2021 9th International Electrical Engineering Congress (iEECON) 2021
DOI: 10.1109/ieecon51072.2021.9440346
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Deep Learning-based Face Mask Detection Using YoloV5

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Cited by 75 publications
(24 citation statements)
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“…Single-stage methods based on deep learning techniques account for the largest proportion among the methods. They include Faster R-CNN [23], [77], Context-Attention R-CNN [47], InceptionV3 [78], MobileNet [60], SSD [79], YOLO [80], YOLOv2 [42], YOLOv3 [26], [29], [50], [81], [82], YOLOv4 [31], [51], [83], [84], YOLOv5 [85]- [88], and others [11], [41], [46], [52], [89]- [94], etc. It can be clearly concluded that YOLO and its variants are used widely.…”
Section: B Single-stage (End-to-end) Methodsmentioning
confidence: 99%
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“…Single-stage methods based on deep learning techniques account for the largest proportion among the methods. They include Faster R-CNN [23], [77], Context-Attention R-CNN [47], InceptionV3 [78], MobileNet [60], SSD [79], YOLO [80], YOLOv2 [42], YOLOv3 [26], [29], [50], [81], [82], YOLOv4 [31], [51], [83], [84], YOLOv5 [85]- [88], and others [11], [41], [46], [52], [89]- [94], etc. It can be clearly concluded that YOLO and its variants are used widely.…”
Section: B Single-stage (End-to-end) Methodsmentioning
confidence: 99%
“…It seems the response time is a bit longer. Ieamsaard et al [88] tested the performance of YOLOv5-based model with 300 epochs, outperforming those models with less than 300 epochs.…”
Section: B Single-stage (End-to-end) Methodsmentioning
confidence: 99%
“…Subsequently, a series of lightweight networks optimising convolutional computation performed had been proposed [33–35]. In object detection, many lightweight detection networks, such as YOLOv4 [20], YOLOv4‐tiny [36], and YOLOv5 [37], have emerged in detection to overcome the problem of time‐consuming two‐stage algorithms. The goal of these lightweight networks is to achieve balanced accuracy, while reducing the number of model parameters and increasing the inference speed of the model.…”
Section: Related Workmentioning
confidence: 99%
“…YOLOv5 derin öğrenme algoritması ile maske tespiti yapan başka bir çalışmada 300 iterasyon sonunda %96,5 doğruluğa erişildiği görülmüştür [14]. SSD (Single Shot Detector) ve MobileNetV2 sınıflandırıcının birleştirilmesi ile yapılan başka bir çalışma %92,64 başarı oranı ulaştığı ve gömülü sistemlerde kullanılabilecek düzeyde olduğu belirtilmiştir [15].…”
Section: Introductionunclassified