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Learning Conditional Random Fields for Classification of Hyperspectral Images

机译:学习条件随机场用于高光谱图像分类

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Hyperspectral images exhibit strong dependencies across spatial and spectral neighbors, which have been proved to be very useful for hyperspectral image classification. State-of-the-art hyperspectral image classification algorithms use the dependencies in a heuristic way or in probabilistic frameworks but impose unreasonable assumptions on observed data. In this paper, we formulate a conditional random field (CRF) to replace such heuristics and unreasonable assumptions for the classification of hyperspectral images. Moreover, because of avoiding explicit modeling of the observed data, the proposed method can incorporate the classification of hyperspectral images with different statistics characteristics into a unified probabilistic framework. Since the usual classification task for hyperspectral images needs the proposed CRF to be trained on local samples, available global training methods cannot be directly used. Under piecewise training framework, this paper develops an efficient local method to train the CRF. It is efficiently implemented through separated trainings of simple classifiers defined by corresponding potentials. However, the independent classifier trainings may lead to over-counting problems during inference. So we further propose a strategy to combine the independently trained models to obtain final CRF model. Experiments on real-world hyperspectral data show that our algorithm is competitive with the most recent results in hyperspectral image classification.
机译:高光谱图像在空间和光谱邻居之间表现出很强的依赖性,这已被证明对于高光谱图像分类非常有用。最新的高光谱图像分类算法以启发式方式或概率框架使用相关性,但对观测数据施加不合理的假设。在本文中,我们制定了条件随机场(CRF)来代替用于高光谱图像分类的这种启发式方法和不合理的假设。此外,由于避免了对观测数据的显式建模,所提出的方法可以将具有不同统计特征的高光谱图像的分类纳入统一的概率框架。由于高光谱图像的常规分类任务需要在局部样本上对建议的CRF进行训练,因此无法直接使用可用的全局训练方法。在分段训练框架下,本文提出了一种有效的局部方法来训练CRF。通过分别训练由相应电位定义的简单分类器,可以有效地实现此目标。但是,独立分类器训练可能会导致推理过程中的计数过多问题。因此,我们进一步提出了一种策略,将独立训练的模型结合起来以获得最终的CRF模型。在现实世界中的高光谱数据实验表明,我们的算法与高光谱图像分类的最新结果相比具有竞争力。

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