Spatially constrained location prior for scene parsing
conference contribution
posted on 2018-03-07, 00:00 authored by Ligang ZhangLigang Zhang, Brijesh Verma, David Stockwell, Sujan ChowdhurySujan Chowdhury© 2016 IEEE.Semantic context is an important and useful cue for scene parsing in complicated natural images with a substantial amount of variations in objects and the environment. This paper proposes Spatially Constrained Location Prior (SCLP) for effective modelling of global and local semantic context in the scene in terms of inter-class spatial relationships. Unlike existing studies focusing on either relative or absolute location prior of objects, the SCLP effectively incorporates both relative and absolute location priors by calculating object co-occurrence frequencies in spatially constrained image blocks. The SCLP is general and can be used in conjunction with various visual feature-based prediction models, such as Artificial Neural Networks and Support Vector Machine (SVM), to enforce spatial contextual constraints on class labels. Using SVM classifiers and a linear regression model, we demonstrate that the incorporation of SCLP achieves superior performance compared to the state-of-the-art methods on the Stanford background and SIFT Flow datasets.
Funding
Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)
History
Volume
2016-OctoberStart Page
1480End Page
1486Number of Pages
7Start Date
2016-07-24Finish Date
2016-07-29ISBN-13
9781509006199Location
Vancouver, CanadaPublisher
IEEEPlace of Publication
Piscataway, NJ.Publisher DOI
Peer Reviewed
- Yes
Open Access
- No
Author Research Institute
- Centre for Intelligent Systems
Era Eligible
- Yes
Name of Conference
International Joint Conference on Neural Networks (IJCNN 2016) 2016Usage metrics
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