2022
DOI: 10.3390/electronics11060875
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FAFD: Fast and Accurate Face Detector

Abstract: Deep Neural Networks (DNN) have contributed a significant performance improvement in face detection. However, since most models focus only on the improvement of detection accuracy with computationally expensive structures, it is still far from real-time applications with a fast face detector. The goal of this paper is to improve face detection performance from the speed-focusing point of view. To this end, we propose a novel Fast and Accurate Face Detector (FAFD) to achieve high performance on both speed and a… Show more

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Cited by 7 publications
(1 citation statement)
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“…The Angular measurement method [53] exhibits commendable accuracy at the basic (94%) and middle (93%) levels, but it faces challenges in tough scenarios (80%). Despite Human multi-pose recognizer with YOLO-V5 [54] achieving high accuracy at all frame levels (95.5%, 94.5%, and 88% at basic, middle, and tough levels, respectively), it still shows potential limitations in more difficult scenarios.…”
Section: B Face Recognition Accuracy Results Of Proposed Model At Gpumentioning
confidence: 99%
“…The Angular measurement method [53] exhibits commendable accuracy at the basic (94%) and middle (93%) levels, but it faces challenges in tough scenarios (80%). Despite Human multi-pose recognizer with YOLO-V5 [54] achieving high accuracy at all frame levels (95.5%, 94.5%, and 88% at basic, middle, and tough levels, respectively), it still shows potential limitations in more difficult scenarios.…”
Section: B Face Recognition Accuracy Results Of Proposed Model At Gpumentioning
confidence: 99%