Hierarchical Recognition System for Target Recognition from Sparse Representations

@inproceedings{Cui2015HierarchicalRS,
  title={Hierarchical Recognition System for Target Recognition from Sparse Representations},
  author={Zongyong Cui and Zongjie Cao and Jianyu Yang and Hongliang Ren},
  year={2015}
}
A hierarchical recognition system (HRS) based on constrained Deep Belief Network (DBN) is proposed for SAR Automatic Target Recognition (SAR ATR). As a classical Deep Learning method, DBN has shown great performance on data reconstruction, big data mining, and classification. However, few works have been carried out to solve small data problems (like SAR ATR) by Deep Learning method. In HRS, the deep structure and pattern classifier are combined to solve small data classification problems… CONTINUE READING

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