相似性度量
歧管(流体力学)
度量(数据仓库)
相似性(几何)
黎曼流形
数学
集合(抽象数据类型)
判别式
转化(遗传学)
人工智能
黎曼几何
欧几里德距离
点(几何)
算法
模式识别(心理学)
计算机科学
图像(数学)
纯数学
几何学
数据挖掘
工程类
化学
程序设计语言
基因
机械工程
生物化学
作者
Zhi Gao,Yuwei Wu,Mehrtash Harandi,Yunde Jia
出处
期刊:IEEE transactions on neural networks and learning systems
[Institute of Electrical and Electronics Engineers]
日期:2020-09-01
卷期号:31 (9): 3230-3244
被引量:32
标识
DOI:10.1109/tnnls.2019.2939177
摘要
The symmetric positive definite (SPD) matrices, forming a Riemannian manifold, are commonly used as visual representations. The non-Euclidean geometry of the manifold often makes developing learning algorithms (e.g., classifiers) difficult and complicated. The concept of similarity-based learning has been shown to be effective to address various problems on SPD manifolds. This is mainly because the similarity-based algorithms are agnostic to the geometry and purely work based on the notion of similarities/distances. However, existing similarity-based models on SPD manifolds opt for holistic representations, ignoring characteristics of information captured by SPD matrices. To circumvent this limitation, we propose a novel SPD distance measure for the similarity-based algorithm. Specifically, we introduce the concept of point-to-set transformation, which enables us to learn multiple lower dimensional and discriminative SPD manifolds from a higher dimensional one. For lower dimensional SPD manifolds obtained by the point-to-set transformation, we propose a tailored set-to-set distance measure by making use of the family of alpha-beta divergences. We further propose to learn the point-to-set transformation and the set-to-set distance measure jointly, yielding a powerful similarity-based algorithm on SPD manifolds. Our thorough evaluations on several visual recognition tasks (e.g., action classification and face recognition) suggest that our algorithm comfortably outperforms various state-of-the-art algorithms.
科研通智能强力驱动
Strongly Powered by AbleSci AI