Benchmarking of Computer Vision Algorithms for Driver Monitoring on Automotive-grade Devices

S. Battiato, S. Conoci, R. Leotta, A. Ortis, F. Rundo, F. Trenta
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引用次数: 6

Abstract

The continuing evolution of technologies in the automotive industry has led to the development of the so-called Advanced Driver Assistance Systems (ADAS). ADAS is the term used to describe vehicle-based intelligent safety systems designed to support the driver, with the aim to significantly improve his safety, and the driving safety in general. In terms of development, current ADAS technologies are based on control functions about the vehicle movements with respect to the objects and entities detected in the same environment (e.g., other vehicles, pedestrian, roads, etc.). However, there is an ever growing interest on the use of internal cameras to infer additional information regarding the driver status (e.g., weakness, level of attention). The purpose of such technologies is to provide accurate details about the environment in order to increase safety and smart driving. In the last few years, Computer Vision technology has achieved impressive results on several tasks related to recognition and detection of customized objects/entities on images and videos. However, automotive-grade devices’ hardware resources are limited, with respect to the once usually required for the implementation of modern Computer Vision algorithms. In this work, we present a benchmarking evaluation of a standard Computer Vision algorithm for the driver behaviour monitoring through face detection and analysis, comparing the performances obtained on a common laptop with the same experiments on an existing commercial automotive-grade device based on the Accordo5 processor by STMicroelectronics.
汽车级设备驾驶员监控计算机视觉算法的基准测试
汽车行业技术的不断发展导致了所谓的高级驾驶辅助系统(ADAS)的发展。ADAS是一个术语,用于描述基于车辆的智能安全系统,旨在支持驾驶员,旨在显著提高其安全性,以及总体驾驶安全。在发展方面,目前的ADAS技术是基于对车辆在同一环境中检测到的物体和实体(例如,其他车辆、行人、道路等)的运动的控制功能。然而,越来越多的人对使用内部摄像头来推断驾驶员状态的额外信息(例如,虚弱,注意力水平)感兴趣。这些技术的目的是提供有关环境的准确细节,以提高安全性和智能驾驶。在过去的几年中,计算机视觉技术在与图像和视频上的定制对象/实体的识别和检测相关的几个任务上取得了令人印象深刻的成果。然而,汽车级设备的硬件资源是有限的,相对于实现现代计算机视觉算法通常需要的一次。在这项工作中,我们通过人脸检测和分析,对一种用于驾驶员行为监控的标准计算机视觉算法进行了基准评估,并将在普通笔记本电脑上获得的性能与在基于意法半导体(STMicroelectronics)的Accordo5处理器的现有商用汽车级设备上进行的相同实验进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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