Feature extraction of wood-hole defects using wavelet-based ultrasonic testing

Verfasser / Beitragende:
Huiming Yang Lei Yu
Ort, Verlag, Jahr:
Berlin/Heidelberg : Springer Berlin Heidelberg, 2017
Springer,
Springer Nature B.V,
Northeast Forestry University, Harbin 150040, People's Republic of China,
Zeitschriftentitel:
Journal of forestry research, Jg. 28; H. 2; S. 395 - 402
Format:
Journal Article
Online Zugang:
ID: FETCH-LOGICAL-c3108-4d0c0133af2b469319fe6bb1db97ce409857bf6974af0f5b4cd672222165b1193

The primary bottleneck to extracting wood defects during ultrasonic testing is the accuracy of identifying the wood defects. The wavelet energy moment was used to extract defect features of artificial wood holes drilled into 120 elm samples that differed in the number of holes to verify the validity of the method. Wavelet energy moment can reflect the distribution of energy along the time axis and the amount of energy in each frequency band,which can effectively extract the energy distribution characteristics of signals in each frequency band; therefore,wavelet energy moment can replace the wavelet frequency band energy and constitute wood defect feature vectors. A principal component analysis was used to normalize and reduce the dimension of the feature vectors. A total of 16 principal component features were then obtained, which can effectively extract the defect features of the different number of holes in the elm samples.

Journal of forestry research

Life Sciences; Wavelet energy-moment; Performance extraction; Wood; Forestry; Principal component analysis; Analysis; Forests and forestry; Energy; Hole defects; Energy distribution; Feature extraction; Principal components analysis; Wavelet analysis; Frequencies; Ultrasonic testing; Wavelet energy-moment; Performance extraction; Wood; Principal component analysis

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