CVMar 9, 2018

Intentions of Vulnerable Road Users - Detection and Forecasting by Means of Machine Learning

arXiv:1803.03577v167 citations
Originality Incremental advance
AI Analysis

This work addresses safety for autonomous vehicles by improving early recognition of critical situations, though it is incremental as it builds on existing motion modeling approaches.

The paper tackled the problem of detecting and forecasting the intentions of vulnerable road users (pedestrians and cyclists) using machine learning models, achieving 37% and 41% lower position errors in trajectory prediction compared to baseline methods.

Avoiding collisions with vulnerable road users (VRUs) using sensor-based early recognition of critical situations is one of the manifold opportunities provided by the current development in the field of intelligent vehicles. As especially pedestrians and cyclists are very agile and have a variety of movement options, modeling their behavior in traffic scenes is a challenging task. In this article we propose movement models based on machine learning methods, in particular artificial neural networks, in order to classify the current motion state and to predict the future trajectory of VRUs. Both model types are also combined to enable the application of specifically trained motion predictors based on a continuously updated pseudo probabilistic state classification. Furthermore, the architecture is used to evaluate motion-specific physical models for starting and stopping and video-based pedestrian motion classification. A comprehensive dataset consisting of 1068 pedestrian and 494 cyclist scenes acquired at an urban intersection is used for optimization, training, and evaluation of the different models. The results show substantial higher classification rates and the ability to earlier recognize motion state changes with the machine learning approaches compared to interacting multiple model (IMM) Kalman Filtering. The trajectory prediction quality is also improved for all kinds of test scenes, especially when starting and stopping motions are included. Here, 37\% and 41\% lower position errors were achieved on average, respectively.

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