Title :
Detecting faces in images: a survey
Author :
Yang, Ming-Hsuan ; Kriegman, David J. ; Ahuja, Narendra
Author_Institution :
Honda Fundamental Res. Labs, Mountain View, CA, USA
fDate :
1/1/2002 12:00:00 AM
Abstract :
Images containing faces are essential to intelligent vision-based human-computer interaction, and research efforts in face processing include face recognition, face tracking, pose estimation and expression recognition. However, many reported methods assume that the faces in an image or an image sequence have been identified and localized. To build fully automated systems that analyze the information contained in face images, robust and efficient face detection algorithms are required. Given a single image, the goal of face detection is to identify all image regions which contain a face, regardless of its 3D position, orientation and lighting conditions. Such a problem is challenging because faces are non-rigid and have a high degree of variability in size, shape, color and texture. Numerous techniques have been developed to detect faces in a single image, and the purpose of this paper is to categorize and evaluate these algorithms. We also discuss relevant issues such as data collection, evaluation metrics and benchmarking. After analyzing these algorithms and identifying their limitations, we conclude with several promising directions for future research
Keywords :
computer vision; face recognition; feature extraction; object detection; reviews; 3D position; benchmarking; data collection; evaluation metrics; expression recognition; face color; face detection algorithms; face images; face orientation; face recognition; face shape; face size; face texture; face tracking; fully automated systems; image sequence; intelligent vision-based human-computer interaction; lighting conditions; machine learning; object recognition; pose estimation; statistical pattern recognition; survey; view-based recognition; Algorithm design and analysis; Computer vision; Face detection; Face recognition; Facial features; Human computer interaction; Machine learning algorithms; Nose; Pattern recognition; Shape;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on