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TrafficPredict: Trajectory Prediction for Heterogeneous Traffic-Agents

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arxiv 1811.02146 v5 pith:KFVAQR5V submitted 2018-11-06 cs.CV cs.RO

TrafficPredict: Trajectory Prediction for Heterogeneous Traffic-Agents

classification cs.CV cs.RO
keywords predictiontraffictraffic-agentstrafficpredicttrajectoryvehiclesautonomousbicycles
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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To safely and efficiently navigate in complex urban traffic, autonomous vehicles must make responsible predictions in relation to surrounding traffic-agents (vehicles, bicycles, pedestrians, etc.). A challenging and critical task is to explore the movement patterns of different traffic-agents and predict their future trajectories accurately to help the autonomous vehicle make reasonable navigation decision. To solve this problem, we propose a long short-term memory-based (LSTM-based) realtime traffic prediction algorithm, TrafficPredict. Our approach uses an instance layer to learn instances' movements and interactions and has a category layer to learn the similarities of instances belonging to the same type to refine the prediction. In order to evaluate its performance, we collected trajectory datasets in a large city consisting of varying conditions and traffic densities. The dataset includes many challenging scenarios where vehicles, bicycles, and pedestrians move among one another. We evaluate the performance of TrafficPredict on our new dataset and highlight its higher accuracy for trajectory prediction by comparing with prior prediction methods.

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