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融合异质刺激过滤的金相图像等轴α相识别
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作者 窦燕 王丽盼 张启飞 《高技术通讯》 CAS 2021年第8期807-815,共9页
针对钛合金金相图像存在噪声、晶界α相和片层组织与等轴α相颜色极为相似而导致“误识别”的问题,提出了一种融合异质刺激过滤的金相图像中等轴α相识别算法。该算法主要包含两大部分:(1)结合数学形态学和异质刺激理论设计实现了异质... 针对钛合金金相图像存在噪声、晶界α相和片层组织与等轴α相颜色极为相似而导致“误识别”的问题,提出了一种融合异质刺激过滤的金相图像中等轴α相识别算法。该算法主要包含两大部分:(1)结合数学形态学和异质刺激理论设计实现了异质刺激模板,对晶界α相和片层组织进行了有效的过滤;(2)提出了一种结合距离变换和数学形态学的前景和背景标记方法,对等轴α相和其他组织进行了精确的标记,利用标记分水岭算法对金相等轴α相进行识别。实验结果表明,该算法过滤了金相图像中大部分的晶界α相和片层组织,并最大程度地降低了对等轴α相边缘区域的影响。与大津算法、最大熵算法、模糊C均值聚类算法对等轴α相的识别效果相比,本文算法提高了等轴α相的识别准确率。 展开更多
关键词 金相图像识别 异质刺激 数学形态学 标记分水岭算法
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Automatic recognition and quantitative analysis of Ω phases in Al-Cu-Mg-Ag alloy
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作者 刘冰滨 谷艳霞 +1 位作者 刘志义 田小林 《Journal of Central South University》 SCIE EI CAS 2014年第5期1696-1704,共9页
The main methods of the second phase quantitative analysis in current material science researches are manual recognition and extracting by using software such as Image Tool and Nano Measurer. The weaknesses such as hi... The main methods of the second phase quantitative analysis in current material science researches are manual recognition and extracting by using software such as Image Tool and Nano Measurer. The weaknesses such as high labor intensity and low accuracy statistic results exist in these methods. In order to overcome the shortcomings of the current methods, the Ω phase in A1-Cu-Mg-Ag alloy is taken as the research object and an algorithm based on the digital image processing and pattern recognition is proposed and implemented to do the A1 alloy TEM (transmission electron microscope) digital images process and recognize and extract the information of the second phase in the result image automatically. The top-hat transformation of the mathematical morphology, as well as several imaging processing technologies has been used in the proposed algorithm. Thereinto, top-hat transformation is used for elimination of asymmetric illumination and doing Multi-layer filtering to segment Ω phase in the TEM image. The testing results are satisfied, which indicate that the Ω phase with unclear boundary or small size can be recognized by using this method. The omission of these two kinds of Ω phase can be avoided or significantly reduced. More Ω phases would be recognized (growing rate minimum to 2% and maximum to 400% in samples), accuracy of recognition and statistics results would be greatly improved by using this method. And the manual error can be eliminated. The procedure recognizing and making quantitative analysis of information in this method is automatically completed by the software. It can process one image, including recognition and quantitative analysis in 30 min, but the manual method such as using Image Tool or Nano Measurer need 2 h or more. The labor intensity is effectively reduced and the working efficiency is greatly improved. 展开更多
关键词 auto pattern recognition top-hat transformation second phases in A1 alloy quantitative analysis
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