Esempio n. 1
0
def test_erf():
    import os
    import sys

    dirname = os.path.dirname(os.path.abspath(__file__))
    main_dir = os.path.join(dirname, os.path.pardir, os.path.pardir)
    code_dir = os.path.join(main_dir, "code")
    sys.path.insert(0, code_dir)

    import plot_beam
    import surface as surf
    import parameters as par

    config_file = os.path.join(dirname, 'erf.cfg')
    par.set_parameters(config_file)

    # cfg overwrites
    par.INITIAL_SURFACE_TYPE = 'Flat'
    par.TOTAL_TIME = 1
    # par.BEAM_CURRENT = 1e-12
    par.XMAX = 500
    par.XMIN = -500
    filename, surface = plot_beam.simulate(config_file, False)

    if os.path.isfile(filename + '_save'):
        surface_save = surf.load(filename + '_save')

    else:
        raise FileNotFoundError(filename + '_save not found')

    distance = surface.distance(surface_save)
    assert distance < 0.00292933136297
Esempio n. 2
0
def SALT(Video, new=True, BM=None, Patches=None, Param=None):
    if new:
        parameters.set_parameters(Video)
        Param = parameters.Param
    w_lr = Param.low_rank_weight
    w_s = Param.sparse_weight
    w_d = Param.data_weight
    m = Param.temporal_search_range + 1
    patches_num = Param.patches_num
    psize = Param.psize
    frame_num = Param.frame_num
    if new:
        Patches = patches.overlapping_patches(Video, Param)    
        BM = vbm.video_block_matching(Patches, Param)
    transform = scipy.fftpack.dct(np.eye(psize*m), norm='ortho', axis=0)
    Denoised_video = np.zeros(Video.shape)
    
    for t in range(frame_num):
        data_to_sparse = np.zeros((psize*m, patches_num))        
        for i in range(patches_num):
            data_to_sparse[:,i] = np.ravel(Patches[:,BM[i+t*patches_num,:m]])
        
        sparsed = sparse_coding.sparse(data_to_sparse, Param, transform)        
        transform = tu.trans_update(sparsed, data_to_sparse)      
        sparsed = sparse_coding.sparse(data_to_sparse, Param, transform)
        
        for i in range(patches_num):
            s = np.zeros((psize, m))
            KNN = Patches[:,BM[i+t*patches_num]]
            D = LR_approx(KNN, Param)
            index1 = BM[i+t*patches_num,:m]
            index2 = BM[i+t*patches_num,m:]
            s = (transform.T @ sparsed[:,i]).reshape((psize, m))
            Patches[:,index1] = ((w_s*s + w_lr*D[:,:m] + w_d*Patches[:,index1])
                / (w_s+w_d+w_lr))
            Patches[:,index2] = ((w_lr*D[:,m:] + w_d*Patches[:,index2]) 
                / (w_lr+w_d))
        
        Denoised_img = ag.aggregation(Patches, Param, t)
        #plt.imshow(Denoised_img)
        #plt.gray()
        #plt.show()
        Denoised_video[:,:,t] = Denoised_img
    
    return Denoised_video
    
            
            
            
        
        
        
    


    
Esempio n. 3
0
def simulate(config_file, do_plotting=True):
    """
    Performs a simulation with the parameters given inside the config file

        :param config_file: parameters for simulation

        :return the surface object after last simulation step
    """

    #time_start = clock()
    time_start = perf_counter()

    try:
        par.set_parameters(config_file)
    except FileNotFoundError as err:
        print(err)
        sys.exit(-1)

    config = "config"
    if (config_file.find(".cfg") != -1):
        config = config_file.replace(".cfg", "")

    tend = float(par.TOTAL_TIME)
    dt = float(par.TIME_STEP)
    time = 0

    init_sputtering()
    surface = Surface()
    surface_filename = '{}.srf'.format(config)
    surface.write(surface_filename, time, 'w')

    while time < tend:
        try:
            adv.advance(surface, dt)
        except ValueError as Err:
            print(Err)
            break
        else:
            dt = adv.timestep(dt, time, tend)
            time += dt
        finally:
            surface.write(surface_filename, time, 'a')

