Enhance Text Creature through Video

Abstract

The large quantity of education video out there on web, a rise the usability of video data are growing rapidly. Video transcription within which should be conversion video lecture into text information. This can be manner of produce document or notes through the video. This paper present an ASR technique supported Hidden Markov Model. First of all, extract audio from video and transforms speech wave form into multiple frame used by recognition, applying Automatic Speech Recognition on audio track and extract raw data from audio. Then analysis of data in order to get the phonetic dictionary, the pronunciation of every word must be represent phonetically. And represent text document as output of video file

Authors and Affiliations

Prashant Tryambak Mhetre, Kedar Jyotiba Devkar, Amol Dattatraya Bhagat, Pramod Shivaji Patil, Kuldeep B. Vayadande

Keywords

Related Articles

Self-Healing Technology of Asphalt Pavements

Cap heal reduces the environmental pollution and improves the performance of asphalt pavement. Since large amount of budget is allocated to road construction, so there is a need to implement more economically and environ...

Stabilization of Black Cotton Soil Using Terrazyme and Rice Hush Ash

Construction on the black cotton soil, a form of troublesome expanding soil, has various difficulties. It has a swollen and impermeable nature with poor sub grade geotechnical properties. This study takes a stab at impro...

A Review Paper on Wireless Sensor Network

Security is one of the most essential things to consider if sensor networks are to reach their full potential. Even more innocuous applications, such as home health monitoring, habitat monitoring, and subsurface research...

Performance Analysis of 64-Channel DWDM System Using EDFA

The Quality Factor, Signal Power and Minimum BER are the key aspects of measuring the performance of an optical system. The purpose of this paper is to find the optimum Launch Power for a 64-bit DWDM system where the abo...

Knowledge Representation for Legal Document Summarization

This paper presents a novel approach for legal document summarization. Proposed approach is based on Ripple-Down Rules (RDR). It is an incremental knowledge acquisition method. RDR allows us to quickly build an extendabl...

Download PDF file
  • EP ID EP748819
  • DOI -
  • Views 35
  • Downloads 0

How To Cite

Prashant Tryambak Mhetre, Kedar Jyotiba Devkar, Amol Dattatraya Bhagat, Pramod Shivaji Patil, Kuldeep B. Vayadande (2015). Enhance Text Creature through Video. International Journal of Innovative Research in Computer Science and Technology, 3(2), -. https://europub.co.uk/articles/-A-748819