Liu Xiaojuan, Zhou Shangbo, Wu Sheng, Tan Duo, Yao Rui
College of Computer Science, Chongqing University, Chongqing, China.
Key Laboratory of Dependable Service Computing in Cyber Physical Society, Ministry of Education, Chongqing University, Chongqing, China.
PeerJ Comput Sci. 2022 Mar 29;8:e768. doi: 10.7717/peerj-cs.768. eCollection 2022.
The development of computer vision technology is rapid, which supports the automatic quality control of precision components efficiently and reliably. This paper focuses on the application of computer vision technology in manufacturing quality control. A new deep learning algorithm is presented, Multi-angle projective Generative Adversarial Networks (MapGANs), to automatically generate 3D visualization models of products and components. The generated 3D visualization models can intuitively and accurately display the product parameters and indicators. Based on these indicators, our model can accurately determine whether the product meets the standard. The working principle of the MapGANs algorithm is to automatically infer the basic three-dimensional shape distribution through the product's projection module, while using multiple angles and multiple views to improve the fineness and accuracy of the three-dimensional visualization model. The experimental results prove that MapGANs can effectively reconstruct two-dimensional images into three-dimensional visualization models, and meanwhile accurately predict whether the quality of the product meets the standard.
计算机视觉技术发展迅速,它能高效且可靠地支持精密零部件的自动质量控制。本文聚焦于计算机视觉技术在制造质量控制中的应用。提出了一种新的深度学习算法——多角度投影生成对抗网络(MapGANs),用于自动生成产品和零部件的三维可视化模型。生成的三维可视化模型能够直观且准确地展示产品参数和指标。基于这些指标,我们的模型能够准确判定产品是否符合标准。MapGANs算法的工作原理是通过产品的投影模块自动推断基本的三维形状分布,同时利用多角度和多视图来提高三维可视化模型的精细度和准确性。实验结果证明,MapGANs能够有效地将二维图像重建为三维可视化模型,同时准确预测产品质量是否符合标准。