2021
DOI: 10.48550/arxiv.2112.00219
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Scalable Primitives for Generalized Sensor Fusion in Autonomous Vehicles

Abstract: In autonomous driving, there has been an explosion in the use of deep neural networks for perception, prediction and planning tasks. As autonomous vehicles (AVs) move closer to production, multi-modal sensor inputs and heterogeneous vehicle fleets with different sets of sensor platforms are becoming increasingly common in the industry. However, neural network architectures typically target specific sensor platforms and are not robust to changes in input, making the problem of scaling and model deployment parti… Show more

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