期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
Hybrid Machine Learning Model for Face Recognition Using SVM 被引量:5
1
作者 Anil Kumar Yadav R.K.Pateriya +3 位作者 Nirmal Kumar gupta punit gupta Dinesh Kumar Saini Mohammad Alahmadi 《Computers, Materials & Continua》 SCIE EI 2022年第8期2697-2712,共16页
Face recognition systems have enhanced human-computer interactions in the last ten years.However,the literature reveals that current techniques used for identifying or verifying faces are not immune to limitations.Pri... Face recognition systems have enhanced human-computer interactions in the last ten years.However,the literature reveals that current techniques used for identifying or verifying faces are not immune to limitations.Principal Component Analysis-Support Vector Machine(PCA-SVM)and Principal Component Analysis-Artificial Neural Network(PCA-ANN)are among the relatively recent and powerful face analysis techniques.Compared to PCA-ANN,PCA-SVM has demonstrated generalization capabilities in many tasks,including the ability to recognize objects with small or large data samples.Apart from requiring a minimal number of parameters in face detection,PCA-SVM minimizes generalization errors and avoids overfitting problems better than PCA-ANN.PCA-SVM,however,is ineffective and inefficient in detecting human faces in cases in which there is poor lighting,long hair,or items covering the subject’s face.This study proposes a novel PCASVM-based model to overcome the recognition problem of PCA-ANN and enhance face detection.The experimental results indicate that the proposed model provides a better face recognition outcome than PCA-SVM. 展开更多
关键词 Face recognition system(FRS) face identification SVM discrete cosine transform(DCT) artificial neural network(ANN) machine learning
在线阅读 下载PDF
Hybrid Whale Optimization Algorithm for Resource Optimization in Cloud E-Healthcare Applications
2
作者 punit gupta Sanjit Bhagat +3 位作者 Dinesh Kumar Saini Ashish Kumar Mohammad Alahmadi Prakash Chandra Sharma 《Computers, Materials & Continua》 SCIE EI 2022年第6期5659-5676,共18页
In the next generation of computing environment e-health care services depend on cloud services.The Cloud computing environment provides a real-time computing environment for e-health care applications.But these servi... In the next generation of computing environment e-health care services depend on cloud services.The Cloud computing environment provides a real-time computing environment for e-health care applications.But these services generate a huge number of computational tasks,real-time computing and comes with a deadline,so conventional cloud optimizationmodels cannot fulfil the task in the least time and within the deadline.To overcome this issue many resource optimization meta-heuristic models are been proposed but these models cannot find a global best solution to complete the task in the least time and manage utilization with the least simulation time.In order to overcome existing issues,an artificial neural-inspired whale optimization is proposed to provide a reliable solution for healthcare applications.In this work,two models are proposed one for reliability estimation and the other is based on whale optimization technique and neural network-based binary classifier.The predictive model enhances the quality of service using performance metrics,makespan,least average task completion time,resource usages cost and utilization of the system.Fromresults as compared to existing algorithms the proposedANN-WHOalgorithms prove to improve the average start time by 29.3%,average finish time by 29.5%and utilization by 11%. 展开更多
关键词 Cloud computing whale optimization health care resource optimization
在线阅读 下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部