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An Evaluation of Trajectory Prediction Approaches and Notes on the TrajNet Benchmark

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arxiv 1805.07663 v6 pith:GXMTDUQU submitted 2018-05-19 cs.CV

An Evaluation of Trajectory Prediction Approaches and Notes on the TrajNet Benchmark

classification cs.CV
keywords deepnetworksapproachesbenchmarkevaluationgiveneuralobserved
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In recent years, there is a shift from modeling the tracking problem based on Bayesian formulation towards using deep neural networks. Towards this end, in this paper the effectiveness of various deep neural networks for predicting future pedestrian paths are evaluated. The analyzed deep networks solely rely, like in the traditional approaches, on observed tracklets without human-human interaction information. The evaluation is done on the publicly available TrajNet benchmark dataset, which builds up a repository of considerable and popular datasets for trajectory-based activity forecasting. We show that a Recurrent-Encoder with a Dense layer stacked on top, referred to as RED-predictor, is able to achieve sophisticated results compared to elaborated models in such scenarios. Further, we investigate failure cases and give explanations for observed phenomena and give some recommendations for overcoming demonstrated shortcomings.

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    cs.CV 2019-07 unverdicted novelty 6.0

    A directed social graph and temporal stochastic LSTM network for generating social-aware pedestrian trajectory predictions, shown effective on crowded scenes in two datasets.