Structured Semi-supervised Forest for Facial Landmarks Localization with Face Mask Reasoning
نویسندگان
چکیده
Despite the great success of recent facial landmarks localization approaches, the presence of occlusions significantly degrades the performance of the systems. However, very few works have addressed this problem explicitly due to the high diversity of occlusion in real world. In this paper, we address the face mask reasoning and facial landmarks localization in an unified Structured Decision Forests framework. We first assign a portion of the face dataset with face masks, i.e., for each face image we give each pixel a label to indicate whether it belongs to the face or not. Then we incorporate such additional information of dense pixel labelling into training the Structured Classification-Regression Decision Forest. The classification nodes aim at decreasing the variance of the pixel labels of the patches by using our proposed structured criterion while the regression nodes aim at decreasing the variance of the displacements between the patches and the facial landmarks. The proposed framework allows us to predict the face mask and facial landmarks locations jointly. We test the model on face images from several datasets with significant occlusion. The proposed method 1) yields promising results in face mask reasoning; 2) improves the existing Decision Forests approaches in facial landmark localization, aided by the face mask reasoning.
منابع مشابه
Consensus of Regression for Occlusion-Robust Facial Feature Localization
We address the problem of robust facial feature localization in the presence of occlusions, which remains a lingering problem in facial analysis despite intensive long-term studies. Recently, regression-based approaches to localization have produced accurate results in many cases, yet are still subject to significant error when portions of the face are occluded. To overcome this weakness, we pr...
متن کاملAutomatic localization of facial landmarks from expressive images of high complexity
DEPARTMENTȱOFȱCOMPUTERȱSCIENCESȱ UNIVERSITYȱOFȱTAMPEREȱ ȱ DȬ2008Ȭ9ȱ ȱ TAMPEREȱ2008ȱ ȱ ȱ ȱ UNIVERSITYȱOFȱTAMPEREȱ DEPARTMENTȱOFȱCOMPUTERȱSCIENCESȱ SERIESȱOFȱPUBLICATIONSȱDȱ–ȱNETȱPUBLICATIONSȱ DȬ2008Ȭ9,ȱSEPTEMBERȱ2008ȱ YuliaȱGizatdinovaȱandȱVeikkoȱSurakkaȱ ȱȱ Automatic localization of facial landmarks from expressive images of high complexity ȱ ȱ ȱ ȱ ȱ ȱ ȱ DEPARTMENTȱOFȱCOMPUTERȱSCIENCESȱ FINȬ330...
متن کاملSupervised Transformer Network for Efficient Face Detection
Large pose variations remain to be a challenge that confronts real-word face detection. We propose a new cascaded Convolutional Neural Network, dubbed the name Supervised Transformer Network, to address this challenge. The first stage is a multi-task Region Proposal Network (RPN), which simultaneously predicts candidate face regions along with associated facial landmarks. The candidate regions ...
متن کاملProcessing and analysis of 2.5D face models for non-rigid mapping based face recognition using differential geometry tools
This Ph.D thesis work is dedicated to 3D facial surface analysis, processing as well as to the newly proposed 3D face recognition modality, which is based on mapping techniques. Facial surface processing and analysis is one of the most important steps for 3D face recognition algorithms. Automatic anthropometric facial features localization also plays an important role for face localization, fac...
متن کاملFacial Landmark Localization
Face detection and recognition is a vibrant area of biometrics with active research and commercial efforts over the last 20 years. The task of face detection is to search faces in images, reporting their positions by a bounding box. Recent studies [19, 31] have shown that face detection has already been a state-of-the-art technology in both accuracy and speed. However, face detection is not suf...
متن کامل