示例#1
0
def show_heatmaps(cfg, img, scmap, pose, cmap="jet"):
    interp = "bilinear"
    all_joints = cfg.all_joints
    all_joints_names = cfg.all_joints_names
    subplot_width = 3
    subplot_height = math.ceil((len(all_joints) + 1) / subplot_width)
    f, axarr = plt.subplots(subplot_height, subplot_width)
    for pidx, part in enumerate(all_joints):
        plot_j = (pidx + 1) // subplot_width
        plot_i = (pidx + 1) % subplot_width
        scmap_part = np.sum(scmap[:, :, part], axis=2)
        scmap_part = imresize(scmap_part, 8.0, interp="bicubic")
        scmap_part = np.lib.pad(scmap_part, ((4, 0), (4, 0)), "minimum")
        curr_plot = axarr[plot_j, plot_i]
        curr_plot.set_title(all_joints_names[pidx])
        curr_plot.axis("off")
        curr_plot.imshow(img, interpolation=interp)
        curr_plot.imshow(scmap_part,
                         alpha=0.5,
                         cmap=cmap,
                         interpolation=interp)

    curr_plot = axarr[0, 0]
    curr_plot.set_title("Pose")
    curr_plot.axis("off")
    curr_plot.imshow(visualize_joints(img, pose))

    plt.show()
示例#2
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    def make_batch(self, data_item, scale, mirror):
        im_file = data_item.im_path
        logging.debug("image %s", im_file)
        logging.debug("mirror %r", mirror)
        image = imread(os.path.join(self.cfg["project_path"], im_file),
                       mode="skimage")

        if self.has_gt:
            joints = np.copy(data_item.joints)

        if self.cfg["crop"]:  # adapted cropping for DLC
            if np.random.rand() < self.cfg["cropratio"]:
                j = np.random.randint(np.shape(joints)[1])
                joints, image = crop_image(joints, image, joints[0, j, 1],
                                           joints[0, j, 2], self.cfg)

        img = imresize(image, scale) if scale != 1 else image
        scaled_img_size = np.array(img.shape[0:2])

        if mirror:
            img = np.fliplr(img)

        batch = {Batch.inputs: img}

        if self.has_gt:
            stride = self.cfg["stride"]
            if mirror:
                joints = [
                    self.mirror_joints(person_joints, self.symmetric_joints,
                                       image.shape[1])
                    for person_joints in joints
                ]
            sm_size = np.ceil(scaled_img_size / (stride * 2)).astype(int) * 2
            scaled_joints = [
                person_joints[:, 1:3] * scale for person_joints in joints
            ]
            joint_id = [
                person_joints[:, 0].astype(int) for person_joints in joints
            ]
            (
                part_score_targets,
                part_score_weights,
                locref_targets,
                locref_mask,
            ) = self.compute_target_part_scoremap(joint_id, scaled_joints,
                                                  data_item, sm_size, scale)

            batch.update({
                Batch.part_score_targets: part_score_targets,
                Batch.part_score_weights: part_score_weights,
                Batch.locref_targets: locref_targets,
                Batch.locref_mask: locref_mask,
            })

        batch = {key: data_to_input(data) for (key, data) in batch.items()}

        batch[Batch.data_item] = data_item

        return batch
示例#3
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def display_dataset():
    logging.basicConfig(level=logging.DEBUG)

    cfg = load_config()
    dataset = PoseDatasetFactory.create(cfg)
    dataset.set_shuffle(False)

    while True:
        batch = dataset.next_batch()

        for frame_id in range(1):
            img = batch[Batch.inputs][frame_id, :, :, :]
            img = np.squeeze(img).astype("uint8")

            scmap = batch[Batch.part_score_targets][frame_id, :, :, :]
            scmap = np.squeeze(scmap)

            # scmask = batch[Batch.part_score_weights]
            # if scmask.size > 1:
            #     scmask = np.squeeze(scmask).astype('uint8')
            # else:
            #     scmask = np.zeros(img.shape)

            subplot_height = 4
            subplot_width = 5
            num_plots = subplot_width * subplot_height
            f, axarr = plt.subplots(subplot_height, subplot_width)

            for j in range(num_plots):
                plot_j = j // subplot_width
                plot_i = j % subplot_width

                curr_plot = axarr[plot_j, plot_i]
                curr_plot.axis("off")

                if j >= cfg["num_joints"]:
                    continue

                scmap_part = scmap[:, :, j]
                scmap_part = imresize(scmap_part, 8.0, interp="nearest")
                scmap_part = np.lib.pad(scmap_part, ((4, 0), (4, 0)),
                                        "minimum")

                curr_plot.set_title("{}".format(j + 1))
                curr_plot.imshow(img)
                curr_plot.hold(True)
                curr_plot.imshow(scmap_part, alpha=0.5)

