import os
import numpy as np
from polsartools.utils.proc_utils import process_chunks_parallel
from polsartools.utils.utils import conv2d,time_it,eig22
from .dxp_infiles import dxpc2files
[docs]
@time_it
def dprvic(cpFile,xpFile, window_size=1, outType="tif",
cog_flag=False, cog_overviews = [2, 4, 8, 16],
write_flag=True, max_workers=None,block_size=(512, 512),
progress_callback=None, # for QGIS plugin
):
"""Compute dual-pol Radar Vegetation Index (DpRVIc) from Dual-pol GRD data.
This function calculates the DpRVIc using co-polarized (`cpFile`) and cross-polarized (`xpFile`) SAR raster files.
The index is valuable for vegetation monitoring and biomass estimation. Processing is performed in parallel blocks
for efficiency.
Examples
--------
>>> # Basic usage with default parameters
>>> dprvic("/path/to/copol_file.tif", "/path/to/crosspol_file.tif")
>>> # Advanced usage with custom parameters
>>> dprvic(
... cpFile="/path/to/copol_file.tif",
... xpFile="/path/to/crosspol_file.tif",
... window_size=3,
... outType="tif",
... cog_flag=True,
... block_size=(1024, 1024)
... )
Parameters
----------
cpFile : str
Path to the co-polarized backscatter (linear) SAR raster file.
xpFile : str
Path to the cross-polarized backscatter (linear) SAR raster file.
window_size : int, default=1
Size of the spatial averaging window. Larger windows reduce speckle noise
but decrease spatial resolution.
outType : {'tif', 'bin'}, default='tif'
Output file format:
- 'tif': GeoTIFF format with georeferencing information
- 'bin': Raw binary format
cog_flag : bool, default=False
If True, creates a Cloud Optimized GeoTIFF (COG) with internal tiling
and overviews for efficient web access.
cog_overviews : list[int], default=[2, 4, 8, 16]
Overview levels for COG creation. Each number represents the
decimation factor for that overview level.
write_flag : bool, default=True
If True, writes results to disk. If False, only processes data in memory.
max_workers : int | None, default=None
Maximum number of parallel processing workers. If None, uses
CPU count - 1 workers.
block_size : tuple[int, int], default=(512, 512)
Size of processing blocks (rows, cols) for parallel computation.
Larger blocks use more memory but may be more efficient.
Returns
-------
None
Results are written to disk as either 'dprvic.tif' or 'dprvic.bin'
in the input folder.
"""
input_filepaths = [cpFile,xpFile]
output_filepaths = []
if outType == "bin":
output_filepaths.append(os.path.join(os.path.dirname(cpFile), "dprvic.bin"))
else:
output_filepaths.append(os.path.join(os.path.dirname(cpFile), "dprvic.tif"))
process_chunks_parallel(input_filepaths, list(output_filepaths), window_size=window_size, write_flag=write_flag,
processing_func=process_chunk_dprvic,block_size=block_size, max_workers=max_workers, num_outputs=1,
cog_flag=cog_flag,
cog_overviews=cog_overviews,
progress_callback=progress_callback
)
def process_chunk_dprvic(chunks, window_size,*args):
kernel = np.ones((window_size,window_size),np.float32)/(window_size*window_size)
c11 = np.array(chunks[0])
c22 = np.array(chunks[1])
if window_size>1:
c11s = conv2d(c11,kernel)
c22s = conv2d(c22,kernel)
q = c22s/c11s
q[q>=1]=1
# mc = (1-q)/(1+q)
# p1 = 1/(1+q)
# p2 = q/(1+q)
# Hc = -1*(p1*np.log2(p1)+p2*np.log2(p2))
# thetac = np.arctan(((1-q)**2)/(1-q+q**2)) * (180/np.pi)
DpRVIc = (q*(q+3)/((q+1)**2))
else:
q = c22/c11
q[q>=1]=1
# mc = (1-q)/(1+q)
# p1 = 1/(1+q)
# p2 = q/(1+q)
# Hc = -1*(p1*np.log2(p1)+p2*np.log2(p2))
# thetac = np.arctan(((1-q)**2)/(1-q+q**2)) * (180/np.pi)
DpRVIc = (q*(q+3)/((q+1)**2))
return DpRVIc.astype(np.float32)