Feasibility of Using Grammars to Infer Room Semantics

Publication date

2019-06-28

Authors

Hu, Xuke
Fan, Hongchao
Noskov, Alexey
Zipf, Alexander
Wang, ZhiyongISNI 0000000419545537
Shang, Jianga

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Advisors

Supervisors

Document Type

Article
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Abstract

Current indoor mapping approaches can detect accurate geometric information but are incapable of detecting the room type or dismiss this issue. This work investigates the feasibility of inferring the room type by using grammars based on geometric maps. Specifically, we take the research buildings at universities as examples and create a constrained attribute grammar to represent the spatial distribution characteristics of different room types as well as the topological relations among them. Based on the grammar, we propose a bottom-up approach to construct a parse forest and to infer the room type. During this process, Bayesian inference method is used to calculate the initial probability of belonging an enclosed room to a certain type given its geometric properties (e.g., area, length, and width) that are extracted from the geometric map. The approach was tested on 15 maps with 408 rooms. In 84% of cases, room types were defined correctly. It, to a certain degree, proves that grammars can benefit semantic enrichment (in particular, room type tagging).

Keywords

indoor mapping, room type tagging, semantic enrichtment, grammar, Bayesian inference

Citation

Hu, X, Fan, H, Noskov, A, Zipf, A, Wang, Z & Shang, J 2019, 'Feasibility of Using Grammars to Infer Room Semantics', Remote Sensing, vol. 11, no. 13, 1535. https://doi.org/10.3390/rs11131535