Files
Astrobs-Tools/Source/data_reduction_tools.py
2024-12-03 23:05:59 +01:00

160 lines
5.2 KiB
Python

import os
import numpy as np
import matplotlib.pyplot as plt
from astropy.io import fits
IN_DIR = "./Input/"
OUT_DIR = "./Output/"
LIGHT_DIR = IN_DIR + "Light/"
DARK_DIR = IN_DIR + "Dark/"
FLAT_DIR = IN_DIR + "Flat/"
BIAS_DIR = IN_DIR + "Bias/"
THAR_DIR = IN_DIR + "ThAr/"
PLT_STYLE = "YII_light_1"
def list_fits(directory: str = LIGHT_DIR):
"""
Returns the list of files in the directory
@params:
- directory: the directory containing the fits
@output:
- list of fits files in the directory
"""
filelist = [fname for fname in os.listdir(directory) if ".fit" in fname]
# works for fit and fits
return filelist
def stack(filelist: list,
in_directory: str,
out_name: str,
out_directory: str = None,
method:str = "median"):
in_data = []
if out_directory == None:
out_directory = in_directory
N = len(filelist)
for file in filelist:
if not "master_" in file:
in_data.append(fits.getdata(in_directory + file))
in_data = np.array(in_data)
if method == "mean":
out_data = np.mean(in_data, axis=0)
if method == "median":
out_data = np.median(in_data, axis=0)
header = fits.getheader(in_directory+file)
header["history"] = "stacking with {} files".format(N)
fits.writeto(out_directory \
+ out_name, out_data, header, overwrite=True)
return 0
def debias(filelist: list,
in_directory: str,
master_bias: str = "master_bias.fits",
bias_directory: str = BIAS_DIR,
out_directory: str = None):
if out_directory == None:
out_directory = in_directory
for file in filelist:
if not "debiased_" in file:
in_data = fits.getdata(in_directory + file)
header = fits.getheader(in_directory + file)
bias = fits.getdata(bias_directory+master_bias)
out_data = in_data - bias
header["history"] = "debiased with master bias"
fits.writeto(out_directory + "debiased_" + file, \
out_data, header, \
overwrite=True)
return 0
def normalize_image_flat(filelist: str,
in_directory: str = FLAT_DIR,
out_directory: str = None):
if out_directory == None:
out_directory = in_directory
for file in filelist:
if not "normalized_" in file:
data = fits.getdata(in_directory + file)
head = fits.getheader(in_directory + file)
normalized_data = data/np.median(data)
fits.writeto(out_directory + "normalized_" + file,
normalized_data, overwrite=True)
return 0
def normalize_spectrum_flat(filelist: str,
in_directory: str = FLAT_DIR,
out_directory: str = None,
fit_degree: int = 3,
d_lim: int = 10000):
if out_directory == None:
out_directory = in_directory
poly = np.polynomial.chebyshev
for file in filelist:
if not "normalized_" in file:
data = fits.getdata(in_directory + file).flatten()
head = fits.getheader(in_directory + file)
pixel = list(range(len(data)))
mask = np.ones_like(data)
mask[np.argwhere(data < d_lim)] = 0
fit_coefs = poly.chebfit(pixel, data, fit_degree, w=mask)
fit_data = poly.chebval(pixel, fit_coefs)
normalized_data = data/fit_data
normalized_data[np.argwhere(normalized_data<0.5)] = np.nan
fits.writeto(out_directory + "normalized_" + file,
normalized_data, overwrite=True)
return 0
def reduction_operation(target: str,
master_light: list,
light_directory: str = LIGHT_DIR,
master_dark: str = None,
dark_directory: str = DARK_DIR,
master_flat: str = None,
flat_directory: str = FLAT_DIR,
out_directory: str = OUT_DIR):
data = fits.getdata(light_directory + master_light)
head = fits.getheader(light_directory + master_light)
if master_dark != None:
dark = fits.getdata(dark_directory + master_dark)
data = data - dark
head["history"] = "removed dark with {}".format(master_dark)
if master_flat != None:
flat = fits.getdata(flat_directory + master_flat)
data = data / flat
head["history"] = "flatten with {}".format(master_flat)
fits.writeto(out_directory + "reduced_" + target,
data, head, overwrite=True)
return 0
def plot_spectrum(reduced: str,
directory: str = OUT_DIR):
if PLT_STYLE in plt.style.available: plt.style.use(PLT_STYLE)
data = fits.getdata(directory + reduced).flatten()
head = fits.getheader(directory + reduced)
pixel = list(range(len(data)))
plt.plot(pixel, data)
plt.show(block=True)
return 0
def find_peaks_highest(data: list,
N: int = 10):
"""Find the N highest peaks in the data"""
peaks = []
mask = np.
for i in range(N):
None
return 0