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Stress Wave Tomography of Wood Internal Defects Based on Deep Learning and Contour Constraint Under Sparse Sampling

机译:稀疏采样下基于深度学习和轮廓约束的木材内部缺陷应力波层析成像

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In order to detect the size and shape of defects inside wood using stress wave technology under sparse sampling, a novel tomography algorithm is proposed in this paper. The method uses instrument to obtain the stress wave velocity data by sensors hanging around the timber equally, visualizes those data, and reconstructs the image of internal defects with estimated velocity distribution. The basis of the algorithm is using deep learning to assist stress wave tomography to resist signal reduction. First, training CNN model with a large number of generated simulation samples and two-level defect location labeling, and detecting the defective region in wood. Second, using CNN detection results to assist tomography algorithm to precisely estimate the defective area with contour constraint including deepening and weakening operations. Both simulation and wood samples were used to evaluate the proposed method. Effect of CNN detection results on tomography and the shape of the imaging results were both analyzed. The comparison results show that the proposed method always can produce high quality reconstructions with clear edges, when the number of sensors is decreased from 12 to 6.
机译:为了在稀疏采样下利用应力波技术检测木材内部缺陷的大小和形状,提出了一种新颖的层析成像算法。该方法使用仪器通过均匀悬挂在木材周围的传感器获得应力波速度数据,将这些数据可视化,并以估计的速度分布重建内部缺陷的图像。该算法的基础是使用深度学习来辅助应力波断层扫描,以防止信号减少。首先,使用大量生成的模拟样本和两级缺陷位置标记来训练CNN模型,并检测木材中的缺陷区域。其次,利用CNN检测结果辅助X线断层扫描算法,利用轮廓约束(包括加深和削弱操作)精确估计缺陷区域。仿真和木材样本均用于评估该方法。分析了CNN检测结果对断层扫描的影响以及成像结果的形状。比较结果表明,当传感器的数量从12个减少到6个时,所提出的方法始终可以产生具有清晰边缘的高质量重构。

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