TY - JOUR
T1 - Face Detection Using Haar Cascade Classifiers Based on Vertical Component Calibration
AU - Choi, Cheol Ho
AU - Kim, Junghwan
AU - Hyun, Jongkil
AU - Kim, Younghyeon
AU - Moon, Byungin
N1 - Publisher Copyright:
© 2022
PY - 2022
Y1 - 2022
N2 - The growing significance of the security and human management fields attracts active research related to face detection and recognition systems. Among these face detection techniques based on machine learning, Haar cascade classifiers are widely used because of their high accuracy for human frontal faces. However, the Haar cascade classifiers have a limitation in that the processing time increases as the number of false positives increases because they detect human faces based on the sub-window operation. Therefore, in this paper, a preprocessing method based on a 2D Haar discrete wavelet transform is proposed for face detection. The proposed method improves the processing speed by reducing the number of false positives through a vertical component calibration process using the vertical and horizontal components. The results of the face detection experiments that use a public test dataset comprising 2,845 images showed that the proposed method improved the processing speed by 32.05% and reduced the number of false positives by 25.46%, compared with those of the histogram equalization that shows the best performance case among conventional filter-based pre-processing methods. In addition, the performance of the proposed method is similar to those of conventional image contraction-based methods. In an experiment using a private dataset, the proposed method showed a 53.85% reduction in the total number of false positives compared with that of the Gaussian filter while maintaining the total number of true positives. The F 1 score of the proposed method shows a 1.39% improvement compared with those of Lanczos-3 that shows the best performance case.
AB - The growing significance of the security and human management fields attracts active research related to face detection and recognition systems. Among these face detection techniques based on machine learning, Haar cascade classifiers are widely used because of their high accuracy for human frontal faces. However, the Haar cascade classifiers have a limitation in that the processing time increases as the number of false positives increases because they detect human faces based on the sub-window operation. Therefore, in this paper, a preprocessing method based on a 2D Haar discrete wavelet transform is proposed for face detection. The proposed method improves the processing speed by reducing the number of false positives through a vertical component calibration process using the vertical and horizontal components. The results of the face detection experiments that use a public test dataset comprising 2,845 images showed that the proposed method improved the processing speed by 32.05% and reduced the number of false positives by 25.46%, compared with those of the histogram equalization that shows the best performance case among conventional filter-based pre-processing methods. In addition, the performance of the proposed method is similar to those of conventional image contraction-based methods. In an experiment using a private dataset, the proposed method showed a 53.85% reduction in the total number of false positives compared with that of the Gaussian filter while maintaining the total number of true positives. The F 1 score of the proposed method shows a 1.39% improvement compared with those of Lanczos-3 that shows the best performance case.
KW - 2D Haar Wavelet Transform
KW - Face Detection
KW - Haar Cascade Classifiers
KW - Vertical Component Calibration
UR - http://www.scopus.com/inward/record.url?scp=85129435788&partnerID=8YFLogxK
U2 - 10.22967/HCIS.2022.12.011
DO - 10.22967/HCIS.2022.12.011
M3 - Article
AN - SCOPUS:85129435788
SN - 2192-1962
VL - 12
JO - Human-centric Computing and Information Sciences
JF - Human-centric Computing and Information Sciences
M1 - 11
ER -