    #time_compute = clock() - time_start
    time_compute = perf_counter() - time_start

    print("Computing Time = " + str(time_compute))

    if par.PLOT_SURFACE and do_plotting:
        if os.path.isfile(surface_filename + "_save"):
            plot.plot(surface_filename, surface_filename + "_save")
        else:
            plot.plot(surface_filename)

    return surface
Esempio n. 4
0
def test_raster_scan():
    import os
    import sys

    dirname = os.path.dirname(os.path.abspath(__file__))
    main_dir = os.path.join(dirname, os.path.pardir, os.path.pardir)
    code_dir = os.path.join(main_dir, "code")
    sys.path.insert(0, code_dir)

    import miniTopSim
    import surface as surf
    import parameters as par

    config_file = os.path.join(dirname, 'raster_scan_1.cfg')
    par.set_parameters(config_file)
    '''filename,'''
    sim = miniTopSim.simulate(config_file, True)
    surface_save = surf.load(os.path.join(dirname, 'raster_scan_1.srf_save'))

    assert sim.distance(surface_save) < 0.00292
Esempio n. 5
0
def simulate(config_file, setconfig=True):
    """
    Performs a simulation with the parameters given inside the config file

        :param config_file: parameters for simulation

        :return the surface object after last simulation step
    """
    
    if setconfig is True:
        try:
            par.set_parameters(config_file)
        except FileNotFoundError as err:
            print(err)
            sys.exit(-1)


    config = "config"
    if (config_file.find(".cfg") != -1):
        config = config_file.replace(".cfg", "")


    tend = float(par.TOTAL_TIME)
    dt = float(par.TIME_STEP)
    #dt = float(par.DWELL_TIME)
    
    time = 0

    init_sputtering()
    surface = Surface()
    surface_filename = '{}.srf'.format(config)
    surface.write(surface_filename, time, 'w')

    while time < tend:
       
        adv.advance(surface, dt)        
        dt = adv.timestep(dt, time, tend)
        time += dt
        surface.write(surface_filename, time, 'a')

    return surface_filename, surface
Esempio n. 6
0
    section = 'Numerics'
    cfg.add_section(section)
    cfg.set(section, 'TIME_STEP', str(par.TIME_STEP))

    section = 'Beam'
    cfg.add_section(section)
    cfg.set(section, 'TOTAL_TIME', str(par.TOTAL_TIME))

    section = 'Physics'
    cfg.add_section(section)
    cfg.set(section, 'ETCH_RATE', str(par.ETCH_RATE))

    section = 'Output'
    cfg.add_section(section)
    cfg.set(section, 'PLOT_SURFACE', str(par.PLOT_SURFACE))

    with open(output_file, 'w') as output:
        cfg.write(output)


try:
    check_flag = par.set_parameters(sys.argv[1])
except FileNotFoundError as err:
    print(err)
    sys.exit(-1)
except IndexError:
    print('No file specified as systemargument')
    sys.exit(-1)

_write_output(str(sys.argv[1]).replace('.cfg', '.dat'))
def SALT_gd(Video, new=True, BM=None, Patches=None, Param=None):
    if new:
        parameters.set_parameters(Video)
        Param = parameters.Param
    K = Param.similar_patches_number
    sp_treshold = Param.sparse_treshold
    w_lr = Param.low_rank_weight
    w_s = Param.sparse_weight
    w_d = Param.data_weight
    m = Param.temporal_search_range // 2
    patches_num = Param.patches_num
    psize = Param.psize
    frame_num = Param.frame_num
    rank = 7
    if new:
        Patches = patches.overlapping_patches(Video, Param)
        BM = vbm.video_block_matching(Patches, Param)
    transform1 = scipy.fftpack.dct(np.eye(psize * m), norm='ortho', axis=0)
    transform2 = scipy.fftpack.dct(np.eye(K * m), norm='ortho', axis=0)
    Denoised_video = np.zeros(Video.shape)

    rand1 = np.random.random_sample((psize, rank))
    rand2 = np.random.random_sample((rank, K))
    for t in range(frame_num):
        for i in range(patches_num):
            #u, s, vt  = scipy.sparse.linalg.svds(Patches[:,BM[i+t*patches_num,:]],
            #rank)
            #s = np.diag(s)
            #P = u @ s
            #L = vt
            M = Patches[:, BM[i + t * patches_num, :]]
            P = rand1
            L = rand2

            for j in range(8):

