Venice2020 Building Heights Detection
Introduction
The main goal of our project is to obtain the height information of buildings in Venice. In order to achieve this goal, we construct a point cloud model of Venice with drone video from youtube and google earth with the help of a photogrammetry tool developed at DHLAB.
Motivation
Building height is one of the most important information to consider for urban planning, economic analysis, digital twin implementation, and so on. For Time Machine implementation, it is important to compare different historical data and current data based on different times. Drones and Google Maps provide 3D views of buildings and surroundings in detail which are useful resources to keep track of changes in a target place. In this project, we aim to detect the building heights of Venice. Many geographical areas, which are either not famous or not accessible easily are accessible by Google Earth 3D views. We aim to make a 3D model of Venice with every detail of the city and calculate point clouds to detect the heights of the city. This information can be used to understand current details of the city and also will be useful in the future as historical data to compare with.
Methodology
Data Collection
To build three dimensional point cloud models
Youtube Video Method
Our initial plan was to download drone videos of Venice on Youtube, extract images from the videos, and generate point cloud models based on the images that we obtained. However, the videos we could get from drone videos are very limited: Few of the videos are of high quality, and among those eligible videos, most of the videos only focused on monumental building such as Saint Mark Square. Therefore, a large part of Venice will be omitted if we only adopt Youtube Video Method.
Google Earth Method
In order to access more area of Venice, we decided t
Milestones
Milestone 1
- Get familiar with OpenMVG, Open3D, OpenGM, Point Cloud Library, Agisoft Metashape, Blender, CloudCompare and QGIS
- Collect high resolution venice drone videos on youtube and record Google Earth birdview videos as supplementary materials
Milestone 2
- Align photos of the same location in Venice, derive sparse point clouds made up of only high-quality tie points and repeated optimize the camara model by reconstruction uncertainty filtering, projection accuracy filtering and reprojection error filtering.
- Build dense point clouds using the estimated camera positions generated during sparse point cloud based matching and the depth map for each camera
- Evaluate point clouds objective quality and select high quality models by point-based approaches which can assess both geometry and color distortions
Milestone 3
- Align and compose dense point clouds of different spots to generate an integrated Venice dense cloud model (implement registration with partially overlapping terrestrial point clouds)
- Build Venice 3D model (mesh) and tilted model according to dense point cloud data
- Generate plane of the surface ground
Milestone 4
- Build the digital elevation model of Venice and align the model with open street map and cadaster in the 16th century to obtain building heights
- Assess the accuracy of the building heights detection
Planning
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