QGIS/python/plugins/processing/algs/qgis/PointDistance.py
2017-08-22 23:36:42 +10:00

256 lines
12 KiB
Python

# -*- coding: utf-8 -*-
"""
***************************************************************************
PointDistance.py
---------------------
Date : August 2012
Copyright : (C) 2012 by Victor Olaya
Email : volayaf at gmail dot com
***************************************************************************
* *
* This program is free software; you can redistribute it and/or modify *
* it under the terms of the GNU General Public License as published by *
* the Free Software Foundation; either version 2 of the License, or *
* (at your option) any later version. *
* *
***************************************************************************
"""
from builtins import next
from builtins import str
from builtins import range
__author__ = 'Victor Olaya'
__date__ = 'August 2012'
__copyright__ = '(C) 2012, Victor Olaya'
# This will get replaced with a git SHA1 when you do a git archive
__revision__ = '$Format:%H$'
import os
import math
from qgis.PyQt.QtGui import QIcon
from qgis.PyQt.QtCore import QVariant
from qgis.core import (QgsFeatureRequest,
QgsField,
QgsFields,
QgsProject,
QgsFeature,
QgsGeometry,
QgsDistanceArea,
QgsFeatureSink,
QgsProcessingParameterFeatureSource,
QgsProcessing,
QgsProcessingParameterEnum,
QgsProcessingParameterField,
QgsProcessingParameterNumber,
QgsProcessingParameterFeatureSink,
QgsSpatialIndex,
QgsWkbTypes)
from processing.algs.qgis.QgisAlgorithm import QgisAlgorithm
pluginPath = os.path.split(os.path.split(os.path.dirname(__file__))[0])[0]
class PointDistance(QgisAlgorithm):
INPUT = 'INPUT'
INPUT_FIELD = 'INPUT_FIELD'
TARGET = 'TARGET'
TARGET_FIELD = 'TARGET_FIELD'
MATRIX_TYPE = 'MATRIX_TYPE'
NEAREST_POINTS = 'NEAREST_POINTS'
OUTPUT = 'OUTPUT'
def icon(self):
return QIcon(os.path.join(pluginPath, 'images', 'ftools', 'matrix.png'))
def group(self):
return self.tr('Vector analysis')
def __init__(self):
super().__init__()
def initAlgorithm(self, config=None):
self.mat_types = [self.tr('Linear (N*k x 3) distance matrix'),
self.tr('Standard (N x T) distance matrix'),
self.tr('Summary distance matrix (mean, std. dev., min, max)')]
self.addParameter(QgsProcessingParameterFeatureSource(self.INPUT,
self.tr('Input point layer'),
[QgsProcessing.TypeVectorPoint]))
self.addParameter(QgsProcessingParameterField(self.INPUT_FIELD,
self.tr('Input unique ID field'),
parentLayerParameterName=self.INPUT,
type=QgsProcessingParameterField.Any))
self.addParameter(QgsProcessingParameterFeatureSource(self.TARGET,
self.tr('Target point layer'),
[QgsProcessing.TypeVectorPoint]))
self.addParameter(QgsProcessingParameterField(self.TARGET_FIELD,
self.tr('Target unique ID field'),
parentLayerParameterName=self.TARGET,
type=QgsProcessingParameterField.Any))
self.addParameter(QgsProcessingParameterEnum(self.MATRIX_TYPE,
self.tr('Output matrix type'), options=self.mat_types, defaultValue=0))
self.addParameter(QgsProcessingParameterNumber(self.NEAREST_POINTS,
self.tr('Use only the nearest (k) target points'), type=QgsProcessingParameterNumber.Integer, minValue=0, maxValue=9999, defaultValue=0))
self.addParameter(QgsProcessingParameterFeatureSink(self.OUTPUT, self.tr('Distance matrix'), QgsProcessing.TypeVectorPoint))
def name(self):
return 'distancematrix'
def displayName(self):
return self.tr('Distance matrix')
def processAlgorithm(self, parameters, context, feedback):
source = self.parameterAsSource(parameters, self.INPUT, context)
source_field = self.parameterAsString(parameters, self.INPUT_FIELD, context)
target_source = self.parameterAsSource(parameters, self.TARGET, context)
target_field = self.parameterAsString(parameters, self.TARGET_FIELD, context)
matType = self.parameterAsEnum(parameters, self.MATRIX_TYPE, context)
nPoints = self.parameterAsInt(parameters, self.NEAREST_POINTS, context)
if nPoints < 1:
nPoints = target_source.featureCount()
if matType == 0:
# Linear distance matrix
return self.linearMatrix(parameters, context, source, source_field, target_source, target_field,
matType, nPoints, feedback)
elif matType == 1:
# Standard distance matrix
return self.regularMatrix(parameters, context, source, source_field, target_source, target_field,
nPoints, feedback)
elif matType == 2:
# Summary distance matrix
return self.linearMatrix(parameters, context, source, source_field, target_source, target_field,
