Heavy equipment manufacturing splits specific contours in drawings and cuts sheet metal to scale for welding. Currently, most of the segmentation and extraction of weld map contours is achieved manually. Its efficiency is greatly reduced. Therefore, we propose a U-net-based contour segmentation and extraction method for welding engineering drawings. The contours of the parts required for engineering drawings can be automatically divided and blanked, which significantly improves manufacturing efficiency. U-net includes an encoder-decoder, which implements end-to-end mapping through semantic differences and spatial location feature information between the encoder and decoder. While U-net excels at segmenting medical images, our extensive experiments on the Welding Structural Diagram dataset show that the classic U-Net architecture falls short in segmenting welding engineering drawings. Therefore, we design a novel Channel Spatial Sequence Attention Module (CSSAM) and improve on the classic U-net. At the same time, vertical max pooling and average horizontal pooling are proposed. Pass the pooling operation through two equal convolutions into the CSSAM module. The output and the features before pooling are fused by semantic clustering, which replaces the traditional jump structure and effectively narrows the semantic gap between the encoder and the decoder, thereby improving the segmentation performance of welding engineering drawings. We use vgg16 as the backbone network. Compared with the classic U-net, our network has good performance in engineering drawing dataset segmentation.
翻译:重型设备制造厂商在图纸上拆分具体的轮廓,并将金属板切成焊接。目前,多数焊接地图轮廓的分解和提取都是手工完成的。它的效率已大大降低。因此,我们提议为焊接工程图纸采用基于 Unet 的轮廓分割和提取方法。工程图纸所需部件的轮廓可以自动分割和空白,从而大大提高制造效率。 U-net 包括一个编码器- 解码器,通过语义差异和空间位置进行端到端绘图,其特征为编码器和解码器之间的信息。虽然 U- net 擅长分割医疗图象的分解,但我们在焊接结构图纸图纸上的大规模实验表明,典型的U- Net 结构在分解工程图纸上落后。 因此,我们设计了一个新型的频道空间后期关注模块(CSSAM), 并改进了经典 U-net 。 同时, 垂直的集合和平均水平联结, 通过两部的统化操作, 将我们的传统网络的内流流流路路段, 并有效地连接到 CSAML 。