FUZZY MEASURE BASED ADAPTIVE METHODS FOR ILLUMINATION INVARIANT FACE RECOGNITION

Author(s):  
RAMJI M. MAKWANA ◽  
VISHVJIT K. THAKAR ◽  
NARENDRA C. CHAUHAN

Varying illumination is one of the well known and challenging problems in Face Recognition applications. Numerous methods have been proposed by researchers, but recognition performance under complex illumination is not yet satisfactory. The paper presents Fuzzy based methods to adaptively normalize illumination in face images for Face Recognition under varying illumination conditions. The paper has main two contributions: (1) Fuzzy measure based Adaptive Single-scale Retinex and (2) Fuzzy measure based Adaptive Single-scale Self Quotient Image method. Also, two more variations of these methods are presented. There are two main advantages of these methods, as compared to multi-scale Retinex and Self Quotient methods. Firstly, due to the adaptive nature of proposed methods, discontinuity in facial feature is smoothed and discontinuity due to shadows is preserved and hence performance is better. Secondly, computational complexity is reduced because of single scale 3∗3 filter instead of multi-scale filters. Rigorous experiments have been performed on CMU PIE face database and Extended Yale B face database. For determining False Acceptance Rate, 529 and 550 imposter faces are used for experiments on PIE and Yale databases respectively. Proposed methods are compared with existing methods under same experimental setup using six performance evaluation parameters. Results have shown that Fuzzy measure based methods performs well.

Author(s):  
Xiaoni Wang ◽  

This study proposes an iterative closest shape point (ICSP) registration method based on regional shape maps for 3D face recognition. A neutral expression image randomly selected from a face database is considered as the reference face. The point-to-point correspondences between the input face and the reference face are achieved by constructing the points’ regional shape maps. The distance between corresponding point pairs is then minimized by iterating through the correspondence findings and coordinate transformations. The vectors composed of the closest shape points obtained in the last iteration are regarded as the feature vectors of the input face. These 3D face feature vectors are finally used for both training and recognition using the Fisherface method. Experiments are conducted using the 3D face database maintained by the Chinese Academy of Science Institute of Automation (CASIA). The results show that the proposed method can effectively improve 3D face recognition performance.


2010 ◽  
Vol 121-122 ◽  
pp. 391-398 ◽  
Author(s):  
Qi Rong Zhang ◽  
Zhong Shi He

In this paper, we propose a new face recognition approach for image feature extraction named two-dimensional locality discriminant preserving projections (2DLDPP). Two-dimensional locality preserving projections (2DLPP) can direct on 2D image matrixes. So, it can make better recognition rate than locality preserving projection. We investigate its more. The 2DLDPP is to use modified maximizing margin criterion (MMMC) in 2DLPP and set the parameter optimized to maximize the between-class distance while minimize the within-class distance. Extensive experiments are performed on ORL face database and FERET face database. The 2DLDPP method achieves better face recognition performance than PCA, 2DPCA, LPP and 2DLPP.


Perception ◽  
10.1068/p5027 ◽  
2003 ◽  
Vol 32 (3) ◽  
pp. 285-293 ◽  
Author(s):  
Javid Sadr ◽  
Izzat Jarudi ◽  
Pawan Sinha

A fundamental challenge in face recognition lies in determining which facial characteristics are important in the identification of faces. Several studies have indicated the significance of certain facial features in this regard, particularly internal ones such as the eyes and mouth. Surprisingly, however, one rather prominent facial feature has received little attention in this domain: the eyebrows. Past work has examined the role of eyebrows in emotional expression and nonverbal communication, as well as in facial aesthetics and sexual dimorphism. However, it has not been made clear whether the eyebrows play an important role in the identification of faces. Here, we report experimental results which suggest that for face recognition the eyebrows may be at least as influential as the eyes. Specifically, we find that the absence of eyebrows in familiar faces leads to a very large and significant disruption in recognition performance. In fact, a significantly greater decrement in face recognition is observed in the absence of eyebrows than in the absence of eyes. These results may have important implications for our understanding of the mechanisms of face recognition in humans as well as for the development of artificial face-recognition systems.


2012 ◽  
Vol 457-458 ◽  
pp. 1077-1082 ◽  
Author(s):  
Hao Zheng ◽  
Lei Pan

Most of the existing Block 2DPCA algorithms are based on Frobenius norm, which makes them sensitive to outliers. In this paper, we propose a new improved Block 2DPCA algorithm with L1-norm, which is robust to outliers. The experimental results of FERET face database indicated that the recognition performance of new algorithm is superior to Block 2DPCA, more robust than Block 2DPCA.


2013 ◽  
Vol 765-767 ◽  
pp. 2813-2816
Author(s):  
Ze Hua Zhou

Recently, automatic face recognition method has become one of the key issues in the field of pattern recognition and artificial intelligence. Typically, the face recognition process can be divided into three parts: the detection and recognition of human face, facial feature extraction and face recognition, and among which the facial feature extraction is the key to face recognition technology. In this paper, an extraction algorithm of face recognition feature, which is based on face recognition feature, is proposed. The experimental results based on the ORL face database demonstrate that this algorithm works well.


