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Multi-task Learning with Attention for End-to-end Autonomous Driving

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arxiv 2104.10753 v1 pith:YZ7AAPBJ submitted 2021-04-21 cs.RO cs.AIcs.CV

Multi-task Learning with Attention for End-to-end Autonomous Driving

classification cs.RO cs.AIcs.CV
keywords learningbenchmarksmulti-taskstandardtrafficattentionautonomousdriving
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Autonomous driving systems need to handle complex scenarios such as lane following, avoiding collisions, taking turns, and responding to traffic signals. In recent years, approaches based on end-to-end behavioral cloning have demonstrated remarkable performance in point-to-point navigational scenarios, using a realistic simulator and standard benchmarks. Offline imitation learning is readily available, as it does not require expensive hand annotation or interaction with the target environment, but it is difficult to obtain a reliable system. In addition, existing methods have not specifically addressed the learning of reaction for traffic lights, which are a rare occurrence in the training datasets. Inspired by the previous work on multi-task learning and attention modeling, we propose a novel multi-task attention-aware network in the conditional imitation learning (CIL) framework. This does not only improve the success rate of standard benchmarks, but also the ability to react to traffic lights, which we show with standard benchmarks.

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