A reliability study on automated defect assessment in optical pulsed thermography
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X. Maldague | S. Sfarra | C. Ibarra-Castanedo | Hai Zhang | Q. Fang | Yuxia Duan | Mingjun Li | A. Osman | Siyu Xiang | Akam M.Omer | Dazhi Yang | Bingyang Han | Zhen Gao | Hongbo Hu | Bingyang Han
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