@article{Zhong_Gong_2017, title={A Hybrid DBN and CRF Model for Spectral-Spatial Classification of Hyperspectral Images}, volume={5}, url={http://iapress.org/index.php/soic/article/view/soic170601}, DOI={10.19139/soic.v5i2.309}, abstractNote={Hyperspectral image classification plays an important role in remote sensing image analysis. Recent techniques have attempted to investigate the capabilities of deep learning approaches to tackle the hyperspectral image classification. This work shows how to further improve the hyperspectral image classification through using both a deep representation and contextual information. To implement this objective, this work proposes a new Conditional Random Field (CRF) model (named DBN-CRF) with the potentials defined over the deep features produced by a Deep Belief Network (DBN). The newly formulated DBN-CRF model takes advantage of the strength of DBNs in learning a good representation and the ability of CRFs to model contextual (spatial) information in both the observations and labels. Within a piecewise training framework, an efficient training method is proposed to train the whole DBN-CRF model end-to-end. This means that the parameters in DBN and CRF can be jointly trained and thus the proposed method can fully use the strength of both DBN and CRF. Moreover, in the proposed training method, the end-to-end training can be implemented with a standard back-propagation algorithm, avoiding the repeated inference usually involved in CRF training and thus is computationally efficient. Experiments on real-world hyperspectral data show that our method outperforms the most recent approaches in hyperspectral image classification.}, number={2}, journal={Statistics, Optimization & Information Computing}, author={Zhong, Ping and Gong, Zhiqiang}, year={2017}, month={Jun.}, pages={75-98} }