This paper introduces a holistic perception system for internal and external monitoring of autonomous vehicles, with the aim of demonstrating a novel AI-leveraged self-adaptive framework of advanced vehicle technologies and solutions that optimize perception and experience on-board. Internal monitoring system relies on a multi-camera setup designed for predicting and identifying driver and occupant behavior through facial recognition, exploiting in addition a large language model as virtual assistant. Moreover, the in-cabin monitoring system includes AI-empowered smart sensors that measure air-quality and perform thermal comfort analysis for efficient on and off-boarding. On the other hand, external monitoring system perceives the surrounding environment of vehicle, through a LiDAR-based cost-efficient semantic segmentation approach, that performs highly accurate and efficient super-resolution on low-quality raw 3D point clouds. The holistic perception framework is developed in the context of EU's Horizon Europe programm AutoTRUST, and has been integrated and deployed on a real electric vehicle provided by ALKE. Experimental validation and evaluation at the integration site of Joint Research Centre at Ispra, Italy, highlights increased performance and efficiency of the modular blocks of the proposed perception architecture.
翻译:本文介绍了一种用于自动驾驶车辆内外部监控的整体感知系统,旨在展示一种新颖的、利用人工智能的自适应先进车辆技术与解决方案框架,以优化车载感知与体验。内部监控系统依赖于一个多摄像头设置,旨在通过面部识别预测和识别驾驶员及乘员行为,并额外利用一个大语言模型作为虚拟助手。此外,座舱内监控系统包含由人工智能赋能的智能传感器,用于测量空气质量并进行热舒适度分析,以实现高效的上车与下车流程。另一方面,外部监控系统通过一种基于LiDAR的高性价比语义分割方法感知车辆周围环境,该方法能在低质量原始3D点云上执行高精度、高效率的超分辨率处理。该整体感知框架是在欧盟“地平线欧洲”计划AutoTRUST的背景下开发的,并已集成并部署在由ALKE提供的真实电动车辆上。在意大利伊斯普拉联合研究中心的集成场地进行的实验验证与评估表明,所提感知架构的各个模块块在性能与效率上均有所提升。