A Two-Block RNN-based Trajectory Prediction from Incomplete Trajectory
- URL: http://arxiv.org/abs/2203.07098v2
- Date: Wed, 16 Mar 2022 15:44:22 GMT
- Title: A Two-Block RNN-based Trajectory Prediction from Incomplete Trajectory
- Authors: Ryo Fujii, Jayakorn Vongkulbhisal, Ryo Hachiuma, Hideo Saito
- Abstract summary: We introduce a two-block RNN model that approximates the inference steps of the Bayesian filtering framework.
We show that the proposed model improves the prediction accuracy compared to the three baseline imputation methods.
We also show that our proposed method can achieve better prediction compared to the baselines when there is no miss-detection.
- Score: 14.725386295605666
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Trajectory prediction has gained great attention and significant progress has
been made in recent years. However, most works rely on a key assumption that
each video is successfully preprocessed by detection and tracking algorithms
and the complete observed trajectory is always available. However, in complex
real-world environments, we often encounter miss-detection of target agents
(e.g., pedestrian, vehicles) caused by the bad image conditions, such as the
occlusion by other agents. In this paper, we address the problem of trajectory
prediction from incomplete observed trajectory due to miss-detection, where the
observed trajectory includes several missing data points. We introduce a
two-block RNN model that approximates the inference steps of the Bayesian
filtering framework and seeks the optimal estimation of the hidden state when
miss-detection occurs. The model uses two RNNs depending on the detection
result. One RNN approximates the inference step of the Bayesian filter with the
new measurement when the detection succeeds, while the other does the
approximation when the detection fails. Our experiments show that the proposed
model improves the prediction accuracy compared to the three baseline
imputation methods on publicly available datasets: ETH and UCY ($9\%$ and $7\%$
improvement on the ADE and FDE metrics). We also show that our proposed method
can achieve better prediction compared to the baselines when there is no
miss-detection.
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