Abstract

Architecture is about evolution, there exist many types of architectural styles that depend on the geography, traditions, and culture of the particular regions. An architectural designer may have a similar preference in creating the new architectural building, which can be easily recognized from the physical attributes and characteristics. This paper performs an architect classification based on the outward appearance of the building. An architecture database with 100 images (ARC-100) that have balanced class distribution is constructed. Among the architectural buildings, the best performance is 71% for 5-class classification. Convolutional neural networks (CNNs) have demonstrated breakthrough performance on various classification tasks in recent studies, and even outperform human experts in specific tasks. Thus, for the baseline evaluation, multiple pretrained CNN models are employed with slight modifications. Prior to the feature extraction and classification processes, the removal of background noise is performed using two approaches: manually and automatically. The former approach requires high human intervention, while the latter utilizes the cutting-edge object segmentation technology, namely mask regional convolutional neural network (R-CNN). The illustration of the experiment training progress and the confusion matrix are reported, to allow further interpretation and analysis for the model trained. Notably, this is the first work that performs automatic classification based on architectural styles. This framework can be used to improve the cultural understanding and practices in providing education for holistic development and enhance the learning experience and progressions from an aesthetic perspective.

Highlights

  • The facade in architecture often provides clues to perceive the designer’s experience as it can reflect one’s logical, originative, and mathematical thinking

  • There are many findings discussed in identifying the buildings on maps or pictures

  • This paper presents a new dataset, namely architecture database with 100 images (ARC-100), which is comprised of 100 images from five popular architects

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Summary

Introduction

The facade in architecture often provides clues to perceive the designer’s experience as it can reflect one’s logical, originative, and mathematical thinking. There are many findings discussed in identifying the buildings on maps or pictures. There is relatively few analysis that is focused on subtle and detailed building recognition. Some architects are inspired by existing buildings or product and it can be the main base for them to extend their creativity to develop novel architectural concepts and design innovative solutions. An architect may have idiomatic style when designing a facade, such as the elements of stone, wood, timber, brick, and glass. Some of the world-renowned designers’ architectural works are identifiable for their unique applications of materials and details

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