光电子快报(英文版), 2017, 13 (6): 462, Published Online: Sep. 13, 2018  

Discriminatively learning for representing local image features with quadruplet model

Author Affiliations
College of Computer Science and Technology, Zhejiang University, Hangzhou 310027, China
Abstract
Traditional hand-crafted features for representing local image patches are evolving into current data-driven and learning-based image feature, but learning a robust and discriminative descriptor which is capable of controlling various patch-level computer vision tasks is still an open problem. In this work, we propose a novel deep convolutional neural network (CNN) to learn local feature descriptors. We utilize the quadruplets with positive and negative training samples, together with a constraint to restrict the intra-class variance, to learn good discriminative CNN representations. Compared with previous works, our model reduces the overlap in feature space between corresponding and non-corresponding patch pairs, and mitigates margin varying problem caused by commonly used triplet loss. We demonstrate that our method achieves better embedding result than some latest works, like PN-Net and TN-TG, on benchmark dataset.

Da-long Zhang, Lei Zhao, Duan-qing Xu, Dong-ming Lu. Discriminatively learning for representing local image features with quadruplet model[J]. 光电子快报(英文版), 2017, 13(6): 462.

关于本站 Cookie 的使用提示

中国光学期刊网使用基于 cookie 的技术来更好地为您提供各项服务,点击此处了解我们的隐私策略。 如您需继续使用本网站,请您授权我们使用本地 cookie 来保存部分信息。
全站搜索
您最值得信赖的光电行业旗舰网络服务平台!