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VIDEO SEARCHING BY AUTOMATIC ANNOTATION GROUP NUMBER : 16 - 113 INSI DE PROJECT PROPOSAL

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Page 1: Inside proposal 16 113

VIDEO SEARCHING BY AUTOMATIC ANNOTATION

GROUP NUMBER : 16 - 113

INSIDE

PROJECT PROPOSAL

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Group Members ,

IT 13122942 Wickramasinghe K.U IT 11150558 Ashangani S.K IT 13115494 De Silva D.W.N IT 13112424 Gamwara V.M

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INTRODUCTION INSIDE

What is video Sequence of images to form a moving picture

Our Mission Friendly, simple video searching using automatic annotation to

provide an accurate result

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RESEARCH PROBLEMAvailable search engines only provide Keyword

searching, Audio searching, Image searching.Most videos are weakly labeled or have misleading

names.Less applications with automatic video annotation.

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SOLUTION“INSIDE” a smart semantic video searching

application with automatic annotation which support easy, quick user friendly querying and return an accurate list of videos for the requesting query.

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LITERATURE REVIEW Image subtraction and histogram comparison, traditional

video shot boundary detection techniques – video slicing ( reference : Video summarization by video structure analysis and

graph optimization Shi Lu,Department of Computer Science and Engineering)

Object detection techniques: Appearance Based Methods, Geometry-Based Methods (reference: OBJECT RECOGNITION METHODS BASED ON TRANSFORMATION COVARIANT FEATURES Jiri Matas and Stepan Obdrzalek)

Key word searching vs Semantic searching (reference : https://www.searchenginejournal.com/seo-101-semantic-search-care/119760/)

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OBJECTIVESAllow semantic video searching by analyzing the

structure and detecting content objects.Classify videos automatically without user interaction.User friendlyAccurate

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METHODOLOGY WITH TOOLS AND TECHNIQUES

Video structure analysis – Shot boundary detection and video slicing

Deep Learning - TensorflowData set preparation Textual searching - Semantic searching

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SYSTEM OVERVIEW

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FUNCTIONS OF MEMBERSMember Components Task

De Silva D.W.N Video structure analysis Identify shot boundaries. Fragment video into shots.Fragment shot into frames.

Ashangani S.K Deep Learning Neural Network configurations

Gamwara V.M Data set preparation Creation manipulation of large data set to train the Neural Network

Wickramasinghe K.U Textual searching Take search query as an input and identify a relationship among the words, return the output

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BENEFITS FOR USERAccurate, Efficient search results.Can be used at any time any where.Can annotate video automatically.

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COMMERCIAL VALUE Can be used as a tool and implement in search engines Can be used to categorize videos without user interaction Ability to rate videos according to their category (harmful)

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Thank You