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首页> 外文期刊>Journal of web engineering >Auto-Extraction and Integration of Metrics for Web User Interfaces
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Auto-Extraction and Integration of Metrics for Web User Interfaces

机译:Web用户界面的度量标准的自动提取和集成

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摘要

Metric-based assessment of web user interface (WUI) quality attributes is shifting from code (HTML/CSS) analysis to mining webpages' visual representations based on image recognition techniques. In our paper, we describe a visual analysis tool which takes a WUI screenshot and produces structured and machine-readable representation (JSON) of the interface elements' spatial allocation. The implementation is based on OpenCV (image recognition functions), dlib (trained detector for the elements' classification), and Tesseract (label and content text recognition). The JSON representation is used to automatically calculate several metrics related to visual complexity, which is known to have major effect on user experience with UIs. We further describe a WUI measurement platform that allows integration of the currently dispersed sets of metrics from different providers and demonstrate the platform's use with several remote services. We perform statistical analysis of the collected metrics in relation to complexity-related subjective evaluations obtained from 63 human subjects of various nationalities. Finally, we build predictive models for visual complexity and show that their accuracy can be improved by integrating the metrics from different sets. Regressions with the single index of visual complexity metric that we proposed had R-2=0.460, while the best joint model with 4 metrics had R-2=0.647.
机译:基于Web用户界面(WUI)质量属性的基于度量的评估正在从代码(HTML / CSS)分析转变为基于图像识别技术挖掘网页的视觉表示。在我们的论文中,我们描述了一种可视化分析工具,该工具可以获取WUI屏幕快照,并生成界面元素空间分配的结构化和机器可读表示(JSON)。该实现基于OpenCV(图像识别功能),dlib(针对元素分类的训练检测器)和Tesseract(标签和内容文本识别)。 JSON表示法用于自动计算与视觉复杂性相关的多个指标,众所周知,这些指标会极大地影响用户界面的用户体验。我们进一步描述了一个WUI测量平台,该平台允许集成来自不同提供商的当前分散的指标集,并演示该平台与多个远程服务的结合使用。我们对从63个来自不同民族的人类受试者获得的与复杂性相关的主观评估进行收集指标的统计分析。最后,我们针对视觉复杂性建立了预测模型,并表明可以通过集成来自不同集合的指标来提高其准确性。我们提出的具有单一视觉复杂性指标的回归系数为R-2 = 0.460,而具有4个指标的最佳联合模型的回归系数为R-2 = 0.647。

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