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arxiv 1912.05729 v1 pith:5VG65G3F submitted 2019-12-12 cs.CV

Improved Activity Forecasting for Generating Trajectories

classification cs.CV
keywords trajectoriesactivityforecastinggeneratingiterationseabirdvaluebest
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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An efficient inverse reinforcement learning for generating trajectories is proposed based of 2D and 3D activity forecasting. We modify reward function with $L_p$ norm and propose convolution into value iteration steps, which is called convolutional value iteration. Experimental results with seabird trajectories (43 for training and 10 for test), our method is best in terms of MHD error and performs fastest. Generated trajectories for interpolating missing parts of trajectories look much similar to real seabird trajectories than those by the previous works.

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