Infrared thermal imaging is an evolving approach useful in non-destructive evaluation of materials for industrial and
research purposes. This study investigates the use of this method in combination with multivariate data analysis as an
alternative to chemical etching; a destructive method currently used to recover defaced serial numbers stamped in metal.
This process involves several unique aspects, each of which works to overcome some pertinent challenges associated
with the recovery of defaced serial numbers. Infrared thermal imaging of metal surfaces provides thermal images sensitive
to local differences in thermal conductivity of regions of plastic strain existing below a stamped number. These strains are
created from stamping pressures distorting the atomic crystalline structure of the metal and extend to depths beneath the
stamped number. These thermal differences are quite small and thus not readily visible from the raw thermal images of an
irregular surface created by removing the stamped numbers. As such, further enhancement is usually needed to identify
the subtle variations. The multivariate data analysis method, principal component analysis, is used to enhance these subtle
variations and aid the recovery of the serial numbers. Multiple similarity measures are utilised to match recovered numbers
to several numerical libraries, followed by application of various fusion rules to achieve consensus identification.
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