A Hybrid Framework for Statistical Feature Selection and Image-Based Noise-Defect Detection
Alejandro Garnung Men\'endez

TL;DR
This paper introduces a hybrid framework combining statistical feature selection and classification to enhance defect detection accuracy in noisy industrial images, reducing false positives and improving robustness.
Contribution
The paper presents a novel hybrid approach that integrates statistical feature selection with classification techniques for improved defect detection in noisy environments.
Findings
Enhanced detection accuracy in noisy conditions
Reduced false positive rates
Effective real-time feature discrimination
Abstract
In industrial imaging, accurately detecting and distinguishing surface defects from noise is critical and challenging, particularly in complex environments with noisy data. This paper presents a hybrid framework that integrates both statistical feature selection and classification techniques to improve defect detection accuracy while minimizing false positives. The motivation of the system is based on the generation of scalar scores that represent the likelihood that a region of interest (ROI) is classified as a defect or noise. We present around 55 distinguished features that are extracted from industrial images, which are then analyzed using statistical methods such as Fisher separation, chi-squared test, and variance analysis. These techniques identify the most discriminative features, focusing on maximizing the separation between true defects and noise. Fisher's criterion ensures…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Image and Object Detection Techniques
MethodsFeature Selection
