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Deep Learning-Based Mobile Application Isomorphic GUI Identification for Automated Robotic Testing

Tao Zhang, Ying Liu, Jerry Gao, Li Gao, Jing Cheng

Year
2020
Citations
25

Abstract

Fully black-box robotic testing is needed given the popularity of mobile applications. A critical constraining issue for generating graphical user interface (GUI) models is identifying isomorphic GUIs. We present a deep learningbased end-to-end trainable model to determine the similarity between GUIs and identify isomorphic GUIs.

Keywords

Graphical user interfaceComputer scienceGraphical user interface testingIdentification (biology)Human–computer interactionPopularityBlack boxSoftware engineeringArtificial intelligenceProgramming language

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