Automated GIS-Based Framework for Detecting Crosswalk Changes from Bi-Temporal High-Resolution Aerial Images
Richard Boadu Antwi, Samuel Takyi, Alican Karaer, Eren Erman Ozguven,, Michael Kimollo, Ren Moses, Maxim A. Dulebenets, and Thobias Sando

TL;DR
This paper presents an automated GIS-based framework using high-resolution aerial imagery and computer vision to detect and analyze crosswalk changes over time across multiple counties, aiding infrastructure and safety management.
Contribution
The study introduces a novel automated method for detecting crosswalk changes from bi-temporal high-resolution images, improving efficiency over manual methods and enabling large-scale infrastructure monitoring.
Findings
Detected over 2,000 crosswalk changes in Orange County.
Automatically extracted crosswalk changes in Seminole and Osceola counties.
Identified crosswalk modifications on both local and state roads.
Abstract
Identification of changes in pavement markings has become crucial for infrastructure monitoring, maintenance, development, traffic management, and safety. Automated extraction of roadway geometry is critical in helping with this, given the increasing availability of high-resolution images and advancements in computer vision and object detection. Specifically, due to the substantial volume of satellite and high-resolution aerial images captured at different time instances, change detection has become a viable solution. In this study, an automated framework is developed to detect changes in crosswalks of Orange, Osceola, and Seminole counties in Florida, utilizing data extracted from high-resolution images obtained at various time intervals. Specifically, for Orange County, crosswalk changes between 2019 and 2021 were manually extracted, verified, and categorized as either new or modified…
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Taxonomy
TopicsAutomated Road and Building Extraction · Remote Sensing and LiDAR Applications · Remote-Sensing Image Classification
