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RMS Based Video Song Sequence Extraction Using Continuity Rule from Bollywood Movies

Sanjay Bhimani, Ashish Revar, Amit Bhimani

Abstract


A movie contains a portion like action, songs, drama, and conversation. There are so many applications based on video such as viewers want to see only video songs from movie, video on demand services, video segmentation, user entrainment, video song removal from movie, video library, So there great need to video classification from movies. In this proposed approach, video songs retrieval based on RMS (Root Mean Square) using continuity rule. Movie is segmented into different parts, using audio channel data of each segment; RMS value of whole movie is computed. RMS value based thresholding is used to detect probable song sequence. Continuity rule is used to identify probable song sequence index which defines as start point and end point. Composition and expansion is done based on end points which lead to song sequences.


Keywords


Song Extraction, Root Mean Square, Continuity Rule, Movie Segmentation, Composition and Expansion.

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