Different from the existing approaches that usually utilize single view information of image sets to recognize persons, multi-view information of image sets is exploited in this paper, where a novel method called Co-Learned Multi-View Spectral Clustering (CMSC) is proposed to recognize faces based on image sets. In order to make sure that a data point under different views is assigned to the same cluster, we propose an objective function that optimizes the approximations of the cluster indicator vectors for each view and meanwhile maximizes the correlations among different views. Instead of using an iterative method, we relax the constraints such that the objective function can be solved immediately. Experiments are conducted to demonstrate...
Pattern recognition is an emerging research area that studies the operation and design of systems th...
© 2017 IEEE. In multi-view learning, data is described through multiple representations or views. Mu...
In many computer vision and machine learning applications, the data sets distribute on certain low-d...
Different from the existing approaches that usually utilize single view information of image sets to...
In many real-world computer vision applications, such as multi-camera surveillance, the objects of i...
In many real-world computer vision applications, such as multi-camera surveillance, the objects of i...
Abstract It is a challenging task to integrate multi-view representations, each of which is of high ...
© 2014 IEEE. For a given data set, exploring their multi-view instances under a clustering framework...
This paper presents a methodology that tackles the face recognition problem by accommodating multipl...
Sparse representation and cooperative learning are two representative technologies in the field of m...
In an era of big data, face images captured in social media and forensic investigations, etc., gener...
In this paper we create an algorithm in order to cluster faces. Our approach is based on the mutual ...
In this paper we consider to study the distribution of the vectors of face in the dimensional space ...
In this paper, we focus on face clustering in videos. To promote the performance of video clustering...
In many problem domains data may come from multiple sources (or views), such as video and audio from...
Pattern recognition is an emerging research area that studies the operation and design of systems th...
© 2017 IEEE. In multi-view learning, data is described through multiple representations or views. Mu...
In many computer vision and machine learning applications, the data sets distribute on certain low-d...
Different from the existing approaches that usually utilize single view information of image sets to...
In many real-world computer vision applications, such as multi-camera surveillance, the objects of i...
In many real-world computer vision applications, such as multi-camera surveillance, the objects of i...
Abstract It is a challenging task to integrate multi-view representations, each of which is of high ...
© 2014 IEEE. For a given data set, exploring their multi-view instances under a clustering framework...
This paper presents a methodology that tackles the face recognition problem by accommodating multipl...
Sparse representation and cooperative learning are two representative technologies in the field of m...
In an era of big data, face images captured in social media and forensic investigations, etc., gener...
In this paper we create an algorithm in order to cluster faces. Our approach is based on the mutual ...
In this paper we consider to study the distribution of the vectors of face in the dimensional space ...
In this paper, we focus on face clustering in videos. To promote the performance of video clustering...
In many problem domains data may come from multiple sources (or views), such as video and audio from...
Pattern recognition is an emerging research area that studies the operation and design of systems th...
© 2017 IEEE. In multi-view learning, data is described through multiple representations or views. Mu...
In many computer vision and machine learning applications, the data sets distribute on certain low-d...