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@lucaswells
Last active June 24, 2023 03:04
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Convert GeoTIFF to Zarr array
import matplotlib.pyplot as plt
import rasterio
from rasterio.windows import Window
import time
import zarr
def convert(raster_filepath, chunk_mbs=1):
"""
Converts raster file to chunked and compressed zarr array. Tested
with GeoTIFF format, but should work with other raster formats
compatible with rasterio
Parameters
----------
raster_filepath : string
Path and filename of input raster
chunk_mbs : float, optional
Desired size (MB) of chunks in zarr file
"""
# Open the raster file
raster = rasterio.open(raster_filepath)
# Extract metadata we need for initializing the zarr array
width = raster.width
height = raster.height
n_bands = raster.count
dtype = raster.dtypes[0].lower()
# Specify the number of bytes for common raster
# datatypes so we can compute chunk shape
dtype_bytes = {
'byte' : 1,
'uint16' : 2,
'int16' : 2,
'uint32' : 4,
'int32' : 4,
'float32' : 4,
'float64' : 8,
}
# Compute the chunk shape
chunk_shape = (int((1e6/dtype_bytes[dtype])**0.5),)*2
# Setup zarr file
zarray_filepath = f"{'.'.join(raster_filepath.split('.')[:-1])}.zarr"
zarray = zarr.open(
zarray_filepath,
mode='w',
shape=(height, width, n_bands),
chunks=chunk_shape,
dtype=dtype
)
# Let's add the metadata to the zarr file
zarray.attrs['width'] = width
zarray.attrs['height'] = height
zarray.attrs['count'] = n_bands
zarray.attrs['dtype'] = dtype
zarray.attrs['bounds'] = raster.bounds
zarray.attrs['transform'] = raster.transform
zarray.attrs['crs'] = raster.crs.to_string()
# Loop through bands; raster band indecies starts at 1
for k in raster.indexes:
# Now we'll read and write the data according to the chuck size
# to prevent memory saturation
for j in range(0, width+chunk_shape[1], chunk_shape[1]):
print(f'column {j} of {width}')
j = width if j > width else j
for i in range(0, height+chunk_shape[0], chunk_shape[0]):
i = height if i > height else i
data = raster.read(k, window=Window(j, i, chunk_shape[1], chunk_shape[0]))
zarray[i:i+chunk_shape[0], j:j+chunk_shape[1], k-1] = data
# Close the raster dataset; no need to close the zarr file
raster.close()
def test(raster_filepath, zarr_filepath, window):
"""
Validate that the data were correctly copied to the zarr file
Parameters
----------
raster_filepath: string
Path and filename of the raster file
zarr_filepath: string
Path and filename of the zarr file
window: 4-tuple
Window to extract sub arrray; (x1, y1, x2, y2)
"""
x1, y1, x2, y2 = window
# Read a subarray using rasterio
st = time.time()
raster = rasterio.open(raster_filepath)
raster_sub = raster.read(1, window=Window(x1, y1, x2-x1, y2-y1))
raster_time = time.time() - st
# Read a subarray using zarr
st = time.time()
zarray = zarr.open(zarr_filepath)
zarray_sub = zarray[y1:y2, x1:x2]
zarr_time = time.time() - st
# Check for visual differences
_, ax = plt.subplots(1,2)
ax[0].imshow(raster_sub)
ax[0].set_title(f'RasterIO ({raster_time:.4f} secs)')
ax[1].imshow(zarray_sub)
ax[1].set_title(f'Zarr ({zarr_time:.4f} secs)')
plt.show()
# Check for numerical differences
print((raster_sub - zarray_sub).sum())
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