6 CONCLUSIONS
To conclude, in this paper we proposed a fetal face re-
construction algorithm from 3DUS images. The ap-
proach differs from the existing ones proposed in the
literature, as it is based on the fitting of a deformable
BabyFM to 3DUS to remove the noise and to recover
the whole baby facial morphology. It was demon-
strated that our algorithm is able to reconstruct the
whole facial morphology of the babies under differ-
ent conditions (large amounts of noise, missing parts
or multiple US scans), obtaining promising results.
In the future, the presented technique could aid in
the prenatal assessment and in-utero diagnosis of syn-
dromes and diseases in which facial dysmorphology
is an indicator of early craniofacial abnormalities.
ACKNOWLEDGEMENTS
This work is partly supported by the Spanish Ministry
of Economy and Competitiveness under project grant
TIN2017-90124-P, and the Maria de Maeztu Units of
Excellence Programme (MDM-2015-0502).
REFERENCES
Albu, A., Horhoianu, I., Dumitrascu, M., and Horhoianu,
V. (2014). Growth assessment in diagnosis of fetal
growth restriction. review. J Med Life, 7(2):150–154.
Andresen, C., Matias, A., and Merz, E. (2012). Fetal Face:
The Whole Picture. Ultraschall in Med, 33:431–440.
Bas, A., Smith, W., Bolkart, T., and Wuhrer, S. (2016). Fit-
ting a 3D Morphable Model to Edges: A Compari-
son Between Hard and Soft Correspondences. Asian
Conference on Computer Vision Workshop on Facial
Informatics, Taipei (Taiwan), pages 377–391.
Bonacina, L., Froio, A., Conti, D., Marcolin, F., and
Vezzetti, E. (2016). Automatic 3D foetal face model
extraction from ultrasonography through histogram
processing. Journal of Medical Ultrasound, 24:124–
149.
Dall’Asta, A., Schievano, S., and Bruse, J. (2017). Quan-
titative analysis of fetal facial morphology using 3D
ultrasound and statistical shape modeling: a feasibil-
ity study. Am J Obstet Gynecol, 217(76):1–8.
EvansAnne, K. N., HingMichael, V., and Cunningham, L.
(2018). 100 - Craniofacial Malformations. Avery’s
Diseases of the Newborn, 10:1417–1437.
Learned-Miller, E., Lu, Q., Paisley, A., Trainer, P., Blanz,
V., Dedden, K., and Miller, R. (2006). Detecting
acromegaly: screening for disease with a morphable
model. In International Conference on Medical Im-
age Computing and Computer-Assisted Intervention
(MICCAI), page 495–503.
Menezes, G. A., J
´
unior, E. A., Lopes, J., S. Belmonte, G. T.,
and Werner, H. (2016). Prenatal diagnosis and phys-
icalmodel reconstruction of agnathia–otocephaly with
limb deformities (absent ulna, fibula and digits) fol-
lowing maternalexposure to oxymetazoline in the first
trimester. Journal of Obstetrics and Gynaecology Re-
search, 42(8):1016–1020.
Merz, E. and Abramowicz, J. (2012). 3D/4D ultrasound in
prenatal diagnosis: is it time for routine use? Clin
Obstet Gynecol, 55(1):336–351.
Merz, E. and Welter, C. (2005). 2D and 3D Ultrasound in
the evaluation of normal and abnormal fetal anatomy
in the second and third trimesters in a level III center.
Ultraschall Med., 1:1–16.
Morales, A., Porras, A. R., Tu, L., Linguraru, M. G.,
Piella, G., and Sukno, F. M. (2020). Spectral Corre-
spondence Framework for Building a 3D Baby Face
Model. In 15th IEEE International Conference on
Automatic Face and Gesture Recognition, pages 507–
514.
Mossey, P. A. and Catilla, E. E. (2001). Global registry
and database on craniofacial anomalies. WHO Reg-
istry Meeting on Craniofacial Anomalies.
on Government Affairs, A. C. (2020). Craniofacial Anoma-
lies. AAOMS.
S
,
orop Florea, M., Dragus
,
in, R.-C., Marinas
,
, C., S
,
orop, V.-
B., P
˘
atru, C. L., Zoril
˘
a, L. G., Neamt
,
u, C., Vedut
,
a,
A., Iliescu, D. G., and Cernea, N. (2018). Congenital
Abnormalities of the Fetal Face. IntechOpen.
Peleg, D., Kennedy, C. M., and Hunter, S. K. (1998). In-
trauterine growth restriction: Identification and man-
agement. Am Fam Physician, 58(2):453–460.
Pooh, R. and Kurjak, A. (2011). 3D/4D sonography moved
prenatal diagnosis of fetal anomalies from the second
to the first trimester of pregnancy. J Matern Fetal
Neonatal Med, 25(5):433–455.
Speranza, D., Citro, D., Padula, F., Motyl, B., Marcolin, F.,
Cal
`
ı, M., and Martorelli, M. (2017). Additive Man-
ufacturing Techniques for the Reconstruction of 3D
Fetal Faces. Applied Bionics and Biomechanics.
Tu, L., Porras, A., Morales, A., Perez, D., Piella, G., Su-
kno, F., and Linguraru, M. (2019). Three-Dimensional
Face Reconstruction from Uncalibrated Photographs:
Application to Early Detection of Genetic Syndromes.
In: Uncertainty for Safe Utilization of Machine
Learning in Medical Imaging and Clinical Image-
Based Procedures. Lecture Notes in Computer Sci-
ence, 11840:182–189.
Tu, L., Porras, A. R., Boyle, A., and Linguraru, M. G.
(2018). Analysis of 3D Facial Dysmorphology in
Genetic Syndromes from Unconstrained 2D pho-
tographs. In International Conference on Medical Im-
age Computing and Computer - Assisted Intervention
(MICCAI), page 347–355.
Werner, H., Lopes, J., Tonni, G., and J
´
unior, E. A.
(2015). Physicalmodel from 3D ultrasound and
magnetic resonance imaging scan data reconstruc-
tion of lumbosacral myelomeningocelein a fetus with
chiari ii malformation. Child’s Nervous System,
31(4):511–513.
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