论文标题
与高光谱异常检测的联合词典无负限制的联合协作表示
Nonnegative-Constrained Joint Collaborative Representation with Union Dictionary for Hyperspectral Anomaly Detection
论文作者
论文摘要
最近,为高光谱异常检测提出了许多基于协作的表示(CR)算法。基于CR的检测器通过背景字典和系数矩阵的线性组合近似图像,并通过利用恢复残差来得出检测图。但是,这些基于CR的探测器通常是在精确的背景特征和强大图像表示的前提下建立的,这是很难获得的。此外,追求一般$ l_2 $ -min加强的系数矩阵非常耗时。为了解决这些问题,在本文中提出了一个非负约束的联合协作代表模型,以实施高光谱异常检测任务。为了提取可靠的样品,设计了一个由背景和异常次序组成的联合词典,其中设计了背景次序词,在超像素水平上获得,并通过检测前的过程提取异常次数。系数矩阵由Frobenius Norm正则合并,具有非负约束和总约束。在优化过程之后,最终通过计算排除假定背景信息的残差来得出异常信息。为了进行可比的实验,在四个HSI数据集中测试了提出的非负约束的联合协作表示(NJCR)模型(NJCR)模型(KNJCR),并与其他最先进的检测器相比,取得了卓越的结果。
Recently, many collaborative representation-based (CR) algorithms have been proposed for hyperspectral anomaly detection. CR-based detectors approximate the image by a linear combination of background dictionaries and the coefficient matrix, and derive the detection map by utilizing recovery residuals. However, these CR-based detectors are often established on the premise of precise background features and strong image representation, which are very difficult to obtain. In addition, pursuing the coefficient matrix reinforced by the general $l_2$-min is very time consuming. To address these issues, a nonnegative-constrained joint collaborative representation model is proposed in this paper for the hyperspectral anomaly detection task. To extract reliable samples, a union dictionary consisting of background and anomaly sub-dictionaries is designed, where the background sub-dictionary is obtained at the superpixel level and the anomaly sub-dictionary is extracted by the pre-detection process. And the coefficient matrix is jointly optimized by the Frobenius norm regularization with a nonnegative constraint and a sum-to-one constraint. After the optimization process, the abnormal information is finally derived by calculating the residuals that exclude the assumed background information. To conduct comparable experiments, the proposed nonnegative-constrained joint collaborative representation (NJCR) model and its kernel version (KNJCR) are tested in four HSI data sets and achieve superior results compared with other state-of-the-art detectors.