迈向以用户为中心的车载导航系统

Olivia Wiles, M. Mahmoud, P. Robinson, Eduardo Dias, L. Skrypchuk
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引用次数: 2

摘要

目前的导航系统很少在导航指令中考虑通用的道路地标,这可能会导致错误、挫折和分心。然而,道路地标的自动检测是困难的,因为目前的目标检测方法要么关注具有特殊特征的上下文外物体,要么关注非常特定的领域。这项工作为基于最先进的计算机视觉技术的用户友好导航系统提供了一个未来的方向,该技术使用深度学习进行对象检测。我们提出了一种自动分层方法,用于检测和分类一组静态和动态道路地标,这将在自动导航系统中有用。我们进一步展示了一组优化,提高了基本系统的性能和准确性。我们在一个自然的“野外”数据集上评估我们的方法,以确定它如何处理自然的汽车输入。最后,我们为我们的系统演示了一个用例,该用例提取有关车辆位置和意图的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a User-Centric In-Vehicle Navigational System
Current navigational systems rarely consider generic road landmarks in their navigation instructions, which can lead to mistakes, frustration, and distraction. However, automatic detection of road landmarks is difficult, as current approaches to object detection focus either on out-of-context objects which have special characteristics or on very specific domains. This work presents a future direction for a user-friendly navigational system based on state-of-the-art computer vision techniques that use deep learning for object detection. We propose an automatic hierarchical approach for detecting and classifying a set of static and dynamic road landmarks that would be useful in automatic navigational systems. We further demonstrate a set of optimisations that improve performance and accuracy of the basic system. We evaluate our approach on a natural, 'in-the-wild' dataset to determine how well it handles natural automotive input. Finally, we demonstrate a use-case for our system that extracts information about a vehicle's location and intention.
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