IARPA Janus Benchmark-B Face Dataset

2017 IEEE Conference on Computer Vision and Pattern Recognition Workshops (CVPRW)(2017)

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摘要
Despite the importance of rigorous testing data for evaluating face recognition algorithms, all major publicly available faces-in-the-wild datasets are constrained by the use of a commodity face detector, which limits, among other conditions, pose, occlusion, expression, and illumination variations. In 2015, the NIST IJB-A dataset, which consists of 500 subjects, was released to mitigate these constraints. However, the relatively low number of impostor and genuine matches per split in the IJB-A protocol limits the evaluation of an algorithm at operationally relevant assessment points. This paper builds upon IJB-A and introduces the IARPA Janus Benchmark-B (NIST IJB-B) dataset, a superset of IJB-A. IJB-B consists of 1,845 subjects with human-labeled ground truth face bounding boxes, eye/nose locations, and covariate metadata such as occlusion, facial hair, and skintone for 21,798 still images and 55,026 frames from 7,011 videos. IJB-B was also designed to have a more uniform geographic distribution of subjects across the globe than that of IJB-A. Test protocols for IJB-B represent operational use cases including access point identification, forensic quality media searches, surveillance video searches, and clustering. Finally, all images and videos in IJB-B are published under a Creative Commons distribution license and, therefore, can be freely distributed among the research community.
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关键词
nose locations,research community,Creative Commons distribution license,clustering,surveillance video searches,forensic quality media searches,access point identification,uniform geographic distribution,video frames,still images,skintone,facial hair,covariate metadata,eye locations,human-labeled ground truth face bounding boxes,IJB-B,NIST IJB-A dataset,commodity face detector,face recognition algorithms,rigorous testing data,IARPA Janus benchmark-B face dataset
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