Wood Surface Inspection Using Structural and Conditional Statistical Features
This addresses quality inspection for wood products, offering an automated alternative to error-prone human inspection, but it appears incremental as it builds on advanced machine vision techniques.
The paper tackled the problem of automatically detecting defects on wood surfaces, which is challenging due to random textures, by proposing a solution using support region extraction and novel structural and conditional statistical features, achieving promising results on a large dataset.
Surface quality is an extremely important issue for wood products in the market. Although quality inspection can be made by a human expert while manufacturing, this operation is prone to errors. One possible solution may be using standard machine vision techniques to automatically detect defects on wood surfaces. Due to the random texture on wood surfaces, this solution is also not possible most of the times. Therefore, more advanced and novel machine vision techniques are needed to automatically inspect wood surfaces. In this study, we propose such a solution based on support region extraction from the gradient magnitude and the Laplacian of Gaussian response of the wood surface image. We introduce novel structural and conditional statistical features using these support regions. Then, we classify different defect types on wood surfaces using our novel features. We tested our automated wood surface inspection system on a large data set and obtained very promising results.