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Knowledge-based Entity Prediction for Improved Machine Perception in Autonomous Systems

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arxiv 2203.16616 v3 pith:266RDSNG submitted 2022-03-30 cs.AI cs.CV

Knowledge-based Entity Prediction for Improved Machine Perception in Autonomous Systems

classification cs.AI cs.CV
keywords autonomousmachinesystemsperceptionentityimproveknowledgeknowledge-based
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Knowledge-based entity prediction (KEP) is a novel task that aims to improve machine perception in autonomous systems. KEP leverages relational knowledge from heterogeneous sources in predicting potentially unrecognized entities. In this paper, we provide a formal definition of KEP as a knowledge completion task. Three potential solutions are then introduced, which employ several machine learning and data mining techniques. Finally, the applicability of KEP is demonstrated on two autonomous systems from different domains; namely, autonomous driving and smart manufacturing. We argue that in complex real-world systems, the use of KEP would significantly improve machine perception while pushing the current technology one step closer to achieving full autonomy.

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