示例#1
0
def new_tiles(
        files,
        param_specs,
        param_io,
        param_show=dict(),
        param=dict(),
):
    _logger.debug(
        "Start creation of normal maps with settings:\nparam_specs:\t{},\nparam_io:\t{},\nparam_show:\t{},\nparam:\t{}"
        .format(param_specs, param_io, param_show, param))

    #   settings ------------------------------------------------------------
    # -----------------------------------------------------------------------
    img_in, img_out, _, _ = shdw.utils.imgio.get_data(files,
                                                      param_specs,
                                                      param_io,
                                                      param_show=param_show)

    for item_list in img_in:
        for index, item in enumerate(item_list):
            _logger.debug("Processing image '{}'".format(item.path))

            img = shdw.utils.imgtools.expand_image_dim(item.data)
            try:
                tiles = param["tiles"]
            except KeyError:
                tiles = img.shape

            img = img[0:tiles[0], 0:tiles[1], :]

            _logger.info(shdw.utils.imgtools.get_array_info(img))

            img_out(item.path, img, index=index)
def new_mlp_classification_stats(
    files, 
    param_specs,
    param_io,
    param_label=dict(),
    param_show=dict(),
    param=dict()
):
    _logger.info("Start creation of maximum likelihood classification map with settings:\nparam_specs:\t{},\nparam_io:\t{},\nparam_label:\t{},\nparam_show:\t{},\nparam:\t{}".format(param_specs, param_io, param_label, param_show, param))

    #   settings ------------------------------------------------------------
    # -----------------------------------------------------------------------
    img_in, img_out, _, _ = shdw.utils.imgio.get_data(files, param_specs, param_io, param_label=param_label, param_show=param_show)

    stats = [None]*len(param["channels"])
    for channel in range(len(param["channels"])):
        stats[channel] = [None]*len(param_label)
        for label in range(len(param_label)):
            stats[channel][label] = shdw.tools.welford.Welford()

    for item in img_in:
        label_masks = shdw.utils.imgtools.get_label_mask(item[param_specs.index("label")].data, param_label.values())
        img = item[param_specs.index("msi")].data
        for channel in range(len(param["channels"])):
            for label in range(len(param_label.keys())):
                stats[channel][label].update(img[label_masks[...,label], channel])

    return stats
def new_mlp_mv_classification_map(
    stats,
    files, 
    param_specs,
    param_io,
    param_label=dict(),
    param_class=list(),
    param_show=dict(),
    param=dict()
):    
    _logger.info("Start creation of maximum likelihood classification map with settings:\nparam_specs:\t{},\nparam_io:\t{},\nparam_label:\t{},\nparam_show:\t{},\nparam:\t{}".format(param_specs, param_io, param_label, param_show, param))

    #   settings ------------------------------------------------------------
    # -----------------------------------------------------------------------
    img_in, img_out, _, _ = shdw.utils.imgio.get_data(files, param_specs, param_io, param_label=param_label, param_show=param_show)

    eval_labeled_img = [
        shdw.tools.evaluation.EvalLabeledImg(list(param_label.values()), index=param_class),
        shdw.tools.evaluation.ConfusionMap(list(param_label.values()), index=param_class)            
    ]

    for item in img_in:
        labeled_img = get_labeled_img_from_stats(
            stats, 
            item[param_specs.index("msi")].data
        )

        img_out(item[0].path, shdw.utils.imgtools.project_data_to_img(labeled_img, dtype=np.uint8, factor=255))
        label = item[param_specs.index("label")].data

        eval_labeled_img[0].update(labeled_img, label)
        eval_labeled_img[1].update(labeled_img, label)
示例#4
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def save_image(dest, img):
    _logger.info("[SAVE] '{}'".format(dest))

    if str(dest).endswith(".tif"):
        tifffile.imwrite(dest, img)
    else:
        PIL.Image.fromarray(img).write(dest)
示例#5
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def read_image(path):
    _logger.info("[READ] '{}'".format(path))

    if str(path).endswith(".tif"):
        img = tifffile.imread(path)
    else:
        img = np.asarray(PIL.Image.open(path))

    return img
示例#6
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def new_gaussian_map(files,
                     param_specs,
                     param_io,
                     param_label=dict(),
                     param_show=dict(),
                     param=dict()):
    _logger.info(
        "Start creation of maximum likelihood classification map with settings:\nparam_specs:\t{},\nparam_io:\t{},\nparam_label:\t{},\nparam_show:\t{},\nparam:\t{}"
        .format(param_specs, param_io, param_label, param_show, param))

    #   settings ------------------------------------------------------------
    # -----------------------------------------------------------------------
    img_in, img_out, _, _ = shdw.utils.imgio.get_data(files,
                                                      param_specs,
                                                      param_io,
                                                      param_label=param_label,
                                                      param_show=param_show)

    for item in img_in:
        _logger.info("Processing image '{}'".format(item[0].path))

        img = item[0].data
        _logger.info("Result with {}".format(
            shdw.utils.imgtools.get_array_info(img)))
        gaussian_map = shdw.utils.imgtools.gaussian_kernel(
            img.shape[0],
            img.shape[1],
            mu=param["stats"][0],
            sigma=param["stats"][1])
        img_out(item[0].path, gaussian_map)
示例#7
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def new_distance_transform_map(
    files, 
    param_specs,
    param_io,
    param_label=dict(),
    param_show=dict(),
    param=dict()
):
    _logger.info("Start creation of maximum likelihood classification map with settings:\nparam_specs:\t{},\nparam_io:\t{},\nparam_label:\t{},\nparam_show:\t{},\nparam:\t{}".format(param_specs, param_io, param_label, param_show, param))

    #   settings ------------------------------------------------------------
    # -----------------------------------------------------------------------
    img_in, img_out, _, _ = shdw.utils.imgio.get_data(files, param_specs, param_io, param_label=param_label, param_show=param_show)

    for item in img_in:
        _logger.info("Processing image '{}'".format(item[0].path)) 

        edt = np.squeeze(
            shdw.utils.imgtools.get_distance_transform(
                item.spec("label").data,
                param["label_value"], 
                param["threshold"]
            ),
            axis=2
        )

        _logger.info(shdw.utils.imgtools.get_array_info(edt))
        
        img_out(item[0].path, edt)

        
示例#8
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def write_height_map(img, height, path):
    data = pandas.DataFrame(height, index=range(img.shape[0] * img.shape[1]))

    # write to temporary file
    _logger.info("[SAVE] '{}'".format(path))
    shdw.utils.ply.write_ply(path, points=data)
示例#9
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def task_print_user_data():
    """Print the user data"""

    # print user's defined data
    _logger.info("Print user's defined data")
    shdw.utils.format.print_data(shdw.config.settings.get_data_dict())
示例#10
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def task_print_user_settings():
    """Print the user settings"""

    # print user's defined settings
    _logger.info("Print user's defined settings")
    shdw.utils.format.print_data(shdw.config.settings._SETTINGS)
示例#11
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def copy_image(path, dest):
    _logger.info("[COPY] '{}'".format(dest))
    shutil.copy2(path, dest)
示例#12
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def read_log(path):
    _logger.info("[READ] '{}'".format(path))
    with open(path, "r") as f:
        return f.read()