This paper addresses the issue of automatic wood defect classification. A tree-structure support vector machine (SVM) is proposed to classify four types of wood knots by using images captured from lumber boards. Simple and effective features are proposed and extracted by partitioning the knot images into three distinct areas, followed by utilizing a novel order statistic filter to yield an average pseudo color feature in each area. Excellent results have been obtained for the proposed SVM classifier that is trained by 800 wood knot images. Performance evaluation has shown that the proposed SVM classifier resulted in an average classification rate of 96.5% and false alarm rate of 2.25% over 400 test knot images. Future work will include more...
Feature extraction is unquestionably an important process in a pattern recognition system. A defined...
An automated wood texture recognition system of 48 tropical wood species is presented. For each wood...
International audienceResolving a 3D segmentation problem is a common challenge in the domain of dig...
This paper addresses the issue of automatic wood defect classification. A tree-structure support vec...
This paper addresses the issue of automatic wood defect classification. We propose a tree-structure ...
Timber knots recognition is of prime importance to further determine the timber grade. The recogniti...
Automatic defect classification methods are important to increase the productivity of the forest ind...
Timber knots recognition is of prime importance to further determine the timber grade. The recogniti...
In the modern sawmill industry automatic grading of the products is one of the key issues in increas...
Local Binary Pattern (LBP) can provide us with the spatial structure of images and describe the orig...
The dataset contains more than 43 000 labeled wood surface defects and covers overall ten types of t...
. The quality of a board or a sheet of veneer determines its potential uses and the price for the sa...
This study proposed a classification model for timber defect classification based on an artificial n...
Wood is one of Indonesia’s very rich natural resources abundant because the number reaches around 4,...
An automated wood species recognition system is designed to perform wood inspection at custom check...
Feature extraction is unquestionably an important process in a pattern recognition system. A defined...
An automated wood texture recognition system of 48 tropical wood species is presented. For each wood...
International audienceResolving a 3D segmentation problem is a common challenge in the domain of dig...
This paper addresses the issue of automatic wood defect classification. A tree-structure support vec...
This paper addresses the issue of automatic wood defect classification. We propose a tree-structure ...
Timber knots recognition is of prime importance to further determine the timber grade. The recogniti...
Automatic defect classification methods are important to increase the productivity of the forest ind...
Timber knots recognition is of prime importance to further determine the timber grade. The recogniti...
In the modern sawmill industry automatic grading of the products is one of the key issues in increas...
Local Binary Pattern (LBP) can provide us with the spatial structure of images and describe the orig...
The dataset contains more than 43 000 labeled wood surface defects and covers overall ten types of t...
. The quality of a board or a sheet of veneer determines its potential uses and the price for the sa...
This study proposed a classification model for timber defect classification based on an artificial n...
Wood is one of Indonesia’s very rich natural resources abundant because the number reaches around 4,...
An automated wood species recognition system is designed to perform wood inspection at custom check...
Feature extraction is unquestionably an important process in a pattern recognition system. A defined...
An automated wood texture recognition system of 48 tropical wood species is presented. For each wood...
International audienceResolving a 3D segmentation problem is a common challenge in the domain of dig...