军机徽标检测中的图像分类与文本识别:卷积神经网络的应用

S. Edhah, Abeer Awadallah, Mayar Madboly, Hamdihun Dawed, N. Werghi
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引用次数: 0

摘要

使用图像或视频进行对象检测和检查在交通控制、品牌监控、商标合规和产品认证等许多应用中受到越来越多的关注。目前人们感兴趣的一个特定应用是飞机徽标检测,其目的是使飞机工程师手动进行的目视检查自动化。飞机徽标应满足大量要求,包括对徽标元素和图案的几何约束,以及对特定参考的位置和方向的约束。这项工作考虑设计一个高精度的卷积神经网络,根据指定的标准来检测和分类飞机徽标是否足够或不足够。将所开发的网络的性能与许多经典机器学习算法进行比较,以证明其有效性。然后通过使用鲁棒特征提取算法从框架中提取适当的徽标并确定其相对于水平参考轴的方向角度来进一步处理徽标。然后,在预先训练的网络上实现了一种使用字符区域感知的文本检测算法的文本检测技术,以及光学字符识别工具来检测和提取徽标中的文本,以便在其他应用中进行进一步处理。所开发的网络在现场捕获的实际飞机徽标上进行了测试,获得了令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Classification and Text Identification in Inspecting Military Aircrafts Logos: Application of Convolutional Neural Network
Object detection and inspection using images or videos have been receiving increased attention in many applications such as traffic control, brand monitoring, trademark compliance, and product authentication. A particular application that is currently a topic of interest is aircraft logo detection, which aims at automating the visual inspection carried out manually by aircraft engineers. Aircraft logos should meet a large set of requirements that include geometric constraints on the logo elements and patterns, and constraints on the position and orientation with respect to specific references. This work considers the design of a high accuracy convolutional neural network to detect and classify aircraft logos as either adequate or inadequate based on specified criteria. The performance of the developed network is compared to a number of classical machine learning algorithms to demonstrate its effectiveness. Adequate logos are then processed further by extracting them from a frame using robust features extraction algorithm and determining their orientation angle with respect to the horizontal reference axis. Afterward, a text detection technique using a character region awareness for text detection algorithm implemented on a pre-trained network is carried out, along with optical character recognition tool to detect and extract the text from the logos for further processing in other applications. The developed network is tested on actual aircraft logos, captured from the field, where satisfactory results are obtained.
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