Deep learning-based sustainable subsurface anomaly detection in Barker-coded thermal wave imaging
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V. S. Ghali | G. T. Vesala | C. Santulli | Sivasubramanian Palanisamy | J. Kechagias | M. Parvez | Aravindhan Alagarsamy | A. Mohammad | Gampa Chandra Sekhar Yadav | Atala Vijaya Lakshmi
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