如何将两个坐标列转换为一列 Shapely 点

How to convert two coordinate columns to a column of Shapely points

我正在尝试对整列执行操作,但出现类型错误,我想创建一个包含 Shapely Point:

的列
crime_df = crime_df[crime_df['Latitude'].notna()]
crime_df = crime_df[crime_df['Longitude'].notna()]

crime_df['Longitude'] = crime_df['Longitude'].astype(float)
crime_df['Latitude'] = crime_df['Latitude'].astype(float)

print (crime_df['Longitude'])
print (crime_df['Latitude'])

crime_df['point'] = Point(crime_df['Longitude'], crime_df['Latitude'])

输出:

18626    -87.647379
Name: Longitude, Length: 222, dtype: float64

18626    41.781100
Name: Latitude, Length: 222, dtype: float64

TypeError: cannot convert the series to <class 'float'>

我认为您需要分别处理每个点,因此需要 DataFrame.apply 和 lambda 函数:

crime_df['point'] = crime_df.apply(lambda x: Point(x['Longitude'], x['Latitude'], axis=1)

或者感谢@N。沃达:

crime_df["point"] = crime_df[["Longitude", "Latitude"]].apply(Point, axis=1)

或者列表理解备选方案是:

crime_df['point'] = [Point(lon, lat) 
                                 for lon, lat in crime_df[['Longitude','Latitude']].values]

编辑:我认为矢量化方式可以使用 geopandas.points_from_xy 比如:

gdf = geopandas.GeoDataFrame(df,geometry=geopandas.points_from_xy(df.Longitude,df.Latitude))