--- title: "Get started" description: Brief introduction to CatastRo package. vignette: > %\VignetteIndexEntry{Get started} %\VignetteEngine{quarto::html} %\VignetteEncoding{UTF-8} bibliography: REFERENCES.bib link-citations: true --- **CatastRo** provides access to different API services of the [Spanish Cadastre](https://www.sedecatastro.gob.es/). With **CatastRo**, you can download official information on addresses, properties, parcels, and buildings. ## OVCCoordenadas service The [OVCCoordenadas](https://ovc.catastro.meh.es/ovcservweb/OVCSWLocalizacionRC/OVCCoordenadas.asmx) service allows retrieving the coordinates of a known cadastral reference (geocoding). It is also possible to retrieve the cadastral references around a specific pair of coordinates (reverse geocoding). **CatastRo** returns the results in a tibble format. This functionality is described in detail in the corresponding vignette (see `vignette("ovcservice", package = "CatastRo")`). ## INSPIRE services
The INSPIRE Directive aims to create a European Union Spatial Data Infrastructure (SDI) for the purposes of EU environmental policies and policies or activities which may have an impact on the environment. This European Spatial Data Infrastructure will enable the sharing of environmental spatial information among public sector organisations, facilitate public access to spatial information across Europe and assist in policy-making across boundaries.
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The implementation of the INSPIRE directive on the Spanish Cadastre (see [Catastro INSPIRE](https://www.catastro.hacienda.gob.es/webinspire/index.html)) allows retrieval of spatial objects from the cadastral database: - **Vector objects:** Parcels, addresses, buildings, cadastral zones and more. These objects are provided by **CatastRo** as `sf` objects, using the **sf** package. - **Imagery:** Image layers representing the same information as the vector objects. These objects are provided by **CatastRo** as `SpatRaster` objects, using the **terra** package. Note that the coverage of this service is 95% of the Spanish territory, excluding the Basque Country and Navarre[^1], which have their own independent cadastral offices. [^1]: The package [**CatastRoNav**](https://ropenspain.github.io/CatastRoNav/) provides access to the Cadastre of Navarre, with similar functionalities to **CatastRo**. There are three types of functions, each one querying a different service: 1. **ATOM service**: The ATOM service allows batch downloading vector objects of different cadastral elements for a specific municipality. 2. **WFS service**: The WFS service allows downloading vector objects of specific cadastral elements. Note that there are restrictions on the extent and number of elements that can be queried. For batch downloading, the ATOM service is preferred. 3. **WMS service**: This service allows downloading georeferenced images of different cadastral elements. ## Examples ### Working with layers In this example, we will demonstrate some of the main capabilities of the package by recreating a cadastral map of the surroundings of the [Santiago Bernabéu Stadium](https://en.wikipedia.org/wiki/Santiago_Bernab%C3%A9u_Stadium). We will use the **WMS and WFS services** to get different layers, in order to show some of the capabilities of the package: ``` r # Extract buildings by bounding box # Check https://boundingbox.klokantech.com/ library(CatastRo) stadium <- catr_wfs_get_buildings_bbox( c(-3.6891446916, 40.4523311971, -3.687462138, 40.4538643165), srs = 4326 ) # Now extract cadastral parcels. We can use spatial objects on the query stadium_parcel <- catr_wfs_get_parcels_bbox(stadium) # Project for tiles stadium_parcel_pr <- sf::st_transform(stadium_parcel, 25830) # Extract imagery: Labels of the parcel labs <- catr_wms_get_layer( stadium_parcel_pr, what = "parcel", styles = "BoundariesOnly", srs = 25830 ) # Plot library(ggplot2) library(tidyterra) # For terra tiles ggplot() + geom_spatraster_rgb(data = labs) + geom_sf( data = stadium_parcel_pr, fill = NA, col = "red", linewidth = 2 ) + geom_sf(data = stadium, fill = "red", alpha = .5) + coord_sf(crs = 25830) ```
Figure 1: Example - Santiago Bernabeu

Figure 1: Example - Santiago Bernabeu

### Thematic maps We can also create thematic maps using the information available on the spatial objects. We will produce a visualization of the urban growth of Granada using **CatastRo**, replicating the map produced by [Dominic Royé](https://dominicroye.github.io) [@roye19], using the **ATOM service**. First, we extract the coordinates of the city center of Granada using **mapSpain**: ``` r library(dplyr) library(sf) library(mapSpain) # Use mapSpain for getting the coords city <- esp_get_capimun(munic = "^Granada$") ``` The next step is to extract the buildings using the ATOM service. We will also use the function `catr_get_code_from_coords()` to identify Granada's code in the Cadastre and download the buildings with `catr_atom_get_buildings()`. ``` r city_catr_code <- catr_get_code_from_coords(city) city_catr_code #> # A tibble: 1 × 12 #> munic catr_to catr_munic catrcode cpro cmun inecode nm cd cmc cp cm #> #> 1 GRANADA 18 900 18900 18 087 18087 GRANADA 18 900 18 87 city_bu <- catr_atom_get_buildings(city_catr_code$catrcode) ``` The next step in creating the visualization is to limit the analysis to a circle with a radius of 1.5 km around the city center: ``` r buff <- city |> # Adjust CRS to 25830: (Buildings) st_transform(st_crs(city_bu)) |> # Buffer st_buffer(1500) # Cut buildings dataviz <- st_intersection(city_bu, buff) ggplot(dataviz) + geom_sf() ```
Figure 2: Minimal cadastral map of Granada

Figure 2: Minimal cadastral map of Granada

Now let's extract the construction year, available in the column `beginning`: ``` r # Extract 4 initial positions year <- substr(dataviz$beginning, 1, 4) # Replace all entries that do not look like numbers with 0000 year[!(year %in% 0:2500)] <- "0000" # Convert to numeric year <- as.integer(year) # New column dataviz <- dataviz |> mutate(year = year) ``` The last step is to create groups based on the year and create the data visualization. Here we use the function `cut()` to create classes for every decade starting from year 1900: ``` r dataviz <- dataviz |> mutate( year_cat = cut(year, breaks = c(0, seq(1900, 2030, by = 10)), dig.lab = 4) ) ggplot(dataviz) + geom_sf(aes(fill = year_cat), color = NA, na.rm = TRUE) + scale_fill_manual( values = hcl.colors(15, "Spectral"), na.translate = FALSE ) + theme_void() + labs(title = "GRANADA", fill = "") + theme( panel.background = element_rect(fill = "black"), plot.background = element_rect(fill = "black"), legend.justification = .5, legend.text = element_text( colour = "white", size = 12 ), plot.title = element_text( colour = "white", hjust = .5, margin = margin(t = 30), size = 30 ), plot.caption = element_text( colour = "white", margin = margin(b = 20), hjust = .5 ), plot.margin = margin(r = 40, l = 40) ) ```
Figure 2: Granada - Urban growth

Figure 2: Granada - Urban growth

## References