2014 ◽  
Vol 971-973 ◽  
pp. 1838-1842 ◽  
Author(s):  
Qi Rong Zhang

In this paper, we propose a new face recognition approach for image feature extraction named two-dimensional parameter principal component analysis (2DPPCA). Two-dimensional principal component analysis (2DPCA) is widely used in face recognition. We further study on the basis of 2DPCA. This proposed method is to add a parameter to images samples matrix in the image covariance matrix. Extensive experiments are performed on FERET face database and CMU PIE face database. The 2DPPCA method achieves better face recognition performance than PCA, 2DPCA, especially on the CMU PIE face database.


2020 ◽  
Author(s):  
Ziaul Haque Choudhury

Biometrics is a rapidly developing technology, which has been broadly applied in forensics such as criminal identification, secured access, and prison security. The biometric technology is basically a pattern recognition system that acknowledges a person by finding out the legitimacy of a specific behavioral or physiological characteristic owned by that person. In this era, face is one of the commonly acceptable biometrics system which is used by humans in their visual interaction and authentication purpose. The challenges in the face recognition system arise from different issues concerned with cosmetic applied faces and of low quality images. In this thesis, we propose two novel techniques for extraction of facial features and recognition of faces when thick cosmetic is applied and of low quality images. In the face recognition technology, the facial marks identification method is one of the unique facial identification tasks using soft biometrics. Also facial marks information can enhance the face matching score to improve the face recognition performance. When faces are applied by thick cosmetics, some of the facial marks are invisible or hidden from their faces. In the literature, to detect the facial marks AAM (Active Appearance Model) and LoG (Laplacian of Gaussian) techniques are used. However, to the best of our knowledge, the methods related to the detection of facial marks are poor in performance especially when thick cosmetic is applied to the faces. A robust method is proposed to detect the facial marks such as tattoos, scars, freckles and moles etc. Initially the active appearance model (AAM) is applied for facial feature detection purpose. In addition to this prior model the Canny edge detector method is also applied to detect the facial mark edges. Finally SURF is used to detect the hidden facial marks which are covered by cosmetic items. It has been shown that the choice of this method gives high accuracy in facial marks detection of the cosmetic applied faces. Besides, another aspect of the face recognition based on low quality images is also studied. Face recognition indeed plays a major rule in the biometrics security environment. To provide secure authentication, a robust methodology for recognizing and authentication of the human face is required. However, there are numbers of difficulties in recognizing the human face and authentication of the person perfectly. The difficulty includes low quality of images due to sparse dark or light disturbances. To overcome such kind of problems, powerful algorithms are required to filter the images and detect the face and facial marks. This technique comprises extensively of detecting the different facial marks from that of low quality images which have salt and pepper noise in them. Initially (AMF) Adaptive Median Filter is applied to filter the images. The filtered images are then extracted to detect the primary facial feature using a powerful algorithm like Active Shape Model (ASM) into Active Appearance Model (AAM). Finally, the features are extracted using feature extractor algorithm Gradient Location Orientation Histogram (GLOH).Experimental results based on the CVL database and CMU PIE database with 1000 images of 1000 subjects and 2000 images of 2000 subjects show that the use of soft biometrics is able to improve face recognition performance. The results also showed that 93 percentage of accuracy is achieved. Second experiment is conducted with an Indian face database with 1000 images and results showed that 95 percentage of accuracy is achieved.


Author(s):  
MYUNG-CHEOL ROH ◽  
SEONG-WHAN LEE

Human face is one of the most common and useful keys to a person's identity. Although, a number of face recognition algorithms have been proposed, many researchers believe that the technology should be improved further in order to overcome the instability caused by variable illuminations, expressions, poses and accessories. To analyze these face recognition algorithm, it is indispensable to collect various data as much as possible. Face databases such as CMU PIE (USA), FERET (USA), AR Face DB (USA) and XM2VTS (UK) are the representative ones commonly used. However, many databases do not provide adequately annotated information of the pose angle, illumination angle, illumination color and ground-truth. Mostly, they do not include large enough number of images and video data taken under various environments. Furthermore, the faces on these databases have different characteristics from those of Asian. Thus, we have designed and constructed a Korean Face Database (KFDB) which includes not only images but also video clips, ground-truth information of facial feature points and descriptions of subjects and environment conditions so that it can be used for general purposes. In this paper, we present the KFDB which contains image and video data for 1920 subjects and has been constructed in 3 years (sessions). We also present recognition results by CM (Correlation Matching) and PCA (Principal Component Analysis) which are used as baseline algorithms upon CMU PIE and KFDB, so as to understand how recognition rate is changed by altering image taking conditions.


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