论文标题
采矿个性化气候偏好用于助理驾驶
Mining Personalized Climate Preferences for Assistant Driving
论文作者
论文摘要
在过去的几年中,助理驾驶和自动驾驶都引起了很多关注。但是,大多数研究工作都集中在安全驾驶上。很少有关于车载气候控制或根据旅行者的个人习惯或偏好驾驶的助理驾驶的研究。在本文中,我们提出了一种新颖的方法,用于气候控制,驾驶员行为识别和驾驶建议,以使驾驶员在日常驾驶中的偏好更好。该算法包括三个组成部分:(1)一个车载传感和上下文具有丰富的物联网(IoT)平台,用于收集影响驱动程序行为的相关环境,车辆运行和交通参数。 (2)基于应用进一步的功能提取和机器学习算法的结果,它可以自动标记车辆状态(打开窗户,打开空气状况等),可以自动标记车辆状态(打开窗户,打开空调等)。 (3)个性化的驾驶员习惯学习和偏好推荐组件,以提供更健康,更舒适的体验。使用iOS应用程序和空气质量监视传感器的客户服务器体系结构的原型已开发出用于收集异质数据和测试我们的算法的原型。已经进行了全球多个城市的不同驱动因素的驾驶数据的现实世界实验,这证明了我们方法的有效和准确性。
Both assistant driving and self-driving have attracted a great amount of attention in the last few years. However, the majority of research efforts focus on safe driving; few research has been conducted on in-vehicle climate control, or assistant driving based on travellers' personal habits or preferences. In this paper, we propose a novel approach for climate control, driver behavior recognition and driving recommendation for better fitting drivers' preferences in their daily driving. The algorithm consists three components: (1) A in-vehicle sensing and context feature enriching compnent with a Internet of Things (IoT) platform for collecting related environment, vehicle-running, and traffic parameters that affect drivers' behaviors. (2) A non-intrusive intelligent driver behaviour and vehicle status detection component, which can automatically label vehicle's status (open windows, turn on air condition, etc.), based on results of applying further feature extraction and machine learning algorithms. (3) A personalized driver habits learning and preference recommendation component for more healthy and comfortable experiences. A prototype using a client-server architecture with an iOS app and an air-quality monitoring sensor has been developed for collecting heterogeneous data and testing our algorithms. Real-world experiments on driving data of 11,370 km (320 hours) by different drivers in multiple cities worldwide have been conducted, which demonstrate the effective and accuracy of our approach.