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社区首页 >专栏 >利用Python裁切tiff图像且读取tiff,shp文件的实例

利用Python裁切tiff图像且读取tiff,shp文件的实例

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砸漏
发布2020-11-05 14:46:10
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发布2020-11-05 14:46:10
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文章被收录于专栏:恩蓝脚本恩蓝脚本

我就废话不多说了,还是直接看代码吧!

from osgeo import gdal, gdalnumeric, ogr
from PIL import Image, ImageDraw
from osgeo import gdal_array
import os
import operator
from functools import reduce
gdal.UseExceptions()
def readTif(fileName):
dataset = gdal.Open(fileName)
if dataset == None:
print(fileName+"文件无法打开")
return
im_width = dataset.RasterXSize #栅格矩阵的列数
im_height = dataset.RasterYSize #栅格矩阵的行数
im_bands = dataset.RasterCount #波段数
band1=dataset.GetRasterBand(1)
print(band1)
print ('Band Type=',gdal.GetDataTypeName(band1.DataType))
im_data = dataset.ReadAsArray(0,0,im_width,im_height)#获取数据
im_geotrans = dataset.GetGeoTransform()#获取仿射矩阵信息
im_proj = dataset.GetProjection()#获取投影信息
im_blueBand = im_data[0,0:im_height,0:im_width]#获取蓝波段
im_greenBand = im_data[1,0:im_height,0:im_width]#获取绿波段
im_redBand =  im_data[2,0:im_height,0:im_width]#获取红波段
im_nirBand = im_data[3,0:im_height,0:im_width]#获取近红外波段
return(im_width,im_height,im_bands,im_data,im_geotrans
,im_proj,im_blueBand,im_greenBand,im_redBand,im_nirBand)
#保存tif文件函数
import gdal
import numpy as np
def writeTiff(im_data,im_width,im_height,im_bands,im_geotrans,im_proj,path):
if 'int8' in im_data.dtype.name:
datatype = gdal.GDT_Byte
elif 'int16' in im_data.dtype.name:
datatype = gdal.GDT_UInt16
else:
datatype = gdal.GDT_Float32
if len(im_data.shape) == 3:
im_bands, im_height, im_width = im_data.shape
elif len(im_data.shape) == 2:
im_data = np.array([im_data])
else:
im_bands, (im_height, im_width) = 1,im_data.shape
#创建文件
driver = gdal.GetDriverByName("GTiff")
dataset = driver.Create(path, im_width, im_height, im_bands, datatype)
if(dataset!= None):
dataset.SetGeoTransform(im_geotrans) #写入仿射变换参数
dataset.SetProjection(im_proj) #写入投影
for i in range(im_bands):
dataset.GetRasterBand(i+1).WriteArray(im_data[i])
del dataset
# This function will convert the rasterized clipper shapefile
# to a mask for use within GDAL.
def imageToArray(i):
"""
Converts a Python Imaging Library array to a
gdalnumeric image.
"""
a=gdalnumeric.fromstring(i.tobytes(),'b')
a.shape=i.im.size[1], i.im.size[0]
return a
def arrayToImage(a):
"""
Converts a gdalnumeric array to a
Python Imaging Library Image.
"""
i=Image.frombytes('L',(a.shape[1],a.shape[0]),
(a.astype('b')).tobytes())
return i
def world2Pixel(geoMatrix, x, y):
"""
Uses a gdal geomatrix (gdal.GetGeoTransform()) to calculate
the pixel location of a geospatial coordinate
"""
ulX = geoMatrix[0]
ulY = geoMatrix[3]
xDist = geoMatrix[1]
pixel = int((x - ulX) / xDist)
line = int((ulY - y) / xDist)
return (pixel, line)
#
# EDIT: this is basically an overloaded
# version of the gdal_array.OpenArray passing in xoff, yoff explicitly
# so we can pass these params off to CopyDatasetInfo
#
def OpenArray( array, prototype_ds = None, xoff=0, yoff=0 ):
ds =gdal_array.OpenArray(array)
if ds is not None and prototype_ds is not None:
if type(prototype_ds).__name__ == 'str':
prototype_ds = gdal.Open( prototype_ds )
if prototype_ds is not None:
gdalnumeric.CopyDatasetInfo( prototype_ds, ds, xoff=xoff, yoff=yoff )
