Deep features extraction to assess mobile user interfaces

被引:0
作者
Makram Soui
Zainab Haddad
Rim Trabelsi
Karthik Srinivasan
机构
[1] Saudi Electronic University,College of Computing and Informatics
[2] University of Manouba,Artificial Intelligence Research Unit, National School of Computer Sciences
[3] University of Gabes,Hatem Bettaher IResCoMath Research Unit, National Engineering School of Gabes
来源
Multimedia Tools and Applications | 2022年 / 81卷
关键词
Mobile User Interface evaluation; Convolutional Neural Networks; Features extraction; Deep Learning; Deep features; Classification;
D O I
暂无
中图分类号
学科分类号
摘要
Recently, the quality of user interface design has become a major factor in the success of mobile applications. To this end, the evaluation of Mobile User Interface (MUIs) is a mandatory step. Generally, there exist two main categories of user interface evaluation methods: manual and automatic. The manual evaluation is conducted by users or experts to assess the MUIs and verify whether it works as intended. However, it is more time-consuming task. Automatic evaluation is based on an automatic tool, which needs preconfiguration in the source code. But, this manual configuration is a tedious task for non-programmer evaluators. To address this issue, we propose an evaluation approach based on the analysis of graphical MUI as screenshot without using the source code and user involvement. The proposed approach combines the GoogleNet architecture and K-Nearest Neighbours (KNN) classifier to evaluate the MUIs. First, we apply the Borderline-SMOTE method to obtain a balanced dataset. Then, the GoogleNet is used to extract automatically the features of MUI. Finally, we apply the KNN classifier to classify the MUIs as good or bad. We evaluate this approach based on publicly available large-scale datasets having more number of good ratings than bad ratings which may have an impact on the proposed model during the learning step. To this end, the Borderline-SMOTE method (BSM) is used to obtain a balanced class distribution. The obtained results are very promising.
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页码:12945 / 12960
页数:15
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