Gappy wavelet neural network for 3D occluded faces: detection and recognition Wajdi Bellil & Hajer Brahim & Chokri Ben Amar Received: 22 March 2014 /Revised: 20 July 2014 /Accepted: 19 September 2014 # Springer Science+Business Media New York 2014 Abstract The first handicap in 3D faces recognizing under unconstrained problem is the largest variability of the visual aspect when we use various sources. This great variability complicates the task of identifying persons from their 3D facial scans and it is the most reason that bring to face detection and recognition of the major problems in pattern recognition fields, biometrics and computer vision. We propose a new 3D face identification and recognition method based on Gappy Wavelet Neural Network (GWNN) that is able to provide better accuracy in the presence of facial occlusions. The proposed approach consists of three steps: the first step is face detection. The second step is to identify and remove occlusions. Occluded regions detection is done by considering that occlusions can be defined as local face defor- mations. These deformations are detected by a comparison between the input facial test wavelet coefficients and wavelet coefficients of generic face model formed by the mean data base faces. They are beneficial for neighborhood relationships between pixels rotation, dilation and translation invariant. Then, occluded regions are refined by removing wavelet coefficient above a certain threshold. Finally, the last stage of processing and retrieving is made based on wavelet neural network to recognize and to restore 3D occluded regions that gathers the most. The experimental results on this challenging database demonstrate that the proposed approach improves recognition rate per- formance from 93.57 to 99.45 % which represents a competitive result compared to the state of the art. Keywords 3D face recognition; Wavelets . Wavelet neural network . Gappy data . Occlusion detection Multimed Tools Appl DOI 10.1007/s11042-014-2294-6 W. Bellil (*) : H. Brahim : C. Ben Amar REGIM: REsearch Groups on Intelligent Machines, University of Sfax, National Engineering School of Sfax (ENIS), Sfax, Tunisia e-mail: wajdi.bellil@ieee.org H. Brahim e-mail: hajer.brahim@gmail.com C. Ben Amar e-mail: chokri.benamar@ieee.org