Javascript must be enabled to continue!
Hybrid Feature Approach of Face Recognition based on Pixel Binary Segmentation
View through CrossRef
The pose, illumination, and expression variations are challenging tasks in Facial Recognition (FR) and are a popular research area nowadays. We introduce novel nibbles of pixel technique and hybrid features from nibbles in this paper. The color images are converted into grayscale and then converts decimal values from each pixel into eight-bit binary values. The novel concepts of segmenting eight-bit binary into two groups of four-bit binary as Leftmost Nibble (LN) and Rightmost Nibble (RN) is presented. The nibble concept increases the computational speed and decreases the complexity of the system in the case of a real-time system as the 256 shades of grayscale images are decreased to 16 shades for LN and 16 shades for RN i.e., totally only 32 shades instead of 256 shades. The LN and RN binary is converted back to decimal values. The LL subband which is obtained from the applied Discrete Wavelet Transform (DWT) technique on the LN matrix is considered as the most important information while the Histogram of Oriented Gradients (HOG) is applied on the RN matrix to detect the edge information. The linear convolution of DWT and HOG results in the final hybrid features. In the matching part, the Euclidean Distance (ED) matching and the Artificial Neural Network (ANN) are selected to classify the features and calculate the proposed algorithm's performance parameters. The experimentation is implemented on six standard face databases, which demonstrates an outstanding performance by getting higher accuracy with less computation time compared with the existing techniques.
Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP
Title: Hybrid Feature Approach of Face Recognition based on Pixel Binary Segmentation
Description:
The pose, illumination, and expression variations are challenging tasks in Facial Recognition (FR) and are a popular research area nowadays.
We introduce novel nibbles of pixel technique and hybrid features from nibbles in this paper.
The color images are converted into grayscale and then converts decimal values from each pixel into eight-bit binary values.
The novel concepts of segmenting eight-bit binary into two groups of four-bit binary as Leftmost Nibble (LN) and Rightmost Nibble (RN) is presented.
The nibble concept increases the computational speed and decreases the complexity of the system in the case of a real-time system as the 256 shades of grayscale images are decreased to 16 shades for LN and 16 shades for RN i.
e.
, totally only 32 shades instead of 256 shades.
The LN and RN binary is converted back to decimal values.
The LL subband which is obtained from the applied Discrete Wavelet Transform (DWT) technique on the LN matrix is considered as the most important information while the Histogram of Oriented Gradients (HOG) is applied on the RN matrix to detect the edge information.
The linear convolution of DWT and HOG results in the final hybrid features.
In the matching part, the Euclidean Distance (ED) matching and the Artificial Neural Network (ANN) are selected to classify the features and calculate the proposed algorithm's performance parameters.
The experimentation is implemented on six standard face databases, which demonstrates an outstanding performance by getting higher accuracy with less computation time compared with the existing techniques.
Related Results
Two fully automated data-driven 3D whole-breast segmentation strategies in MRI for MR-based breast density using image registration and U-Net with a focus on reproducibility
Two fully automated data-driven 3D whole-breast segmentation strategies in MRI for MR-based breast density using image registration and U-Net with a focus on reproducibility
AbstractPresence of higher breast density (BD) and persistence over time are risk factors for breast cancer. A quantitatively accurate and highly reproducible BD measure that relie...
Extraction of Color Information and Visualization of Color Differences between Digital Images through Pixel-by-Pixel Color-Difference Mapping
Extraction of Color Information and Visualization of Color Differences between Digital Images through Pixel-by-Pixel Color-Difference Mapping
A novel method of extracting color information on a pixel-by-pixel basis or by the average of the regions of interest (ROIs) from digital images is proposed and demonstrated using ...
Mo.Se.: Mosaic image segmentation based on deep cascading learning
Mo.Se.: Mosaic image segmentation based on deep cascading learning
<div class="page" title="Page 1"><div class="layoutArea"><div class="column"><p class="VARAbstract">Mosaic is an ancient type of art used to create decorati...
DCAU-Net: dense convolutional attention U-Net for segmentation of intracranial aneurysm images
DCAU-Net: dense convolutional attention U-Net for segmentation of intracranial aneurysm images
AbstractSegmentation of intracranial aneurysm images acquired using magnetic resonance angiography (MRA) is essential for medical auxiliary treatments, which can effectively preven...
Multi-scale Modelling of Segmentation
Multi-scale Modelling of Segmentation
While listening to music, people often unwittingly break down musical pieces into constituent chunks such as verses and choruses. Music segmentation studies have suggested that som...
Feature Based Face Recognition using Machine Learning Techniques’
Feature Based Face Recognition using Machine Learning Techniques’
Human Face has Numerous unique Features to Distinguish between each other. Face can Identified by distinguishing between face and non-face followed by Identification. Traditionally...
Foreground object segmentation in RGB-D data implemented on GPU
Foreground object segmentation in RGB-D data implemented on GPU
This paper presents a GPU implementation of two foreground object segmentation algorithms: Gaussian Mixture Model (GMM) and Pixel Based Adaptive Segmenter (PBAS) modified for RGB-D...
Minimizing Binding Errors Using Learned Conjunctive Features
Minimizing Binding Errors Using Learned Conjunctive Features
We have studied some of the design trade-offs governing visual representations based on spatially invariant conjunctive feature detectors, with an emphasis on the susceptibility of...
Recent Results
Stamped Amphora Handle
Stamped Amphora Handle
This stamp is frequently found in Rome. The highly abbreviated inscription has been expanded as follows: FIG(lina) E(t) D(oliaria) P. P( ), AE(li) F(usciani), or perhaps P( ), P...
Functional stretching decreases knee joint loading in male athletes with gastroc--soleus tightness
Functional stretching decreases knee joint loading in male athletes with gastroc--soleus tightness
Background and objective: Tightness of the gastroc--soleus muscle complex is one of the limiting factors of the ankle joint's range of motion (ROM) during daily activities. The aim...
Reinterpreting the Great Pyramid of Cholula, Mexico
Reinterpreting the Great Pyramid of Cholula, Mexico
AbstractThe Great Pyramid of Cholula is both the largest and oldest continuously occupied building in Mesoamerica. Initial occupation of the ceremonial precinct began in the Late F...
Roman Imperial Portraits Dataset (ripd)
Roman Imperial Portraits Dataset (ripd)
Abstract
Portraits of the Roman emperors have been a focal point in the study of the ancient world. However, questions on how this medium developed over time and/or how perceptions...