import os
import numpy as np
from polsartools.utils.proc_utils import process_chunks_parallel
from polsartools.utils.utils import conv2d,time_it
from polsartools.utils.convert_matrices import T3_C3_mat
from .fp_infiles import fp_c3t3files
[docs]
@time_it
def praks_parm_fp(in_dir, win=1, fmt="tif", cog=False,
ovr = [2, 4, 8, 16], comp=False,
max_workers=None,block_size=(512, 512),
progress_callback=None, # for QGIS plugin
):
"""Derives praks polarimetric parameters for full-pol SAR data.
Examples
--------
>>> # Basic usage with default parameters
>>> praks_parm_fp("/path/to/fullpol_data")
>>> # Advanced usage with custom parameters
>>> praks_parm_fp(
... in_dir="/path/to/fullpol_data",
... win=5,
... fmt="tif",
... cog=True,
... block_size=(1024, 1024)
... )
Parameters
----------
in_dir : str
Path to the input folder containing full-pol T3 or C3 matrix files.
win : int, default=1
Size of the spatial averaging window. Larger windows reduce speckle noise
but decrease spatial resolution.
fmt : {'tif', 'bin'}, default='tif'
Output file format:
- 'tif': GeoTIFF format with georeferencing information
- 'bin': Raw binary format
cog : bool, default=False
If True, creates Cloud Optimized GeoTIFF (COG) outputs with internal tiling
and overviews for efficient web access.
ovr : list[int], default=[2, 4, 8, 16]
Overview levels for COG creation. Each number represents the
decimation factor for that overview level.
comp : bool, default=False
If True, uses LZW compression for GeoTIFF outputs.
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
Writes four output files to disk:
1. FrobeniusNorm: Frobenius norm
2. ScattPredominance: Scattering predominance
3. ScatteringDiversity: Scattering diversity
4. DegreePurity: Degrees of purity
5. DepolarizationIndex: Depolarization index
6. Praks_Alpha: Alpha parameter
7. Praks_Entropy: Entropy parameter
References
----------
Praks, J., Koeniguer, E.C. and Hallikainen, M.T., 2009.
Alternatives to target entropy and alpha angle in SAR polarimetry.
IEEE Transactions on Geoscience and Remote Sensing, 47(7), pp.2262-2274.
"""
write_flag=True
input_filepaths = fp_c3t3files(in_dir)
output_filepaths = []
if fmt == "bin":
output_filepaths.append(os.path.join(in_dir, "FrobeniusNorm.bin"))
output_filepaths.append(os.path.join(in_dir, "ScattPredominance.bin"))
output_filepaths.append(os.path.join(in_dir, "ScatteringDiversity.bin"))
output_filepaths.append(os.path.join(in_dir, "DegreePurity.bin"))
output_filepaths.append(os.path.join(in_dir, "DepolarizationIndex.bin"))
output_filepaths.append(os.path.join(in_dir, "Praks_Alpha.bin"))
output_filepaths.append(os.path.join(in_dir, "Praks_Entropy.bin"))
else:
output_filepaths.append(os.path.join(in_dir, "FrobeniusNorm.tif"))
output_filepaths.append(os.path.join(in_dir, "ScattPredominance.tif"))
output_filepaths.append(os.path.join(in_dir, "ScatteringDiversity.tif"))
output_filepaths.append(os.path.join(in_dir, "DegreePurity.tif"))
output_filepaths.append(os.path.join(in_dir, "DepolarizationIndex.tif"))
output_filepaths.append(os.path.join(in_dir, "Praks_Alpha.tif"))
output_filepaths.append(os.path.join(in_dir, "Praks_Entropy.tif"))
process_chunks_parallel(input_filepaths, list(output_filepaths),
