[osm/formatting] Adding OSM polygon lookups and neighborhood polygon lookups to the training data in order to provide more variations for the model to work with
This commit is contained in:
@@ -12,25 +12,25 @@ plenty of disk space. The following commands can be used in parallel to create
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all the training sets:
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Ways:
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python osm_address_training_data.py -s $(OSM_DIR)/planet-ways.osm --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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python osm_address_training_data.py -s $(OSM_DIR)/planet-ways.osm --language-rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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Venues:
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python osm_address_training_data.py -v $(OSM_DIR)/planet-venues.osm --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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python osm_address_training_data.py -v $(OSM_DIR)/planet-venues.osm --language-rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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Address streets:
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python osm_address_training_data.py -a $(OSM_DIR)/planet-addresses.osm --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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python osm_address_training_data.py -a $(OSM_DIR)/planet-addresses.osm --language-rtree-dir=$(LANG_RTREE_DIR) -o $(OUT_DIR)
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Limited formatted addresses:
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python osm_address_training_data.py -a -l $(OSM_DIR)/planet-addresses.osm --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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python osm_address_training_data.py -a -l $(OSM_DIR)/planet-addresses.osm --language-rtree-dir=$(LANG_RTREE_DIR) --rtree-dir=$(RTREE_DIR) --neighborhoods-rtree-dir=$(NEIGHBORHOODS_RTREE_DIR) -o $(OUT_DIR)
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Formatted addresses (tagged):
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python osm_address_training_data.py -a -f $(OSM_DIR)/planet-addresses.osm --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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python osm_address_training_data.py -a -f $(OSM_DIR)/planet-addresses.osm --language-rtree-dir=$(LANG_RTREE_DIR) --neighborhoods-rtree-dir=$(NEIGHBORHOODS_RTREE_DIR) --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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Formatted addresses (untagged):
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python osm_address_training_data.py -a -f -u $(OSM_DIR)/planet-addresses.osm --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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python osm_address_training_data.py -a -f -u $(OSM_DIR)/planet-addresses.osm --language-rtree-dir=$(LANG_RTREE_DIR) --neighborhoods-rtree-dir=$(NEIGHBORHOODS_RTREE_DIR) --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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Toponyms:
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python osm_address_training_data.py -b $(OSM_DIR)/planet-borders.osm --rtree-dir=$(RTREE_DIR) -o $(OUT_DIR)
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python osm_address_training_data.py -b $(OSM_DIR)/planet-borders.osm --language-rtree-dir=$(LANG_RTREE_DIR) -o $(OUT_DIR)
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'''
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import argparse
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@@ -61,7 +61,9 @@ from geodata.states.state_abbreviations import STATE_ABBREVIATIONS
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from geodata.language_id.polygon_lookup import country_and_languages
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from geodata.i18n.languages import *
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from geodata.address_formatting.formatter import AddressFormatter
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from geodata.osm.extract import *
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from geodata.polygons.language_polys import *
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from geodata.polygons.reverse_geocoder import ReverseGeocoder
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from geodata.i18n.unicode_paths import DATA_DIR
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from geodata.csv_utils import *
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@@ -69,18 +71,12 @@ from geodata.file_utils import *
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this_dir = os.path.realpath(os.path.dirname(__file__))
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WAY_OFFSET = 10 ** 15
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RELATION_OFFSET = 2 * 10 ** 15
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# Input files
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PLANET_ADDRESSES_INPUT_FILE = 'planet-addresses.osm'
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PLANET_WAYS_INPUT_FILE = 'planet-ways.osm'
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PLANET_VENUES_INPUT_FILE = 'planet-venues.osm'
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PLANET_BORDERS_INPUT_FILE = 'planet-borders.osm'
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ALL_OSM_TAGS = set(['node', 'way', 'relation'])
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WAYS_RELATIONS = set(['way', 'relation'])
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# Output files
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WAYS_LANGUAGE_DATA_FILENAME = 'streets_by_language.tsv'
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ADDRESS_LANGUAGE_DATA_FILENAME = 'address_streets_by_language.tsv'
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@@ -192,40 +188,10 @@ osm_fields = [
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]
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# Currently, all our data sets are converted to nodes with osmconvert before parsing
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def parse_osm(filename, allowed_types=ALL_OSM_TAGS):
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f = open(filename)
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parser = etree.iterparse(f)
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single_type = len(allowed_types) == 1
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for (_, elem) in parser:
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elem_id = long(elem.attrib.pop('id', 0))
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item_type = elem.tag
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if elem_id >= WAY_OFFSET and elem_id < RELATION_OFFSET:
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elem_id -= WAY_OFFSET
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item_type = 'way'
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elif elem_id >= RELATION_OFFSET:
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elem_id -= RELATION_OFFSET
