PCA vs low resolution images in face verification
نویسندگان
چکیده
Principal Components Analysis (PCA) has been one of the most applied methods for face verification using only 2D information, in fact, PCA is practically the method of choice for applications of face verification in real-world. An alternative method to reduce the problem dimension is working with low resolution images. In our experiments three classifiers have been considered to compare the results achieved using PCA versus the results obtained using low resolution images. An initial set of located faces has been used for PCA matrix computation and for training all classifiers. The images belonging to the testing set were chosen to be different from the training ones. Classifiers considered are k-nearest neighbours (KNN), artificial neural networks: radial basis function (RBF) and Support Vector Machine (SVM). Results show that SVM always achieves better results than the other classifiers. With SVM correct verification difference between PCA and low resolution processing is only a 0.13% (99.52% against 99.39%).
منابع مشابه
Face Recognition using Eigenfaces , PCA and Supprot Vector Machines
This paper is based on a combination of the principal component analysis (PCA), eigenface and support vector machines. Using N-fold method and with respect to the value of N, any person’s face images are divided into two sections. As a result, vectors of training features and test features are obtain ed. Classification precision and accuracy was examined with three different types of kernel and...
متن کاملMulti-view, High-resolution Face Image Analysis
With advances in digital photography, people can obtain large-scale and high-quality pictures more easily. How to understand this large-scale and high-quality information and how to make use of this information to recover distortions in other images are two fundamental and challenging problems in computer vision and image processing. In this thesis, we solve these problems for face images so th...
متن کاملFace Recognition Using Cca on Nonlinear Features
The face recognition (FR) system plays a vital role in commercial & law enforcement applications. Image resolution is an important factor affecting face recognition performance. The performance of face recognition system degrades by low resolution of face images. To address this problem, a super resolution (SR) method was introduced by Hua Huang and Huiting He [7], which uses Canonical correlat...
متن کاملFace Recognition at a Distance: a study of super resolution
We evaluate the performance of face recognition using images with different resolution. The experiments are conducted on Face Recognition Grand Challenge version one (FRGC v1.0) database and Surveillance Cameras Face (SCface) Database. Three recognition methods are used, namely Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA) and Local Binary Pattern (LBP). To improve the ...
متن کاملFace Recognition at a Distance: a study of super resolution M.Sc. Thesis
We evaluate the performance of face recognition using images with different resolution. The experiments are conducted on Face Recognition Grand Challenge version one (FRGC v1.0) database and Surveillance Cameras Face (SCface) Database. Three recognition methods are used, namely Principal Component Analysis (PCA), Linear Discriminant Analysis (LDA) and Local Binary Pattern (LBP). To improve the ...
متن کامل