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coord2layer.py
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# -*- coding: utf-8 -*-
"""
coord2layer.py
***************************************************************************
* *
* 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. *
* *
***************************************************************************
"""
__author__ = 'Leandro França'
__date__ = '2019-11-02'
__copyright__ = '(C) 2019, Leandro França'
from PyQt5.QtCore import QCoreApplication, QVariant
from qgis.core import *
import processing
class CoordinatesToLayer(QgsProcessingAlgorithm):
TABLE = 'TABLE'
X = 'X'
Y = 'Y'
Z = 'Z'
BOOL = 'BOOL'
CRS = 'CRS'
LAYER = 'LAYER'
LOC = QgsApplication.locale()
def translate(self, string):
return QCoreApplication.translate('Processing', string)
def tr(self, *string):
# Traduzir para o portugês: arg[0] - english (translate), arg[1] - português
if self.LOC == 'pt':
if len(string) == 2:
return string[1]
else:
return self.translate(string[0])
else:
return self.translate(string[0])
def createInstance(self):
return CoordinatesToLayer()
def name(self):
return 'coord2layer'
def displayName(self):
return self.tr('Coordinates to Layer', 'Coordenadas para Camada')
def group(self):
return self.tr('LF Effortlessness', 'LF Mão na Roda')
def groupId(self):
return 'lf_effortlessness'
def shortHelpString(self):
txt_en = 'Generates a <b>point layer</b> from a coordinate table, whether it comes from a Microsoft <b>Excel</b> spreadsheet, Open Document Spreadsheet (ODS), or even attributes from another layer.'
txt_pt = 'Geração de uma camada de pontos a partir das coordenadas preenchidas em uma planilha do Excel ou Open Document Spreadsheet (ODS), ou até mesmo, a partir dos atributos de outra camada.'
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'instagram': 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'linkedin': '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', 'RG': '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', 'tweeter': 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'udemy': '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', 'youtube': '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'}
footer = '''<div align="right">
<p align="right"><b>'''+self.tr('Author: Leandro Franca', 'Autor: Leandro França')+'''</b></p>
<div align="right">
<a target="_blank" rel="noopener noreferrer" href="https://www.udemy.com/user/leandro-luiz-silva-de-franca/"><img title="Udemy" src="data:image/png;base64,'''+dic_BW['udemy']+'''"></a> <a target="_blank" rel="noopener noreferrer" href="https://www.facebook.com/GEOCAPT/"><img title="Facebook" src="data:image/png;base64,'''+dic_BW['face']+'''"></a> <a target="_blank" rel="noopener noreferrer" href="https://www.youtube.com/channel/UCLrewDGciytcBG9r0OxTW2w"><img title="Youtube" src="data:image/png;base64,'''+dic_BW['youtube']+'''"></a> <a target="_blank" rel="noopener noreferrer" href="https://www.researchgate.net/profile/Leandro_Franca2"><img title="ResearchGate" src="data:image/png;base64,'''+dic_BW['RG']+'''"></a> <a target="_blank" rel="noopener noreferrer" href="https://github.com/LEOXINGU"><img title="GitHub" src="data:image/png;base64,'''+dic_BW['github']+'''"></a> <a target="_blank" rel="noopener noreferrer" href="https://www.linkedin.com/in/leandro-fran%C3%A7a-93093714b/"><img title="Linkedin" src="data:image/png;base64,'''+dic_BW['linkedin']+'''"></a> <a target="_blank" rel="noopener noreferrer" href="http://lattes.cnpq.br/8559852745183879"><img title="Lattes" src="data:image/png;base64,'''+dic_BW['lattes']+'''"></a>
</div>
</div>'''
if self.LOC == 'pt':
return txt_pt + footer
else:
return self.tr(txt_en) + footer
def initAlgorithm(self, config=None):
# INPUT
self.addParameter(
QgsProcessingParameterFeatureSource(
self.TABLE,
self.tr('Table with coordinates', 'Tabela com coordenadas'),
[QgsProcessing.TypeVector]
)
)
self.addParameter(
QgsProcessingParameterField(
self.X,
self.tr('X Coordinate', 'Coordenada X'),
parentLayerParameterName=self.TABLE,
type=QgsProcessingParameterField.Numeric
)
)
self.addParameter(
QgsProcessingParameterField(
self.Y,
self.tr('Y Coordinate', 'Coordenada Y'),
parentLayerParameterName=self.TABLE,
type=QgsProcessingParameterField.Numeric
)
)
self.addParameter(
QgsProcessingParameterBoolean(
self.BOOL,
self.tr('Create PointZ', 'Criar PointZ'),
defaultValue=False))
self.addParameter(
QgsProcessingParameterField(
self.Z,
self.tr('Z Coordinate', 'Coordenada Z'),
parentLayerParameterName=self.TABLE,
type=QgsProcessingParameterField.Numeric,
optional = True
)
)
self.addParameter(
QgsProcessingParameterCrs(
self.CRS,
self.tr('CRS', 'SRC'),
'ProjectCrs'))
# OUTPUT
self.addParameter(
QgsProcessingParameterFeatureSink(
self.LAYER,
self.tr('Point Layer', 'Camada de Pontos')
)
)
def processAlgorithm(self, parameters, context, feedback):
table = self.parameterAsSource(
parameters,
self.TABLE,
context
)
if table is None:
raise QgsProcessingException(self.invalidSourceError(parameters, self.TABLE))
X_field = self.parameterAsFields(
parameters,
self.X,
context
)
Y_field = self.parameterAsFields(
parameters,
self.Y,
context
)
# Field index
X_id = table.fields().indexFromName(X_field[0])
Y_id = table.fields().indexFromName(Y_field[0])
CreateZ = self.parameterAsBool(
parameters,
self.BOOL,
context
)
if CreateZ:
Z_field = self.parameterAsFields(
parameters,
self.Z,
context
)
Z_id = table.fields().indexFromName(Z_field[0])
CRS = self.parameterAsCrs(
parameters,
self.CRS,
context
)
# OUTPUT
Fields = table.fields()
(sink, dest_id) = self.parameterAsSink(
parameters,
self.LAYER,
context,
Fields,
QgsWkbTypes.Point,
CRS
)
if sink is None:
raise QgsProcessingException(self.invalidSinkError(parameters, self.LAYER))
feature = QgsFeature()
total = 100.0 / table.featureCount() if table.featureCount() else 0
for current, feat in enumerate(table.getFeatures()):
att = feat.attributes()
X = att[X_id]
Y = att[Y_id]
if CreateZ:
Z = att[Z_id]
geom = QgsGeometry(QgsPoint(float(X), float(Y), float(Z)))
else:
geom = QgsGeometry.fromPointXY(QgsPointXY(float(X), float(Y)))
feature.setGeometry(geom)
feature.setAttributes(att)
sink.addFeature(feature, QgsFeatureSink.FastInsert)
if feedback.isCanceled():
break
feedback.setProgress(int(current * total))
feedback.pushInfo(self.tr('Operation completed successfully!', 'Operação finalizada com sucesso!'))
feedback.pushInfo('Leandro França - Eng Cart')
return {self.LAYER: dest_id}