Surface-Defect Segmentation using U-shaped Inverted Residuals

Pornthep Sarakon, H. Kawano, S. Serikawa
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引用次数: 1

Abstract

Surface-Defect segmentation plays an important role. It is very necessary to detect on products during production process. Though there are several previous works in surface-defect segmentation, it needs high handcraft skill. We address automatic segmentation algorithm in surface using U-shape inverted residuals to achieve end-to-end learning network. A proposed method is data acquisition, surface-defect segmentation network creation and training. First, the experimental image is augmented by image processing technique, such as rotation, flip, translation, skew and zoom in, which is randomly augmented. Second, U-shape inverted residuals segmentation network is created by changing backbone of encoder and reconstructs decoder by inverted of encoder in order to improve performance of segmentation network. In the final step, the training step of the proposed network is set. To evaluate the performance of the proposed network, each plastic hose tip and dental caries 10,000 image are used to compare between proposed network and Unet [15]. From the experiment, Dice score and IoU are 77.11% and 62.75% in plastic hose tip, respectively. In dental caries problem, Dice score and IoU are 84.16% and 72.65%, respectively. The results show that the proposed network is satisfactory and able to be improved for higher performance. Advantages of the method are that it avoids handcraft feature extraction and is automatically learning.
基于u型倒残差的表面缺陷分割
表面缺陷分割起着重要的作用。在生产过程中对产品进行检测是非常必要的。虽然在表面缺陷分割方面已有很多工作,但对手工技术的要求很高。我们利用u型倒残差来解决曲面自动分割算法,实现端到端学习网络。提出了一种数据采集、表面缺陷分割网络建立和训练的方法。首先,通过旋转、翻转、平移、倾斜、放大等图像处理技术对实验图像进行随机增强;其次,通过改变编码器的主干构造u型倒立残差分割网络,通过倒立编码器重构解码器,提高分割网络的性能;最后一步,设置所提网络的训练步长。为了评估所提出的网络的性能,我们使用每个塑料软管尖端和龋齿10,000张图像来比较所提出的网络与Unet[15]。实验结果表明,塑料软管尖端的Dice得分和IoU分别为77.11%和62.75%。在龋齿问题中,Dice评分为84.16%,IoU为72.65%。结果表明,所提出的网络是令人满意的,并且可以改进以获得更高的性能。该方法的优点是避免了手工特征提取,并且是自动学习的。
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