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item_type = 'relation'
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if item_type in allowed_types:
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attrs = OrderedDict(elem.attrib)
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attrs.update(OrderedDict([(e.attrib['k'], e.attrib['v'])
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for e in elem.getchildren() if e.tag == 'tag']))
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key = elem_id if single_type else '{}:{}'.format(item_type, elem_id)
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yield key, attrs
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if elem.tag != 'tag':
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elem.clear()
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while elem.getprevious() is not None:
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del elem.getparent()[0]
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def write_osm_json(filename, out_filename):
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out = open(out_filename, 'w')
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writer = csv.writer(out, 'tsv_no_quote')
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for key, attrs in parse_osm(filename):
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for key, attrs, deps in parse_osm(filename):
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writer.writerow((key, json.dumps(attrs)))
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out.close()
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@@ -243,63 +209,6 @@ def normalize_osm_name_tag(tag, script=False):
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return norm.split('_', 1)[0]
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beginning_re = re.compile('^[^0-9\-]+', re.UNICODE)
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end_re = re.compile('[^0-9]+$', re.UNICODE)
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latitude_dms_regex = re.compile(ur'^(-?[0-9]{1,2})[ ]*[ :°ºd][ ]*([0-5]?[0-9])?[ ]*[:\'\u2032m]?[ ]*([0-5]?[0-9](?:\.\d+)?)?[ ]*[:\?\"\u2033s]?[ ]*(N|n|S|s)?$', re.I | re.UNICODE)
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longitude_dms_regex = re.compile(ur'^(-?1[0-8][0-9]|0?[0-9]{1,2})[ ]*[ :°ºd][ ]*([0-5]?[0-9])?[ ]*[:\'\u2032m]?[ ]*([0-5]?[0-9](?:\.\d+)?)?[ ]*[:\?\"\u2033s]?[ ]*(E|e|W|w)?$', re.I | re.UNICODE)
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latitude_decimal_with_direction_regex = re.compile('^(-?[0-9][0-9](?:\.[0-9]+))[ ]*[ :°ºd]?[ ]*(N|n|S|s)$', re.I)
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longitude_decimal_with_direction_regex = re.compile('^(-?1[0-8][0-9]|0?[0-9][0-9](?:\.[0-9]+))[ ]*[ :°ºd]?[ ]*(E|e|W|w)$', re.I)
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def latlon_to_floats(latitude, longitude):
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have_lat = False
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have_lon = False
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latitude = safe_decode(latitude).strip(u' ,;|')
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longitude = safe_decode(longitude).strip(u' ,;|')
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latitude = latitude.replace(u',', u'.')
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longitude = longitude.replace(u',', u'.')
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lat_dms = latitude_dms_regex.match(latitude)
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lat_dir = latitude_decimal_with_direction_regex.match(latitude)
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if lat_dms:
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d, m, s, c = lat_dms.groups()
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sign = direction_sign(c)
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latitude = degrees_to_decimal(d or 0, m or 0, s or 0)
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have_lat = True
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elif lat_dir:
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d, c = lat_dir.groups()
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sign = direction_sign(c)
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latitude = float(d) * sign
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have_lat = True
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else:
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latitude = re.sub(beginning_re, u'', latitude)
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latitude = re.sub(end_re, u'', latitude)
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lon_dms = longitude_dms_regex.match(longitude)
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lon_dir = longitude_decimal_with_direction_regex.match(longitude)
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if lon_dms:
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d, m, s, c = lon_dms.groups()
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sign = direction_sign(c)
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longitude = degrees_to_decimal(d or 0, m or 0, s or 0)
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have_lon = True
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elif lon_dir:
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d, c = lon_dir.groups()
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sign = direction_sign(c)
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longitude = float(d) * sign
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have_lon = True
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else:
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longitude = re.sub(beginning_re, u'', longitude)
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longitude = re.sub(end_re, u'', longitude)
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return float(latitude), float(longitude)
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def get_language_names(language_rtree, key, value, tag_prefix='name'):
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if not ('lat' in value and 'lon' in value):
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return None, None
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@@ -309,7 +218,7 @@ def get_language_names(language_rtree, key, value, tag_prefix='name'):
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tag_last_component = tag_prefix.split(':')[-1]
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try:
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latitude, longitude = latlon_to_floats(value['lat'], value['lon'])
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latitude, longitude = latlon_to_decimal(value['lat'], value['lon'])
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except Exception:
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return None, None
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@@ -401,7 +310,7 @@ def build_ways_training_data(language_rtree, infile, out_dir):
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f = open(os.path.join(out_dir, WAYS_LANGUAGE_DATA_FILENAME), 'w')
