话务员数码助理

Dmitry Antonov, P. Burankina, Vitaly Dement’ev
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引用次数: 0

摘要

当人工智能技术成为行业的重要工具时,它们就会获得价值。在本文中,我们展示了将图像识别技术转化为车队管理的工业工具的结果。验证了驾驶员行为监控任务的相关性。在两阶段和单阶段模型中进行了目标检测模型的选择。考虑R-CNN、Fast R-CNN、Faster R-CNN、R-FCN、SSD、RetinaNet、CenterNet和YOLOv4。通过对不同目标探测器规格的比较,我们最终选择了YOLOv4。这种选择是由于在性能、控制假警报概率的能力、高识别准确性和存在特殊简化版本之间取得了良好的平衡。本文介绍了YOLOv4和YOLOv4-tiny的研究结果。该结果适用于解决驾驶员动作的实时识别问题,包括在低功耗平台上。
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Digital Assistant to Operator
AI technologies gain value when they become an essential tool for the industry. In this article, we show the result of turning image recognition technology into an industrial tool for vehicle fleet management. The relevance of the drivers' actions monitoring task is substantiated. The choice of a object detection model was carried out among two-stage and single-stage models. R-CNN, Fast R-CNN, Faster R-CNN, R-FCN, SSD, RetinaNet, CenterNet and YOLOv4 were considered. Comparison of the different object detectors specifications is convinced us to choose YOLOv4. This choice is due to a good balance between performance, the ability to control the probability of false alarms, high recognition accuracy, and the presence of a special simplified version. In the paper we presented the results of YOLOv4 and YOLOv4-tiny research. The result is applicable to solving the problem of real-time recognition of driver actions, including on low-power platforms.
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