Gurden S. P., Monteiro V. F., Longo E., Ferreira, M. M. C., “Quantitative
analysis and classification of AFM images of human hair”, J. Microsc.,
215(1),
13-23 (Jul 2004).
[Article.]
Abstract.
The surface topography of human hair, as defined by the outer layer
of cellular sheets, termed cuticles, largely determines the cosmetic properties
of the hair. The condition of the cuticles is of great cosmetic importance,
but also has the potential to aid diagnosis in the medical and forensic
sciences. Atomic force microscopy (AFM) has been demonstrated to offer
unique advantages for analysis of the hair surface, mainly due to the high
image resolution and the ease of sample preparation. This article presents
an algorithm for the automatic analysis of AFM images of human hair. The
cuticular structure is characterized using a series of descriptors, such
as step height, tilt angle and cuticle density, allowing quantitative analysis
and comparison of different images. The usefulness of this approach is
demonstrated by a classification study. Thirty-eight AFM images were measured,
consisting of hair samples from (a) untreated and bleached hair samples,
and (b) the root and distal ends of the hair fibre. The multivariate classification
technique partial least squares discriminant analysis is used to test the
ability of the algorithm to characterize the images according to the properties
of the hair samples. Most of the images (86%) were found to be classified
correctly.
Keywords.
Keywords Plus.