4.7 Article

Detection method of timber defects based on target detection algorithm

Journal

MEASUREMENT
Volume 203, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.measurement.2022.111937

Keywords

Wood defect detection; YOLOX; Target detection; Feature fusion

Funding

  1. Special Fund for Basic Scientific Research Operations of General Universities in Heilongjiang Province [LGYC2018JQ017]
  2. Fundamental Research Funds for the Central Universities [2572020DY12]
  3. Research and Applied Technology Research and Development Programmer of Heilongjiang Province [GA19A402]

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By improving the feature fusion module, loss functions, and model parameters of the YOLOX target detection algorithm, this article enhances the accuracy and speed of wood surface defect detection. Experimental results demonstrate significant improvements and advantages of the proposed method in detecting four types of defects on rubber timber.
Deep learning has achieved certain results in the field of wood surface defect detection. To address the problems of low accuracy of the detection results of surface defects on boards, slow detection speed and large number of model parameters, this article take advantage of computer vision to improve the feature fusion module of YOLOX target detection algorithm, by adding efficient channel attention (ECA) mechanism, adaptive spatial feature fusion mechanism (ASFF) and improve the confidence loss and localization loss functions as Focal loss and Efficient Intersection over Union (EIoU) loss, to enhance the feature extraction ability and detection accuracy of the algorithm. Considering the depth and width of the model, the depth-separable convolution and optional multi-version algorithm are used to reduce the model parameters and computational effort to seek the optimal model. Experiments show that the improved model detects four types of defects in rubber timber with a considerable improvement and has significant advantages over other target detection algorithms.

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