4.6 Article

Bimodal Extended Kalman Filter-Based Pedestrian Trajectory Prediction

期刊

SENSORS
卷 22, 期 21, 页码 -

出版社

MDPI
DOI: 10.3390/s22218231

关键词

pedestrian trajectory prediction; bimodal extended Kalman filter; point-cloud

资金

  1. National Science and Technology Council, Taiwan [MOST 109-2221-E-027-086-MY2]

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This study presents a pedestrian trajectory prediction algorithm based on the bimodal extended Kalman filter, which takes advantage of the dual-state nature of pedestrian movement. The model considers social interaction among pedestrians and surrounding obstacles, using less than fifty parameters.
We propose a pedestrian trajectory prediction algorithm based on the bimodal extended Kalman filter. With this filter, we are able to make full use of the dual-state nature of the pedestrian movement, i.e., the pedestrian is either moving or remains stationary. We apply the dual-mode probability model to describe the state of the pedestrian. Based on this model, we construct the proposed bimodal extended Kalman filter to estimate pedestrian state distribution. The filter obtains the state distribution for each pedestrian in the scene, respectively, and use that state distribution to predict the future trajectories of all the people in the scene. This prediction method estimates the prior probability of each parameter of the model through the dataset and updates the individual posterior probability of the pedestrian state through the bimodal extended Kalman filter. Our model can predict the trajectory of every individual, by taking the social interaction of pedestrians as well as the surrounding physical obstacles into account, with less than fifty model parameters being used, while with the limited parameter, our model could be nearly accurate as other deep learning models and still be comprehensible for model users.

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