This letter proposes a robust feature matching algorithm for remote sensing images based on l q -estimator. We start with a set of initial matches provided by a feature matching method such as scale-invariant feature transform and then focus on global transformation estimation from contaminated observations and outliers elimination as well. We use an affine model to describe the global transformation and minimize a new cost function based on l q -norm. We apply an augmented Lagrangian function and an alternating direction method of multipliers to solve such a nonconvex and nonsmooth optimization problem. Extensive experiments on real remote sensing data demonstrate that the proposed method is effective, efficient, and robust. Our method outperforms state-of-the-art methods and can easily handle situations with up to 90% outliers. In addition, the proposed method is much faster than RANSAC.
Qiaoliang LiGuoyou WangJianguo LiuShaobo Chen
Yan GuoJinwei WangWeizhi ZhongYanfeng Gu
Qing MaXu DuJiahao WangYong MaJiayi Ma
Xingyu JiangJiayi MaAoxiang FanHaiping XuGeng LinTao LüXin Tian
Guobao XiaoHuan LuoKun ZengLeyi WeiJiayi Ma