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A Generalized Representation-based Approach for Hyperspectral Image Classification

机译:基于广义表示的高光谱图像分类方法

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Sparse representation-based classifier (SRC) is of great interest recently for hyperspectral image classification. It is assumed that a testing pixel is linearly combined with atoms of a dictionary. Under this circumstance, the dictionary includes all the training samples. The objective is to find a weight vector that yields a minimum L2 representation error with the constraint that the weight vector is sparse with a minimum L1 norm. The pixel is assigned to the class whose training samples yield the minimum error. In addition, collaborative representation-based classifier (CRC) is also proposed, where the weight vector has a minimum L2 norm. The CRC has a closed-form solution; when using class-specific representation it can yield even better performance than the SRC. Compared to traditional classifiers such as support vector machine (SVM), SRC and CRC do not have a traditional training-testing fashion as in supervised learning, while their performance is similar to or even better than SVM. In this paper, we investigate a generalized representation-based classifier which uses Lq representation error, Lp weight norm, and adaptive regularization. The classification performance of Lq and Lp combinations is evaluated with several real hyperspectral datasets. Based on these experiments, recommendation is provide for practical implementation.
机译:近年来,基于稀疏表示的分类器(SRC)对于高光谱图像分类非常感兴趣。假定测试像素与字典的原子线性组合。在这种情况下,词典将包含所有训练样本。目的是找到一个具有最小L2表示误差的权重向量,并具有以最小L1范数最小的权重向量的约束。将像素分配给其训练样本产生最小误差的类。此外,还提出了基于协作表示的分类器(CRC),其中权向量具有最小的L2范数。 CRC具有封闭形式的解决方案;当使用特定于类的表示形式时,它可以产生比SRC更好的性能。与传统分类器(如支持向量机(SVM))相比,SRC和CRC不像监督学习中那样具有传统的训练测试方式,尽管它们的性能与SVM相似甚至更好。在本文中,我们研究了一种基于广义表示的分类器,该分类器使用Lq表示误差,Lp权范数和自适应正则化。 Lq和Lp组合的分类性能通过几个真实的高光谱数据集进行评估。基于这些实验,为实际实施提供了建议。

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