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首页> 外文期刊>International Journal of Engineering & Technology >Deep learning-based car seatbelt classifier resilient to weather conditions
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Deep learning-based car seatbelt classifier resilient to weather conditions

机译:基于深度学习的汽车安全带分类器有弹性到天气状况

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摘要

Deep Learning is a very promising field in image classification. It leads to the automation of many real-world problems. Currently, Car seatbelt violation detection is done manually or partial manual. In this paper, an approach is proposed to make the seat belt detection process fully automated. To make the detection more accurate, sensors are set to detect the weather condition. When spe-cific weather condition is detected, the corresponding pre-trained model is assigned the detection task. In other words, a research is conducted to check the possibility of dividing the big-sized deep-learning model - that can classify car seatbelt, into sub-models each one can detect specific weather condition. Accordingly, a single specialized model is used for each weather condition, Deep convolutional neural network (CNN) model AlexNet is used in the detection/classification process. The proposed system is sensor based AlexNet (S-AlexNet). Results support our hypothesis that “Using single model for each weather condition is better than gen-eral model that support all weather conditions”. On average, previous approaches that trained single model for all weather condi-tions have accuracy less than 90%. The proposed S-AlexNet approach successfully reaches 90 % accuracy.
机译:深度学习是图像分类中非常有希望的领域。它导致了许多真实问题的自动化。目前,汽车安全带违规检测是手动或部分手册完成的。在本文中,提出了一种方法,使座椅安全带检测过程完全自动化。为了使检测更准确,设置传感器以检测天气状况。当检测到SPE-CIFIC的天气状况时,将分配相应的预训练模型被分配了检测任务。换句话说,进行了一种研究以检查划分大型深度学习模型的可能性 - 可以将汽车安全带分为分为子模型,每个都可以检测到特定的天气状况。因此,每个天气条件使用单个专业模型,在检测/分类过程中使用深卷积神经网络(CNN)型号AlexNet。所提出的系统是基于传感器的AlexNet(S-AlexNet)。结果支持我们的假设,即“使用单一模型为每个天气条件优于支持所有天气条件的Gen-Eral模型”。平均而言,培训所有天气条件的单一模型的先前方法具有小于90%的准确性。建议的S-AlexNet方法成功达到90%的精度。

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