return ds
def histogram(a, bins=range(0,256)):
"""
Histogram function for multi-dimensional array.
a = array
bins = range of numbers to match
"""
fa = a.flat
n = gdalnumeric.searchsorted(gdalnumeric.sort(fa), bins)
n = gdalnumeric.concatenate([n, [len(fa)]])
hist = n[1:]-n[:-1]
return hist
def stretch(a):
"""
Performs a histogram stretch on a gdalnumeric array image.
"""
hist = histogram(a)
im = arrayToImage(a)
lut = []
for b in range(0, len(hist), 256):
# step size
step = reduce(operator.add, hist[b:b+256]) / 255
# create equalization lookup table
n = 0
for i in range(256):
lut.append(n / step)
n = n + hist[i+b]
im = im.point(lut)
return imageToArray(im)
def main( shapefile_path, raster_path ):
# Load the source data as a gdalnumeric array
srcArray = gdalnumeric.LoadFile(raster_path)
# Also load as a gdal image to get geotransform
# (world file) info
srcImage = gdal.Open(raster_path)
geoTrans = srcImage.GetGeoTransform()
# Create an OGR layer from a boundary shapefile
shapef = ogr.Open(shapefile_path)
lyr = shapef.GetLayer( os.path.split( os.path.splitext( shapefile_path )[0] )[1] )
poly = lyr.GetNextFeature()
# Convert the layer extent to image pixel coordinates
minX, maxX, minY, maxY = lyr.GetExtent()
ulX, ulY = world2Pixel(geoTrans, minX, maxY)
lrX, lrY = world2Pixel(geoTrans, maxX, minY)
# Calculate the pixel size of the new image
pxWidth = int(lrX - ulX)
pxHeight = int(lrY - ulY)
clip = srcArray[:, ulY:lrY, ulX:lrX]
#
# EDIT: create pixel offset to pass to new image Projection info
#
xoffset = ulX
yoffset = ulY
print ("Xoffset, Yoffset = ( %f, %f )" % ( xoffset, yoffset ))
# Create a new geomatrix for the image
geoTrans = list(geoTrans)
geoTrans[0] = minX
geoTrans[3] = maxY
# Map points to pixels for drawing the
# boundary on a blank 8-bit,
# black and white, mask image.
points = []
pixels = []
geom = poly.GetGeometryRef()
pts = geom.GetGeometryRef(0)
for p in range(pts.GetPointCount()):
points.append((pts.GetX(p), pts.GetY(p)))
for p in points:
pixels.append(world2Pixel(geoTrans, p[0], p[1]))
rasterPoly = Image.new("L", (pxWidth, pxHeight), 1)
rasterize = ImageDraw.Draw(rasterPoly)
rasterize.polygon(pixels, 0)
mask = imageToArray(rasterPoly)
# Clip the image using the mask
clip = gdalnumeric.choose(mask, \
(clip, 0)).astype(gdalnumeric.uint8)
# This image has 3 bands so we stretch each one to make them
# visually brighter
for i in range(4):
clip[i,:,:] = stretch(clip[i,:,:])
# Save new tiff
#
# EDIT: instead of SaveArray, let's break all the
# SaveArray steps out more explicity so
# we can overwrite the offset of the destination
# raster
#
### the old way using SaveArray
#
# gdalnumeric.SaveArray(clip, "OUTPUT.tif", format="GTiff", prototype=raster_path)
#
###
#
gtiffDriver = gdal.GetDriverByName( 'GTiff' )
if gtiffDriver is None:
raise ValueError("Can't find GeoTiff Driver")
gtiffDriver.CreateCopy( "beijing1.tif",
OpenArray( clip, prototype_ds=raster_path, xoff=xoffset, yoff=yoffset )
)
print(raster_path)
# Save as an 8-bit jpeg for an easy, quick preview
clip = clip.astype(gdalnumeric.uint8)
gdalnumeric.SaveArray(clip, "beijing1.jpg", format="JPEG")
gdal.ErrorReset()
if __name__ == '__main__': 
#shapefile_path, raster_path 
shapefile_path = r'C:\Users\Administrator\Desktop\裁切shp\New_Shapefile.shp' 
raster_path = r'C:\Users\Administrator\Desktop\2230542.tiff' 
main( shapefile_path, raster_path ) 

