Video-based Fire Analysis and Animation Using Eigenfires

We introduce new approaches of modeling and synthesizing realistic-looking 2D fire animations using video-based techniques and statistical analysis. Our approaches are based on real footage of various small-scale fire samples with customized motions that we captured for this research, and the final...

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Bibliographic Details
Main Author: Nikfetrat, Nima
Language:en
Published: 2012
Subjects:
PCA
Online Access:http://hdl.handle.net/10393/23471
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OOU.#10393-234712014-06-12T03:51:06ZVideo-based Fire Analysis and Animation Using EigenfiresNikfetrat, NimaFireFlameSynthesisProceduralReconstructionEigenFireSimulationPCARecognitionAnimationWe introduce new approaches of modeling and synthesizing realistic-looking 2D fire animations using video-based techniques and statistical analysis. Our approaches are based on real footage of various small-scale fire samples with customized motions that we captured for this research, and the final results can be utilized as a sequence of images in video games, motion graphics and cinematic visual effects. Instead of conventional physically-based simulation, we utilize example-based principal component analysis (PCA) and take it to a new level by introducing “Eigenfires”, as a new way to represent the main features of various real fire samples. The visualization of Eigenfires helps animators to design the fire interactively through a more meaningful and convenient way in comparison to known procedural approaches or other video-based synthesis models. Our system enables artists to control real-life fire videos through motion transitions and loops by selecting any desired ranges of any video clips and then the system takes care of the remaining part that best represent a smooth transition. Instead of tricking the eyes with a basic blending only between similar shapes, our flexible fire transitions are capable of connecting various fire styles. Our techniques are also effective for data compressions, they can deliver real-time interactive recognition for high resolution images, very easy to implement, and requires little parameter tuning.2012-10-31T16:30:19Z2012-10-31T16:30:19Z20122012-10-31Thèse / Thesishttp://hdl.handle.net/10393/23471en
collection NDLTD
language en
sources NDLTD
topic Fire
Flame
Synthesis
Procedural
Reconstruction
EigenFire
Simulation
PCA
Recognition
Animation
spellingShingle Fire
Flame
Synthesis
Procedural
Reconstruction
EigenFire
Simulation
PCA
Recognition
Animation
Nikfetrat, Nima
Video-based Fire Analysis and Animation Using Eigenfires
description We introduce new approaches of modeling and synthesizing realistic-looking 2D fire animations using video-based techniques and statistical analysis. Our approaches are based on real footage of various small-scale fire samples with customized motions that we captured for this research, and the final results can be utilized as a sequence of images in video games, motion graphics and cinematic visual effects. Instead of conventional physically-based simulation, we utilize example-based principal component analysis (PCA) and take it to a new level by introducing “Eigenfires”, as a new way to represent the main features of various real fire samples. The visualization of Eigenfires helps animators to design the fire interactively through a more meaningful and convenient way in comparison to known procedural approaches or other video-based synthesis models. Our system enables artists to control real-life fire videos through motion transitions and loops by selecting any desired ranges of any video clips and then the system takes care of the remaining part that best represent a smooth transition. Instead of tricking the eyes with a basic blending only between similar shapes, our flexible fire transitions are capable of connecting various fire styles. Our techniques are also effective for data compressions, they can deliver real-time interactive recognition for high resolution images, very easy to implement, and requires little parameter tuning.
author Nikfetrat, Nima
author_facet Nikfetrat, Nima
author_sort Nikfetrat, Nima
title Video-based Fire Analysis and Animation Using Eigenfires
title_short Video-based Fire Analysis and Animation Using Eigenfires
title_full Video-based Fire Analysis and Animation Using Eigenfires
title_fullStr Video-based Fire Analysis and Animation Using Eigenfires
title_full_unstemmed Video-based Fire Analysis and Animation Using Eigenfires
title_sort video-based fire analysis and animation using eigenfires
publishDate 2012
url http://hdl.handle.net/10393/23471
work_keys_str_mv AT nikfetratnima videobasedfireanalysisandanimationusingeigenfires
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