作者
Jie Xu, Lei Luo, Cheng Deng, Heng Huang
发表日期
2018/7/19
图书
Proceedings of the 24th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining
页码范围
2555-2564
简介
topic with many real-world applications. Most existing metric learning methods aim to learn an optimal Mahalanobis distance matrix M, under which data samples from the same class are forced to be close to each other and those from different classes are pushed far away. The Mahalanobis distance matrix M can be factorized as M = L'L, and the Mahalanobis distance induced by L is equivalent to the Euclidean distance after linear projection of the feature vectors on the rows of L. However, the Euclidean distance is only suitable for characterizing Gaussian noise, thus the traditional metric learning algorithms are not robust to achieve good performance when they are applied to the occlusion data, which often appear in image and video data mining applications. To overcome this limitation, we propose a new robust metric learning approach by introducing the maximum correntropy criterion to deal with real-world …
引用总数
20192020202120222023202443521
学术搜索中的文章
J Xu, L Luo, C Deng, H Huang - Proceedings of the 24th ACM SIGKDD International …, 2018