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Bag of words representation and SVM classifier for timber knots detection on color images

机译:用于彩色图像木材结点检测的单词袋表示法和SVM分类器

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Knots as well as their density have a huge impact on the mechanical properties of wood boards. This paper addresses the issue of their automatic detection. An image processing pipeline which associates low level processing (contrast enhancement, thresholding, mathematical morphology) with bag-of-words approach is developed. We propose a SVM classification based on features obtained by SURF descriptors on RGB images, followed by a dictionary created using the bag-of-words approach. Our method was tested on color images from two different datasets with a total number of 640 knots. The mean recall (true positive) rate achieved was (92%) and (97%) for a single dictionary (built only on samples from the first dataset), for the two datasets respectively, illustrating the robustness of our method.
机译:结及其密度对木板的机械性能有巨大影响。本文解决了它们的自动检测问题。开发了将低级处理(对比度增强,阈值处理,数学形态学)与词袋方法相关联的图像处理管道。我们提出了一种基于SURF描述符在RGB图像上获得的特征的SVM分类,然后是使用词袋方法创建的字典。我们的方法在来自两个不同数据集(总结数为640节)的彩色图像上进行了测试。对于一个字典(仅基于第一个数据集的样本),两个数据集的平均召回率(真实阳性)分别为(92%)和(97%),这说明了我们方法的稳健性。

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