Aero-engine is the core component of aircraft and other spacecraft. The high-speed rotating blades provide power by sucking in air and fully combusting, and various defects will inevitably occur, threatening the operation safety of aero-engine. Therefore, regular inspections are essential for such a complex system. However, existing traditional technology which is borescope inspection is labor-intensive, time-consuming, and experience-dependent. To endow this technology with intelligence, a novel superpixel perception graph neural network (SPGNN) is proposed by utilizing a multi-stage graph convolutional network (MSGCN) for feature extraction and superpixel perception region proposal network (SPRPN) for region proposal. First, to capture complex and irregular textures, the images are transformed into a series of patches, to obtain their graph representations. Then, MSGCN composed of several GCN blocks extracts graph structure features and performs graph information processing at graph level. Last but not least, the SPRPN is proposed to generate perceptual bounding boxes by fusing graph representation features and superpixel perception features. Therefore, the proposed SPGNN always implements feature extraction and information transmission at the graph level in the whole SPGNN pipeline, and SPRPN and MSGNN mutually benefit from each other. To verify the effectiveness of SPGNN, we meticulously construct a simulated blade dataset with 3000 images. A public aluminum dataset is also used to validate the performances of different methods. The experimental results demonstrate that the proposed SPGNN has superior performance compared with the state-of-the-art methods. The source code will be available at https://github.com/githbshang/SPGNN.
翻译:高速旋转刀片通过吸吸空气和完全燃烧提供动力,而且各种缺陷将不可避免地出现,从而威胁到航空发动机的操作安全。因此,定期检查对这样一个复杂的系统至关重要。然而,现有的传统技术是透镜检查,是劳力密集、耗时和经验的。为了让这种技术具有智能,建议使用一个新型超级像素透视图神经网络(SPGNN),方法是利用一个多阶段图形图解配置网络(MSGCN),用于地貌提取和超像素区域观点建议,从而不可避免地出现各种缺陷,从而威胁到气动发动机的运行安全。首先,为了捕捉复杂和不规则的纹理,这些图像变成一系列的修饰,以获得其图形表示。然后,由几个GCN区块组成的MSGCN提取图形结构特征,并在图形级别上进行图表信息处理。最后但并非最不重要的一点是,SPRPNPN提议,利用S SPGS的高级图像检测结果网络。因此,SPGS的每个S-PGS的运行效率总是从S-PGS的每个S的S-PNG 数据提取方法,然后用S-PNGS的S的S-PGS的S。