        # figure(0)
        # plt.imshow(np.sum(scmap, axis=2))
        # plt.figure(100)
        # plt.imshow(img)
        # plt.figure(2)
        # plt.imshow(scmask)
        plt.show()
        plt.waitforbuttonpress()
示例#4
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def evaluate_network(
    config,
    Shuffles=[1],
    trainingsetindex=0,
    plotting=False,
    show_errors=True,
    comparisonbodyparts="all",
    gputouse=None,
    rescale=False,
    modelprefix="",
):
    """

    Evaluates the network based on the saved models at different stages of the training network.\n
    The evaluation results are stored in the .h5 and .csv file under the subdirectory 'evaluation_results'.
    Change the snapshotindex parameter in the config file to 'all' in order to evaluate all the saved models.
    Parameters
    ----------
    config : string
        Full path of the config.yaml file as a string.

    Shuffles: list, optional
        List of integers specifying the shuffle indices of the training dataset. The default is [1]

    trainingsetindex: int, optional
        Integer specifying which TrainingsetFraction to use. By default the first (note that TrainingFraction is a list in config.yaml). This
        variable can also be set to "all".

    plotting: bool or str, optional
        Plots the predictions on the train and test images.
        The default is ``False``; if provided it must be either ``True``, ``False``, "bodypart", or "individual".
        Setting to ``True`` defaults as "bodypart" for multi-animal projects.

    show_errors: bool, optional
        Display train and test errors. The default is `True``

    comparisonbodyparts: list of bodyparts, Default is "all".
        The average error will be computed for those body parts only (Has to be a subset of the body parts).

    gputouse: int, optional. Natural number indicating the number of your GPU (see number in nvidia-smi). If you do not have a GPU put None.
        See: https://nvidia.custhelp.com/app/answers/detail/a_id/3751/~/useful-nvidia-smi-queries

    rescale: bool, default False
        Evaluate the model at the 'global_scale' variable (as set in the test/pose_config.yaml file for a particular project). I.e. every
        image will be resized according to that scale and prediction will be compared to the resized ground truth. The error will be reported
        in pixels at rescaled to the *original* size. I.e. For a [200,200] pixel image evaluated at global_scale=.5, the predictions are calculated
        on [100,100] pixel images, compared to 1/2*ground truth and this error is then multiplied by 2!. The evaluation images are also shown for the
        original size!

    Examples
    --------
    If you do not want to plot, just evaluate shuffle 1.
    >>> deeplabcut.evaluate_network('/analysis/project/reaching-task/config.yaml', Shuffles=[1])
    --------
    If you want to plot and evaluate shuffle 0 and 1.
    >>> deeplabcut.evaluate_network('/analysis/project/reaching-task/config.yaml',Shuffles=[0, 1],plotting = True)

    --------
    If you want to plot assemblies for a maDLC project:
    >>> deeplabcut.evaluate_network('/analysis/project/reaching-task/config.yaml',Shuffles=[1],plotting = "individual")

    Note: this defaults to standard plotting for single-animal projects.

    """
    if plotting not in (True, False, "bodypart", "individual"):
        raise ValueError(f"Unknown value for `plotting`={plotting}")

    import os

    start_path = os.getcwd()
    from deeplabcut.utils import auxiliaryfunctions

    cfg = auxiliaryfunctions.read_config(config)

    if cfg.get("multianimalproject", False):
        from .evaluate_multianimal import evaluate_multianimal_full

        # TODO: Make this code not so redundant!
        evaluate_multianimal_full(
            config=config,
            Shuffles=Shuffles,
            trainingsetindex=trainingsetindex,
            plotting=plotting,
            comparisonbodyparts=comparisonbodyparts,
            gputouse=gputouse,
            modelprefix=modelprefix,
        )
    else:
        from deeplabcut.utils.auxfun_videos import imread, imresize
        from deeplabcut.pose_estimation_tensorflow.core import predict
        from deeplabcut.pose_estimation_tensorflow.config import load_config
        from deeplabcut.pose_estimation_tensorflow.datasets.utils import data_to_input
        from deeplabcut.utils import auxiliaryfunctions, conversioncode
        import tensorflow as tf

