北京林业大学英文网

Research Highlights

Advancements achieved in capturing urban green view

  

Jul. 05 2024

Latest news

Recently, the research group led by Associate Professor Sun Guodong from the School of Information Science and Technology (School of Artificial Intelligence) achieved new advancements in calculating urban Green View Index. Their research, entitled "Capturing Urban Green View with Mobile Crowd Sensing",was featured in the journal Ecological Informatics, which is ranked in the second division by the Chinese Academy of Sciences with an impact factor of 5.1.

unpub_60054d547ec44cb880536d2096570975.png

Urban green spaces are beneficial to ecosystems and the health of people. The Green View Index (GVI) is an essential metric for assessing urban green spaces from a human perspective. However, measuring GVI at an urban scale requires extensive collection and processing of sensing data, posing challenges in terms of high resource consumption, difficulty in implementation, and lack of user participation. Mobile crowd Sensing (MCS) is an emerging large-scale, low-cost solution for sensing data collection. To address the aforementioned issues, this study proposes an MCS system called GreenCam to measure the GVI with smartphone sensors. GreenCam guides users to capture photos of urban green spaces from human perspective. The system employs a Transformer-based model, which is trained on a customized dataset of 1200 carefully-labeled urban green images, to extract the greenery from the captured photos and calculate GVI. With widespread participation from urban users, the photos captured by users with GreenCam can cover various streets and areas of the city, enabling the measurement of GVI at an urban scale. Additionally, these photos reflect people's preferences towards specific urban landscapes, and analyzing the distribution and characteristics of popular landscapes contributes to the enhancement of urban ecosystems and landscapes.

The lead author of the study is Hu Yingqiang, a master's student from the 2022 cohort of the School of Information Science and Technology (School of Artificial Intelligence), with Associate Professor Sun Guodong acting as the corresponding author.

Paper link: https://doi.org/10.1016/j.ecoinf.2024.102640


Written by Hu Yingqiang, Sun Guodong
Translated and edited by Song He
Reviewed by Yu Yangyang