An inductive method for classifying building form in a city with implications for orientation

Author:

Rhee Jinmo1ORCID,Krishnamurti Ramesh2

Affiliation:

1. University of Calgary, Canada

2. Carnegie Mellon University, USA

Abstract

The utilization of deep learning for form analysis facilitates the classification of an extensive number of forms based on their morphological features. A critical consideration for implementing such analysis methods in architectural or urban forms is whether building orientation should be embedded within the data. Orientation functions as a form variable significantly influenced by environmental, social, and cultural contexts within a city. In contrast to other domains where forms are extrapolated in relation to their context, in the city, domain orientation uniquely characterizes building form. In this paper, we introduce a pipeline for constructing an extensive building form dataset and scrutinizing the morphological identity of building forms, with a particular focus on the implications of building orientation as a manifestation of urban locality. Through a case study situated in Montreal, we engage in a comparative analysis employing two distinct datasets—those with orientation-embedded forms and those with orientation-normalized forms. Our research aims to investigate the typo-morphological characteristics of the building forms of the city and to examine how building orientation contributes to the identification of these traits and mirrors urban locality.

Funder

the Architectural Design Human Resource Development Project and the Korea Agency for Infrastructure Technology Advancement

Computational Design Laboratory, the School of Architecture at Carnegie Mellon University

Publisher

SAGE Publications

Subject

Management, Monitoring, Policy and Law,Nature and Landscape Conservation,Urban Studies,Geography, Planning and Development,Architecture

Reference43 articles.

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