Citation: | LIANG Jian, HUANG Zhihong, ZHANG Keren. Multi-scale Guided Filter and Decision Fusion for Thermal Fault Diagnosis of Power Equipment[J]. Infrared Technology , 2022, 44(12): 1344-1350. |
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