Exploring Landscape Composition Using 2D and 3D Open Urban Vectorial Data
<p>View composition regarding city features.</p> "> Figure 2
<p>Viewpoint from south of Lyon.</p> "> Figure 3
<p>Three-dimensional visualization of buildings and associated documents (See more examples in [<a href="#B17-ijgi-11-00479" class="html-bibr">17</a>]).</p> "> Figure 4
<p>Composition of the 3D view in four steps: Field of View Description (Step A), Intersecting Objects in the 3D Scene (Step B), Storing intersected objects (Step C) and Storing results in the database (Step D).</p> "> Figure 5
<p>Discretization of the 3D space according to rays generated from the viewpoint of interest.</p> "> Figure 6
<p>A 1 × 1 km tile of Lyon composed of four types of objects: buildings, terrain, roads and vegetation.</p> "> Figure 7
<p>Three rays are generated from the viewpoint of different kinds of objects.</p> "> Figure 8
<p>Organization of a model city using a regular grid.</p> "> Figure 9
<p>(<b>Left</b>): Top view of 3D skyline for a given point or view (purple). (<b>Right</b>): Composition of this skyline.</p> "> Figure 10
<p>View composition analysis. (<b>Left</b>): decomposition of the skyline according to the intersected object. (<b>Right</b>): the view composition.</p> "> Figure 11
<p>Three-dimensional visualization of a tile (1 × 1 km) of the CityGML model of Lyon.</p> "> Figure 12
<p>One-meter-resolution DEM used for a visibility analysis for the Lyon Metropolis: view from the whole DEM covering the city of Lyon (48 sq km) (<b>left</b>) and zoom on a specific part of the city (<b>right</b>).</p> "> Figure 13
<p>Visual comparison between data describing the same location (Bellecour square): raster data (1-m DEM—<b>left</b>) and 3D vector data (<b>right</b>).</p> "> Figure 14
<p>Three-dimensional visualizations to compare the results of 2.5D raster (<b>left</b>) and 3D vector (<b>right</b>) visibility analyses from the vantage point of the Fourvière Basilica. On the raster analysis, the visible areas are in green, while on the vector one, we only see the visible 3D points colored according to their type. The 3D model of Saint Jean’s Cathedral has been added to the bottom visualizations, which zoom in on the panoramic view of the top images.</p> "> Figure 15
<p>Three-dimensional visualization using our tools, with each color corresponding to the CityGML category of the resulting 3D points (green: vegetation, grey: buildings, yellow: terrain, blue: water).</p> "> Figure 16
<p>Raster analysis results regarding the visibility of the Fourvière Basilica (Bellecour Square). Green pixels indicate that the Basilica is seen, and red pixels that it is not seen. The results are displayed on an aerial image of the square; hence transparency is used.</p> "> Figure 17
<p>Same as <a href="#ijgi-11-00479-f016" class="html-fig">Figure 16</a>, with the addition of the visibility analysis from our tool (in green, vegetation; in yellow, terrain; in red, roofs; in white, building’s walls).</p> "> Figure 18
<p>Raster analysis results regarding the visibility of the Fourvière Basilica (Bellecour Square). Green pixels indicate areas where the Basilica can be seen, and red pixels indicate places from which it is not visible. The results are displayed on an aerial image with a little transparency. Building footprints are represented in black.</p> "> Figure 19
<p>Buildings that have a facade from which the Fourvière Basilica can be seen are shown in white. Buildings from which the Basilica is only visible from the rooftop are excluded.</p> "> Figure 20
<p>Visualization of vantage points (each point is a vantage point). On the (<b>left</b>), the number of landmarks seen from the vantage points (from red, five landmarks seen, to yellow, zero landmarks seen). On the (<b>right</b>), effort needed to access the vantage point on foot, in calories (from light blue (less than 20 calories) to dark blue (more than 70 calories).</p> "> Figure 21
<p>Visualization of an imaginary high-rise project (on the right) in the existing business district of La Part-Dieu from the belvedere of Fourvière.</p> ">
Abstract
:1. Introduction
2. Previous Scientific Works in Respect to Users’ Needs
- the need for precise geometrical analysis, which requires the use of a 3D vector city model instead of simplified DEM or rasters,
- the need for semantic data to identify as precisely as possible which feature is seen from a vantage point; if a building or landmark is concerned by the visual impact of a proposed building (concerned only by its roof or its facades and which floors may be impacted, etc.),
- the need to be able to process large amounts of data, and especially rich, 3D vector data so as to obtain precise results on any area (a whole metropolis or region if needed),
- the need for numerous outputs that can be used to generate multiple results (images, georeferenced databases and data quantification stored in spreadsheets), some of which may be used as is and others opening possibilities in terms of spatial analysis (i.e., interaction with other georeferenced data in GIS tools), depending on the end users’ objectives and their technical capabilities,
- the need for a generic approach for processing various city models with different types of city objects,
- the need for open-source tools that can be widely used by any stakeholder,
- the need to ensure replicability with the use of standards.
