基于轻量级零- dce的夜间疲劳驾驶检测算法

ZhanTi Ll, Ni Jia, Hongmei Jin
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引用次数: 0

摘要

针对夜间弱光场景下图像曝光低导致疲劳驾驶检测精度低的问题,提出了一种轻量级的Zero-DCE夜间疲劳驾驶检测算法。该算法在Zero-DCE模型的主干特征提取网格中采用深度可分卷积,提高了检测网格的速度,减少了网格参数的数量;下采样的输入用作增强nebvrk的输入,并通过上采样将输出映射回原始分辨率。进行图像增强,有效平衡增强性能,显著降低计算成本。利用目标检测算法对人脸的眼、口特征进行检测,并根据眼、口疲劳参数结合阈值对检测结果进行计算输出。实验结果表明,在夜间弱光环境下,本文提出的检测算法比现有算法的检测精度提高了17.07%。算法融合后的检测时间为0.012s,更符合疲劳驾驶检测场景的应用需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Night Fatigue Driving Detection Algorithm based on Lightweight Zero-DCE
Aiming at the problem of low image exposure in low-light scenes at night, resulting in low accuracy of fatigue driving detection, a lightweight Zero-DCE night fatigue driving detection algorithm was proposed The depthwise separable convolution is used in the backbone feature extraction nebv0rk of the Zero-DCE model to improve the speed of the detection nebv0rk and reduce the amount of nebv0rk parameters; the down-sampled input is used as the input of the enhanced nebv0rk, and the output is mapped back to the original resolution by up-sampling. Perf0rm image enhancement, effectively balancing enhancement performance and significantly reducing computational cost. The facial eye and mouth features are detected by the target detection algorithm and the open and closed states are identified and the detection results are calculated and output according to the eye and mouth fatigue parameters combined with the threshold The experimental results show that in the low-light environment at night, the detection algorithm proposed in this paper improves the detection accuracy by 17.07% compared with the existing algorithm, and the detection time after algorithm fusion is 0.012s, which is more in line with the application requirements of fatigue driving detection scenarios.
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