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Alogirthms for Fast Locating Identification on the Surface Defects of the Thermal-State Heavy Rail based on Machine Vision

机译:基于机器视觉的热态重轨表面缺陷快速定位与识别算法

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Color imaging in the hot rolled condition provides the better reaction of heavy rail on surface defects. Multiple linear CCD array were used for the multi-angle shot imaging of the thermal heavy rail. Uneven illumination and complex surface morphology are worsened by the difficulties in image stitching algorithm, making the whole surface of the heavy rail with distortion, interference and a growing number of suspected regions. An adaptive vector median filter for color images was proposed to the enable effective follow-up processing on the image. In RGB space, color image was decomposed, where the de-differentiated image pixel variance was introduced to extract a complete defect or the suspected areas. This was followed by the use of a variety of characteristic parameters in the suspected region for defect recognition based on SVM. Experiments show that this algorithm for the identification of the heavy rail surface defects is proven to be more rapid in testing the inclusions, cracks and oxide skin defects with a good promotional value.
机译:热轧条件下的彩色成像可以使重轨对表面缺陷产生更好的反应。多个线性CCD阵列用于热重轨的多角度拍摄成像。图像拼接算法的困难加剧了照明不均和复杂的表面形态,使重型轨道的整个表面变形,产生干扰,并增加了可疑区域。提出了一种用于彩色图像的自适应矢量中值滤波器,以对图像进行有效的后续处理。在RGB空间中,对彩色图像进行分解,其中引入去分化图像像素方差以提取完整的缺陷或可疑区域。随后,在可疑区域中使用各种特征参数进行基于SVM的缺陷识别。实验表明,该算法可用于较重的铁轨表面缺陷的检测,被证明在检测夹杂物,裂纹和氧化皮缺陷方面具有更快的推广速度,并且具有良好的推广价值。

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