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Bilateral Defect Cutting Strategy for Sawn Timber Based on Artificial Intelligence Defect Detection Model. | LitMetric

AI Article Synopsis

  • - Solid wood is a highly valued material for construction and furniture, but defects like knots and cracks can weaken its properties and make it less suitable for certain uses.
  • - The study presents BDCS-YOLO, an AI-based sawing strategy that uses dual-sided imaging to improve timber processing automation, achieving a high detection precision of 0.94 on a dataset of 450 images.
  • - This new method not only improves the accuracy of defect detection but also increases the volume yield of sawn timber by 12.3%, enhancing the efficiency of solid wood resource utilization in the lumber industry.

Article Abstract

Solid wood is renowned as a superior material for construction and furniture applications. However, characteristics such as dead knots, live knots, piths, and cracks are easily formed during timber's growth and processing stages. These features and defects significantly undermine the mechanical characteristics of sawn timber, rendering it unsuitable for specific applications. This study introduces BDCS-YOLO (Bilateral Defect Cutting Strategy based on You Only Look Once), an artificial intelligence bilateral sawing strategy to advance the automation of timber processing. Grounded on a dual-sided image acquisition platform, BDCS-YOLO achieves a commendable mean average feature detection precision of 0.94 when evaluated on a meticulously curated dataset comprising 450 images. Furthermore, a dual-side processing optimization module is deployed to enhance the accuracy of defect detection bounding boxes and establish refined processing coordinates. This innovative approach yields a notable 12.3% increase in the volume yield of sawn timber compared to present production, signifying a substantial leap toward efficiently utilizing solid wood resources in the lumber processing industry.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11510799PMC
http://dx.doi.org/10.3390/s24206697DOI Listing

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