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Automated Knot Detection and Pairing for Wood Analysis in the Timber Industry

Automated Knot Detection and Pairing for Wood Analysis in the Timber Industry

来源:Arxiv_logoArxiv
英文摘要

Knots in wood are critical to both aesthetics and structural integrity, making their detection and pairing essential in timber processing. However, traditional manual annotation was labor-intensive and inefficient, necessitating automation. This paper proposes a lightweight and fully automated pipeline for knot detection and pairing based on machine learning techniques. In the detection stage, high-resolution surface images of wooden boards were collected using industrial-grade cameras, and a large-scale dataset was manually annotated and preprocessed. After the transfer learning, the YOLOv8l achieves an mAP@0.5 of 0.887. In the pairing stage, detected knots were analyzed and paired based on multidimensional feature extraction. A triplet neural network was used to map the features into a latent space, enabling clustering algorithms to identify and pair corresponding knots. The triplet network with learnable weights achieved a pairing accuracy of 0.85. Further analysis revealed that he distances from the knot's start and end points to the bottom of the wooden board, and the longitudinal coordinates play crucial roles in achieving high pairing accuracy. Our experiments validate the effectiveness of the proposed solution, demonstrating the potential of AI in advancing wood science and industry.

Shidong Pan、Rasul Khanbayov、Ani Khaloian-Sarnaghi、Guohao Lin、Changxi Yang、Andriy Kovryga

木材加工工业、家具制造工业自动化技术、自动化技术设备计算技术、计算机技术

Shidong Pan,Rasul Khanbayov,Ani Khaloian-Sarnaghi,Guohao Lin,Changxi Yang,Andriy Kovryga.Automated Knot Detection and Pairing for Wood Analysis in the Timber Industry[EB/OL].(2025-05-09)[2025-06-07].https://arxiv.org/abs/2505.05845.点此复制

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