A Novel Video Compression Algorithm Using Wavelet Transform and neural network

Journal Title: روش های هوشمند در صنعت برق - Year 2016, Vol 7, Issue 25

Abstract

Videos are made up of a temporal sequence of frames and are projected at a proper rate to create the illusion of motion. This means that there exists a high correlation between adjacent temporal frames so that when projected at a proper rate, smooth motion is seen. Correlation between adjacent temporal frames is called interframe correlation. In order to decode compressed video bit stream uniformly by various platforms and devices, the bit stream format must be predefined. Thus, there must be a standard for a video compressor, which will enable all standard-compliant compressed video data to be decoded anywhere. The goal is to propose a new video compression algorithm based on wavelet transform and neural networks. Using wavelet transform leads to factorization in temporal as well as spatial domain. The goal in this paper is to achieve a compression algorithm which would be faster and has more compression ratio. Neural networks are used for prediction which is one of the most important functions in any video compression scheme. Furthermore, the proposed algorithm is compared with MPEG standard. Simulation results show the befits of using wavelet transform which reveal that the proposed algorithm is faster and has better performance in some aspects compared to MPEG standard. The video which obtained from proposed algorithm has acceptable in human visual and since it needs less than space for storing, it is suitable for portable devices.

Authors and Affiliations

Mohammad Rahmanian, Ahmad Hatam, Mohammad Ali Shafieeian

Keywords

Related Articles

Coping With the Loss of Quality of Job Future Predictors in Grid Computing Environments

Distributed processing environments, such as grids, are one of the most important platforms for meeting the user's processing needs. These environments have the potential to meet the needs of users, but they also have th...

Wavelet Packet Entropy in Speaker-Independent Emotional State Detection from Speech Signal

In this paper, wavelet packet entropy is proposed for speaker-independent emotion detection from speech. After pre-processing, wavelet packet decomposition using wavelet type db3 at level 4 is calculated and Shannon entr...

Reliability Evaluation of Power System SVC Types Using a Markov Chain

Static reactive power compensator (SVC) plays an important role in power system reliability stems. In evaluations of reliability, only reactive power is considered as a constraint network is placed in the SVC Brrsy‌Ha im...

Control of a Linear Distillation Column Using Type-2 Fuzzy Method Optimized by Genetic Algorithm

The distillation process is important process in the chemical industry and has wide application in industry. Distillation tower is used by chemical engineers as a popular tool to separate materials and is the most common...

Reactive power compensation and reducing network transmission losses by optimal placement of parallel and series FACTS devices with fuzzy-evolutionary method

The growing use of energy in the world necessitates the development of power networks. However, developing new transmission lines requires a great deal of time and cost, so it will be very cost-effective to use the same...

Download PDF file
  • EP ID EP326501
  • DOI -
  • Views 130
  • Downloads 0

How To Cite

Mohammad Rahmanian, Ahmad Hatam, Mohammad Ali Shafieeian (2016). A Novel Video Compression Algorithm Using Wavelet Transform and neural network. روش های هوشمند در صنعت برق, 7(25), 3-14. https://europub.co.uk/articles/-A-326501