Please use this identifier to cite or link to this item: http://cmuir.cmu.ac.th/jspui/handle/6653943832/77829
Title: Road condition analysis for accident assessment based on Unmanned Aerial Vehicle (UAV) photogrammetry using image classification: a case study city road in Thailand
Other Titles: การวิเคราะห์สภาพถนนเพื่อประเมินความเสี่ยงการเกิดอุบัติเหตุโดยใช้ข้อมูลการรังวัดด้วยภาพดิจิทัลจากอากาศยานไร้คนขับ ด้วยการจำแนกประเภทข้อมูลภาพ: กรณีศึกษา ถนนบริเวณในเมือง ประเทศไทย
Authors: Wei, Sun
Authors: Phudinan Singkhamfu
Wei, Sun
Issue Date: 2022
Publisher: Chiang Mai : Graduate School, Chiang Mai University
Abstract: In recent years, many people who drove motorcycles died of traffic accidents in the world every year. As for Thailand, here also are the same situation. This paper develops an AI model of the road condition to protect motorcycle drivers by using UAV and image classification. Collect road condition images based on UAV equipment in the city area in Thailand and build the AI models by using orthomosaic images and digital surface models based on image recognition algorithms. In the algorithm, determining the degree of risk of road conditions is one of the important steps, which used the supervised method by experts for image judgment. Image classification is used to identify the degree of road condition risk, mainly AlexNet, ResNet50 etc. After completing the model establishment, this research conducts a test to determine which model is more suitable for analysis by comparing the image predictions and safety factors of the two models. As a result, the RGB model is more suitable for analyzing road conditions than the DSM model and the AlexNet is more suitable for analyzing the DSM model, and the SqueezeNet1_0 is more suitable for analyzing the RGB model. This study aims to develop an image classification model based on road conditions in Thailand and creates a mobile application to give the road condition information. The model is suitable for utilizing for creating motorbike drivers’ safety guidance from UAV data. The research found that, first of all, it was found that DSM is a color label that uses road height to realize color and height distinction, which is different from ordinary RGB data; through some curve graphs such as LR, training and testing curves, or some parameters such as accuracy rate, recall rate, etc. to compare the advantages and disadvantages of different models; In order to test the accuracy of the image classification model, the application-side development of the final screening model is also carried out to test.
URI: http://cmuir.cmu.ac.th/jspui/handle/6653943832/77829
Appears in Collections:CAMT: Theses

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