Guanhua FengWeifeng LiuShuying LiDapeng TaoYicong Zhou
Learning effective image representations is a vital issue for remote sensing (RS) image recognition tasks. Although numerous algorithms have been proposed, it is still challenging due to the limited labeled data. One representative work is the Laplacian-regularized multitask dictionary learning (LR-MTDL) that employs graph Laplacian regularization terms to fully utilize both the labeled and unlabeled information. However, it probably conduces to poor extrapolating power because Laplacian regularization biases the solution toward a constant function. In this letter, we propose a Hessian-regularized multitask dictionary learning to learn a source-data set-shared but target-data set-biased representation for RS image recognition. Particularly, Hessian can properly exploit the intrinsic local geometry of the data manifold and finally leverage the performance. Extensive experiments on four RS image data sets validate the effectiveness of the proposed method by comparing with baseline algorithms including single-task dictionary learning and LR-MTDL.
Jie FangXiaoqian CaoDianwei WangShengjun Xu
Michael Ying YangSaif Dawood Salman Al-ShaikhliJiang TaoYanpeng CaoBodo Rosenhahn