The recognition of wood species is needed is many areas like construction industry, furniture manufacturing, etc.,. The wood is traditionally classified by human experts. But human identification of wood type is not accurate and the manual identification is a time consuming process. So in this study, an intelligent recognition for identification of wood species was developed. This study uses image enhancement as a preprocessing techniques and uses a new method which divides the image into several blocks known as image blocking. Each block is extracted using grey image and edge detection techniques. The Grey-Level Co-occurrence Matrix (GLCM) is used as a texture classification technique. The GLCMs are generated to obtain three features: Entr...
There are more than 3000 wood species in tropical rainforests, each with their own unique wood anato...
An automated wood recognition system is designed to classify tropical wood species.The wood features...
Wood is one of Indonesia’s very rich natural resources abundant because the number reaches around 4,...
The proposed system identifies the species of the wood using the textural features present in its ba...
An automated wood species recognition system is designed to perform wood inspection at custom check...
Classifying wood species accurately is crucial since incorrect labelling of wood species may incur h...
A cascaded wood species recognition system using simple statistical properties of the wood texture i...
Effective statistical feature extraction and classification are important in image-based automatic i...
An automated wood recognition system can classify wood species in just a matter of seconds and can r...
An automated wood texture recognition system of 48 tropical wood species is presented. For each wood...
Woods species recognition is a texture classification difficulty that has been studied by many resea...
A key to wood identification is the distinguishable features found on the cross-sectional surface of...
This research was performed in order to determine suitable methodology and techniques to automatical...
Despite tighter conservation regulations, demand for timber products has continued to increase due t...
Abstract: Currently, the presence of wood is becoming increasingly scarce. In addition, the recognit...
There are more than 3000 wood species in tropical rainforests, each with their own unique wood anato...
An automated wood recognition system is designed to classify tropical wood species.The wood features...
Wood is one of Indonesia’s very rich natural resources abundant because the number reaches around 4,...
The proposed system identifies the species of the wood using the textural features present in its ba...
An automated wood species recognition system is designed to perform wood inspection at custom check...
Classifying wood species accurately is crucial since incorrect labelling of wood species may incur h...
A cascaded wood species recognition system using simple statistical properties of the wood texture i...
Effective statistical feature extraction and classification are important in image-based automatic i...
An automated wood recognition system can classify wood species in just a matter of seconds and can r...
An automated wood texture recognition system of 48 tropical wood species is presented. For each wood...
Woods species recognition is a texture classification difficulty that has been studied by many resea...
A key to wood identification is the distinguishable features found on the cross-sectional surface of...
This research was performed in order to determine suitable methodology and techniques to automatical...
Despite tighter conservation regulations, demand for timber products has continued to increase due t...
Abstract: Currently, the presence of wood is becoming increasingly scarce. In addition, the recognit...
There are more than 3000 wood species in tropical rainforests, each with their own unique wood anato...
An automated wood recognition system is designed to classify tropical wood species.The wood features...
Wood is one of Indonesia’s very rich natural resources abundant because the number reaches around 4,...