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Accelerating Road Sign Ground Truth Construction with Knowledge Graph and Machine Learning

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arxiv 2012.02672 v1 pith:3B6ZDSY3 submitted 2020-12-04 cs.AI cs.CV

Accelerating Road Sign Ground Truth Construction with Knowledge Graph and Machine Learning

classification cs.AI cs.CV
keywords signroadknowledgegraphannotatorslearningapproachcandidates
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Having a comprehensive, high-quality dataset of road sign annotation is critical to the success of AI-based Road Sign Recognition (RSR) systems. In practice, annotators often face difficulties in learning road sign systems of different countries; hence, the tasks are often time-consuming and produce poor results. We propose a novel approach using knowledge graphs and a machine learning algorithm - variational prototyping-encoder (VPE) - to assist human annotators in classifying road signs effectively. Annotators can query the Road Sign Knowledge Graph using visual attributes and receive closest matching candidates suggested by the VPE model. The VPE model uses the candidates from the knowledge graph and a real sign image patch as inputs. We show that our knowledge graph approach can reduce sign search space by 98.9%. Furthermore, with VPE, our system can propose the correct single candidate for 75% of signs in the tested datasets, eliminating the human search effort entirely in those cases.

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