3. Measuring the Visual Composition of an Urban Landscape
3.1. Field of View Description (Step A)
3.2. Intersecting Objects in the 3D Scene (Step B)
3.3. Proposed Data Structure for a Large-Scale Study
3.4. Generating the Database (Step C and D)
4. Applications for Skyline Assessments in the Lyon Metropolitan Area
4.1. Data Used for Our Study
4.2. Geometrical Accuracy for a More Precise Description of the Skyline
4.2.1. Characterization of Geometrical Accuracy for the Visual Impact Assessment of a Specific Building
4.2.2. Quantitative Analysis of the Gain in Geometrical Accuracy
4.3. Example of Uses of the Data Produced by Our Tool
4.4. GIS Analysis of 3D Georeferenced Results
4.4.1. Visual Impact of Buildings in Context
4.4.2. Detecting the Visibility of a Building from Vantage Points
4.5. Outlook: Use of Images Produced by Our Tools for the Visual Analysis of High-Rise Projects and Their Impact on the Skyline
4.6. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Type of Object | Number of Triangles |
---|---|
Building | 118,948 |
Terrain | 26,785 |
Road | 17,800 |
Vegetation | 73,142 |
Total | 236,675 |
Gross Comparison of Results | Comparison of Results by Adding a Buffer of 1 m to the Results of Our Tool | Comparison for Points beyond 1 km from Viewpoint | |
---|---|---|---|
Number of points from our tool | 650,048 | 650,048 | 47,491 |
Number of points that are also part of the areas considered visible by the GIS visibility analysis | 415,976 | 497,068 | 44,262 |
Difference (points not considered as visible by GIS analysis) | 234,072 | 152,980 | 3229 |
Percentage difference | 36% | 23.5% | 7% |
Fourvière Basilica | City Hall | Opera | Saint-Jean Cathedral | Part-Dieu Tower | |
---|---|---|---|---|---|
Number of points from our tool | 650,048 | 683,096 | 680,978 | 712,178 | 640,821 |
Number of points that are also part of the areas considered visible by the GIS visibility analysis | 415,976 | 395,146 | 488,047 | 304,519 | 570,783 |
Difference (points not considered as visible by GIS analysis) | 234,072 | 287,950 | 192,931 | 407,659 | 70,038 |
Percentage difference | 36% | 42.20% | 28.30% | 57.24% | 11% |
Fourvière Basilica | City Hall | Opera | Saint-Jean Cathedral | Part-Dieu Tower | |
---|---|---|---|---|---|
Number of points from our tool | 650,048 | 683,096 | 680,978 | 712,178 | 640,821 |
Number of points that are also part of the areas considered visible by the GIS visibility analysis | 497,068 | 449,269 | 552,247 | 364,803 | 625,114 |
Difference (points not considered as visible by GIS analysis) | 152,980 | 233,827 | 128,731 | 347,375 | 15,707 |
Percentage difference | 23.5% | 34.23% | 18.90% | 48.78% | 2% |
Fourvière Basilica | City Hall | Opera | Saint-Jean Cathedral | Part-Dieu Tower | |
---|---|---|---|---|---|
Number of points from our tool | 47,491 | 11,102 | 12,091 | 6702 | 49,197 |
Number of points that are also part of the areas considered visible by the GIS visibility analysis | 44,262 | 11,102 | 12,091 | 6702 | 46,192 |
Difference (points not considered as visible by GIS analysis) | 3229 | 0 | 0 | 0 | 3005 |
Percentage difference | 7% | 0.00% | 0.00% | 0.00% | 6% |
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Pedrinis, F.; Samuel, J.; Appert, M.; Jacquinod, F.; Gesquière, G. Exploring Landscape Composition Using 2D and 3D Open Urban Vectorial Data. ISPRS Int. J. Geo-Inf. 2022, 11, 479. https://doi.org/10.3390/ijgi11090479
Pedrinis F, Samuel J, Appert M, Jacquinod F, Gesquière G. Exploring Landscape Composition Using 2D and 3D Open Urban Vectorial Data. ISPRS International Journal of Geo-Information. 2022; 11(9):479. https://doi.org/10.3390/ijgi11090479
Chicago/Turabian StylePedrinis, Frédéric, John Samuel, Manuel Appert, Florence Jacquinod, and Gilles Gesquière. 2022. "Exploring Landscape Composition Using 2D and 3D Open Urban Vectorial Data" ISPRS International Journal of Geo-Information 11, no. 9: 479. https://doi.org/10.3390/ijgi11090479
APA StylePedrinis, F., Samuel, J., Appert, M., Jacquinod, F., & Gesquière, G. (2022). Exploring Landscape Composition Using 2D and 3D Open Urban Vectorial Data. ISPRS International Journal of Geo-Information, 11(9), 479. https://doi.org/10.3390/ijgi11090479