智能黑匣子:通过物联网保险黑匣子上的实时机器学习提高驾驶员安全

Eliana S. Stivan, Andrea Damiani, Emanuele Del Sozzo, M. Santambrogio
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引用次数: 2

摘要

物联网(IoT)正在从纯粹的技术角度转变为一种对社会和经济产生影响的技术。随着全球对物联网如何影响健康、安全和社会责任等重要主题的认识不断提高,我们从保险公司推广的概念出发,在安全至关重要的领域提出并评估了一种物联网设备:汽车行业的智能黑匣子。SmartBlackBox是一款支持车载机器学习的设备,可以对驾驶员的行为进行分类,并就如何提高驾驶员的驾驶风格提供有价值的见解。它在嵌入式片上系统(System-on-a-Chip)中具有可重构硬件,可将通常简单的物联网数据摄取节点转换为智能伴侣,学习驾驶员的行为,支持他们实现更安全的驾驶风格。与传统的黑匣子相比,得益于在可重构硬件上合成的加速器,SmartBlackBox进入了网络物理系统领域,因为它支持来自多个传感器的更快的数据输入流,支持边缘云通信的临时数据压缩,特别是支持驾驶动作的实时分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SmartBlackBox: Enhancing Driver's Safety Via Real-Time Machine Learning on IoT Insurance Black-Boxes
The Internet of Things (IoT) is shifting from a purely technical perspective to being a technology with implications on society and its economy. Responding to the global rise of awareness on how the IoT impacts on important themes such as health, safety and social responsibility, we propose and evaluate an IoT device in a field where safety is critical: a smart black-box for the automotive sector, starting from the concept popularized by insurance companies. The SmartBlackBox is a device that supports on-board machine learning to classify the drivers' behavior and supply valuable insight on how to enhance their driving styles. It features reconfigurable hardware within an embedded System-on-a-Chip that is programmed to transform what is usually a simple IoT data-ingestion node into an intelligent companion that learns the drivers' behavior, supporting them in achieving a safer driving style. Compared to traditional black-boxes, thanks to accelerators synthesized on reconfigurable hardware, the SmartBlackBox enters the domain of cyber-physical systems as it supports faster data input streams coming from multiple sensors, ad-hoc data compression for edge-cloud communication, and, especially, realtime classification of driving maneuvers.
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