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TruPercept: Trust Modelling for Autonomous Vehicle Cooperative Perception from Synthetic Data

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arxiv 1909.07867 v1 pith:GDUA7AMJ submitted 2019-09-17 cs.MA cs.CVcs.RO

TruPercept: Trust Modelling for Autonomous Vehicle Cooperative Perception from Synthetic Data

classification cs.MA cs.CVcs.RO
keywords perceptioncooperativetrupercepttrustautonomousdatasetmodellingscenarios
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Inter-vehicle communication for autonomous vehicles (AVs) stands to provide significant benefits in terms of perception robustness. We propose a novel approach for AVs to communicate perceptual observations, tempered by trust modelling of peers providing reports. Based on the accuracy of reported object detections as verified locally, communicated messages can be fused to augment perception performance beyond line of sight and at great distance from the ego vehicle. Also presented is a new synthetic dataset which can be used to test cooperative perception. The TruPercept dataset includes unreliable and malicious behaviour scenarios to experiment with some challenges cooperative perception introduces. The TruPercept runtime and evaluation framework allows modular component replacement to facilitate ablation studies as well as the creation of new trust scenarios we are able to show.

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