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Cockpit Display Graphics Symbol Detection for Software Verification Using Deep Learning

机译:驾驶舱显示图形符号检测,用于使用深度学习的软件验证

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In Software Development Life-cycle, Verification and Validation plays a very important role, especially in the case of Safety-Critical Industries like Aerospace. Display dashboard consists of multiple static and dynamic objects having affine transformation, graphics overlap, shadows and less inter symbol discriminative features compared to natural images. Manual Software graphics verification is an error-prone and time-consuming activity. In this paper, we propose a novel software graphics verification pipeline to verify graphics symbols and alphanumeric objects as per Software requirements. To the best of our knowledge, our proposed approach is the first study on deep learning-based graphics symbol detection from complex synthetic background which requires high model accuracy. We experiment using Single-shot Multibox Detector (SSD) and You Only Look Once (YOLO v2) to detect different Graphical symbols from display simulator real-time captured video frames. These detected objects are further classified based on their nature. Objects containing alphanumeric digits can be recognized using Optical Character Recognition and dynamic symbols are detected using object detection to infer other properties. Finally, all the extracted properties can be compared with test expectations to verify their correctness. The result shows superior accuracy of the SSD algorithm over other state-of-the-art object detection algorithms for detecting real-time graphics symbols.
机译:在软件开发生命周期中,验证和验证起着非常重要的作用,特别是在适用于航空航天等安全关键行业的情况下。显示仪表板由具有仿射变换的多个静态和动态对象组成,与自然图像相比,图形重叠,阴影和较少的符号判别识别特征。手动软件图形验证是一种容易出错和耗时的活动。在本文中,我们提出了一种新颖的软件图形验证管道,以根据软件要求验证图形符号和字母数字对象。据我们所知,我们所提出的方法是从复杂合成背景上进行深度学习的图形符号检测的第一次研究,这需要高模型精度。我们尝试使用单次Multibox探测器(SSD),您只需看一次(YOLO v2)以从显示模拟器实时捕获的视频帧中检测不同的图形符号。这些检测到的对象基于其性质进一步分类。可以使用光学字符识别识别包含字母数字位数的对象,并且使用对象检测来检测动态符号来推断其他属性。最后,可以将所有提取的属性与测试期望进行比较,以验证其正确性。结果显示了用于检测实时图形符号的其他最先进的对象检测算法的SSD算法的卓越精度。

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