Hyunduk KimSang‐Heon LeeMyoung‐Kyu Sohn
Sparse coding (SC) method has been shown to deliver successful result in a variety of computer vision applications. However, it does not consider the underlying structure of the data in the feature space. On the other hand, locality constrained linear coding (LLC) utilizes locality constraint to project each input data into its local-coordinate system. Based on the recent success of LLC, we propose a novel locality-constrained sparse coding (LSC) method to overcome the limitation of the SC. In experiments, the proposed algorithms were applied to head pose estimation applications. Experimental results demonstrated that the LSC method is better than state-of-the-art methods.
Hyunduk KimMyoung‐Kyu SohnDong‐Ju KimSang‐Heon Lee
Wen-Hoar HsaioChien‐Liang LiuWei-Liang Wu
Hao JiRisheng LiuFei SuZhixun SuYan Tian