matType, nPoints, feedback)
def linearMatrix(self, parameters, context, source, inField, target_source, targetField,
matType, nPoints, feedback):
inIdx = source.fields().lookupField(inField)
outIdx = target_source.fields().lookupField(targetField)
fields = QgsFields()
input_id_field = source.fields()[inIdx]
input_id_field.setName('InputID')
fields.append(input_id_field)
if matType == 0:
target_id_field = target_source.fields()[outIdx]
target_id_field.setName('TargetID')
fields.append(target_id_field)
fields.append(QgsField('Distance', QVariant.Double))
else:
fields.append(QgsField('MEAN', QVariant.Double))
fields.append(QgsField('STDDEV', QVariant.Double))
fields.append(QgsField('MIN', QVariant.Double))
fields.append(QgsField('MAX', QVariant.Double))
out_wkb = QgsWkbTypes.multiType(source.wkbType()) if matType == 0 else source.wkbType()
(sink, dest_id) = self.parameterAsSink(parameters, self.OUTPUT, context,
fields, out_wkb, source.sourceCrs())
index = QgsSpatialIndex(target_source.getFeatures(QgsFeatureRequest().setSubsetOfAttributes([]).setDestinationCrs(source.sourceCrs())), feedback)
distArea = QgsDistanceArea()
distArea.setSourceCrs(source.sourceCrs())
distArea.setEllipsoid(context.project().ellipsoid())
features = source.getFeatures(QgsFeatureRequest().setSubsetOfAttributes([inIdx]))
total = 100.0 / source.featureCount() if source.featureCount() else 0
for current, inFeat in enumerate(features):
if feedback.isCanceled():
break
inGeom = inFeat.geometry()
inID = str(inFeat.attributes()[inIdx])
featList = index.nearestNeighbor(inGeom.asPoint(), nPoints)
distList = []
vari = 0.0
request = QgsFeatureRequest().setFilterFids(featList).setSubsetOfAttributes([outIdx]).setDestinationCrs(source.sourceCrs())
for outFeat in target_source.getFeatures(request):
if feedback.isCanceled():
break
outID = outFeat.attributes()[outIdx]
outGeom = outFeat.geometry()
dist = distArea.measureLine(inGeom.asPoint(),
outGeom.asPoint())
if matType == 0:
out_feature = QgsFeature()
out_geom = QgsGeometry.unaryUnion([inFeat.geometry(), outFeat.geometry()])
out_feature.setGeometry(out_geom)
out_feature.setAttributes([inID, outID, dist])
sink.addFeature(out_feature, QgsFeatureSink.FastInsert)
else:
distList.append(float(dist))
if matType != 0:
mean = sum(distList) / len(distList)
for i in distList:
vari += (i - mean) * (i - mean)
vari = math.sqrt(vari / len(distList))
out_feature = QgsFeature()
out_feature.setGeometry(inFeat.geometry())
out_feature.setAttributes([inID, mean, vari, min(distList), max(distList)])
sink.addFeature(out_feature, QgsFeatureSink.FastInsert)
feedback.setProgress(int(current * total))
return {self.OUTPUT: dest_id}
def regularMatrix(self, parameters, context, source, inField, target_source, targetField,
nPoints, feedback):
index = QgsSpatialIndex(target_source.getFeatures(QgsFeatureRequest().setSubsetOfAttributes([]).setDestinationCrs(source.sourceCrs())), feedback)
inIdx = source.fields().lookupField(inField)
distArea = QgsDistanceArea()
distArea.setSourceCrs(source.sourceCrs())
distArea.setEllipsoid(context.project().ellipsoid())
first = True
sink = None
dest_id = None
features = source.getFeatures(QgsFeatureRequest().setSubsetOfAttributes([inIdx]))
total = 100.0 / source.featureCount() if source.featureCount() else 0
for current, inFeat in enumerate(features):
if feedback.isCanceled():
break
inGeom = inFeat.geometry()
inID = str(inFeat.attributes()[inIdx])
featList = index.nearestNeighbor(inGeom.asPoint(), nPoints)
if first:
first = False
fields = QgsFields()
input_id_field = source.fields()[inIdx]
input_id_field.setName('ID')
fields.append(input_id_field)
for i in range(len(featList)):
fields.append(QgsField('DIST_{0}'.format(i + 1), QVariant.Double))
(sink, dest_id) = self.parameterAsSink(parameters, self.OUTPUT, context,
fields, source.wkbType(), source.sourceCrs())
data = [inID]
for target in target_source.getFeatures(QgsFeatureRequest().setSubsetOfAttributes([]).setFilterFids(featList).setDestinationCrs(source.sourceCrs())):
if feedback.isCanceled():
break
outGeom = target.geometry()
dist = distArea.measureLine(inGeom.asPoint(),
outGeom.asPoint())
data.append(float(dist))
out_feature = QgsFeature()
out_feature.setGeometry(inGeom)
out_feature.setAttributes(data)
sink.addFeature(out_feature, QgsFeatureSink.FastInsert)
feedback.setProgress(int(current * total))
return {self.OUTPUT: dest_id}