        # If a string was passed in, auto-convert to True for backward compatibility
        plotting = bool(plotting)

        if "TF_CUDNN_USE_AUTOTUNE" in os.environ:
            del os.environ[
                "TF_CUDNN_USE_AUTOTUNE"]  # was potentially set during training

        tf.compat.v1.reset_default_graph()
        os.environ["TF_CPP_MIN_LOG_LEVEL"] = "2"  #
        #    tf.logging.set_verbosity(tf.logging.WARN)

        start_path = os.getcwd()
        # Read file path for pose_config file. >> pass it on
        cfg = auxiliaryfunctions.read_config(config)
        if gputouse is not None:  # gpu selectinon
            os.environ["CUDA_VISIBLE_DEVICES"] = str(gputouse)

        if trainingsetindex == "all":
            TrainingFractions = cfg["TrainingFraction"]
        else:
            if (trainingsetindex < len(cfg["TrainingFraction"])
                    and trainingsetindex >= 0):
                TrainingFractions = [
                    cfg["TrainingFraction"][int(trainingsetindex)]
                ]
            else:
                raise Exception(
                    "Please check the trainingsetindex! ",
                    trainingsetindex,
                    " should be an integer from 0 .. ",
                    int(len(cfg["TrainingFraction"]) - 1),
                )

        # Loading human annotatated data
        trainingsetfolder = auxiliaryfunctions.GetTrainingSetFolder(cfg)
        Data = pd.read_hdf(
            os.path.join(
                cfg["project_path"],
                str(trainingsetfolder),
                "CollectedData_" + cfg["scorer"] + ".h5",
            ))

        # Get list of body parts to evaluate network for
        comparisonbodyparts = (
            auxiliaryfunctions.IntersectionofBodyPartsandOnesGivenbyUser(
                cfg, comparisonbodyparts))
        # Make folder for evaluation
        auxiliaryfunctions.attempttomakefolder(
            str(cfg["project_path"] + "/evaluation-results/"))
        for shuffle in Shuffles:
            for trainFraction in TrainingFractions:
                ##################################################
                # Load and setup CNN part detector
                ##################################################
                datafn, metadatafn = auxiliaryfunctions.GetDataandMetaDataFilenames(
                    trainingsetfolder, trainFraction, shuffle, cfg)
                modelfolder = os.path.join(
                    cfg["project_path"],
                    str(
                        auxiliaryfunctions.GetModelFolder(
                            trainFraction,
                            shuffle,
                            cfg,
                            modelprefix=modelprefix)),
                )

                path_test_config = Path(modelfolder) / "test" / "pose_cfg.yaml"
                # Load meta data
                (
                    data,
                    trainIndices,
                    testIndices,
                    trainFraction,
                ) = auxiliaryfunctions.LoadMetadata(
                    os.path.join(cfg["project_path"], metadatafn))

                try:
                    dlc_cfg = load_config(str(path_test_config))
                except FileNotFoundError:
                    raise FileNotFoundError(
                        "It seems the model for shuffle %s and trainFraction %s does not exist."
                        % (shuffle, trainFraction))

                # change batch size, if it was edited during analysis!
                dlc_cfg[
                    "batch_size"] = 1  # in case this was edited for analysis.

                # Create folder structure to store results.
                evaluationfolder = os.path.join(
                    cfg["project_path"],
                    str(
                        auxiliaryfunctions.GetEvaluationFolder(
                            trainFraction,
                            shuffle,
                            cfg,
                            modelprefix=modelprefix)),
                )
                auxiliaryfunctions.attempttomakefolder(evaluationfolder,
                                                       recursive=True)
                # path_train_config = modelfolder / 'train' / 'pose_cfg.yaml'

