人脸识别方法的研究与实现翻译.doc
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1、外文文献资料收集:苏州大学 应用技术学院 11电子班(学号1116405021)靳冉International Journal of Artificial Intelligence & Applications (IJAIA), Vol.2, No.3, July 2011DOI : 10.5121/ijaia.2011.2305 45Real time face recognition using adaboost improved fast pca algorithm ABSTRACTThis paper presents an automated system for human fac
2、e recognition in a real time background world for a large homemade dataset of persons face. The task is very difficult as the real time background subtraction in an image is still a challenge. Addition to this there is a huge variation in human face image in terms of size, pose and expression. The s
3、ystem proposed collapses most of this variance. To detect real time human face AdaBoost with Haar cascade is used and a simple fast PCA and LDA is used to recognize the faces detected. The matched face is then used to mark attendance in the laboratory, in our case. This biometric system is a real ti
4、me attendance system based on the human face recognition with a simple and fast algorithms and gaining a high accuracy rate.KEYWORDSFace recognition, Eigenface, AdaBoost, Haar Cascade Classifier, Principal Component Analysis (PCA),Fast PCA, Linear Discriminant Analysis (LDA).1. INTRODUCTIONOver the
5、last ten years or so, face recognition has become a popular area of research in computer vision. Face recognition is also one of the most successful applications of image analysis and understanding. Because of the nature of the problem of face recognition, not only computer science researchers are i
6、nterested in it, but neuroscientists and psychologists are also interested for the same. It is the general opinion that advances in computer vision research will provide useful insights to neuroscientists and psychologists into how human brain works, and vice versa. The topic of real time face recog
7、nition for video and complex real-world environments has garnered tremendous attention for student to attend class daily means online attendance system as well as security system based on face recognition. Automated face recognition system is a big challenging problem and has gained much attention f
8、rom last few decades. There are many approaches in this field. Many proposed algorithms are there to identify and recognize humanbeing face form given dataset. The recent development in this field has facilitated us with fast processing capacity and high accuracy. The efforts are also going in the d
9、irection to include learning techniques in this complex computer vision technology.There are many existing systems to identify faces and recognized them. But the systems are not so efficient to have automated face detection, identification and recognition. A lot of research work is going in this dir
10、ection to increase the visual power of computer. Hence, there is a lot of scope in the development of visual and vision system. But there are difficulties in the path such as development of efficient visual feature extracting algorithms and high processing power for retrieval from a huge image datab
11、ase. As image is a complex high dimension (3D) matrix and processing matrix operation is not so fast and perfect. Hence, this direction us to handle with a huge image database and focus on the new algorithms which are more real-time and more efficient with maximum percentage of accuracy. Efficient a
12、nd effective recognition of human face from image databases is now a requirement. Face recognition is a biometric method foridentifying individuals by their features of face. Applications of face recognition are widely spreading in areas such as criminal identification, security system, image and fi
13、lm processing.From the sequence of image captured by the capturing device, in our case camera, the goal is to find the best match in the database. Using pre-storage database we can identify or verify one or more identities in the scene. The general block diagram for face recognition system is having
14、 three main blocks, the first is face detection, second is face extraction and the third face recognition. The basic overall face recognition model looks like the one below, in figure 1.Different approaches of face recognition for still images can be categorized into tree main groups such as holisti
15、c approach, feature-based approach, and hybrid approach 1. Face recognition form a still image can have basic three categories, such as holistic approach, feature-based approach and hybrid approach 2.1.1 Holistic Approach: - In holistic approach, the whole face region is taken as an input in face de
16、tection system to perform face recognition.1.2 Feature-based Approach: - In feature-based approach, local features on face such as nose and eyes are segmented and then given to the face detection system to easier the task of face recognition.1.3 Hybrid Approach: - In hybrid approach, both local feat
17、ures and the whole face is used as the input to the face detection system. It is more similar to the behaviour or human being to recognize the face.This paper is divided into seven sections. The first section is the introduction part; the second section is a problem statement; the third section face
18、 recognition techniques- literature review;the fourth section is the proposed method for feature extraction form a face image dataset, the fifth division is about the implementation; the second last section shows the results; and the last is the conclusion section.2. PROBLEM STATMENTThe difficulties
19、 in face recognition are very real-time and natural. The face image can have head pose problem, illumination problem, facial expression can also be a big problem. Hair style and aging problem can also reduce the accuracy of the system. There can be many other problems such as occlusion, i.e., glass,
20、 scarf, etc., that can decrease the performance. Image is a multi-dimension matrix in mathematics that can be represented by a matrix value. Image can be treated as a vector having magnitude and direction both. It is known as vector image or image Vector.If represents a p x q image vector and x is m
21、atrix of image vector. Thus, image matrix can be represented as where t is transpose of the matrix x. Thus, to identify the glass in an image matrix is very difficult and requires some new approaches that can overcome these limitations. The algorithm proposed in this paper successfully overcomes the
22、se limitations. But before that lets see what all techniques have been used in the field of face identification andface recognition.3. FACE RECOGNITION TECHNIQUES3.1. Face detectionFace detection is a technology to determine the locations and size of a human being face in a digital image. It only de
23、tects facial expression and rest all in the image is treated as background and is subtracted from the image. It is a special case of object-class detection or in more general case as face localizer. Face-detection algorithms focused on the detection of frontal human faces, and also solve the multi-v
24、iew face detection problem. The various techniques used todetect the face in the image are as below:3.1.1. Face detection as a pattern-classification task:In this face detection is a binary-pattern classification task. That is, the content of a given part of an image is transformed into features, af
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