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A survey on deep learning based face detection

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dc.contributor.author Tran The Vinh Tran
dc.contributor.author Чан Тхе Вінь Чан
dc.contributor.author Чан Тхэ Винь Чан
dc.contributor.author Nguyen Thi Khanh Tien
dc.contributor.author Нгуєн Тхі Кхань Тієн
dc.contributor.author Нгуен Тхи Кхань Тиен
dc.contributor.author Tran Kim Thanh
dc.contributor.author Чан Кім Тхань
dc.contributor.author Чан Ким Тхань
dc.date.accessioned 2023-07-07T13:29:49Z
dc.date.available 2023-07-07T13:29:49Z
dc.date.issued 2023-07-03
dc.identifier.citation Tran The Vinh Tran, Nguyen Thi Khanh Tien, Tran Kim Thanh. (2023). A survey on deep learning based face detection. Аpplied Aspects of Information Technology, Vol. 6, N 2, p. 201–212. en
dc.identifier.citation Tran The Vinh Tran. A survey on deep learning based face detection / Tran The Vinh Tran, Nguyen Thi Khanh Tien, Tran Kim Thanh // Аpplied Aspects of Information Technology = Прикладні аспекти інформ. технологій. – Оdesa, 2023. – Vol. 6, N 2. – P. 201–212. en
dc.identifier.issn 2617-4316
dc.identifier.issn 2663-7723
dc.identifier.uri http://dspace.opu.ua/jspui/handle/123456789/13908
dc.description.abstract The article has focused on surveying face detection models based on deep learning, specifically examining different one-stage models in order to determine how to choose the appropriate face detection model as well as propose a direction to enhance ourfacedetection model to match the actual requirements of computer vision application systems related to the face. The face detection models that were conducted survey include single shot detector, multi-task cascaded convolutionneural networks, RetinaNet, YuNet on the Wider Face dataset. Tasks during the survey are structural investigation of chosen models, conducting experimental surveys to evaluate the accuracy and performance of these models. To evaluate and provide criteria for choosing facedetection suitable for the requirements, two indicators are used, average precision to evaluate accuracy and frames-per-second toevaluate performance. Experientialresults were analyzed and used for making conclusions and suggestions for future work. For our real-time applications on face-related camera systems, such as driver monitoring system, supermarket security system (shoplifting warning, disorderly warning), attendance system, often require fast processing, but still ensures accuracy. The models currently appliedin our system such as Yolos, Single ShotDetector, MobileNetv1 guarantee real-time processing, but most of these models have difficulty in detecting small faces in the frame and cases containing contexts, which are easily mistaken for a human face. Meanwhile, the RetinaNet_ResNet50 model brings the highest accuracy, especially to ensure the detection of small faces in the frame, but theprocessing time is larger. Therefore, through this survey, we propose an enhancement direction of the face detection model based on the RetinaNet structure with the goal of ensuring accuracy and reducing processing time. en
dc.language.iso en en
dc.publisher Nauka i Tekhnika en
dc.subject Face detection en
dc.subject one-stage detector en
dc.subject two-stage detector en
dc.subject deep learning en
dc.subject single shot detector en
dc.subject multi-task cascaded convolutional neural networks en
dc.subject RetinaNet en
dc.subject YuNet en
dc.title A survey on deep learning based face detection en
dc.title.alternative Огляд з детектуванняобличь на основі глибокого навчання uk
dc.type Article en
opu.citation.journal Applied Aspects of Information Technology en
opu.citation.volume 2 en
opu.citation.firstpage 201 en
opu.citation.lastpage 212 en
opu.citation.issue 6 en


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