6 research outputs found
Robust face recognition using convolutional neural networks combined with Krawtchouk moments
Face recognition is a challenging task due to the complexity of pose variations, occlusion and the variety of face expressions performed by distinct subjects. Thus, many features have been proposed, however each feature has its own drawbacks. Therefore, in this paper, we propose a robust model called Krawtchouk moments convolutional neural networks (KMCNN) for face recognition. Our model is divided into two main steps. Firstly, we use 2D discrete orthogonal Krawtchouk moments to represent features. Then, we fed it into convolutional neural networks (CNN) for classification. The main goal of the proposed approach is to improve the classification accuracy of noisy grayscale face images. In fact, Krawtchouk moments are less sensitive to noisy effects. Moreover, they can extract pertinent features from an image using only low orders. To investigate the robustness of the proposed approach, two types of noise (salt and pepper and speckle) are added to three datasets (YaleB extended, our database of faces (ORL), and a subset of labeled faces in the wild (LFW)). Experimental results show that KMCNN is flexible and performs significantly better than using just CNN or when we combine it with other discrete moments such as Tchebichef, Hahn, Racah moments in most densities of noises
WA-GPSR: Weight-Aware GPSR-Based Routing Protocol for VANET
The extremely fast topology has created new requirements for the geographic routing protocol, which has been the most efficient solution for Vehicular Ad-hoc Networks (VANETs). The frequent disconnection of links makes the choice of the next routing node extremely difficult. Hence, an efficient routing algorithm needs to deliver the appropriate path to transfer the data packets with the most relevant quality of service (QoS). In this work, the weight-aware greedy perimeter stateless (WA-GPSR) routing protocol is presented. The enhanced GPSR protocol computes the reliable communication area and selects the next forwarding vehicle based on several routing criteria. The proposal has been evaluated and compared to Maxduration-Minangle GPSR (MM-GPSR) and traditional GPSR using strict metric analysis. Our experimental results using NS-2 and VanetMobiSim, have demonstrated that WA-GPSR has the ability to enhance network performance
Feature selection methods and genomic big data: a systematic review
In the era of accelerating growth of genomic data, feature-selection techniques are
believed to become a game changer that can help substantially reduce the complexity
of the data, thus making it easier to analyze and translate it into useful information. It
is expected that within the next decade, researchers will head towards analyzing the
genomes of all living creatures making genomics the main generator of data. Feature
selection techniques are believed to become a game changer that can help substantially
reduce the complexity of genomic data, thus making it easier to analyze it and
translating it into useful information. With the absence of a thorough investigation of
the field, it is almost impossible for researchers to get an idea of how their work relates
to existing studies as well as how it contributes to the research community. In this
paper, we present a systematic and structured literature review of the feature-selection
techniques used in studies related to big genomic data analytic