"""
greedy - Greedy (topological) coloring for GeoPandas
Copyright (C) 2019 Martin Fleischmann, 2017 Nyall Dawson
"""
import operator
__all__ = [
"greedy",
]
def _balanced(features, sw, balance="count", min_colors=4):
"""
Strategy to color features in a way which is visually balanced.
Algorithm ported from QGIS to be used with GeoDataFrames and libpysal weights objects.
Original algorithm:
Date : February 2017
Copyright : (C) 2017 by Nyall Dawson
Email : nyall dot dawson at gmail dot com
Parameters
----------
features : GeoDataFrame
GeoDataFrame
sw : libpysal.weights.W
spatial weights object denoting adjacency of features
balance : str
the method of color balancing
min_colors : int
the minimal number of colors to be used
Returns
-------
feature_colors : dict
dictionary with assigned color codes
"""
feature_colors = {}
# start with minimum number of colors in pool
color_pool = set(range(min_colors))
# calculate count of neighbours
neighbour_count = sw.cardinalities
# sort features by neighbour count - we want to handle those with more neighbours first
sorted_by_count = [
feature_id
for feature_id in sorted(
neighbour_count.items(), key=operator.itemgetter(1), reverse=True
)
]
# counts for each color already assigned
color_counts = {}
color_areas = {}
for c in color_pool:
color_counts[c] = 0
color_areas[c] = 0
if balance == "centroid":
features = features.copy()
features.geometry = features.geometry.centroid
balance = "distance"
for (feature_id, n) in sorted_by_count:
# first work out which already assigned colors are adjacent to this feature
adjacent_colors = set()
for neighbour in sw.neighbors[feature_id]:
if neighbour in feature_colors:
adjacent_colors.add(feature_colors[neighbour])
# from the existing colors, work out which are available (ie non-adjacent)
available_colors = color_pool.difference(adjacent_colors)
feature_color = -1
if len(available_colors) == 0:
# no existing colors available for this feature, so add new color to pool and repeat
min_colors += 1
return _balanced(features, sw, balance, min_colors)
else:
if balance == "count":
# choose least used available color
counts = [
(c, v) for c, v in color_counts.items() if c in available_colors
]
feature_color = sorted(counts, key=operator.itemgetter(1))[0][0]
color_counts[feature_color] += 1
elif balance == "area":
areas = [
(c, v) for c, v in color_areas.items() if c in available_colors
]
feature_color = sorted(areas, key=operator.itemgetter(1))[0][0]
color_areas[feature_color] += features.loc[feature_id].geometry.area
elif balance == "distance":
min_distances = {c: float("inf") for c in available_colors}
this_feature = features.loc[feature_id].geometry
# find features for all available colors
other_features = {
f_id: c
for (f_id, c) in feature_colors.items()
if c in available_colors
}
distances = features.loc[other_features.keys()].distance(this_feature)
# loop through these, and calculate the minimum distance from this feature to the nearest
# feature with each assigned color
for other_feature_id, c in other_features.items():
distance = distances.loc[other_feature_id]
if distance < min_distances[c]:
min_distances[c] = distance
# choose color such that minimum distance is maximised! ie we want MAXIMAL separation between
# features with the same color
feature_color = sorted(
min_distances, key=min_distances.__getitem__, reverse=True
)[0]
feature_colors[feature_id] = feature_color
return feature_colors
def _geos_sw(features, tolerance=0, silence_warnings=False, resolution=5):
"""
Generate libpysal spatial weights object based on intersections of features.
Intersecting features are denoted as neighbours. If tolerance > 0, all features
within the set tolerance are denoted as neighbours.
Parameters
----------
features : GeoDataFrame
GeoDataFrame
tolerance : float (default 0)
minimal distance between colors
silence_warnings : bool (default True)
silence lilbpysal warnings (if min_distance is set)
resolution : int (default 5)
resolution of buffer if tolerance > 0
Returns
-------
W : libpysal.weights.W
spatial weights object
"""
try:
from libpysal.weights import W
except ImportError:
raise ImportError("The 'libpysal' package is required.")
neighbors = {}
if tolerance > 0:
features = features.copy()
features["geometry"] = features.geometry.buffer(tolerance / 2, resolution)
sindex = features.sindex
for i, (ix, g) in enumerate(features.geometry.iteritems()):
possible_matches_index = list(sindex.intersection(g.bounds))
possible_matches_index.remove(i)
possible_matches = features.iloc[possible_matches_index]
precise_matches = possible_matches.loc[possible_matches.intersects(g)]
neighbors[ix] = list(precise_matches.index)
return W(neighbors, silence_warnings=silence_warnings)
[docs]def greedy(
gdf,
strategy="balanced",
balance="count",
min_colors=4,
sw="queen",
min_distance=None,
silence_warnings=True,
interchange=False,
):
"""
Color GeoDataFrame using various strategies of greedy (topological) colouring.
