Safety Helmet Detection Dynamic Model Based on the Critical Area Attention Mechanism

Yao Nan, Qin Jian-Hua, Wang Zhen, Wang Hong-Chang
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引用次数: 2

Abstract

In the substation monitoring environment, monitoring the helmet wearing of workers is an important approach to ensure safety. Because the helmet size in entire surveillance images is often small and the characteristic information is unclear, existing target detection algorithms present the problem of missed detection and omission. A safety helmet detection dynamic model based on the critical area attention mechanism first detected the human target in the image, and then, locked the human head area through the critical area attention mechanism network. Finally, the feature map of the critical areas of the head was up-sampled many times to increase the proportion of the helmet area in the image to highlight the characteristic information of the helmet in the image. The algorithm used the dynamic model method to match the optimum up-sampling times for the helmets of different scales, which improved the recognition speed of the algorithm while ensuring the recognition accuracy. The experimental results showed that the recognition rate of algorithm for helmets was 92.68%, which is considerably higher than that of other target detection algorithms in the same field.
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基于临界区域注意机制的安全帽检测动态模型
在变电站监控环境中,对工作人员的安全帽佩戴情况进行监控是保证安全的重要手段。由于整个监控图像中的头盔尺寸往往较小,特征信息不清晰,现有的目标检测算法存在漏检和遗漏的问题。基于关键区域注意机制的安全帽检测动态模型首先检测图像中的人体目标,然后通过关键区域注意机制网络锁定人体头部区域。最后,对头部关键区域的特征图进行多次上采样,增加图像中头盔区域的比例,突出图像中头盔的特征信息。该算法采用动态模型方法匹配不同尺度头盔的最佳上采样次数,在保证识别精度的同时提高了算法的识别速度。实验结果表明,该算法对头盔的识别率为92.68%,大大高于同领域的其他目标检测算法。
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