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  • This paper deals with the enhanced approach to the objective quality assessment of video signals in the multimedia systems. Objective image and video quality evaluation plays very important role in the systems for signal recording and transmission. Higher precision of the image quality evaluation helps to optimize both recording and transmission system in order to minimize the bitrate needed to achieve as high image quality as possible. This paper presents the brief overview of the subjective and objective image quality evaluation methods and shows the proposal of the system for the video quality assessment using Artificial Neural Network (ANN).
  • This paper deals with the enhanced approach to the objective quality assessment of video signals in the multimedia systems. Objective image and video quality evaluation plays very important role in the systems for signal recording and transmission. Higher precision of the image quality evaluation helps to optimize both recording and transmission system in order to minimize the bitrate needed to achieve as high image quality as possible. This paper presents the brief overview of the subjective and objective image quality evaluation methods and shows the proposal of the system for the video quality assessment using Artificial Neural Network (ANN). (en)
  • Tento článek pojednává o zdokonaleném přístupu k objektivnímu hodnocení kvality video signálu v multimediálních systémech. Objektivní hodnocení kvality obrazu a videa hraje v systémech pro záznam a přenos signálu velmi významnou roli. Vyšší přesnost v hodnocení kvality pomáhá optimalizovat záznamové a přenosové systémy tak, aby při dosažení co nejvyšší obrazové kvality byl datový tok co nejmenší. Tento příspěvek uvádí stručný přehled subjektivních a objektivních metod pro hodnocení kvality obrazu a popisuje návrh systému pro hodnocení kvality videa s využitím umělých neuronových sítí. (cs)
Title
  • Objektivní hodnocení kvality obrazu s využitím umělé neuronové sítě (cs)
  • Objective Image Quality Evaluation Using Artificial Neural Network
  • Objective Image Quality Evaluation Using Artificial Neural Network (en)
skos:prefLabel
  • Objektivní hodnocení kvality obrazu s využitím umělé neuronové sítě (cs)
  • Objective Image Quality Evaluation Using Artificial Neural Network
  • Objective Image Quality Evaluation Using Artificial Neural Network (en)
skos:notation
  • RIV/68407700:21230/05:03110553!RIV06-GA0-21230___
http://linked.open...avai/riv/aktivita
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  • P(GA102/05/2054)
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  • 533781
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  • RIV/68407700:21230/05:03110553
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  • artificial neural network; image quality (en)
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  • [A2012468A472]
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  • Praha
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  • Fliegel, Karel
https://schema.org/isbn
  • 80-01-03201-9
http://localhost/t...ganizacniJednotka
  • 21230
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