作者
James Spooner, Madeline Cheah, Vasile Palade, Stratis Kanarachos, Alireza Daneshkah
发表日期
2020
研讨会论文
Science and Information Conference: Advances in Intelligent Systems and Computing
卷号
1230
页码范围
581-597
简介
Vulnerable road user safety is of paramount importance as transport moves towards fully autonomous driving. The research question posed by this research is of how can we train a computer to be able to see and perceive a pedestrian’s movement. This work presents a dual network architecture, trained in tandem, which is capable of classifying the behaviour of a pedestrian from a single image with no prior context. The results show that the most successful network was able to achieve a correct classification accuracy of 94.3% when classifying images based on their behaviour. This shows the use of a novel data fusion method for pedestrian images and human poses. Having a network with these capabilities is important for the future of transport, as it will allow vehicles to correctly perceive the intention of pedestrians crossing the street, and will ultimately lead to fewer pedestrian casualties on our roads.
学术搜索中的文章
J Spooner, M Cheah, V Palade, S Kanarachos… - Intelligent Computing: Proceedings of the 2020 …, 2020