Wood Classification Based on Edge Detections and Texture Features Selection

One of the properties of wood is a mechanical property, includes: hardness, strength, cleavage resistance, etc. Among these properties there that can be measured or estimated by visual observation on cross-sectional areas of wood, which is based on inter-fiber density, fiber size, and lines that build the annual rings. In this paper, we proposed a new wood quality classification method based on edge detections. Edge detection is applied to the wood test images with the aim to improving the characteristics of wood fibers so as to make it easier to distinguish their quality. Gray Level Co-occurrence Matrix (GLCM) used to obtain wood texture features, while the wood quality classification done by Naive Bayes classifier. Found in our experimental results that the first-order edge detection is likely to provide a good accuracy rate and precision. The second order edge detection is highly dependent on the choice of parameters and tends to give worse classification results, as filtering the original wood image, thus blurring characteristics related to wood density. Selection of features obtained from co-occurrence matrix is also quite affected the classification results.

[1]  Jinzhuo Wu,et al.  Nondestructive Testing of Wood Defects based on Stress Wave Technology , 2013 .

[2]  Yong Haur Tay,et al.  Rotational Invariant Wood Species Recognition through Wood Species Verification , 2009, 2009 First Asian Conference on Intelligent Information and Database Systems.

[3]  Marzuki Khalid,et al.  A Comparative Study of Feature Extraction Methods for Wood Texture Classification , 2010, 2010 Sixth International Conference on Signal-Image Technology and Internet Based Systems.

[4]  Life Member Wood Species Recognition System , 2009 .

[5]  M. Venkataramana,et al.  A Review of Recent Texture Classification : Methods . , 2013 .

[6]  Jan Tippner,et al.  PREDICTION OF MECHANICAL PROPERTIES - MODULUS OF RUPTURE AND MODULUS OF ELASTICITY - OF FIVE TROPICAL SPECIES BY NONDESTRUCTIVE METHODS , 2015 .

[7]  Barry R. Masters,et al.  Digital Image Processing, Third Edition , 2009 .

[8]  Erwin Susanto,et al.  The Detection of straight and Slant Wood Fiber Through slop angle fiber feature , 2015 .

[9]  Djati Kerami,et al.  Wood Texture Features Extraction by Using GLCM Combined With Various Edge Detection Methods , 2016 .

[10]  P. Sathyanarayana,et al.  Image Texture Feature Extraction Using GLCM Approach , 2013 .

[11]  Mandy Berg,et al.  Nondestructive Characterization and Imaging of Wood , 2003, Holz als Roh- und Werkstoff.

[12]  Mamta Juneja,et al.  Performance Evaluation of Edge Detection Techniques for Images in Spatial Domain , 2009 .

[13]  TR Mardikanto Lina K Effendi Tb SIFAT MEKANIS KAYU , 2011 .

[14]  K. Venkatachalapathy,et al.  Wood Species Identification System , 2014 .

[15]  P. Sudhakar,et al.  An Intelligent Recognition System for identification of Wood species , 2014, J. Comput. Sci..