Detecting and segmenting un-occluded items by actively casting shadows
We present a simple and practical approach for segmenting un-occluded items in a scene by actively casting shadows. By ‘items’, we refer to objects (or part of objects) enclosed by depth edges. Our approach utilizes the fact that under varying illumination, un-occluded items will cast shadows on occ...
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2007
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sg-smu-ink.cis_research-10252023-01-10T02:20:44Z Detecting and segmenting un-occluded items by actively casting shadows KOH, Tze K AGRAWAL, Amit RASKAR, Ramesh MORGAN, Steve MILES, Nicholas HAYES-GILL, Barrie We present a simple and practical approach for segmenting un-occluded items in a scene by actively casting shadows. By ‘items’, we refer to objects (or part of objects) enclosed by depth edges. Our approach utilizes the fact that under varying illumination, un-occluded items will cast shadows on occluded items or background, but will not be shadowed themselves.We employ an active illumination approach by taking multiple images under different illumination directions, with illumination source close to the camera. Our approach ignores the texture edges in the scene and uses only the shadow and silhouette information to determine the occlusions. We show that such a segmentation does not require the estimation of a depth map or 3D information, which can be cumbersome, expensive and often fails due to the lack of texture and presence of specular objects in the scene. Our approach can handle complex scenes with self-shadows and specularities. Results on several real scenes along with the analysis of failure cases are presented. 2007-11-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/cis_research/26 info:doi/10.1007/978-3-540-76386-4_90 https://ink.library.smu.edu.sg/context/cis_research/article/1025/viewcontent/Detecting_and_Segmenting_Un_occluded_Items_by_Actively_Casting_Shadows.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection College of Integrative Studies eng Institutional Knowledge at Singapore Management University Closed Contour Shadow Region Ratio Image Complex Scene Cast Shadow Computer Engineering |
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Closed Contour Shadow Region Ratio Image Complex Scene Cast Shadow Computer Engineering KOH, Tze K AGRAWAL, Amit RASKAR, Ramesh MORGAN, Steve MILES, Nicholas HAYES-GILL, Barrie Detecting and segmenting un-occluded items by actively casting shadows |
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We present a simple and practical approach for segmenting un-occluded items in a scene by actively casting shadows. By ‘items’, we refer to objects (or part of objects) enclosed by depth edges. Our approach utilizes the fact that under varying illumination, un-occluded items will cast shadows on occluded items or background, but will not be shadowed themselves.We employ an active illumination approach by taking multiple images under different illumination directions, with illumination source close to the camera. Our approach ignores the texture edges in the scene and uses only the shadow and silhouette information to determine the occlusions. We show that such a segmentation does not require the estimation of a depth map or 3D information, which can be cumbersome, expensive and often fails due to the lack of texture and presence of specular objects in the scene. Our approach can handle complex scenes with self-shadows and specularities. Results on several real scenes along with the analysis of failure cases are presented. |
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text |
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KOH, Tze K AGRAWAL, Amit RASKAR, Ramesh MORGAN, Steve MILES, Nicholas HAYES-GILL, Barrie |
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KOH, Tze K AGRAWAL, Amit RASKAR, Ramesh MORGAN, Steve MILES, Nicholas HAYES-GILL, Barrie |
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KOH, Tze K |
title |
Detecting and segmenting un-occluded items by actively casting shadows |
title_short |
Detecting and segmenting un-occluded items by actively casting shadows |
title_full |
Detecting and segmenting un-occluded items by actively casting shadows |
title_fullStr |
Detecting and segmenting un-occluded items by actively casting shadows |
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Detecting and segmenting un-occluded items by actively casting shadows |
title_sort |
detecting and segmenting un-occluded items by actively casting shadows |
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Institutional Knowledge at Singapore Management University |
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2007 |
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https://ink.library.smu.edu.sg/cis_research/26 https://ink.library.smu.edu.sg/context/cis_research/article/1025/viewcontent/Detecting_and_Segmenting_Un_occluded_Items_by_Actively_Casting_Shadows.pdf |
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