补充知识:python代码裁剪tiff影像图和转换成png格式+裁剪Png图片

先来看一下需要转换的tiff原始图的信息,如下图所示。

tiff转换成png和裁剪tiff的代码(opencv)

import cv2 as cv
import os
"""
转换tiff格式为png + 横向裁剪tiff遥感影像图
"""
def Convert_To_Png_AndCut(dir):
files = os.listdir(dir)
ResultPath1 = "./RS_ToPngDir/" # 定义转换格式后的保存路径
ResultPath2 = "./RS_Cut_Result/" # 定义裁剪后的保存路径
ResultPath3 = "./RS_Cut_Result/" # 定义裁剪后的保存路径
for file in files: # 这里可以去掉for循环
a, b = os.path.splitext(file) # 拆分影像图的文件名称
this_dir = os.path.join(dir + file) # 构建保存 路径+文件名
img = cv.imread(this_dir, 1) # 读取tif影像
# 第二个参数是通道数和位深的参数,
# IMREAD_UNCHANGED = -1 # 不进行转化,比如保存为了16位的图片,读取出来仍然为16位。
# IMREAD_GRAYSCALE = 0 # 进行转化为灰度图,比如保存为了16位的图片,读取出来为8位,类型为CV_8UC1。
# IMREAD_COLOR = 1  # 进行转化为RGB三通道图像,图像深度转为8位
# IMREAD_ANYDEPTH = 2 # 保持图像深度不变,进行转化为灰度图。
# IMREAD_ANYCOLOR = 4 # 若图像通道数小于等于3,则保持原通道数不变;若通道数大于3则只取取前三个通道。图像深度转为8位
cv.imwrite(ResultPath1 + a + "_" + ".png", img) # 保存为png格式
# 下面开始裁剪-不需要裁剪tiff格式的可以直接注释掉
hight = img.shape[0] #opencv写法,获取宽和高
width = img.shape[1]
#定义裁剪尺寸
w = 480 # 宽度
h = 360 # 高度
_id = 1 # 裁剪结果保存文件名:0 - N 升序方式
i = 0
while (i + h <= hight): # 控制高度,图像多余固定尺寸总和部分不要了
j = 0
while (j + w <= width):  # 控制宽度,图像多余固定尺寸总和部分不要了
cropped = img[i:i + h, j:j + w] # 裁剪坐标为[y0:y1, x0:x1]
cv.imwrite(ResultPath2 + a + "_" + str(_id) + b, cropped)
_id += 1
j += w
i = i + h
"""
横向裁剪PNG图
"""
def toCutPng(dir):
files = os.listdir(dir)
ResultPath = "./RS_CutPng_Result/" # 定义裁剪后的保存路径
for file in files:
a, b = os.path.splitext(file) # 拆分影像图的文件名称
this_dir = os.path.join(dir + file)
img = Image.open(this_dir) # 按顺序打开某图片
width, hight = img.size
w = 480 # 宽度
h = 360 # 高度
_id = 1 # 裁剪结果保存文件名:0 - N 升序方式
y = 0
while (y + h <= hight): # 控制高度,图像多余固定尺寸总和部分不要了
x = 0
while (x + w <= width):  # 控制宽度,图像多余固定尺寸总和部分不要了
new_img = img.crop((x, y, x + w, y + h))
new_img.save(ResultPath + a + "_" + str(_id) + b)
_id += 1
x += w
y = y + h
if __name__ == '__main__':
_path = r"./RS_TiffDir/"  # 遥感tiff影像所在路径
# 裁剪影像图
Convert_To_Png_AndCut(_path)

将转换成png后的图加载到软件中(专业软件ENVI5.3)查看结果详细信息如下图所示,成功的转换成png格式了。

下面是加载裁剪后的影像图(Tiff格式的)

def toCutPng(dir):函数效果图如下图所示。

以上这篇利用Python裁切tiff图像且读取tiff,shp文件的实例就是小编分享给大家的全部内容了,希望能给大家一个参考。

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原始发表:2020-09-11 ,如有侵权请联系 cloudcommunity@tencent.com 删除

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