Title
Indoor segmentation and support inference from RGBD images
Abstract
We present an approach to interpret the major surfaces, objects, and support relations of an indoor scene from an RGBD image. Most existing work ignores physical interactions or is applied only to tidy rooms and hallways. Our goal is to parse typical, often messy, indoor scenes into floor, walls, supporting surfaces, and object regions, and to recover support relationships. One of our main interests is to better understand how 3D cues can best inform a structured 3D interpretation. We also contribute a novel integer programming formulation to infer physical support relations. We offer a new dataset of 1449 RGBD images, capturing 464 diverse indoor scenes, with detailed annotations. Our experiments demonstrate our ability to infer support relations in complex scenes and verify that our 3D scene cues and inferred support lead to better object segmentation.
Year
DOI
Venue
2012
10.1007/978-3-642-33715-4_54
ECCV (5)
Keywords
Field
DocType
object region,support relation,physical support relation,support inference,indoor segmentation,better object segmentation,complex scene,diverse indoor scene,indoor scene,support relationship,rgbd image,support lead
Computer vision,Segmentation,Computer science,Inference,Integer programming,Artificial intelligence,Parsing,Machine learning
Conference
Volume
ISSN
Citations 
7576
0302-9743
806
PageRank 
References 
Authors
25.94
17
4
Search Limit
100806
Name
Order
Citations
PageRank
Nathan Silberman1129345.03
Derek Hoiem24998302.66
Pushmeet Kohli37398332.84
Robert Fergus411214735.18