This thesis has investigated how to cluster a large number of faces within a multi-media corpus in the presence of large session variation. Quality metrics are used to select the best faces to represent a sequence of faces; and session variation modelling improves clustering performance in the presence of wide variations across videos. Findings from this thesis contribute to improving the performance of both face verification systems and the fully automated clustering of faces from a large video corpus
The objective of this work is person-clustering in videos – grouping characters according to their i...
The goal of this paper is unsupervised face clustering in edited video material – where face tracks ...
Meetings are an integral part of business life for any or-ganization. In previous work, we have deve...
Clustering identities in a video is a useful task to aid in video search, annotation and retrieval, ...
Human faces represent not only a challenging recognition problem for computer vision, but are also a...
We address the problem of face clustering in long, real world videos. This is a challenging task bec...
In this paper, we focus on face clustering in videos. Given the detected faces from real-world video...
Balancing computational efficiency with recognition accuracy is one of the major challenges in real-...
In this thesis, we study two problems based on clustering algorithms. In the first problem, we study...
Balancing computational eciency with recognition accuracy is one of the major challenges in real-wor...
In this paper, we focus on face clustering in videos. To promote the performance of video clustering...
Meetings are an integral part of business life for any organization. In previous work, we have devel...
In this work, we introduce the Constrained first nearest neighbour Clustering (C1C) method for video...
International audienceThe objective of this work is person-clustering in videos-grouping characters ...
International audienceThe objective of this work is person-clustering in videos-grouping characters ...
The objective of this work is person-clustering in videos – grouping characters according to their i...
The goal of this paper is unsupervised face clustering in edited video material – where face tracks ...
Meetings are an integral part of business life for any or-ganization. In previous work, we have deve...
Clustering identities in a video is a useful task to aid in video search, annotation and retrieval, ...
Human faces represent not only a challenging recognition problem for computer vision, but are also a...
We address the problem of face clustering in long, real world videos. This is a challenging task bec...
In this paper, we focus on face clustering in videos. Given the detected faces from real-world video...
Balancing computational efficiency with recognition accuracy is one of the major challenges in real-...
In this thesis, we study two problems based on clustering algorithms. In the first problem, we study...
Balancing computational eciency with recognition accuracy is one of the major challenges in real-wor...
In this paper, we focus on face clustering in videos. To promote the performance of video clustering...
Meetings are an integral part of business life for any organization. In previous work, we have devel...
In this work, we introduce the Constrained first nearest neighbour Clustering (C1C) method for video...
International audienceThe objective of this work is person-clustering in videos-grouping characters ...
International audienceThe objective of this work is person-clustering in videos-grouping characters ...
The objective of this work is person-clustering in videos – grouping characters according to their i...
The goal of this paper is unsupervised face clustering in edited video material – where face tracks ...
Meetings are an integral part of business life for any or-ganization. In previous work, we have deve...