                Ppinv = np.linalg.pinv(P)
                L = Ppinv @ M
                Lpinv = np.linalg.pinv(L)
                P = M @ Lpinv

                if j % 4 == 1:
                    Pm = P[:, :m]
                    p = np.ravel(Pm)
                    sparsed_p = sparse_coding.sparse(p, Param, transform1)
                    transform1 = tu.trans_update(sparsed_p, p)
                    p = transform1.T @ hard_treshold(transform1 @ p,
                                                     sp_treshold)
                    Pm = p.reshape(Pm.shape)
                    P[:, :m] = Pm

                    Lm = L[:m, :]
                    l = np.ravel(Lm)
                    sparsed_l = sparse_coding.sparse(l, Param, transform2)
                    transform2 = tu.trans_update(sparsed_l, l)
                    l = transform2.T @ hard_treshold(transform2 @ l,
                                                     sp_treshold)
                    Lm = l.reshape(Lm.shape)
                    L[:m, :] = Lm

            Patches[:, BM[i + t * patches_num, :]] = P @ L

        Denoised_img = ag.aggregation(Patches, Param, t)
        #plt.imshow(Denoised_img)
        #plt.gray()
        #plt.show()
        Denoised_video[:, :, t] = Denoised_img

    return Denoised_video
def main():
    is_slab, number_of_layers, exchange_correlation = set_parameters()
    data = get_data(number_of_layers, exchange_correlation)
    graph_data(data)

    return
Esempio n. 9
0

sigma = 15
mat_Video = sio.loadmat("salesman.mat")
Video = mat_Video['clean']
#Video = skvideo.io.vread("video\Man_texting.mp4",
#outputdict={"-pix_fmt": "gray"})[:, :, :, 0]

Video = Video[:, :, :]
#Video = np.transpose(Video, (1,2,0))
Video = Video[:, :, :2]
Noisy_video = positive(Video + np.random.normal(0, sigma, Video.shape))
plt.imshow(Video[:, :, 0])
plt.gray()
plt.show

plt.imshow(Noisy_video[:, :, 0])
plt.gray()
plt.show

parameters.set_parameters(Noisy_video)
Para = parameters.Param
pat = patches.overlapping_patches(Noisy_video, Para)
Blocks = vbm.video_block_matching(pat, Para)
denoised = sd.SALT(Video, new=False, BM=Blocks, Patches=pat, Param=Para)
plt.imshow(denoised[:, :, 0])
#denoised = np.transpose(denoised, (2,0,1))
#skvideo.io.vwrite("denoised_video.mp4", denoised, inputdict={"-r" : "13"})
#Noisy_video = np.transpose(Noisy_video, (2,0,1))
#skvideo.io.vwrite("noisy_video.mp4", Noisy_video, inputdict={"-r" : "13"})
Esempio n. 10
0
# Version 1.01, Becky Arnold, February 2018 running on python version 2.7.13
import matplotlib.pyplot as plt
import parameters
import read_data
import calc_drdv_and_sort
import correct_dv
import plotting
'''
Set the parameters that will be needed to run the program.
In this function the user should set the path_to_data variable
to the path to the data file. They should also set error_flag to
True if there are errors on the velocity data and False otherwise.
'''
path_to_data, error_flag, dv_default, correct_inflation, bin_width, dr_start, dr_end = parameters.set_parameters(
)

# ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
'''
Read in the data. The user must fill in this function in read_data.py.
n_stars is the number of stars, r is the position data of the stars,
v is the velocity data, and verr is the error on the velocity data.
If there are no errors on the velocities verr should be 0.
'''
n_stars, r, v, verr = read_data.read_data(path_to_data)

# ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
'''
Calculate dr and dv for every possible pair of stars.
Then sort the pairs into dr bins and calculate the mean dv in each
bin with errors.
Esempio n. 11
0
based on miniTopSim.py
"""

import sys
from time import clock
import matplotlib.pyplot as plt
import numpy as np

from surface import Surface
import advance as adv

import parameters as par
import plot

try:
    par.set_parameters(sys.argv[1])
except FileNotFoundError as err:
    print(err)
    sys.exit(-1)
except IndexError:
    print('No file specified as systemargument')
    sys.exit(-1)

config = "config"
if (sys.argv[1].find(".cfg") != -1):
    config = sys.argv[1].replace(".cfg", "")

tend = float(par.TOTAL_TIME)
dt = float(par.TIME_STEP)

#arrays for the plot