@inproceedings{82a7de4422a243afb204b05655ddb87a,
title = "Floor Plan Exploration Framework Based on Similarity Distances",
abstract = "Computational methods to compute similarities between floor plans can help architects explore floor plans in large datasets to avoid duplication of designs and to search for existing plans that satisfy their needs. Recently, LayoutGMN [PLF∗21] delivered state-of-the-art performance for computing similarity scores between floor plans. However, the high computational costs of LayoutGMN make it unsuitable for the aforementioned applications. In this paper, we significantly reduced the times needed to query results computed by LayoutGMN by projecting the floor plans into a common low-dimensional (e.g., three) data space. The projection is done by optimizing for coordinates of floor plans with Euclidean distances mimicking their similarity scores originally calculated by LayoutGMN. Quantitative and qualitative evaluations show that our results match the distributions of the original LayoutGMN similarity scores. User study shows that our similarity results largely match human expectations.",
author = "Shih, {Chia Ying} and Peng, {Chi Han}",
note = "Publisher Copyright: {\textcopyright} 2022 The Author(s); 9th Smart Tools and Applications in Graphics Conference, STAG 2022 ; Conference date: 17-11-2022 Through 18-11-2022",
year = "2022",
doi = "10.2312/stag.20221263",
language = "English",
series = "Eurographics Italian Chapter Proceedings - Smart Tools and Applications in Graphics, STAG",
publisher = "Eurographics Association",
pages = "115--117",
editor = "Daniela Cabiddu and Teseo Schneider and Gianmarco Cherchi and Riccardo Scateni and Dieter Fellner",
booktitle = "STAG 2022 - Smart Tools and Applications in Graphics, Eurographics Italian Chapter Conference",
address = "瑞士",
}