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Main Authors: Liu, Chenying, Song, Hunsoo, Shreevastava, Anamika, Albrecht, Conrad M
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2405.13993
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author Liu, Chenying
Song, Hunsoo
Shreevastava, Anamika
Albrecht, Conrad M
author_facet Liu, Chenying
Song, Hunsoo
Shreevastava, Anamika
Albrecht, Conrad M
contents Local climate zones (LCZs) established a standard classification system to categorize the landscape universe for improved urban climate studies. Existing LCZ mapping is guided by human interaction with geographic information systems (GIS) or modelled from remote sensing (RS) data. GIS-based methods do not scale to large areas. However, RS-based methods leverage machine learning techniques to automatize LCZ classification from RS. Yet, RS-based methods require huge amounts of manual labels for training. We propose a novel LCZ mapping framework, termed AutoLCZ, to extract the LCZ classification features from high-resolution RS modalities. We study the definition of numerical rules designed to mimic the LCZ definitions. Those rules model geometric and surface cover properties from LiDAR data. Correspondingly, we enable LCZ classification from RS data in a GIS-based scheme. The proposed AutoLCZ method has potential to reduce the human labor to acquire accurate metadata. At the same time, AutoLCZ sheds light on the physical interpretability of RS-based methods. In a proof-of-concept for New York City (NYC) we leverage airborne LiDAR surveys to model 4 LCZ features to distinguish 10 LCZ types. The results indicate the potential of AutoLCZ as promising avenue for large-scale LCZ mapping from RS data.
format Preprint
id arxiv_https___arxiv_org_abs_2405_13993
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle AutoLCZ: Towards Automatized Local Climate Zone Mapping from Rule-Based Remote Sensing
Liu, Chenying
Song, Hunsoo
Shreevastava, Anamika
Albrecht, Conrad M
Computer Vision and Pattern Recognition
Computational Engineering, Finance, and Science
Information Retrieval
Machine Learning
Local climate zones (LCZs) established a standard classification system to categorize the landscape universe for improved urban climate studies. Existing LCZ mapping is guided by human interaction with geographic information systems (GIS) or modelled from remote sensing (RS) data. GIS-based methods do not scale to large areas. However, RS-based methods leverage machine learning techniques to automatize LCZ classification from RS. Yet, RS-based methods require huge amounts of manual labels for training. We propose a novel LCZ mapping framework, termed AutoLCZ, to extract the LCZ classification features from high-resolution RS modalities. We study the definition of numerical rules designed to mimic the LCZ definitions. Those rules model geometric and surface cover properties from LiDAR data. Correspondingly, we enable LCZ classification from RS data in a GIS-based scheme. The proposed AutoLCZ method has potential to reduce the human labor to acquire accurate metadata. At the same time, AutoLCZ sheds light on the physical interpretability of RS-based methods. In a proof-of-concept for New York City (NYC) we leverage airborne LiDAR surveys to model 4 LCZ features to distinguish 10 LCZ types. The results indicate the potential of AutoLCZ as promising avenue for large-scale LCZ mapping from RS data.
title AutoLCZ: Towards Automatized Local Climate Zone Mapping from Rule-Based Remote Sensing
topic Computer Vision and Pattern Recognition
Computational Engineering, Finance, and Science
Information Retrieval
Machine Learning
url https://arxiv.org/abs/2405.13993