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Comparison of the Deep Learning Methods Applied on Human Eye Detection

机译:对人眼检测应用深度学习方法的比较

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For the fatigue driving detection of a driver wearing a mask, the traditional fatigue driving detection method cannot effectively detect the face. The characteristics of the mouth area are disappeared due to the mask’s occlusion. Therefore, the extraction of fatigue features in the eye area becomes very important. The accuracy of the eye area detection will directly affect the performance of the fatigue driving detection algorithm. At present, YOLOv3 and Faster-RCNN are both excellent models in the field of target detection. Therefore, this article uses the same data set and sets the same training parameters during training. Under a unified evaluation standard, the YOLOv3 model and the Faster-RCNN model are evaluated. Experimental results show that YOLOv3 has a better effect on human eye detection under the same conditions.
机译:对于佩戴掩模的驾驶员的疲劳驱动检测,传统的疲劳驱动检测方法不能有效地检测面部。由于面膜的遮挡,口腔区域的特征消失。因此,眼部区域中的疲劳特征的提取变得非常重要。眼部区域检测的准确性将直接影响疲劳驱动检测算法的性能。目前,YOLOV3和FAST-RCNN都是目标检测领域的优秀模型。因此,本文使用相同的数据集,并在培训期间设置相同的训练参数。在统一的评估标准下,评估YOLOV3模型和更快的RCNN模型。实验结果表明,在相同条件下,Yolov3对人眼检测具有更好的影响。

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