Face Identification through Learned Image High Feature Video Frame Works

Authors

  • Boya Akhila Department of ECE,MRCET, India
  • Burgubai Jyothi Department of ECE,MRCET, India

Keywords:

Deep Learning, Auto Encoder, Deep Boltzmann, Machine, Face Perception, Frame Selection

Abstract

The affluence and possibility of video taking devices, such as mobiles and security cameras have inspired the search for video on face recognition which is very relevant in police applications. Whereas current paths have reported high accuracy errors, performance at lower prices for wrong acceptance requires important advancement. The choice of frames is followed by drawing features based on the representation of learning ,where three hand-outs are represented 1) Deep learning architecture, which is a mixture of low stacking automatic encoder (SDAE) and deep machine Boltzmann (DBM) 2) formulation for joint illustration in an automatic encoder 3) Improve the DBM loss function, including low range modification. At last a multilayer neural network is used as a classifier to get the verification decision. The results are shown in two public databases on hand, YouTube Faces,Point and Shoot Challenge. The new study suggests that 1) frame selection based on the quality of the proposed features gets extraordinary and steady performance compared to the front frame, casual frames or plot selection using perceptual image quality dimensions without reference and 2) SDAE features of Common learning and low DBM and low regularization range helps get better facial confirmation.

 

References

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Published

2018-08-31

How to Cite

[1]
B. Akhila and B. Jyothi, “Face Identification through Learned Image High Feature Video Frame Works”, Int. J. Sci. Res. Comp. Sci. Eng., vol. 6, no. 4, pp. 24–29, Aug. 2018.

Issue

Section

Research Article

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