Face Image Set Recognition Based on Improved HOG-NMF and Convolutional Neural Networks

Journal Title: Progress in Human Computer Interaction - Year 2019, Vol 2, Issue 1

Abstract

Objective Face recognition can be affected by unfavorable factors such as illumination, posture and expression, but the face image set is a collection of people’s various angles, different illuminations and even different expressions, which can effectively reduce these adverse effects and get higher face recognition rate. In order to make the face image set have higher recognition rate, a new method of combining face image set recognition is proposed, which combines an improved Histogram of Oriented Gradient (HOG) feature and Convolutional Neural Network (CNN). Method The method firstly segments the face images to be identified and performs HOG to extract features of the segmented images. Secondly, calculate the information entropy contained in each block as a weight coefficient of each block to form a new HOG features, and non-negative matrix factorization (NMF) is applied to reduce HOG features. Then the reduced-dimensional HOG features are modeled as image sets which keep your face details as much as possible. Finally, the modeled image sets are classified by using a convolutional neural network. Result The experimental results show that compared with the simple CNN method and the HOG-CNN method, the recognition rate of the method on the CMU PIE face set is increased by about 4%~10%. Conclusion The method proposed in this paper has more details of the face, overcomes the adverse effects, and improves the accuracy

Authors and Affiliations

Lixiu Hao, Weiwei Yu

Keywords

Related Articles

Human Computer Interaction, Cognitive Cybernetic & Captological Education

This paper was inspired by the topics by Marshal McLuhan about cibernetisation media understanding, associated with new findings in intelligent systems that lead towards technological anthropomorphisation, and Larsen's m...

Efficient Human-Robot Interaction using Deep Learning with Mask R-CNN: Detection, Recognition, Tracking and Segmentation

We address social human-robot interaction problem by proposing an integration of deep neural network with mechanical robotic system to make it robust for human-robot interactive activities. Mask R-CNN, a neural network f...

Fusion of Cognitive Neuroscience and Human-Computer Interaction: A New Trend in Human-Computer Interaction Research

This paper, by means of literature and element analysis, discusses relevant literature in different fields such as cognitive neuroscience, human-computer interaction and brain-computer interface. Firstly, the development...

Interactive Design of Mobile Phone Interface

This topic is divided into two parts: (1) mobile phone interactive design of the status quo survey, including the mobile phone market, the use of the crowd, the use of functions, keyboard and interface analysis. (2) Mobi...

Structural Design, Optimization and Analysis of Robotic Arm Via Finite Elements.

The study set out to determine the optimum architecture of a robotic arm link based on weight and payload and perform vibrational and stress analyses on the resultant shape. Findings showed the effectiveness of topology...

Download PDF file
  • EP ID EP679111
  • DOI -
  • Views 217
  • Downloads 0

How To Cite

Lixiu Hao, Weiwei Yu (2019). Face Image Set Recognition Based on Improved HOG-NMF and Convolutional Neural Networks. Progress in Human Computer Interaction, 2(1), -. https://europub.co.uk/articles/-A-679111