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writer = csv.writer(f, 'tsv_no_quote')
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for key, value in parse_osm(infile, allowed_types=WAYS_RELATIONS):
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for key, value, deps in parse_osm(infile, allowed_types=WAYS_RELATIONS):
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country, name_language = get_language_names(language_rtree, key, value, tag_prefix='name')
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if not name_language:
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continue
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@@ -425,7 +334,21 @@ def strip_keys(value, ignore_keys):
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value.pop(key, None)
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def build_address_format_training_data(language_rtree, infile, out_dir, tag_components=True):
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def osm_reverse_geocoded_components(address_components, admin_rtree, country, latitude, longitude):
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ret = defaultdict(list)
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for props in admin_rtree.point_in_poly(latitude, longitude, return_all=True):
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name = props.get('name')
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if not name:
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continue
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for k, v in props.iteritems():
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normalized_key = osm_address_components.get_component(country, k, v)
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if normalized_key:
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ret[normalized_key].append(props)
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return ret
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def build_address_format_training_data(admin_rtree, language_rtree, neighborhoods_rtree, infile, out_dir, tag_components=True):
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'''
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Creates formatted address training data for supervised sequence labeling (or potentially
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for unsupervised learning e.g. for word vectors) using addr:* tags in OSM.
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@@ -457,6 +380,7 @@ def build_address_format_training_data(language_rtree, infile, out_dir, tag_comp
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i = 0
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formatter = AddressFormatter()
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osm_address_components.configure()
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if tag_components:
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formatted_tagged_file = open(os.path.join(out_dir, ADDRESS_FORMAT_DATA_TAGGED_FILENAME), 'w')
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@@ -467,9 +391,9 @@ def build_address_format_training_data(language_rtree, infile, out_dir, tag_comp
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remove_keys = OSM_IGNORE_KEYS
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for key, value in parse_osm(infile):
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for key, value, deps in parse_osm(infile):
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try:
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latitude, longitude = latlon_to_floats(value['lat'], value['lon'])
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latitude, longitude = latlon_to_decimal(value['lat'], value['lon'])
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except Exception:
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continue
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@@ -519,6 +443,8 @@ def build_address_format_training_data(language_rtree, infile, out_dir, tag_comp
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3. This is implicit, but with probability (1-b)(1-a), keep the country code
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'''
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non_local_language = None
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# 1. use the country name in the current language or the country's local language
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if address_country and random.random() < 0.8:
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localized = None
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@@ -532,8 +458,8 @@ def build_address_format_training_data(language_rtree, infile, out_dir, tag_comp
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address_components[AddressFormatter.COUNTRY] = localized
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# 2. country's name in a language samples from the distribution of languages on the Internet
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elif address_country and random.random() < 0.5:
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lang = sample_random_language()
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lang_country = language_country_names.get(lang, {}).get(address_country.upper())
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non_local_language = sample_random_language()
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lang_country = language_country_names.get(non_local_language, {}).get(address_country.upper())
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if lang_country:
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address_components[AddressFormatter.COUNTRY] = lang_country
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# 3. Implicit: the rest of the time keep the country code
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@@ -554,6 +480,95 @@ def build_address_format_training_data(language_rtree, infile, out_dir, tag_comp
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if state_full_name and random.random() < 0.3:
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address_components[AddressFormatter.STATE] = state_full_name
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'''
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OSM boundaries
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--------------
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For many addresses, the city, district, region, etc. are all implicitly
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generated by the reverse geocoder e.g. we do not need an addr:city tag
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to identify that 40.74, -74.00 is in New York City as well as its parent
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geographies (New York county, New York state, etc.)
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Where possible we augment the addr:* tags with some of the reverse-geocoded
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relations from OSM.
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Since addresses found on the web may have the same properties, we
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include these qualifiers in the training data.
