| |
|
|
| from collections import Counter, defaultdict |
| from typing import Dict |
|
|
| import matplotlib.pyplot as plt |
| import numpy as np |
| import plotly.graph_objects as go |
|
|
| from .parser import ( |
| filter_area, |
| filter_node, |
| filter_way, |
| match_to_group, |
| parse_area, |
| parse_node, |
| parse_way, |
| Patterns, |
| ) |
| from .reader import OSMData |
|
|
|
|
| def recover_hierarchy(counter: Counter) -> Dict: |
| """Recover a two-level hierarchy from the flat group labels.""" |
| groups = defaultdict(dict) |
| for k, v in sorted(counter.items(), key=lambda x: -x[1]): |
| if ":" in k: |
| prefix, group = k.split(":") |
| if prefix in groups and isinstance(groups[prefix], int): |
| groups[prefix] = {} |
| groups[prefix][prefix] = groups[prefix] |
| groups[prefix] = {} |
| groups[prefix][group] = v |
| else: |
| groups[k] = v |
| return dict(groups) |
|
|
|
|
| def bar_autolabel(rects, fontsize): |
| """Attach a text label above each bar in *rects*, displaying its height.""" |
| for rect in rects: |
| width = rect.get_width() |
| plt.gca().annotate( |
| f"{width}", |
| xy=(width, rect.get_y() + rect.get_height() / 2), |
| xytext=(3, 0), |
| textcoords="offset points", |
| ha="left", |
| va="center", |
| fontsize=fontsize, |
| ) |
|
|
|
|
| def plot_histogram(counts, fontsize, dpi): |
| fig, ax = plt.subplots(dpi=dpi, figsize=(8, 20)) |
|
|
| labels = [] |
| for k, v in counts.items(): |
| if isinstance(v, dict): |
| labels += list(v.keys()) |
| v = list(v.values()) |
| else: |
| labels.append(k) |
| v = [v] |
| bars = plt.barh( |
| len(labels) + -len(v) + np.arange(len(v)), v, height=0.9, label=k |
| ) |
| bar_autolabel(bars, fontsize) |
|
|
| ax.set_yticklabels(labels, fontsize=fontsize) |
| ax.axes.xaxis.set_ticklabels([]) |
| ax.xaxis.tick_top() |
| ax.invert_yaxis() |
| plt.yticks(np.arange(len(labels))) |
| plt.xscale("log") |
| plt.legend(ncol=len(counts), loc="upper center") |
|
|
|
|
| def count_elements(elems: Dict[int, str], filter_fn, parse_fn) -> Dict: |
| """Count the number of elements in each group.""" |
| counts = Counter() |
| for elem in filter(filter_fn, elems.values()): |
| group = parse_fn(elem.tags) |
| if group is None: |
| continue |
| counts[group] += 1 |
| counts = recover_hierarchy(counts) |
| return counts |
|
|
|
|
| def plot_osm_histograms(osm: OSMData, fontsize=8, dpi=150): |
| counts = count_elements(osm.nodes, filter_node, parse_node) |
| plot_histogram(counts, fontsize, dpi) |
| plt.title("nodes") |
|
|
| counts = count_elements(osm.ways, filter_way, parse_way) |
| plot_histogram(counts, fontsize, dpi) |
| plt.title("ways") |
|
|
| counts = count_elements(osm.ways, filter_area, parse_area) |
| plot_histogram(counts, fontsize, dpi) |
| plt.title("areas") |
|
|
|
|
| def plot_sankey_hierarchy(osm: OSMData): |
| triplets = [] |
| for node in filter(filter_node, osm.nodes.values()): |
| label = parse_node(node.tags) |
| if label is None: |
| continue |
| group = match_to_group(label, Patterns.nodes) |
| if group is None: |
| group = match_to_group(label, Patterns.ways) |
| if group is None: |
| group = "null" |
| if ":" in label: |
| key, tag = label.split(":") |
| if tag == "yes": |
| tag = key |
| else: |
| key = tag = label |
| triplets.append((key, tag, group)) |
| keys, tags, groups = list(zip(*triplets)) |
| counts_key_tag = Counter(zip(keys, tags)) |
| counts_key_tag_group = Counter(triplets) |
|
|
| key2tags = defaultdict(set) |
| for k, t in zip(keys, tags): |
| key2tags[k].add(t) |
| key2tags = {k: sorted(t) for k, t in key2tags.items()} |
| keytag2group = dict(zip(zip(keys, tags), groups)) |
| key_names = sorted(set(keys)) |
| tag_names = [(k, t) for k in key_names for t in key2tags[k]] |
|
|
| group_names = [] |
| for k in key_names: |
| for t in key2tags[k]: |
| g = keytag2group[k, t] |
| if g not in group_names and g != "null": |
| group_names.append(g) |
| group_names += ["null"] |
|
|
| key2idx = dict(zip(key_names, range(len(key_names)))) |
| tag2idx = {kt: i + len(key2idx) for i, kt in enumerate(tag_names)} |
| group2idx = {n: i + len(key2idx) + len(tag2idx) for i, n in enumerate(group_names)} |
|
|
| key_counts = Counter(keys) |
| key_text = [f"{k} {key_counts[k]}" for k in key_names] |
| tag_counts = Counter(list(zip(keys, tags))) |
| tag_text = [f"{t} {tag_counts[k, t]}" for k, t in tag_names] |
| group_counts = Counter(groups) |
| group_text = [f"{k} {group_counts[k]}" for k in group_names] |
|
|
| fig = go.Figure( |
| data=[ |
| go.Sankey( |
| orientation="h", |
| node=dict( |
| pad=15, |
| thickness=20, |
| line=dict(color="black", width=0.5), |
| label=key_text + tag_text + group_text, |
| x=[0] * len(key_names) |
| + [1] * len(tag_names) |
| + [2] * len(group_names), |
| color="blue", |
| ), |
| arrangement="fixed", |
| link=dict( |
| source=[key2idx[k] for k, _ in counts_key_tag] |
| + [tag2idx[k, t] for k, t, _ in counts_key_tag_group], |
| target=[tag2idx[k, t] for k, t in counts_key_tag] |
| + [group2idx[g] for _, _, g in counts_key_tag_group], |
| value=list(counts_key_tag.values()) |
| + list(counts_key_tag_group.values()), |
| ), |
| ) |
| ] |
| ) |
| fig.update_layout(autosize=False, width=800, height=2000, font_size=10) |
| fig.show() |
| return fig |
|
|