HSFM-Σnn: Combining a Feedforward Motion Prediction Network and Covariance Prediction

09/09/2020
by   A. Postnikov, et al.
0

In this paper, we propose a new method for motion prediction: HSFM-Σnn. Our proposed method combines two different approaches: a feedforward network whose layers are model-based transition functions using the HSFM and a Neural Network (NN), on each of these layers, for covariance prediction. We will compare our method with classical methods for covariance estimation showing their limitations. We will also compare with a learning-based approach, social-LSTM, showing that our method is more precise and efficient.

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