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'''
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osm_components = osm_reverse_geocoded_components(address_components, admin_rtree, country, latitude, longitude)
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if osm_components:
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if non_local_language is not None:
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suffix = ':{}'.format(non_local_language)
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else:
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suffix = ''
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name_key = ''.join(('name', suffix))
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raw_name_key = 'name'
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short_name_key = ''.join(('short_name', suffix))
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raw_short_name_key = 'short_name'
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alt_name_key = ''.join('alt_name', suffix)
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raw_alt_name_key = 'alt_name'
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official_name_key = ''.join('official_name', suffix)
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raw_official_name_key = 'official_name'
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poly_components = defaultdict(list)
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for component, values in osm_components.iteritems():
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seen = set()
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# Choose which name to use with given probabilities
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r = random.random()
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if r < 0.1:
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# 10% of the time use the short name
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key = short_name_key
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raw_key = raw_short_name_key
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elif r < 0.2:
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# 10% of the time use the official name
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key = official_name_key
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raw_key = raw_official_name_key
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elif r < 0.3:
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# 10% of the time use the official name
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key = alt_name_key
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raw_key = raw_alt_name_key
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else:
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# 70% of the time use the name tag
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key = name_key
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raw_key = raw_name_key
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for value in values:
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name = value.get(key, value.get(raw_key))
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if not name:
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name = value.get(name_key, value.get(raw_name_key))
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if not name:
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continue
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if (component, name) not in seen:
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poly_components[component].append(name)
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seen.add((component, name))
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for component, vals in poly_components.iteritems():
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if component not in address_components:
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address_components[component] = u', '.join(vals)
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'''
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Neighborhoods
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-------------
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In some cities, neighborhoods may be included in a free-text address.
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OSM includes many neighborhoods but only as points, rather than the polygons
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needed to perform reverse-geocoding. We use a hybrid index containing
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Quattroshapes/Zetashapes polygons matched fuzzily with OSM names (which are
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on the whole of better quality).
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'''
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neighborhood = neighborhoods_rtree.point_in_poly(latitude, longitude)
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if neighborhood and AddressFormatter.SUBURB not in address_components:
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address_components[AddressFormatter.SUBURB] = neighborhood['name']
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# Version with all components
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formatted_address = formatter.format_address(country, address_components, tag_components=tag_components, minimal_only=not tag_components)
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@@ -601,7 +616,12 @@ COUNTRY_KEYS = (
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'country',
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'country_name',
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'addr:country',
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'is_in:country',
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'addr:country_code',
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'country_code',
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'is_in:country_code'
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)
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POSTAL_KEYS = (
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'postcode',
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'postal_code',
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@@ -610,7 +630,7 @@ POSTAL_KEYS = (
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)
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def build_address_format_training_data_limited(language_rtree, infile, out_dir):
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def build_address_format_training_data_limited(rtree, language_rtree, infile, out_dir):
