交变/旋转磁场下焊接缺陷磁光成像检测与分类
李彦峰, 高向东, 季玉坤, 王春草. 交变/旋转磁场下焊接缺陷磁光成像检测与分类[J]. 光学 精密工程, 2020, 28(5): 1046.
LI Yan-feng, GAO Xiang-dong, JI Yu-kun, WANG Chun-cao. Detection and classification of welding defects by magneto-optical imaging under alternating/rotating magnetic field[J]. Optics and Precision Engineering, 2020, 28(5): 1046.
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李彦峰, 高向东, 季玉坤, 王春草. 交变/旋转磁场下焊接缺陷磁光成像检测与分类[J]. 光学 精密工程, 2020, 28(5): 1046. LI Yan-feng, GAO Xiang-dong, JI Yu-kun, WANG Chun-cao. Detection and classification of welding defects by magneto-optical imaging under alternating/rotating magnetic field[J]. Optics and Precision Engineering, 2020, 28(5): 1046.