Attempts to color a GeoDataFrame using as few colors as possible, where no
neighbours can have same color as the feature itself. Offers various strategies
ported from QGIS or implemented within networkX for greedy graph coloring.
``greedy`` will return pandas.Series representing assinged color codes.
Parameters
----------
gdf : GeoDataFrame
GeoDataFrame
strategy : str (default 'balanced')
Determine coloring strategy. Options are ``'balanced'`` for algorithm based on
QGIS Topological coloring. It is aiming for a visual balance, defined by the
balance parameter.
Other options are those supported by networkx.greedy_color:
* ``'largest_first'``
* ``'random_sequential'``
* ``'smallest_last'``
* ``'independent_set'``
* ``'connected_sequential_bfs'``
* ``'connected_sequential_dfs'``
* ``'connected_sequential'`` (alias for the previous strategy)
* ``'saturation_largest_first'``
* ``'DSATUR'`` (alias for the previous strategy)
For details see
https://networkx.github.io/documentation/stable/reference/algorithms/generated/networkx.algorithms.coloring.greedy_color.html
balance : str (default 'count')
If strategy is ``'balanced'``, determine the method of color balancing.
* ``'count'`` attempts to balance the number of features per each color.
* ``'area'`` attempts to balance the area covered by each color.
* ``'centroid'`` attempts to balance the distance between colors based on the distance between centroids.
* ``'distance'`` attempts to balance the distance between colors based on the distance between geometries. Slower than ``'centroid'``, but more precise.
``'centroid'`` and ``'distance'`` are significantly slower than other especially
for larger GeoDataFrames.
Apart from ``'count'``, all require CRS to be projected (not in degrees) to ensure
metric values are correct.
min_colors: int (default 4)
If strategy is ``'balanced'``, define the minimal number of colors to be used.
sw : 'queen', 'rook' or libpysal.weights.W (default 'queen')
If min_distance is None, one can pass ``'libpysal.weights.W'`` object denoting neighbors
or let greedy to generate one based on ``'queen'`` or ``'rook'`` contiguity.
min_distance : float
Set minimal distance between colors.
If min_distance is not None, slower algorithm for generating spatial weghts is used
based on intersection between geometries. Min_distance is then used as a tolerance
of intersection.
silence_warnings : bool (default True)
Silence libpysal warnings when creating spatial weights.
interchange : bool (defaul False)
Use the color interchange algorithm (applicable for networkx strategies)
For details see
https://networkx.github.io/documentation/stable/reference/algorithms/generated/networkx.algorithms.coloring.greedy_color.html
Examples
--------
Default:
>>> gdf['greedy_colors'] = greedy(gdf)
Balanced by area:
>>> gdf['balanced_area'] = greedy(gdf, strategy='balanced',
>>> balance='area')
Using rook adjacency:
>>> gdf['rook_adjacency'] = greedy(gdf, sw='rook')
Adding minimal distance between colors:
>>> gdf['min_distance'] = greedy(gdf, min_distance=100)
Using different coloring strategy:
>>> gdf['smallest_last'] = greedy(gdf, strategy='smallest_last')
Returns
-------
color : pd.Series
pandas.Series representing assinged color codes
"""
try:
import networkx as nx
except ImportError:
raise ImportError("The 'networkx' package is required.")
try:
import pandas as pd
except ImportError:
raise ImportError("The 'pandas' package is required.")
try:
from libpysal.weights import Queen, Rook, W
except ImportError:
raise ImportError("The 'libpysal' package is required.")
STRATEGIES = nx.algorithms.coloring.greedy_coloring.STRATEGIES.keys()
if min_distance is not None:
sw = _geos_sw(gdf, tolerance=min_distance, silence_warnings=silence_warnings)
if not isinstance(sw, W):
if sw == "queen":
sw = Queen.from_dataframe(
gdf, ids=gdf.index.to_list(), silence_warnings=silence_warnings
)
elif sw == "rook":
sw = Rook.from_dataframe(
gdf, ids=gdf.index.to_list(), silence_warnings=silence_warnings
)
if strategy == "balanced":
return pd.Series(_balanced(gdf, sw, balance=balance, min_colors=min_colors))
elif strategy in STRATEGIES:
color = nx.greedy_color(
sw.to_networkx(), strategy=strategy, interchange=interchange
)
color = pd.Series(color).sort_index()
color.index = gdf.index
return color
else:
raise ValueError("{} is not a valid strategy.".format(strategy))