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Wood Quality Defect Detection Based on Deep Learning and Multicriteria Framework

机译:基于深度学习和多准则框架的木材质量缺陷检测

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摘要

Traditional nondestructive testing technology for wood defects has a series of problems such as low identification accuracy, high cost, and cumbersome operation, and traditional testing methods cannot accurately show the specific location and size of wood internal defects; it is urgent to explore a new nondestructive testing scheme for wood defects. Aiming at this problem, this paper designs and develops an automatic detection method for wood surface defects based on deep learning algorithm and multicriteria framework. By comparing the performance of different deep learning detection methods on the data set, the advantages and disadvantages of the detection method in this paper are proved. After a series of works, such as the development and optimization of the experimental algorithm, the algorithm proposed meets the requirements in both the detection accuracy and training time.
机译:传统的木材缺陷无损检测技术存在识别精度低、成本高、操作繁琐等一系列问题,传统的检测方法无法准确显示木材内部缺陷的具体位置和大小;亟需探索一种新的木材缺陷无损检测方案。针对该问题,本文设计并开发了一种基于深度学习算法和多准则框架的木材表面缺陷自动检测方法。通过对比不同深度学习检测方法在数据集上的性能,证明了该检测方法的优缺点。经过实验算法的开发和优化等一系列工作,所提算法在检测精度和训练时间上均满足要求。

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