We address the problem of person identification in TV series. We propose a unified learning framework for multi-class classification which incorporates labeled and unla-beled data, and constraints between pairs of features in the training. We apply the framework to train multinomial lo-gistic regression classifiers for multi-class face recognition. The method is completely automatic, as the labeled data is obtained by tagging speaking faces using subtitles and fan transcripts of the videos. We demonstrate our approach on six episodes each of two diverse TV series and achieve state-of-the-art performance. 1
Poster session: WS21 - Workshop on Information Fusion in Computer Vision for Concept RecognitionInte...
Abstract — Fully automatic person identification in TV series has been achieved by obtaining weak la...
In many image and video collections, we have access only to partially labeled data. For example, per...
We address the problem of person identification in TV series. We propose a unified learning framewor...
International audienceThe goal of face identification is to decide whether two faces depict the same...
Person re-identification is probably the open challenge for low-level video surveillance in the pres...
Person re-identification is probably the open challenge for low-level video surveillance in the pres...
Some recent approaches for character identification in movies and TV broadcasts are realized in a se...
We investigate the problem of automatically labelling faces of characters in TV or movie material wi...
International audienceOur goal is to automatically identify faces in TV broadcast without a pre-defi...
Multimedia databases are growing rapidly in size in the digital age. To increase the value of these ...
Abstract—Our goal is to automatically identify people in TV news and debates without any predefined ...
As web and personal content become ever more enriched by videos, there is increasing need for semant...
We propose methods to improve automatic person identification, regardless of the visibility of a fac...
Our goal is to automatically identify faces in TV broadcast without a pre-defined dictionary of iden...
Poster session: WS21 - Workshop on Information Fusion in Computer Vision for Concept RecognitionInte...
Abstract — Fully automatic person identification in TV series has been achieved by obtaining weak la...
In many image and video collections, we have access only to partially labeled data. For example, per...
We address the problem of person identification in TV series. We propose a unified learning framewor...
International audienceThe goal of face identification is to decide whether two faces depict the same...
Person re-identification is probably the open challenge for low-level video surveillance in the pres...
Person re-identification is probably the open challenge for low-level video surveillance in the pres...
Some recent approaches for character identification in movies and TV broadcasts are realized in a se...
We investigate the problem of automatically labelling faces of characters in TV or movie material wi...
International audienceOur goal is to automatically identify faces in TV broadcast without a pre-defi...
Multimedia databases are growing rapidly in size in the digital age. To increase the value of these ...
Abstract—Our goal is to automatically identify people in TV news and debates without any predefined ...
As web and personal content become ever more enriched by videos, there is increasing need for semant...
We propose methods to improve automatic person identification, regardless of the visibility of a fac...
Our goal is to automatically identify faces in TV broadcast without a pre-defined dictionary of iden...
Poster session: WS21 - Workshop on Information Fusion in Computer Vision for Concept RecognitionInte...
Abstract — Fully automatic person identification in TV series has been achieved by obtaining weak la...
In many image and video collections, we have access only to partially labeled data. For example, per...