A benchmark and comparative study of video-based face recognition on COX face database
A benchmark and comparative study of video-based face recognition on COX face database
Face recognition with still face images has been widely studied, while the research on video-based face recognition is inadequate relatively, especially in terms of benchmark datasets and comparisons. Real-world video-based face recognition applications require techniques for three distinct scenarios: 1) Videoto-Still (V2S); 2) Still-to-Video (S2V); and 3) Video-to-Video (V2V), respectively, taking video or still image as query or target. To the best of our knowledge, few datasets and evaluation protocols have benchmarked for all the three scenarios. In order to facilitate the study of this specific topic, this paper contributes a benchmarking and comparative study based on a newly collected still/video face database, named COX Face DB. Specifically, we make three contributions. First, we collect and release a largescale still/video face database to simulate video surveillance with three different video-based face recognition scenarios (i.e., V2S, S2V, and V2V). Second, for benchmarking the three scenarios designed on our database, we review and experimentally compare a number of existing set-based methods. Third, we further propose a novel Point-to-Set Correlation Learning (PSCL) method, and experimentally show that it can be used as a promising baseline method for V2S/S2V face recognition on COX Face DB. Extensive experimental results clearly demonstrate that video-based face recognition needs more efforts, and our COX Face DB is a good benchmark database for evaluation.
5967 - 5981
Huang, Zhiwu
84f477cd-9097-44dd-a33e-ff71f253d36b
Shan, Shiguang
78e49abb-f490-480f-b534-0b7e05c9cbe4
Wang, Ruiping
5727660b-3139-49e6-998c-f82f13fc62ec
Zhang, Haihong
9bb5de77-6cbf-4886-b720-a26abda567ef
Lao, Shihong
ca7ca66f-3c10-4eee-96d0-48c72215259d
Kuerban, Alifu
d3270149-f281-46c4-994e-22cb88ef0416
Chen, Xilin
48380269-4169-4310-ae77-30dade3b551b
26 October 2015
Huang, Zhiwu
84f477cd-9097-44dd-a33e-ff71f253d36b
Shan, Shiguang
78e49abb-f490-480f-b534-0b7e05c9cbe4
Wang, Ruiping
5727660b-3139-49e6-998c-f82f13fc62ec
Zhang, Haihong
9bb5de77-6cbf-4886-b720-a26abda567ef
Lao, Shihong
ca7ca66f-3c10-4eee-96d0-48c72215259d
Kuerban, Alifu
d3270149-f281-46c4-994e-22cb88ef0416
Chen, Xilin
48380269-4169-4310-ae77-30dade3b551b
Huang, Zhiwu, Shan, Shiguang, Wang, Ruiping, Zhang, Haihong, Lao, Shihong, Kuerban, Alifu and Chen, Xilin
(2015)
A benchmark and comparative study of video-based face recognition on COX face database.
IEEE Transactions on Image Processing, 24 (12), .
(doi:10.1109/TIP.2015.2493448).
Abstract
Face recognition with still face images has been widely studied, while the research on video-based face recognition is inadequate relatively, especially in terms of benchmark datasets and comparisons. Real-world video-based face recognition applications require techniques for three distinct scenarios: 1) Videoto-Still (V2S); 2) Still-to-Video (S2V); and 3) Video-to-Video (V2V), respectively, taking video or still image as query or target. To the best of our knowledge, few datasets and evaluation protocols have benchmarked for all the three scenarios. In order to facilitate the study of this specific topic, this paper contributes a benchmarking and comparative study based on a newly collected still/video face database, named COX Face DB. Specifically, we make three contributions. First, we collect and release a largescale still/video face database to simulate video surveillance with three different video-based face recognition scenarios (i.e., V2S, S2V, and V2V). Second, for benchmarking the three scenarios designed on our database, we review and experimentally compare a number of existing set-based methods. Third, we further propose a novel Point-to-Set Correlation Learning (PSCL) method, and experimentally show that it can be used as a promising baseline method for V2S/S2V face recognition on COX Face DB. Extensive experimental results clearly demonstrate that video-based face recognition needs more efforts, and our COX Face DB is a good benchmark database for evaluation.
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Published date: 26 October 2015
Identifiers
Local EPrints ID: 501118
URI: http://eprints.soton.ac.uk/id/eprint/501118
ISSN: 1057-7149
PURE UUID: 621aeba6-dc40-43ad-9d19-f0c7836d8953
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Date deposited: 23 May 2025 18:24
Last modified: 25 May 2025 05:21
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Contributors
Author:
Zhiwu Huang
Author:
Shiguang Shan
Author:
Ruiping Wang
Author:
Haihong Zhang
Author:
Shihong Lao
Author:
Alifu Kuerban
Author:
Xilin Chen
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