In intelligent manufacturing, the quality of machine translation engineering drawings will directly affect its manufacturing accuracy. Currently, most of the work is manually translated, greatly reducing production efficiency. This paper proposes an automatic translation method for welded structural engineering drawings based on Cyclic Generative Adversarial Networks (CycleGAN). The CycleGAN network model of unpaired transfer learning is used to learn the feature mapping of real welding engineering drawings to realize automatic translation of engineering drawings. U-Net and PatchGAN are the main network for the generator and discriminator, respectively. Based on removing the identity mapping function, a high-dimensional sparse network is proposed to replace the traditional dense network for the Cyclegan generator to improve noise robustness. Increase the residual block hidden layer to increase the resolution of the generated graph. The improved and fine-tuned network models are experimentally validated, computing the gap between real and generated data. It meets the welding engineering precision standard and solves the main problem of low drawing recognition efficiency in the welding manufacturing process. The results show. After training with our model, the PSNR, SSIM and MSE of welding engineering drawings reach about 44.89%, 99.58% and 2.11, respectively, which are superior to traditional networks in both training speed and accuracy.
翻译:在智能制造中,机器翻译工程图纸的质量将直接影响到其制造的准确性。目前,大多数工作都是人工翻译的,大大降低了生产效率。本文件提议了基于Cyclic Generation Aversarial网络(CycleGAN)的焊接结构工程图纸的自动翻译方法。 CycleGAN 网络模式用于学习实际焊接工程图纸的特征映射,以实现工程图纸的自动翻译。U-Net和PatchGAN分别是发电机和导师的主要网络。在去除身份映射功能的基础上,建议建立一个高维维的分散网络,以取代循环发电机传统密集的网络,以提高噪音的稳健性。增加残余块隐藏层,以提高生成图的分辨率。经改进和微调的网络模型经过实验验证,计算实际数据与生成数据之间的差距。它符合焊接工程精确度标准,并解决了焊接工艺中低绘图效率的主要问题。结果显示,在与我们的模型培训后,PSNRR、SSIM和MSE II 的精度分别达到44、99-89 和高级工程的精度图绘制速度。