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Detecting Wood Surface Defects with fusion algorithm of Visual Saliency and Local Threshold Segmentation

机译:视觉显着度与局部阈值分割融合算法检测木材表面缺陷

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This paper presents a new method for wood defect detection. It can solve the over-segmentation problem existing in local threshold segmentation methods. This method effectively takes advantages of visual saliency and local threshold segmentation. Firstly, defect areas are coarsely located by using spectral residual method to calculate global visual saliency of them. Then, the threshold segmentation of maximum inter-class variance method is adopted for positioning and segmenting the wood surface defects precisely around the coarse located areas. Lastly, we use mathematical morphology to process the binary images after segmentation, which reduces the noise and small false objects. Experiments on test images of insect hole, dead knot and sound knot show that the method we proposed obtains ideal segmentation results and is superior to the existing segmentation methods based on edge detection, OSTU and threshold segmentation.
机译:本文提出了一种新的木材缺陷检测方法。它可以解决局部阈值分割方法中存在的过度分割问题。该方法有效地利用了视觉显着性和局部阈值分割的优势。首先,利用光谱残差法对缺陷区域进行粗略定位,以计算出它们的整体视觉显着性。然后,采用最大类间差异阈值分割法对木材表面缺陷进行精确定位和分割。最后,我们使用数学形态学对分割后的二值图像进行处理,从而减少了噪声和小的虚假物体。通过对虫洞,死结和声结的测试图像的实验表明,该方法取得了理想的分割效果,优于基于边缘检测,OSTU和阈值分割的分割方法。

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