REAL-TIME VIDEO SCALING BASED ON CONVOLUTION NEURAL NETWORK ARCHITECTURE
In recent years, video super resolution techniques becomes mandatory requirements to get high resolution videos. Many super resolution techniques researched but still video super resolution or scaling is a vital challenge. In this paper, we have presented a real-time video scaling based on convoluti...
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doaj-17193f06fde0474d8ed05636faf44b3a2020-11-25T02:40:29ZengICT Academy of Tamil NaduICTACT Journal on Image and Video Processing0976-90990976-91022017-08-01811533154210.21917/ijivp.2017.0218REAL-TIME VIDEO SCALING BASED ON CONVOLUTION NEURAL NETWORK ARCHITECTURES Safinaz0A V Ravi Kumar1Sir M. Visvesvaraya Institute of Technology, IndiaSJB Institute of Technology, IndiaIn recent years, video super resolution techniques becomes mandatory requirements to get high resolution videos. Many super resolution techniques researched but still video super resolution or scaling is a vital challenge. In this paper, we have presented a real-time video scaling based on convolution neural network architecture to eliminate the blurriness in the images and video frames and to provide better reconstruction quality while scaling of large datasets from lower resolution frames to high resolution frames. We compare our outcomes with multiple exiting algorithms. Our extensive results of proposed technique RemCNN (Reconstruction error minimization Convolution Neural Network) shows that our model outperforms the existing technologies such as bicubic, bilinear, MCResNet and provide better reconstructed motioning images and video frames. The experimental results shows that our average PSNR result is 47.80474 considering upscale-2, 41.70209 for upscale-3 and 36.24503 for upscale-4 for Myanmar dataset which is very high in contrast to other existing techniques. This results proves our proposed model real-time video scaling based on convolution neural network architecture’s high efficiency and better performance.http://ictactjournals.in/ArticleDetails.aspx?id=3122Image ScalingConvolution NeuralNetworkSuper Resolution |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
S Safinaz A V Ravi Kumar |
spellingShingle |
S Safinaz A V Ravi Kumar REAL-TIME VIDEO SCALING BASED ON CONVOLUTION NEURAL NETWORK ARCHITECTURE ICTACT Journal on Image and Video Processing Image Scaling Convolution Neural Network Super Resolution |
author_facet |
S Safinaz A V Ravi Kumar |
author_sort |
S Safinaz |
title |
REAL-TIME VIDEO SCALING BASED ON CONVOLUTION NEURAL NETWORK ARCHITECTURE |
title_short |
REAL-TIME VIDEO SCALING BASED ON CONVOLUTION NEURAL NETWORK ARCHITECTURE |
title_full |
REAL-TIME VIDEO SCALING BASED ON CONVOLUTION NEURAL NETWORK ARCHITECTURE |
title_fullStr |
REAL-TIME VIDEO SCALING BASED ON CONVOLUTION NEURAL NETWORK ARCHITECTURE |
title_full_unstemmed |
REAL-TIME VIDEO SCALING BASED ON CONVOLUTION NEURAL NETWORK ARCHITECTURE |
title_sort |
real-time video scaling based on convolution neural network architecture |
publisher |
ICT Academy of Tamil Nadu |
series |
ICTACT Journal on Image and Video Processing |
issn |
0976-9099 0976-9102 |
publishDate |
2017-08-01 |
description |
In recent years, video super resolution techniques becomes mandatory requirements to get high resolution videos. Many super resolution techniques researched but still video super resolution or scaling is a vital challenge. In this paper, we have presented a real-time video scaling based on convolution neural network architecture to eliminate the blurriness in the images and video frames and to provide better reconstruction quality while scaling of large datasets from lower resolution frames to high resolution frames. We compare our outcomes with multiple exiting algorithms. Our extensive results of proposed technique RemCNN (Reconstruction error minimization Convolution Neural Network) shows that our model outperforms the existing technologies such as bicubic, bilinear, MCResNet and provide better reconstructed motioning images and video frames. The experimental results shows that our average PSNR result is 47.80474 considering upscale-2, 41.70209 for upscale-3 and 36.24503 for upscale-4 for Myanmar dataset which is very high in contrast to other existing techniques. This results proves our proposed model real-time video scaling based on convolution neural network architecture’s high efficiency and better performance. |
topic |
Image Scaling Convolution Neural Network Super Resolution |
url |
http://ictactjournals.in/ArticleDetails.aspx?id=3122 |
work_keys_str_mv |
AT ssafinaz realtimevideoscalingbasedonconvolutionneuralnetworkarchitecture AT avravikumar realtimevideoscalingbasedonconvolutionneuralnetworkarchitecture |
_version_ |
1724781357478969344 |