基于图像理解的UI组件识别系统

Xiaolei Sun, Tongyu Li, Jianfeng Xu
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引用次数: 6

摘要

在移动应用产品发布之前,通常需要进行大量的重复测试。在移动应用测试过程中,最核心的问题是在移动应用截图上定位UI组件。自动识别UI组件的方法有很多,但在某些情况下,例如众包测试,很难使用自动方法来识别UI组件。鉴于此,基于图像理解的APP UI组件识别系统为难以自动定位组件的应用场景提供了新的解决方案和方法。我们研究Android UI的组件信息,利用图像理解分析提取截图上的组件图像,设计并实现卷积神经网络,然后使用训练好的CNN对这些图像进行分类。分类准确率达96.97%。最后,我们得到了包含在截图中的组件信息。
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UI Components Recognition System Based On Image Understanding
Before the release of mobile application products, a lot of repeated testing is often required. In the process of mobile application testing, the core problem is to locate the UI components on the mobile application screenshots. There are many methods to automatically identify UI components, but in some cases, such as crowdsourcing testing, it is difficult to use automatic methods to identify UI components. In view of this, the APP UI components recognition system based on image understanding provides new solutions and methods for application scenarios that are difficult to automatically locate components. We investigate Android UI component information, use image understanding analysis to extract component images on screenshot, design and implement a convolutional neural networks, and then use trained CNN to classify these images. The classification accuracy is up to 96.97%. In the end, we get the component information contained in screenshot.
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