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Goal-oriented Object Importance Estimation in On-road Driving Videos

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arxiv 1905.02848 v1 pith:R4BUSQ32 submitted 2019-05-08 cs.CV

Goal-oriented Object Importance Estimation in On-road Driving Videos

classification cs.CV
keywords drivingimportanceobjecton-roadconductcontrolestimationframework
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We formulate a new problem as Object Importance Estimation (OIE) in on-road driving videos, where the road users are considered as important objects if they have influence on the control decision of the ego-vehicle's driver. The importance of a road user depends on both its visual dynamics, e.g., appearance, motion and location, in the driving scene and the driving goal, \emph{e.g}., the planned path, of the ego vehicle. We propose a novel framework that incorporates both visual model and goal representation to conduct OIE. To evaluate our framework, we collect an on-road driving dataset at traffic intersections in the real world and conduct human-labeled annotation of the important objects. Experimental results show that our goal-oriented method outperforms baselines and has much more improvement on the left-turn and right-turn scenarios. Furthermore, we explore the possibility of using object importance for driving control prediction and demonstrate that binary brake prediction can be improved with the information of object importance.

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