Dynamic Object Indexing Technique for Distortionless Video Synopsis

  • G. ThirumalaiahEmail author
  • S. Immanuel Alex Pandian
Conference paper
Part of the Lecture Notes in Computational Vision and Biomechanics book series (LNCVB, volume 30)


With a development of observation cameras, the measure of caught recordings extends. Physically dissecting and recovering reconnaissance video is work concentrated and costly. It is substantially more important to create a video description and the video can be observed in a good manner. So, here we describe a novel video outline way to deal with produce consolidated video, which utilizes a protest following technique for extracting imperative items. This strategy will create video objects and a crease cutting technique to gather the first video. Finally, output results that our proposed strategy can accomplish a high buildup rate while safeguarding all the imperative objects of intrigue. Hence, in this method, we can empower clients to see the synopsis video with high impact.


Frame carving CCTV video Video synopsis 



We need to thank the accommodating remarks and recommendations from the unknown analysts. The proposed algorithm is developed by me and images which are utilized in this work are taken with the help of CCTV cameras, except office, and snooker videos. These are downloaded from the Google and open source data set.


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Copyright information

© Springer Nature Switzerland AG 2019

Authors and Affiliations

  1. 1.Department of ECEKarunya UniversityCoimbatoreIndia

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