection plays an important role in hyperspectral imagery (HSI) processing. Many detection algorithms have been proposed over the past decades. However, the existing detectors may encounter false alarms for ignoring target interference during background modeling and high correlations among adjacent bands. To address the target interference issue, we propose a novel joint-sparse and low-rank representation target detection algorithm for HSI, which separately models target and background pixels using different regularization methods. A background pixel in HSI can be modeled via sparse and low-rank representation using a background dictionary, whereas a target pixel can be modeled via sparse representation using a target dictionary. To reduce spectral redundancy, we further incorporated the detection model into a multitask learning framework. The final detection was made in favor of the class with the lowest total reconstruction error accumulated from all tasks. Experiments on two airborne HSIs demonstrated that multitask joint-sparse and low-rank representation (MTJSLR) outperformed other state-of-the-art detectors.
机译:目标检测在高光谱图像(HSI)处理中起着重要作用。在过去的几十年中已经提出了许多检测算法。但是,现有的检测器可能会遇到误报,从而忽略了背景建模期间的目标干扰以及相邻频段之间的高度相关性。为了解决目标干扰问题,我们为HSI提出了一种新颖的联合稀疏和低秩表示目标检测算法,该算法使用不同的正则化方法分别对目标像素和背景像素进行建模。可以使用背景字典通过稀疏和低秩表示对HSI中的背景像素进行建模,而可以使用目标字典通过稀疏表示对目标像素进行建模。为了减少频谱冗余,我们将检测模型进一步纳入了多任务学习框架。最终检测是对所有任务中累积的总重建误差最低的类的支持。在两个机载HSI上进行的实验表明,多任务联合稀疏和低秩表示(MTJSLR)优于其他最新的探测器。

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