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Image segmentation for defect detection on veneer surfaces.

机译:用于单板表面缺陷检测的图像分割。

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Machine vision is widely used in scientific areas and non-wood using industries, but the extreme variability of wood has limited its adoption by forest products industries. However, it is now becoming a key factor in further automation of the forest products industry. As a very important part of machine vision, developing image segmentation algorithms that can be used for wood products is an ambitious undertaking. The focus of this research was to adapt existing and develop some new segmentation algorithms which could be used to detect defects on veneer surfaces.; Nine algorithms covering three segmentation technique categories were explored. Three existing edge detection algorithms were modified for use on veneer images, and four existing thresholding algorithms were adapted in both global and local versions. Two new region extraction algorithms were developed specifically for defect detection on veneer surfaces.; The performances of these nine algorithms were tested and compared under the combinations of two camera resolutions (5-bit and 8-bit), three color spaces (RGB, Lab, and gray-scale), and seven surface features (clear wood, blue stain, loose knot, pitch pocket, pitch streak, tight knot, and wane). Ten sample images for each of seven surface features on Douglas-fir veneer (Pseudotsuga menziesii) were used. Ten measures were proposed for performance evaluation. A multi-factor factorial ANOVA was used in the performance tests and comparisons.; The best combinations of camera resolution and color space for each of the algorithms were determined. The 5-bit and 8-bit camera resolutions were not significantly different for the three edge detection and two region extraction algorithms, but the 8-bit camera resolution was better for all but one of the thresholding algorithms. That exception was the global Otsu thresholding algorithm, for which the 5-bit camera resolution was better. The RGB color space was the best for all algorithms. Overall, the two region extraction algorithms were the best. Under the best combination of factors, those two algorithms provided the highest defect detection accuracies of 91% for pitch streak samples and over 95% for loose knot, tight knot, and pitch pocket samples. These results were accomplished while still providing clear wood accuracies of over 95%. The one performance exception was blue stain, for which no satisfactory algorithm was found.
机译:机器视觉广泛用于科学领域和非木材使用行业,但是木材的极端可变性限制了其在林产品行业中的采用。但是,它现在已成为林产品行业进一步自动化的关键因素。作为机器视觉的重要组成部分,开发可用于木制品的图像分割算法是一项雄心勃勃的任务。该研究的重点是适应现有技术并开发一些新的分割算法,这些算法可用于检测单板表面的缺陷。探索了涵盖三种分割技术类别的九种算法。对现有的三种边缘检测算法进行了修改,以用于单板图像,并对四种现有的阈值处理算法进行了全局和局部调整。专门针对单板表面的缺陷检测开发了两种新的区域提取算法。在两种相机分辨率(5位和8位),三种颜色空间(RGB,实验室和灰度)和七个表面特征(透明木材,蓝色)的组合下,测试并比较了这9种算法的性能。污点,松散的结,节距口袋,节距条纹,紧结和减弱)。花旗松表面饰板(Pseudotsuga menziesii)上的七个表面特征每个都使用十个样本图像。提出了十项绩效评估措施。性能测试和比较中使用了多因素因子方差分析。确定了每种算法的相机分辨率和色彩空间的最佳组合。对于三个边缘检测算法和两个区域提取算法,5位和8位相机分辨率没有显着差异,但是除一种阈值算法外,其他所有8位相机分辨率都更好。唯一的例外是全局Otsu阈值算法,对于该算法,5位摄像机的分辨率更好。 RGB颜色空间是所有算法中最好的。总的来说,两种区域提取算法是最好的。在因素的最佳组合下,这两种算法提供了最高的缺陷检测准确度,对于螺纹条纹样品为91%,对于松结,紧密结和螺距袋样,则为95%以上。这些结果得以实现,同时仍然提供了超过95%的清晰木材精度。一种性能例外是蓝色污点,没有找到令人满意的算法。

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