Author/Authors :
Mu، Hongbo نويسنده Northeast Forestry University, Harbin , , Zhang، Mingming نويسنده Harbin Medicine University, Harbin , , Qi، Dawei نويسنده Northeast Forestry University, Harbin , , Ta، Jinxing نويسنده Northeast Forestry University, Harbin , , Ma، Jian نويسنده Northeast Forestry University, Harbin , , Han، Yu نويسنده , , Gao، Haitao نويسنده Northeast Forestry University, Harbin ,
Abstract :
Wood defect and rot debase wood quality badly.
X-ray as a method of measurement was adopted to detect
wood defects nondestructively. Due to the changed intensity
of x-ray which crossed the object, defects in wood were
detected by the differences of X-ray absorption parameters.
Therefore images were processed and analyzed by computer.
Gray transformation could enhance the contrast of the image
obviously and the position of rot could be highlighted. Binary
processing was employed for the image after gray
transformation. The defects areas of the binary images were
filled. On the basis of image processing of nondestructive
testing and characteristic construction, defects mathematic
models were established through using characteristic
parameters. The feature parameters were preprocessed and
were input into BP neural network, and then the wood
defects could be recognized. The experimental results show
that the detection rate can be up to 90% and the
performance shows that this method is very successful for
detection and classification of wood defects. This study
provides a new method for automatic detection of wood
defects. It is useful for the scientific selection and effective
utilization of wood resources.