Esempio n. 1
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                               pixel_offset_stddev=0.05)

# Make a noise injector producing 2% gaussian additive noise
noise_injector = vlab.noise_injector("gaussian", sigma=.02)

# Make an synthetic image generation pipeline
image_generator = vlab.SyntheticImageGenerator(speckle_image=speckle_image,
                                               image_deformer=image_deformer,
                                               downsampler=downsampler,
                                               noise_injector=noise_injector,
                                               n=n_imgs)
# Put it into an image stack
image_stack = dic.ImageStack(image_generator)

# Now, make a mesh. Make sure to use enough elements
mesher = dic.Mesher(deg_n=3, deg_e=3, type="spline")
#mesh = mesher.mesh(image_stack)    # Use this if you want to mesh with a GUI
mesh = mesher.mesh(image_stack,
                   Xc1=50,
                   Xc2=450,
                   Yc1=50,
                   Yc2=450,
                   n_ely=8,
                   n_elx=8,
                   GUI=False)

# Prepare the analysis input and initiate the analysis
input = dic.DICInput(mesh, image_stack)
input.tol = 1e-6

dic_job = dic.DICAnalysis(input)
Esempio n. 2
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logging.basicConfig(format='%(name)s:%(levelname)s:%(message)s', level=logging.INFO)

# Path to folder containing images
#path = r'./example_data/' # Use this formatting on Linux and Mac OS
path = r'F:\GraduateProject\Python\PCA\speckle\\'
# path = r'c:\path\to\example_data\\'  # Use this formatting on Windows

# Generate image instance containing all images found in the folder
# images = dic.IO.image_stack_from_folder(path, file_type='.tif')
images = dic.IO.image_stack_from_folder(path, file_type='.tif')
images.set_filter(dic.filtering.lowpass_gaussian, sigma=1.)


# Generate mesh
# 这里Xc1,Xc2,Yc1,Yc2是ROI的大小,需要根据输入图象的大小修改
mesher = dic.Mesher(deg_e=3, deg_n=3)
# mesh = mesher.mesh(images,Xc1=200,Xc2=1050,Yc1=200,Yc2=650,n_ely=8,n_elx=8, GUI=True)
mesh = mesher.mesh(images, Xc1=20, Xc2=105, Yc1=20, Yc2=65, n_ely=8, n_elx=8, GUI=True)


# Instantiate settings object and set some settings manually
settings = dic.DICInput(mesh, images)
# 图像数量
settings.max_nr_im = 2
settings.ref_update = [15]
settings.maxit = 20
# If you want to access the residual fields after the analysis, this should be set to True
settings.store_internals = False

# Instantiate job object
job = dic.DICAnalysis(settings)
Esempio n. 3
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def run_DIC(folder_path, n_images, filter, filter_sigma, maxim, maxit, padding,
            poly_order, converge):

    # Set the amount of info printed to terminal during analysis
    logging.basicConfig(format='%(name)s:%(levelname)s:%(message)s',
                        level=logging.INFO)

    # Path to folder containing images
    path = folder_path

    # Generate image instance containing all images found in the folder
    images = dic.IO.image_stack_from_folder(path, file_type='.png')
    images.use_every_n_image(int(n_images))
    if filter == "Lowpass Gaussian":
        images.set_filter(dic.filtering.lowpass_gaussian,
                          sigma=int(filter_sigma))
    elif filter == "Highpass Gaussian":
        images.set_filter(dic.filtering.highpass_gaussian,
                          sigma=int(filter_sigma))
    elif filter == "Homomorphic Median":
        images.set_filter(dic.filtering.homomorphic_median,
                          sigma=int(filter_sigma))
    else:
        pass

    # Generate mesh
    mesher = dic.Mesher(deg_e=3, deg_n=3, type="q4")  #type="b_splines")
    mesh = mesher.mesh(images,
                       Xc1=316,
                       Xc2=523,
                       Yc1=209,
                       Yc2=1055,
                       n_ely=18,
                       n_elx=5,
                       GUI=True)

    # Instantiate settings object and set some settings manually (first video)
    settings = dic.DICInput(mesh, images)
    if bool(maxim):
        settings.max_nr_im = int(maxim)
    settings.ref_update = [15]
    settings.maxit = int(maxit)
    settings.tol = 1.e-6
    settings.interpolation_order = int(poly_order)

    # If you want to access the residual fields after the analysis, this should be set to True
    settings.store_internals = True

    # This setting defines the behaviour when convergence is not obtained
    if converge == "Ignore":
        settings.noconvergence = "ignore"
    elif converge == "Update":
        settings.noconvergence = "update"
    elif converge == "Break":
        settings.noconvergence = "break"
    else:
        pass

    # Instantiate job object
    job = dic.DICAnalysis(settings)

    # Running DIC analysis
    dic_results = job.run()

    return images, dic_results
Esempio n. 4
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import logging

# Set the amount of info printed to terminal during analysis
logging.basicConfig(format='%(name)s:%(levelname)s:%(message)s',
                    level=logging.INFO)

# Path to folder containing images
path = r'./example_data/'  # Use this formatting on Linux and Mac OS
#path = r'c:\path\to\example_data\\'  # Use this formatting on Windows

# Generate image instance containing all images found in the folder
images = dic.IO.image_stack_from_folder(path, file_type='.tif')
#images.set_filter(dic.filtering.lowpass_gaussian, sigma=1.)

# Generate mesh
mesher = dic.Mesher(deg_e=3, deg_n=3, type="q4")

# If you want to see use a GUI, set GUI=True below
mesh = mesher.mesh(images,
                   Xc1=316,
                   Xc2=523,
                   Yc1=209,
                   Yc2=1055,
                   n_ely=36,
                   n_elx=9,
                   GUI=False)

# If you want to visualize nodes label
mesh.visualize_node()

# Instantiate settings object and set some settings manually
        # Instantiate an image deformer
        image_deformer = vlab.image_deformer.imageDeformer_rigid_body(amp=(shift_amp, 0.))

        # Shift the images. Note that the first one is not shifted
        shifted_images = image_deformer(img, n_imgs)

        # We now add noise to the images
        shifted_noisy_images = [noise_injector(image) for image in shifted_images]

        # And put them into a stack which is the formatting needed for the DIC analysis
        image_stack = dic.image_stack_from_list(shifted_noisy_images)

        # Generate mesh
        # We here use Q4 elements
        mesher = dic.Mesher(type="q4")
        # If you want to use a GUI, set GUI=True
        mesh = mesher.mesh(image_stack, Xc1=20, Xc2=480, Yc1=20, Yc2=480, n_ely=num_elms, n_elx=num_elms, GUI=False)

        # Instantiate settings object and set some settings manually
        settings = dic.DICInput(mesh, image_stack)
        # We allow the solver to use as many iterations as it needs
        settings.maxit = 100
        # This tolerance is the larges increment in nodal position [pixels]
        settings.tol = 1e-6
        # We use fourth order splines for grey-scale interpolation, minimizing interpolation bias
        settings.interpolation_order = 4

        # Instantiate job object
        job = dic.DICAnalysis(settings)
        # Running DIC analysis