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The Computer Vision-based Tolerancing Callout Detection Model

机译:基于计算机视觉的公差标注检测模型

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Tolerancing symbols play an important role in mechanical product drawings, and they directly determine the functions, mating properties, interchangeability and working life of geometrical products. A symbolic tolerancing callout containing a set of symbols represents a set of pre-ordered operations with attributes. It includes an amount of knowledge from the drawing and standard documents, which is often reconstructed manually by engineers. Thus, at the same time, a symbolic tolerancing callout makes it difficult for the end-user to understand and interpret these callouts manually. To this end, this study puts forward a tolerancing callout detection model via the use of off-the-shelf costumer-grade cameras on current mobile devices for extracting and recognizing tolerancing callout blocks and symbols in them intelligently. This model has four core components: image preprocessing, callout location and extraction, symbol and character segmentation, and deep learning-based symbol recognition. The image preprocessing component is developed to remove the interferences on the target technical drawings through the corresponding morphological methods. This study proposes a novel solution on callout block locations and extractions in callout intensive scenarios since the callout locations and extractions can directly affect the accuracy of symbol and character recognitions. Then, Huff Transform and improved projection methods have been devised to symbol and character segmentations. Finally, this study constructed a convolutional neural network (CNN) to train a symbol recognition model. The experimental results show that the proposed model gains applicability on intelligent callout extractions and the corresponding symbol recognitions.
机译:公差符号在机械产品图纸中发挥着重要作用,它们直接确定几何产品的功能,交配性质,互换性和工作寿命。包含一组符号的符号公差标注表示具有属性的一组预先订购操作。它包括来自绘图和标准文件的知识量,这通常由工程师手动重建。因此,同时,符号公差标注使得最终用户难以手动理解和解释这些标注。为此,本研究通过在当前移动设备上使用现成的Costumer级摄像机来提取公差呼叫检测模型,以智能地提取和识别其在其中的公差呼叫块和符号。该模型具有四个核心组件:图像预处理,标注位置和提取,符号和字符分割以及基于深度学习的符号识别。通过相应的形态学方法开发图像预处理分量以去除目标技术图上的干扰。本研究提出了关于呼出块位置的新解决方案,并在标注密集方案中提取,因为标注位置和提取可以直接影响符号和字符识别的准确性。然后,已经设计到符号和字符分段的Huff变换和改进的投影方法。最后,该研究构建了卷积神经网络(CNN)以训练符号识别模型。实验结果表明,该模型提升了对智能标注提取的适用性和相应的符号识别。

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