# Obtain coordinates of a Polygon / Multi-polygon around a point in python [duplicate]

I am using plotlys scattermapbox to draw a polygon around a point object. I'd like to draw a polygon that covers 'x' mile radius from a POI.

I found this that is helpful: https://plotly.com/python/filled-area-on-mapbox/. However, in my case I need to dynamically define the polygon and obtain it's corresponding coordinates.

How do I render and fill a polygon around a center point? Can I use mapbox to get the polygon geometry? We define polygon geometry as `x miles` from the center.

Original question here: Draw a polygon around point in scattermapbox using python

• using this helper https://github.com/Turbo87/utm to transform between GPS (WSG84 / EPSG:4326) and UTM
• you expressed that POI circle/polygon radius as a distance `x miles` hence need to work with UTM projections to express radius as a distances
• have used UK hospitals as sample POI data. Without significant zoom levels circles will not display as they are only 1 mile radius. It will be simple to plug in any other dataframe with latitude and longitude columns
• used a scatter mapbox as sample plot, then added layer that are POI circles/polygons
``````import shapely.geometry
import utm
import pandas as pd
import geopandas as gpd
import requests, io, json
import plotly.express as px

# need to use UTM to express radius as a distance. UTM is zoned, so if GPS coords are very widely distributed
# distance will be incorrect.  zone is estimated from first GPS coordinate
# returns geopandas dataframe re-projected to GPS co-ordinates
# radius is expressed in metres

utm_coords = utm.from_latlon(lonlat[:, 1], lonlat[:, 0])
utmcrs = gpd.GeoDataFrame(
geometry=[shapely.geometry.Point(lonlat[0, 0], lonlat[0, 1])], crs="EPSG:4326"
).estimate_utm_crs()

return gpd.GeoDataFrame(
geometry=[
for easting, northing in zip(utm_coords, utm_coords)
],
crs=utmcrs,
).to_crs("EPSG:4326")

# get some public addressess - hospitals.  data that can be scattered
sep="¬",engine="python",)

# generate circles of diameter 1 mile, which is 1609.34 metres

fig = (
px.scatter_mapbox(
lat="Latitude",
lon="Longitude",
color="Sector",
hover_data=["OrganisationName", "Postcode"],
)
.update_traces(marker={"size": 10})
.update_layout(
mapbox={
"style": "open-street-map",
"zoom": 9,
"center":{"lat":gdf.loc[0,"geometry"].centroid.y, "lon":gdf.loc[0,"geometry"].centroid.x},
"layers": [
{
"below": "traces",
"type": "line",
"color": "purple",
"line": {"width": 1.5},
}
],
},
margin={"l": 0, "r": 0, "t": 0, "b": 0},
)
)
fig.show()

`````` • this is helpful. One thing though, why is `radius=10 ** 4`?
– kms
Aug 29 at 15:45
• that's just the default value 10,000 meters. in actual call I've set it to 1 mile `gdf = circles(dfhos.head(20).loc[:, ["Longitude", "Latitude"]].values, radius=1609.34) ` Aug 29 at 15:48