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'''
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Creates a special kind of formatted address training data from OSM's addr:* tags
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but are designed for use in language classification. These records are similar
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@@ -632,9 +652,9 @@ def build_address_format_training_data_limited(language_rtree, infile, out_dir):
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remove_keys = NAME_KEYS + COUNTRY_KEYS + POSTAL_KEYS + OSM_IGNORE_KEYS
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for key, value in parse_osm(infile):
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for key, value, deps in parse_osm(infile):
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try:
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latitude, longitude = latlon_to_floats(value['lat'], value['lon'])
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latitude, longitude = latlon_to_decimal(value['lat'], value['lon'])
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except Exception:
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continue
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@@ -675,23 +695,6 @@ def build_address_format_training_data_limited(language_rtree, infile, out_dir):
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print 'did', i, 'formatted addresses'
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apposition_regex = re.compile('(.*[^\s])[\s]*\([\s]*(.*[^\s])[\s]*\)$', re.I)
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html_parser = HTMLParser.HTMLParser()
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def normalize_wikipedia_title(title):
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match = apposition_regex.match(title)
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if match:
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title = match.group(1)
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|
||||
title = safe_decode(title)
|
||||
title = html_parser.unescape(title)
|
||||
title = urllib.unquote_plus(title)
|
||||
|
||||
return title.replace(u'_', u' ').strip()
|
||||
|
||||
|
||||
def build_toponym_training_data(language_rtree, infile, out_dir):
|
||||
'''
|
||||
Data set of toponyms by language and country which should assist
|
||||
@@ -709,12 +712,12 @@ def build_toponym_training_data(language_rtree, infile, out_dir):
|
||||
f = open(os.path.join(out_dir, TOPONYM_LANGUAGE_DATA_FILENAME), 'w')
|
||||
writer = csv.writer(f, 'tsv_no_quote')
|
||||
|
||||
for key, value in parse_osm(infile):
|
||||
for key, value, deps in parse_osm(infile):
|
||||
if not sum((1 for k, v in value.iteritems() if k.startswith('name'))) > 0:
|
||||
continue
|
||||
|
||||
try:
|
||||
latitude, longitude = latlon_to_floats(value['lat'], value['lon'])
|
||||
latitude, longitude = latlon_to_decimal(value['lat'], value['lon'])
|
||||
except Exception:
|
||||
continue
|
||||
|
||||
@@ -803,7 +806,7 @@ def build_address_training_data(langauge_rtree, infile, out_dir, format=False):
|
||||
f = open(os.path.join(out_dir, ADDRESS_LANGUAGE_DATA_FILENAME), 'w')
|
||||
writer = csv.writer(f, 'tsv_no_quote')
|
||||
|
||||
for key, value in parse_osm(infile):
|
||||
for key, value, deps in parse_osm(infile):
|
||||
country, street_language = get_language_names(language_rtree, key, value, tag_prefix='addr:street')
|
||||
if not street_language:
|
||||
continue
|
||||
@@ -830,7 +833,7 @@ def build_venue_training_data(language_rtree, infile, out_dir):
|
||||
f = open(os.path.join(out_dir, VENUE_LANGUAGE_DATA_FILENAME), 'w')
|
||||
writer = csv.writer(f, 'tsv_no_quote')
|
||||
|
||||
for key, value in parse_osm(infile):
|
||||
for key, value, deps in parse_osm(infile):
|
||||
country, name_language = get_language_names(language_rtree, key, value, tag_prefix='name')
|
||||
if not name_language:
|
||||
continue
|
||||
@@ -894,10 +897,22 @@ if __name__ == '__main__':
|
||||
default=tempfile.gettempdir(),
|
||||
help='Temp directory to use')
|
||||
|
||||
parser.add_argument('-r', '--rtree-dir',
|
||||
parser.add_argument('-g', '--language-rtree-dir',
|
||||
required=True,
|
||||
help='Language RTree directory')
|
||||
|
||||
parser.add_argument('-r', '--osm-rtree-dir',
|
||||
default=None,
|
||||
help='OSM reverse geocoder RTree directory')
|
||||
|
||||
parser.add_argument('-q', '--quattroshapes-rtree-dir',
|
||||
default=None,
|
||||
help='Quattroshapes reverse geocoder RTree directory')
|
||||
|
||||
parser.add_argument('-n', '--neighborhoods-rtree-dir',
|
||||
default=None,
|
||||
help='Neighborhoods reverse geocoder RTree directory')
|
||||
|
||||
parser.add_argument('-o', '--out-dir',
|
||||
default=os.getcwd(),
|
||||
help='Output directory')
|
||||
@@ -907,7 +922,13 @@ if __name__ == '__main__':
|
||||
init_country_names()
|
||||
init_languages()
|
||||
|
||||
language_rtree = LanguagePolygonIndex.load(args.rtree_dir)
|
||||
language_rtree = LanguagePolygonIndex.load(args.language_rtree_dir)
|
||||
rtree = None
|
||||
if args.osm_rtree_dir:
|
||||
osm_rtree = OSMReverseGeocoder.load(args.osm_rtree_dir)
|
||||
|
||||
if args.quattroshapes_rtree_dir:
|
||||
quattroshapes_rtree = QuattroshapesReverseGeocoder.load(args.quattroshapes_rtree_dir)
|
||||
|
||||
street_types_gazetteer.configure()
|
||||
|
||||
@@ -916,11 +937,15 @@ if __name__ == '__main__':
|
||||
build_ways_training_data(language_rtree, args.streets_file, args.out_dir)
|
||||
if args.borders_file:
|
||||
build_toponym_training_data(language_rtree, args.borders_file, args.out_dir)
|
||||
|
||||
if args.address_file and not args.format_only and not args.limited_addresses:
|
||||
build_address_training_data(language_rtree, args.address_file, args.out_dir)
|
||||
elif args.address_file and rtree is None:
|
||||
parser.error('--rtree-dir required for formatted addresses')
|
||||
|
||||
if args.address_file and args.format_only:
|
||||
build_address_format_training_data(language_rtree, args.address_file, args.out_dir, tag_components=not args.untagged)
|
||||
build_address_format_training_data(rtree, language_rtree, args.address_file, args.out_dir, tag_components=not args.untagged)
|
||||
if args.address_file and args.limited_addresses:
|
||||
build_address_format_training_data_limited(language_rtree, args.address_file, args.out_dir)
|
||||
build_address_format_training_data_limited(rtree, language_rtree, args.address_file, args.out_dir)
|
||||
if args.venues_file:
|
||||
build_venue_training_data(language_rtree, args.venues_file, args.out_dir)
|
||||
build_venue_training_data(rtree, language_rtree, args.venues_file, args.out_dir)
|
||||
|
||||
Reference in New Issue
Block a user