CVAINEIVMLFeb 20, 2024

PIP-Net: Pedestrian Intention Prediction in the Wild

arXiv:2402.12810v329 citationsh-index: 6IEEE transactions on intelligent transportation systems (Print)
Originality Highly original
AI Analysis

This addresses safety challenges for autonomous vehicles in urban environments, representing a strong specific gain.

The paper tackles pedestrian intention prediction for autonomous vehicles by introducing PIP-Net, which predicts crossing intentions up to 4 seconds in advance using kinematic and spatial features, outperforming state-of-the-art methods.

Accurate pedestrian intention prediction (PIP) by Autonomous Vehicles (AVs) is one of the current research challenges in this field. In this article, we introduce PIP-Net, a novel framework designed to predict pedestrian crossing intentions by AVs in real-world urban scenarios. We offer two variants of PIP-Net designed for different camera mounts and setups. Leveraging both kinematic data and spatial features from the driving scene, the proposed model employs a recurrent and temporal attention-based solution, outperforming state-of-the-art performance. To enhance the visual representation of road users and their proximity to the ego vehicle, we introduce a categorical depth feature map, combined with a local motion flow feature, providing rich insights into the scene dynamics. Additionally, we explore the impact of expanding the camera's field of view, from one to three cameras surrounding the ego vehicle, leading to an enhancement in the model's contextual perception. Depending on the traffic scenario and road environment, the model excels in predicting pedestrian crossing intentions up to 4 seconds in advance, which is a breakthrough in current research studies in pedestrian intention prediction. Finally, for the first time, we present the Urban-PIP dataset, a customised pedestrian intention prediction dataset, with multi-camera annotations in real-world automated driving scenarios.

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