ROAILGMay 30, 2017

Learning End-to-end Multimodal Sensor Policies for Autonomous Navigation

arXiv:1705.10422v276 citations
Originality Incremental advance
AI Analysis

This work addresses robustness in autonomous navigation for systems using multiple sensors, but it is incremental as it builds on existing dropout techniques.

The paper tackles the problem of making end-to-end multimodal sensor policies robust to partial sensor failures by proposing Sensor Dropout and an auxiliary loss, resulting in reduced jerk during policy switching and improved robustness in simulations.

Multisensory polices are known to enhance both state estimation and target tracking. However, in the space of end-to-end sensorimotor control, this multi-sensor outlook has received limited attention. Moreover, systematic ways to make policies robust to partial sensor failure are not well explored. In this work, we propose a specific customization of Dropout, called \textit{Sensor Dropout}, to improve multisensory policy robustness and handle partial failure in the sensor-set. We also introduce an additional auxiliary loss on the policy network in order to reduce variance in the band of potential multi- and uni-sensory policies to reduce jerks during policy switching triggered by an abrupt sensor failure or deactivation/activation. Finally, through the visualization of gradients, we show that the learned policies are conditioned on the same latent states representation despite having diverse observations spaces - a hallmark of true sensor-fusion. Simulation results of the multisensory policy, as visualized in TORCS racing game, can be seen here: https://youtu.be/QAK2lcXjNZc.

Foundations

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