High Efficiency Pedestrian Crossing Prediction
Zhuoran Zeng

TL;DR
This paper introduces a lightweight, efficient pedestrian crossing prediction model that relies solely on pedestrian frames, using multi-task learning to enhance robustness, suitable for real-time deployment in vehicle systems.
Contribution
The paper presents a novel lightweight neural network for pedestrian crossing prediction that reduces input dependency and employs multi-task learning for improved robustness.
Findings
Model achieves high accuracy with reduced computational resources.
Network is suitable for deployment on mobile and vehicle systems.
Experimental results demonstrate superior performance over existing methods.
Abstract
Predicting pedestrian crossing intention is an indispensable aspect of deploying advanced driving systems (ADS) or advanced driver-assistance systems (ADAS) to real life. State-of-the-art methods in predicting pedestrian crossing intention often rely on multiple streams of information as inputs, each of which requires massive computational resources and heavy network architectures to generate. However, such reliance limits the practical application of the systems. In this paper, driven the the real-world demands of pedestrian crossing intention prediction models with both high efficiency and accuracy, we introduce a network with only frames of pedestrians as the input. Every component in the introduced network is driven by the goal of light weight. Specifically, we reduce the multi-source input dependency and employ light neural networks that are tailored for mobile devices. These…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Traffic and Road Safety · Traffic Prediction and Management Techniques
