Face recognition in the video stream. Self-attention neural aggregation network

dc.contributor.advisorКрюкова, Галина
dc.contributor.authorПроценко, Ігор
dc.date.accessioned2020-11-23T11:48:10Z
dc.date.available2020-11-23T11:48:10Z
dc.date.issued2020
dc.description.abstractThe models based on self-attention mechanisms have been successful in analyzing temporal data and have been widely used in the natural language domain. A new model architecture is being proposed for video face representation and recognition based on the self-attention mechanism. Moreover, given approach could be used for video with single and multiple identities. Notably, no one explored the aggregation approaches that consider the video with multiple identities. The proposed approach utilizes existing models to get the face representation for each video frame, e.g., ArcFace and MobileFaceNet, and the aggregation module produces the aggregated face representation vector for video by taking into consideration the order of frames and their quality scores. Empirical results are demonstrated on a public dataset for video face recognition called IJB-C to indicate that the self-attention aggregation network (SAAN) outperforms naive average pooling. Moreover, a new multi-identity video dataset based on the publicly available UMDFaces dataset and collected GIFs from Giphy is being proposed. It is shown that SAAN is capable of producing a compact face representation for both single and multiple identities in a video. The source code is attached in the archive.uk_UA
dc.identifier.urihttps://ekmair.ukma.edu.ua/handle/123456789/18807
dc.language.isoukuk_UA
dc.statusfirst publisheduk_UA
dc.subjectface recognitionuk_UA
dc.subjectthe video streamuk_UA
dc.subjectneural aggregation networkuk_UA
dc.subjectself-attentionuk_UA
dc.subjectбакалаврська роботаuk_UA
dc.titleFace recognition in the video stream. Self-attention neural aggregation networkuk_UA
dc.typeOtheruk_UA
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