Abstract

BackgroundIndirect anthropometry (IA) is one of the craniofacial anthropometry methods to perform the measurements on the digital facial images. In order to get the linear measurements, a few definable points on the structures of individual facial images have to be plotted as landmark points. Currently, most anthropometric studies use landmark points that are manually plotted on a 3D facial image by the examiner. This method is time-consuming and leads to human biases, which will vary from intra-examiners to inter-examiners when involving large data sets. Biased judgment also leads to a wider gap in measurement error. Thus, this work aims to automate the process of landmarks detection to help in enhancing the accuracy of measurement. In this work, automated craniofacial landmarks (ACL) on a 3D facial image system was developed using geometry characteristics information to identify the nasion (n), pronasale (prn), subnasale (sn), alare (al), labiale superius (ls), stomion (sto), labiale inferius (li), and chelion (ch). These landmarks were detected on the 3D facial image in .obj file format. The IA was also performed by manually plotting the craniofacial landmarks using Mirror software. In both methods, once all landmarks were detected, the eight linear measurements were then extracted. Paired t-test was performed to check the validity of ACL (i) between the subjects and (ii) between the two methods, by comparing the linear measurements extracted from both ACL and AI. The tests were performed on 60 subjects (30 males and 30 females).ResultsThe results on the validity of the ACL against IA between the subjects show accurate detection of n, sn, prn, sto, ls and li landmarks. The paired t-test showed that the seven linear measurements were statistically significant when p < 0.05. As for the results on the validity of the ACL against IA between the methods, ACL is more accurate when p ≈ 0.03.ConclusionsIn conclusion, ACL has been validated with the eight landmarks and is suitable for automated facial recognition. ACL has proved its validity and demonstrated the practicability to be used as an alternative for IA, as it is time-saving and free from human biases.

Highlights

  • Indirect anthropometry (IA) is one of the craniofacial anthropometry methods to perform the measurements on the digital facial images

  • The estimation of reliability of linear measurements between both female and male subjects is 0.99, with a 95% confidence interval, CI (0.98, 0.99). These values provide enough evidence to support the reliability of the linear measurements between the subjects and is almost a perfect agreement since Intraclass correlation (ICC) value is more than 0.7 (> 0.7), in the range of 0.7–1.0

  • The results show that linear measurement values of male and female subjects that were taken manually have high consistency and reliability to each other and are valid to run in statistical analyses

Read more

Summary

Introduction

Indirect anthropometry (IA) is one of the craniofacial anthropometry methods to perform the measurements on the digital facial images. In this work, automated craniofacial landmarks (ACL) on a 3D facial image system was developed using geometry characteristics information to identify the nasion (n), pronasale (prn), subnasale (sn), alare (al), labiale superius (ls), stomion (sto), labiale inferius (li), and chelion (ch). The IA was performed by manually plotting the craniofacial landmarks using Mirror software In both methods, once all landmarks were detected, the eight linear measurements were extracted. Fakhroddin et al [4] performed a study on craniofacial measurement of 68 male and 33 female patients with chronic schizophrenia (based on DSM-IV criteria), and 50 male and 51 female healthy volunteers They took less time to complete the measurement for one subject. Not all measurements were taken into account due to the lack of cooperation among some patients

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call