Image-Based Evaluation of Cracking Degrees on Wood Fiber Bundles: A Machine Learning Approach
Zheming Chai,
Heng Liu,
Haomeng Guo
et al.
Abstract:In this study, a machine learning-based method to assess and predict the cracking degree (CD) on wood fiber bundles (WFB) was developed, which is crucial for enhancing the quality control and refining the production process of wood scrimber (WS). By roller-cracking poplar wood one to three times, three distinct CD levels were established, and 361 WFB specimens were analyzed, using their water absorption rate (WAR) as the foundation for CD prediction. Through crack image analysis, four key quantitative paramete… Show more
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