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Proceedings ArticleDOI

DANIEL: A Deep Architecture for Automatic Analysis and Retrieval of Building Floor Plans

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TLDR
This paper proposes Deep Architecture for fiNdIng alikE Layouts (DANIEL), a novel deep learning framework to retrieve similar floor plan layouts from repository and creation of a new complex dataset ROBIN, having three broad dataset categories with 510 real world floor plans.
Abstract
Automatically finding out existing building layouts from a repository is always helpful for an architect to ensure reuse of design and timely completion of projects. In this paper, we propose Deep Architecture for fiNdIng alikE Layouts (DANIEL). Using DANIEL, an architect can search from the existing projects repository of layouts (floor plan), and give accurate recommendation to the buyers. DANIEL is also capable of recommending the property buyers, having a floor plan image, the corresponding rank ordered list of alike layouts. DANIEL is based on the deep learning paradigm to extract both low and high level semantic features from a layout image. The key contributions in the proposed approach are: (i) novel deep learning framework to retrieve similar floor plan layouts from repository; (ii) analysing the effect of individual deep convolutional neural network layers for floor plan retrieval task; and (iii) creation of a new complex dataset ROBIN (Repository Of BuildIng plaNs), having three broad dataset categories with 510 real world floor plans.We have evaluated DANIEL by performing extensive experiments on ROBIN and compared our results with eight different state-of-the-art methods to demonstrate DANIEL’s effectiveness on challenging scenarios.

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Book ChapterDOI

Deep Vectorization of Technical Drawings

TL;DR: This work presents a new method for vectorization of technical line drawings, such as floor plans, architectural drawings, and 2D CAD images, that quantitatively and qualitatively outperforms a number of existing techniques on a collection of representative technical drawings.
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Shall deep learning be the mandatory future of document analysis problems

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Deep Vectorization of Technical Drawings

TL;DR: In this paper, a transformer-based network is used to estimate vector primitives and an optimization procedure is performed to obtain the final primitive configurations, which outperforms a number of existing techniques on a collection of representative technical drawings.
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Gaps and requirements for automatic generation of space layouts with optimised energy performance

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High-level feature aggregation for fine-grained architectural floor plan retrieval

TL;DR: A novel algorithm to extract high-level semantic features from an architectural floor plan using weighted sum of the features is proposed, where a feature can be given more preference over others, during retrieval.
References
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Proceedings ArticleDOI

A prototype system for interpreting hand-sketched floor plans

TL;DR: A prototype system for drawing interpretation that automatically converts hand-sketched floor-plans into the CAD format is presented and showed that sufficient recognition performance for practical use was able to be obtained.
Journal ArticleDOI

A system to understand hand-drawn floor plans using subgraph isomorphism and Hough transform

TL;DR: A system to understand hand drawn architectural drawings in a CAD environment is presented and an inexact subgraph isomorphism procedure using relaxation labeling techniques is performed to speed up the matching.
Proceedings ArticleDOI

Reconstruction of the 3D structure of a building from the 2D drawings of its floors

TL;DR: This article presents the first results in reconstructing the 3D structure of a building using primitives delivered by the analysis of the 2D architectural drawings of its floors using a maximal clique detection algorithm.
Proceedings ArticleDOI

a.SCAtch - A Sketch-Based Retrieval for Architectural Floor Plans

TL;DR: In this paper a sketch-based approach is proposed to query the floor plan repository, where the user searches for semantically similar floor plans just by drawing the new plan.
Proceedings ArticleDOI

Symbol Spotting in Line Drawings through Graph Paths Hashing

TL;DR: A symbol spotting technique through hashing the shape descriptors of graph paths (Hamiltonian paths) to ease the accurate localization of the model symbol through the hash table lookup process.
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