HyperAIHyperAI

Command Palette

Search for a command to run...

3 months ago

Mixed supervision for surface-defect detection: from weakly to fully supervised learning

Jakob Božič Domen Tabernik Danijel Skočaj

Mixed supervision for surface-defect detection: from weakly to fully supervised learning

Abstract

Deep-learning methods have recently started being employed for addressing surface-defect detection problems in industrial quality control. However, with a large amount of data needed for learning, often requiring high-precision labels, many industrial problems cannot be easily solved, or the cost of the solutions would significantly increase due to the annotation requirements. In this work, we relax heavy requirements of fully supervised learning methods and reduce the need for highly detailed annotations. By proposing a deep-learning architecture, we explore the use of annotations of different details ranging from weak (image-level) labels through mixed supervision to full (pixel-level) annotations on the task of surface-defect detection. The proposed end-to-end architecture is composed of two sub-networks yielding defect segmentation and classification results. The proposed method is evaluated on several datasets for industrial quality inspection: KolektorSDD, DAGM and Severstal Steel Defect. We also present a new dataset termed KolektorSDD2 with over 3000 images containing several types of defects, obtained while addressing a real-world industrial problem. We demonstrate state-of-the-art results on all four datasets. The proposed method outperforms all related approaches in fully supervised settings and also outperforms weakly-supervised methods when only image-level labels are available. We also show that mixed supervision with only a handful of fully annotated samples added to weakly labelled training images can result in performance comparable to the fully supervised model's performance but at a significantly lower annotation cost.

Benchmarks

BenchmarkMethodologyMetrics
defect-detection-on-dagm2007Segmentation+Decision Net (end-to-end)
AUC: 100
Average Accuracy: 100
Average Precision: 100
F1: 100
defect-detection-on-kolektorsddSegmentation+Decision Net (end-to-end)
Average Precision: 100
defect-detection-on-kolektorsdd2Segmentation+Decision Net (end-to-end)
Average Precision: 95.4
defect-detection-on-severstal-steelSegmentation+Decision Net (end-to-end)
Average Precision: 98.74

Build AI with AI

From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.

AI Co-coding
Ready-to-use GPUs
Best Pricing
Get Started

Hyper Newsletters

Subscribe to our latest updates
We will deliver the latest updates of the week to your inbox at nine o'clock every Monday morning
Powered by MailChimp
Mixed supervision for surface-defect detection: from weakly to fully supervised learning | Papers | HyperAI