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Image, Video And Multimedia Systems Laboratory
Background
http://www.image.ntua.gr
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Automatic Image Annotation
Sky
Sky
Fog
MountainMountain
Mountain
Field
Field
FieldField
FieldRoofWall
Sky
Mountain
Field
House
Input image
Automatic segmentation Desired result
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Tool for:Ground truth constructionSemi-automatic image annotation
Support of:Automatic segmentationManual, user driven region mergingExport of segmentation masks and textual annotation
Image Annotator Tool
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Visual Descriptor Ontology
MPEG-7(XML Schema) defines visual descriptors by specifying their componentsIn VDO (RDFS), descriptors are defined through relations with their components Descriptors related to higher – level concepts through inference rulesRules define spatio-temporal constraints
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Knowledge-Assisted Analysis Tool
Developed in collaboration with CERTH-ITI
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KAA Results
<?xml version="1.0" encoding="UTF-8"?>
<KAA>
<SpatialDecomposition id="KaaMask">
<Region>
<RegionNumber>0</RegionNumber>
<Concept>Sea</Concept>
<Confidence>0.81172</Confidence>
</Region>
<Region>
<RegionNumber>1</RegionNumber>
<Concept>Person</Concept>
<Confidence>0.948059</Confidence>
</Region>
<Region>
<RegionNumber>2</RegionNumber>
<Concept>Sea</Concept>
<Confidence>0.80658</Confidence>
</Region>
<Region>
<RegionNumber>3</RegionNumber>
<Concept>Sand</Concept>
<Confidence>0.885552</Confidence>
</Region>
<Region>
<RegionNumber>4</RegionNumber>
<Concept>Sky</Concept>
<Confidence>1</Confidence>
</Region>
</SpatialDecomposition>
…
</KAA>
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Approach:Graph-based representation of imagesSemantic vs Syntactic: regions are assigned fuzzy set of labels instead of low-level featuresModification of traditional segmentation algorithms to operate on labelled regionsSimultaneous image segmentation and region labeling
Target:Solve oversegmentation problemsAssign labels with confidence values to regionsLink labels with concepts existing in ontologies
Semantic Segmentation
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Sea is oversegmented
People have been incorrectly merged with the sand
RSST segmentation
Semantic RSST segmentation
Region is assigned to a fuzzy set of labels:
{rock/0.89,sand/0.46}
Sea segments
are merged correctly
Semantic Segmentation