Research on a highly efficient and accurate detection algorithm for bamboo strip defects based on deep learning

IF 6.2 1区 农林科学 Q1 AGRICULTURAL ENGINEERING
Jiale Luo , Bin Yang , Xiazhen Li , Jinbo Hu , Xizhi Wu , Xianjun Li
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引用次数: 0

Abstract

Surface defects on bamboo strips significantly impact the appearance quality and mechanical strength of bamboo laminated timber. Traditional manual methods for detecting surface defects on bamboo strips are inefficient, subjective, and lack standardization, resulting in misjudgments, missed detections, and inconsistent outcomes, which fail to meet modern industrial demands. To address this, the study proposes a target detection algorithm for efficiently and accurately detecting bamboo strip defects. The algorithm is based on a diverse dataset of 10 defect types and 6523 images, built on the YOLOv8 benchmark model and incorporated the DySample module, SPPF_UniRepLKA module, and EIoU loss function to create four bamboo strip defect detection models: Ourwork (n, s, m, l). The results demonstrate that the Ourwork-n model achieves an optimal balance between performance and complexity, with a [email protected] of 96.5 %, a [email protected]:0.95 of 71.6 %, Precision of 94.1 %, Recall of 92.6 %, and an F1 score of 93.3 %. These improvements correspond to increases of 1.1 %, 1.8 %, 0.9 %, 1.3 %, and 1.1 %, respectively, compared with the YOLOv8 benchmark model. The Ourwork-n model can meet industrial detection requirements with both high accuracy and good real-time performance (42 Frames Per Second), providing an effective solution for the efficient and precise detection of bamboo strip defects, and ensuring the high-quality production of bamboo laminated timber.
基于深度学习的高效准确竹条缺陷检测算法研究
竹材表面缺陷严重影响竹材的外观质量和机械强度。传统的手工检测竹条表面缺陷的方法效率低、主观性强、缺乏规范性,存在误判、漏检、结果不一致等问题,无法满足现代工业的需求。针对这一问题,本研究提出了一种高效、准确检测竹条缺陷的目标检测算法。该算法基于10种缺陷类型和6523幅图像的多样化数据集,以YOLOv8基准模型为基础,结合dyssample模块、SPPF_UniRepLKA模块和EIoU损失函数,建立了4个竹条缺陷检测模型Ourwork (n, s, m, l)。结果表明,Ourwork-n模型达到了性能与复杂度之间的最佳平衡,[email protected]的准确率为96.5 %,[email protected]的准确率为0.95(71.6 %),准确率为94.1 %,召回率为92.6 %,F1分数为93.3 %。与YOLOv8基准模型相比,这些改进分别增加了1.1 %、1.8 %、0.9 %、1.3 %和1.1 %。Ourwork-n模型精度高,实时性好(42帧/秒),满足工业检测要求,为高效、精确检测竹条缺陷提供了有效的解决方案,保证了竹片材的高质量生产。
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来源期刊
Industrial Crops and Products
Industrial Crops and Products 农林科学-农业工程
CiteScore
9.50
自引率
8.50%
发文量
1518
审稿时长
43 days
期刊介绍: Industrial Crops and Products is an International Journal publishing academic and industrial research on industrial (defined as non-food/non-feed) crops and products. Papers concern both crop-oriented and bio-based materials from crops-oriented research, and should be of interest to an international audience, hypothesis driven, and where comparisons are made statistics performed.
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