Loading [MathJax]/extensions/MathMenu.js
A Suspected Defect Screening-Guided Lightweight Network for Few-Shot Aviation Steel Tube Surface Defect Segmentation | IEEE Journals & Magazine | IEEE Xplore

A Suspected Defect Screening-Guided Lightweight Network for Few-Shot Aviation Steel Tube Surface Defect Segmentation


Abstract:

Internal surface defect segmentation is an important technology of quality detection in the production of aviation steel tubes (ASTs). However, there are still some chall...Show More

Abstract:

Internal surface defect segmentation is an important technology of quality detection in the production of aviation steel tubes (ASTs). However, there are still some challenges, such as the imbalance of nondefect samples and defect samples, the comprehensive sparsity of defect category and defect sample quantity, and the constraint between hardware computing power and model accuracy. In this work, a lightweight suspected defect screening network (SDSNet) based on transfer learning is proposed to filter out redundant nondefect samples. Besides, to overcome the comprehensive sparsity of AST defect samples, we introduce a granularity-transfer few-shot defect segmentation (FSDS) based on meta-learning. Subsequently, we propose a lightweight feature-aware segmentation network (FASNet) further to segment the suspected defect sample pixel-wise. Specifically, a defect-aware module (DAM) is employed to activate spatial and channel responses of defect regions, and a lightweight multiscale aggregation decoder (MAD) is used to capture context information at different feature scales. In addition, to evaluate the effectiveness of the proposed pipeline and overcome the practical challenge of AST defect segmentation, a dedicated database is constructed. Our pipeline achieves a 98.6% precision for suspected defect screening and 66.94% MIoU for defect segmentation. Extensive experiments evaluate the feasibility of deploying our pipeline on the edge computing equipment based on the NPU platform with low computational cost in industrial production.
Published in: IEEE Sensors Journal ( Volume: 24, Issue: 22, 15 November 2024)
Page(s): 38113 - 38124
Date of Publication: 01 October 2024

ISSN Information:

Funding Agency:


I. Introduction

Aviation steel tubes (ASTs) have become increasingly prevalent in the flourishing advancement of aviation manufacturing [1]. During the manufacturing process of AST, nondestructive testing (NDT) plays an indispensable role in inspecting the internal surface quality without damaging the test specimen [2], [3]. Machine vision testing (MVT) provides superior advantages in terms of detection accuracy and quantitative analysis, as compared to other NDT methods [4], [5].

Contact IEEE to Subscribe

References

References is not available for this document.