window_size=win, write_flag=write_flag,
processing_func=process_chunk_praks,block_size=block_size,
max_workers=max_workers, num_outputs=len(output_filepaths),
cog=cog, ovr=ovr, comp=comp,
progress_callback=progress_callback
)
def process_chunk_praks(chunks, window_size, input_filepaths, *args):
if 'T11' in input_filepaths[0] and 'T22' in input_filepaths[5] and 'T33' in input_filepaths[8]:
t11_T1 = np.array(chunks[0])
t12_T1 = np.array(chunks[1])+1j*np.array(chunks[2])
t13_T1 = np.array(chunks[3])+1j*np.array(chunks[4])
t21_T1 = np.conj(t12_T1)
t22_T1 = np.array(chunks[5])
t23_T1 = np.array(chunks[6])+1j*np.array(chunks[7])
t31_T1 = np.conj(t13_T1)
t32_T1 = np.conj(t23_T1)
t33_T1 = np.array(chunks[8])
T3 = np.array([[t11_T1, t12_T1, t13_T1],
[t21_T1, t22_T1, t23_T1],
[t31_T1, t32_T1, t33_T1]])
T_T1 = T3_C3_mat(T3)
if 'C11' in input_filepaths[0] and 'C22' in input_filepaths[5] and 'C33' in input_filepaths[8]:
C11 = np.array(chunks[0])
C12 = np.array(chunks[1])+1j*np.array(chunks[2])
C13 = np.array(chunks[3])+1j*np.array(chunks[4])
C21 = np.conj(C12)
C22 = np.array(chunks[5])
C23 = np.array(chunks[6])+1j*np.array(chunks[7])
C31 = np.conj(C13)
C32 = np.conj(C23)
C33 = np.array(chunks[8])
T_T1 = np.array([[C11, C12, C13],
[C21, C22, C23],
[C31, C32, C33]])
if window_size>1:
kernel = np.ones((window_size,window_size),np.float32)/(window_size*window_size)
t11f = conv2d(T_T1[0,0,:,:],kernel)
t12f = conv2d(np.real(T_T1[0,1,:,:]),kernel)+1j*conv2d(np.imag(T_T1[0,1,:,:]),kernel)
t13f = conv2d(np.real(T_T1[0,2,:,:]),kernel)+1j*conv2d(np.imag(T_T1[0,2,:,:]),kernel)
t21f = np.conj(t12f)
t22f = conv2d(T_T1[1,1,:,:],kernel)
t23f = conv2d(np.real(T_T1[1,2,:,:]),kernel)+1j*conv2d(np.imag(T_T1[1,2,:,:]),kernel)
t31f = np.conj(t13f)
t32f = np.conj(t23f)
t33f = conv2d(T_T1[2,2,:,:],kernel)
T_T1 = np.array([[t11f, t12f, t13f], [t21f, t22f, t23f], [t31f, t32f, t33f]])
_,_,rows,cols = np.shape(T_T1)
# Span (total power)
span = T_T1[0, 0] + T_T1[1, 1] + T_T1[2, 2]
span_real = np.real(span) + 1e-12 # Avoid division by zero
# Normalize M by span
M_norm = T_T1 / span_real[None, None, :, :]
# Frobenius norm
FrobNorm = np.sum(np.abs(M_norm)**2, axis=(0, 1))
# Scattering power (predominant)
ScattPred = np.sqrt(FrobNorm)
# Scattering diversity
ScattDiv = 1.5 * (1. - FrobNorm)
# Safe term for purity and depolarization index
safe_term = np.maximum(FrobNorm - 0.25, 0)
# Degree of polarization purity
DegPur = 2.0 * np.sqrt(safe_term)
# Depolarization index
DepInd = 1. - 2.0 * np.sqrt(safe_term) / np.sqrt(3.)
# Alpha angle (in degrees)
Alpha = np.arccos(np.clip(np.real(M_norm[0, 0]), -1.0, 1.0)) * 180. / np.pi
# Entropy (from determinant)
M_adj = M_norm.copy()
for i in range(3):
M_adj[i, i] += 0.16
# Move axes to compute determinant over (n, m)
M_adj_moved = np.moveaxis(M_adj, [2, 3], [0, 1]) # shape: (n, m, 3, 3)
det = np.linalg.det(M_adj_moved)
Entropy = 2.52 + 0.78 * np.log(np.sqrt(np.real(det)**2 + np.imag(det)**2) + 1e-12) / np.log(3.)
return FrobNorm.astype(np.float32),ScattPred.astype(np.float32),ScattDiv.astype(np.float32),\
DegPur.astype(np.float32),DepInd.astype(np.float32),Alpha.astype(np.float32),Entropy.astype(np.float32)