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  4. On the reliability of LSTM-MDL models for pedestrian trajectory prediction
 
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2017
Conference Paper
Title

On the reliability of LSTM-MDL models for pedestrian trajectory prediction

Abstract
Recurrent neural networks, like the LSTM model, have been applied to various sequence learning tasks with great success. Following this, it seems natural to use LSTM models for predicting future locations in object tracking tasks. In this paper, we evaluate an adaption of a LSTM-MDL model and investigate its reliability in the context of pedestrian trajectory prediction. Thereby, we demonstrate the fallacy of solely relying on prediction metrics for evaluating the model and how the models capabilities can lead to suboptimal prediction results. Towards this end, two experiments are provided. Firstly, the models prediction abilities are evaluated on publicly available surveillance datasets. Secondly, the capabilities of capturing motion patterns are examined. Further, we investigate failure cases and give explanations for observed phenomena, granting insight into the models reliability in tracking applications. Lastly, we give some hints how demonstrated shortcomings may be circumvented.
Author(s)
Hug, Ronny  
Becker, Stefan  
Hübner, Wolfgang  
Arens, Michael  
Mainwork
VIIth International Workshop on Representation, analysis and recognition of shape and motion FroM Image data, RFMI 2017. Accepted papers. Online resource  
Conference
International Workshop on Representation, analysis and recognition of shape and motion FroM Image data (RFMI) 2017  
File(s)
Download (4.09 MB)
Rights
Use according to copyright law
DOI
10.24406/publica-fhg-399625
Language
English
Fraunhofer-Institut für Optronik, Systemtechnik und Bildauswertung IOSB  
Keyword(s)
  • recurrent neural network

  • pedestrian trajectory prediction

  • generative modeling

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