Deeplearning Convolutional Neural Network based QoE Assessment Module for 4K UHD Video Streaming

  title={Deeplearning Convolutional Neural Network based QoE Assessment Module for 4K UHD Video Streaming},
  author={Akm Ashiquzzaman and Sung Min Oh and Dongsu Lee and Hoehyeong Jung and Tai-Won Um and Jinsul Kim},
With the rapid development of modern high resolution video streaming services, providing high Quality of Experience (QoE) has become a crucial service for any media streaming platforms. Most often it is necessary of provide the QoE with NR-IQA, which is a daunting task for any present network system for it’s huge computational overloads and often inaccurate results. So in this research paper a new type of this NR-IQA was proposed that resolves these issues. In this work we have described a deep… 

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