A Feature Memory Rearrangement Network for Visual Inspection of Textured Surface Defects Toward Edge Intelligent Manufacturing

06/22/2022
by   Haiming Yao, et al.
0

Recent advances in the industrial inspection of textured surfaces-in the form of visual inspection-have made such inspections possible for efficient, flexible manufacturing systems. We propose an unsupervised feature memory rearrangement network (FMR-Net) to accurately detect various textural defects simultaneously. Consistent with mainstream methods, we adopt the idea of background reconstruction; however, we innovatively utilize artificial synthetic defects to enable the model to recognize anomalies, while traditional wisdom relies only on defect-free samples. First, we employ an encoding module to obtain multiscale features of the textured surface. Subsequently, a contrastive-learning-based memory feature module (CMFM) is proposed to obtain discriminative representations and construct a normal feature memory bank in the latent space, which can be employed as a substitute for defects and fast anomaly scores at the patch level. Next, a novel global feature rearrangement module (GFRM) is proposed to further suppress the reconstruction of residual defects. Finally, a decoding module utilizes the restored features to reconstruct the normal texture background. In addition, to improve inspection performance, a two-phase training strategy is utilized for accurate defect restoration refinement, and we exploit a multimodal inspection method to achieve noise-robust defect localization. We verify our method through extensive experiments and test its practical deployment in collaborative edge–cloud intelligent manufacturing scenarios by means of a multilevel detection method, demonstrating that FMR-Net exhibits state-of-the-art inspection accuracy and shows great potential for use in edge-computing-enabled smart industries.

READ FULL TEXT

page 4

page 6

page 7

page 11

page 13

page 14

page 16

page 17

research
11/18/2022

Reference-Based Autoencoder for Surface Defect Detection

Due to the extreme imbalance in the number of normal data and abnormal d...
research
06/03/2022

Automated visual inspection of silicon detectors in CMS experiment

In the CMS experiment at CERN, Geneva, a large number of HGCAL sensor mo...
research
03/28/2021

Defect-GAN: High-Fidelity Defect Synthesis for Automated Defect Inspection

Automated defect inspection is critical for effective and efficient main...
research
11/24/2021

Fast mesh denoising with data driven normal filtering using deep variational autoencoders

Recent advances in 3D scanning technology have enabled the deployment of...
research
06/12/2021

A One-Shot Texture-Perceiving Generative Adversarial Network for Unsupervised Surface Inspection

Visual surface inspection is a challenging task owing to the highly dive...
research
03/23/2022

Refine-Net: Normal Refinement Neural Network for Noisy Point Clouds

Point normal, as an intrinsic geometric property of 3D objects, not only...
research
10/02/2020

Smart-Inspect: Micro Scale Localization and Classification of Smartphone Glass Defects for Industrial Automation

The presence of any type of defect on the glass screen of smart devices ...

Please sign up or login with your details

Forgot password? Click here to reset