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RNN-based Pedestrian Crossing Prediction using Activity and Pose-related Features

26 August 2020
J. Lorenzo
Ignacio Parra
F. Wirth
Christoph Stiller
David Fernández Llorca
Miguel Ángel Sotelo
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Abstract

Pedestrian crossing prediction is a crucial task for autonomous driving. Numerous studies show that an early estimation of the pedestrian's intention can decrease or even avoid a high percentage of accidents. In this paper, different variations of a deep learning system are proposed to attempt to solve this problem. The proposed models are composed of two parts: a CNN-based feature extractor and an RNN module. All the models were trained and tested on the JAAD dataset. The results obtained indicate that the choice of the features extraction method, the inclusion of additional variables such as pedestrian gaze direction and discrete orientation, and the chosen RNN type have a significant impact on the final performance.

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