A Comparative Analysis of Binary Patterns with Discrete Cosine Transform for Gender Classification
نویسندگان
چکیده
This paper presents a comparative analysis of binary patterns for gender classification with a novel method of feature transformation for improved accuracy rates. The main requirements of our application are speed and accuracy. We investigate a combination of local binary patterns (LBP), Census Transform (CT) and Modified Census Transform (MCT) applied over the full, top and bottom halves of the face. Gender classification is performed using support vector machines (SVM). A main focus of the investigation is to determine whether or not a 1D discrete cosine transform (DCT) applied directly to the grey level histograms would improve accuracy. We used a public database of faces and run face and eye detection algorithms allowing automatic cropping and normalisation of the images. A set of 120 tests over the entire database demonstrate that the proposed 1D discrete cosine transform improves accuracy in all test cases with small standard deviations. It is shown that using basic versions of the algorithms, LBP is marginally superior to both CT and MCT and agrees with results in the literature for higher accuracy on male subjects. However, a significant result of our investigation is that, by applying a 1D-DCT this bias is removed and an equivalent error rate is achieved for both genders. Furthermore, it is demonstrated that DCT improves overall accuracy and renders CT a superior performance compared to LBP in all cases considered. Keywords—Image processing, feature extraction, gray-scale, image texture analysis, pattern recognition, discrete cosine transforms, support vector machines
منابع مشابه
Optimized features selection using hybrid PSO-GA for multi-view gender classification
Gender classification is a fundamental face analysis task. In literature, the focus of most researchers has been on the face images acquired under controlled conditions. Real-world face images contain different illumination effects and variations in facial expressions and poses that make gender classification more challenging task. In this paper, we have proposed an efficient gender classificat...
متن کاملGender Recognition Using Fusion of Local and Global Facial Features
Human perception of the face involves the observation of both coarse (global) and detailed (local) features of the face to identify and categorize a person. Face categorization involves finding common visual cues, such as gender, race and age, which could be used as a precursor to a face recognition system to improve recognition rates. In this paper, we investigate the fusion of both global and...
متن کاملDetection and Classification of Heart Premature Contractions via α-Level Binary Neyman-Pearson Radius Test: A Comparative Study
The aim of this study is to introduce a new methodology for isolation of ectopic rhythms of ambulatory electrocardiogram (ECG) holter data via appropriate statistical analyses imposing reasonable computational burden. First, the events of the ECG signal are detected and delineated using a robust wavelet-based algorithm. Then, using Binary Neyman-Pearson Radius test, an appropriate classifie...
متن کاملEfficient Stamps Classification by Means of Point Distance Histogram and Discrete Cosine Transform
The problem of stamp recognition addressed here involves a multi-stage approach which includes stamp detection, localization and segmentation, features extraction and finally, classification. In this paper we focus on the two last stages, namely features extraction by means of Point Distance Histogram and Discrete Cosine Transform, and classification employing distance calculation by means of E...
متن کاملAge group and gender recognition from human facial images
This work presents an automatic human gender and age group recognition system based on human facial images. It makes an extensive experiment with row pixel intensity valued features and Discrete Cosine Transform (DCT) coefficient features with Principal Component Analysis and k-Nearest Neighbor classification to identify the best recognition approach. The final results show approaches using DCT...
متن کامل