Identification and localization of veneer knot defects based on parallel structure fusion approach

IF 2.4 3区 农林科学 Q1 FORESTRY
Lihui Zhong, Zhengquan Dai, Zhuobin Zhang, Yongke Sun, Yong Cao, Leiguang Wang
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引用次数: 0

Abstract

Veneer knots are the main indicator of plywood quality. Existing veneer knot identification algorithms have a high identification accuracy rate of over 90%. However, the convolutional neural network (CNN) model is complex and requires laborious data labeling. The localization algorithm produces veneer knot bounding boxes, except for the Mask Region-based CNN (Mask R-CNN) model, which is not accurate and has error transmission. Additionally, the calculation of defect size (area and diameter) has not been addressed. This paper proposes a parallel structured fusion algorithm. One branch employs a classical simple CNN, specifically the Inception V3 network, to identify veneer knot defects. The other branch proposes an improved K-means clustering algorithm to localize veneer knot defects. After identification and localization are achieved, the actual area of the defect is calculated. The proposed method for identifying veneer knot defects has an accuracy rate of 99.61%. The size accuracy localization rate is 94%, with an under-sized localization rate of 2%, an over-sized localization rate of 3%, and the knot localization error rate is 1%. Additionally, the algorithm also calculates the area and diameter of the knot, with a mean absolute error of the diameter of 3.23 mm. This paper presents an algorithm with low complexity, fast speed, high accuracy, and no error transmission, making it suitable for identifying and localizing other defects.

Abstract Image

基于平行结构融合方法的单板结缺陷识别和定位
单板节是胶合板质量的主要指标。现有单板节识别算法的识别准确率高达 90% 以上。然而,卷积神经网络(CNN)模型比较复杂,需要费力地标注数据。除基于掩码区域的 CNN(掩码 R-CNN)模型外,定位算法可生成单板结边界框,但该模型并不准确,且存在误差传输。此外,缺陷大小(面积和直径)的计算也没有得到解决。本文提出了一种并行结构化融合算法。其中一个分支采用经典的简单 CNN,特别是 Inception V3 网络,来识别单板结缺陷。另一个分支提出了一种改进的 K-means 聚类算法来定位单板结缺陷。在实现识别和定位后,再计算缺陷的实际面积。所提出的单板结缺陷识别方法的准确率为 99.61%。尺寸精确定位率为 94%,尺寸不足定位率为 2%,尺寸过大定位率为 3%,木结定位错误率为 1%。此外,该算法还能计算绳结的面积和直径,直径的平均绝对误差为 3.23 毫米。本文提出的算法具有复杂度低、速度快、精度高、无误差传输等特点,适用于其他缺陷的识别和定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
European Journal of Wood and Wood Products
European Journal of Wood and Wood Products 工程技术-材料科学:纸与木材
CiteScore
5.40
自引率
3.80%
发文量
124
审稿时长
6.0 months
期刊介绍: European Journal of Wood and Wood Products reports on original research and new developments in the field of wood and wood products and their biological, chemical, physical as well as mechanical and technological properties, processes and uses. Subjects range from roundwood to wood based products, composite materials and structural applications, with related jointing techniques. Moreover, it deals with wood as a chemical raw material, source of energy as well as with inter-disciplinary aspects of environmental assessment and international markets. European Journal of Wood and Wood Products aims at promoting international scientific communication and transfer of new technologies from research into practice.
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