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To be or not to be convex? A study on regularization in hyperspectral image classification

机译:是凸还是不凸?高光谱图像分类中的正则化研究

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Hyperspectral image classification has long been dominated by convex models, which provide accurate decision functions exploiting all the features in the input space. However, the need for high geometrical details, which are often satisfied by using spatial filters, and the need for compact models (i.e. relying on models issued form reduced input spaces) has pushed research to study alternatives such as sparsity inducing regularization, which promotes models using only a subset of the input features. Although successful in reducing the number of active inputs, these models can be biased and sometimes offer sparsity at the cost of reduced accuracy. In this paper, we study the possibility of using non-convex regularization, which limits the bias induced by the regularization. We present and compare four regularizers, and then apply them to hyperspectral classification with different cost functions.
机译:长期以来,高光谱图像分类一直以凸模型为主导,凸模型可利用输入空间中的所有特征提供准确的决策功能。但是,对高​​几何细节的需求(通常可以通过使用空间过滤器来满足)以及对紧凑模型的需求(即依赖于从减少的输入空间发出的模型)推动了研究诸如稀疏性诱导正则化等替代方法的研究,从而促进了模型的发展。仅使用一部分输入功能。尽管成功地减少了有效输入的数量,但是这些模型可能会有偏差,有时会以降低精度为代价提供稀疏性。在本文中,我们研究了使用非凸正则化的可能性,它限制了由正则化引起的偏差。我们提出并比较四个正则器,然后将它们应用于具有不同成本函数的高光谱分类。

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