`c['geometry']`

is a series comprised of `shapely.geometry.polygon.Polygon`

objects. You can verify this by checking

```
In [23]: type(c.ix[23, 'geometry'])
Out[23]: shapely.geometry.polygon.Polygon
```

From the Shapely docs there is a method `representative_point()`

that

Returns a cheaply computed point that is guaranteed to be within the
geometric object.

Sounds ideal for a situation in which you need to label the polygon objects! You can then create a new column for your `geopandas`

`dataframe`

, `'coords'`

like so

```
c['coords'] = c['geometry'].apply(lambda x: x.representative_point().coords[:])
c['coords'] = [coords[0] for coords in c['coords']]
```

Now that you have a set of coordinates pertaining to each polygon object (each county), you can annotate your plot by iterating through your dataframe

```
c.plot()
for idx, row in c.iterrows():
plt.annotate(s=row['NAME'], xy=row['coords'],
horizontalalignment='center')
```