                # Check which snapshots are available and sort them by # iterations
                Snapshots = np.array([
                    fn.split(".")[0] for fn in os.listdir(
                        os.path.join(str(modelfolder), "train"))
                    if "index" in fn
                ])
                try:  # check if any where found?
                    Snapshots[0]
                except IndexError:
                    raise FileNotFoundError(
                        "Snapshots not found! It seems the dataset for shuffle %s and trainFraction %s is not trained.\nPlease train it before evaluating.\nUse the function 'train_network' to do so."
                        % (shuffle, trainFraction))

                increasing_indices = np.argsort(
                    [int(m.split("-")[1]) for m in Snapshots])
                Snapshots = Snapshots[increasing_indices]

                if cfg["snapshotindex"] == -1:
                    snapindices = [-1]
                elif cfg["snapshotindex"] == "all":
                    snapindices = range(len(Snapshots))
                elif cfg["snapshotindex"] < len(Snapshots):
                    snapindices = [cfg["snapshotindex"]]
                else:
                    raise ValueError(
                        "Invalid choice, only -1 (last), any integer up to last, or all (as string)!"
                    )

                final_result = []

                ########################### RESCALING (to global scale)
                if rescale:
                    scale = dlc_cfg["global_scale"]
                    Data = (pd.read_hdf(
                        os.path.join(
                            cfg["project_path"],
                            str(trainingsetfolder),
                            "CollectedData_" + cfg["scorer"] + ".h5",
                        )) * scale)
                else:
                    scale = 1

                conversioncode.guarantee_multiindex_rows(Data)
                ##################################################
                # Compute predictions over images
                ##################################################
                for snapindex in snapindices:
                    dlc_cfg["init_weights"] = os.path.join(
                        str(modelfolder), "train", Snapshots[snapindex]
                    )  # setting weights to corresponding snapshot.
                    trainingsiterations = (
                        dlc_cfg["init_weights"].split(os.sep)[-1]
                    ).split(
                        "-"
                    )[-1]  # read how many training siterations that corresponds to.

                    # Name for deeplabcut net (based on its parameters)
                    DLCscorer, DLCscorerlegacy = auxiliaryfunctions.GetScorerName(
                        cfg,
                        shuffle,
                        trainFraction,
                        trainingsiterations,
                        modelprefix=modelprefix,
                    )
                    print(
                        "Running ",
                        DLCscorer,
                        " with # of training iterations:",
                        trainingsiterations,
                    )
                    (
                        notanalyzed,
                        resultsfilename,
                        DLCscorer,
                    ) = auxiliaryfunctions.CheckifNotEvaluated(
                        str(evaluationfolder),
                        DLCscorer,
                        DLCscorerlegacy,
                        Snapshots[snapindex],
                    )
                    if notanalyzed:
                        # Specifying state of model (snapshot / training state)
                        sess, inputs, outputs = predict.setup_pose_prediction(
                            dlc_cfg)
                        Numimages = len(Data.index)
                        PredicteData = np.zeros(
                            (Numimages, 3 * len(dlc_cfg["all_joints_names"])))
                        print("Running evaluation ...")
                        for imageindex, imagename in tqdm(enumerate(
                                Data.index)):
                            image = imread(
                                os.path.join(cfg["project_path"], *imagename),
                                mode="skimage",
                            )
                            if scale != 1:
                                image = imresize(image, scale)

                            image_batch = data_to_input(image)
                            # Compute prediction with the CNN
                            outputs_np = sess.run(
                                outputs, feed_dict={inputs: image_batch})
                            scmap, locref = predict.extract_cnn_output(
                                outputs_np, dlc_cfg)

                            # Extract maximum scoring location from the heatmap, assume 1 person
                            pose = predict.argmax_pose_predict(
                                scmap, locref, dlc_cfg["stride"])
                            PredicteData[imageindex, :] = (
                                pose.flatten()
                            )  # NOTE: thereby     cfg_test['all_joints_names'] should be same order as bodyparts!

                        sess.close()  # closes the current tf session

                        index = pd.MultiIndex.from_product(
                            [
                                [DLCscorer],
                                dlc_cfg["all_joints_names"],
                                ["x", "y", "likelihood"],
                            ],
                            names=["scorer", "bodyparts", "coords"],
                        )

                        # Saving results
                        DataMachine = pd.DataFrame(PredicteData,
                                                   columns=index,
                                                   index=Data.index)
                        DataMachine.to_hdf(resultsfilename, "df_with_missing")

                        print(
                            "Analysis is done and the results are stored (see evaluation-results) for snapshot: ",
                            Snapshots[snapindex],
                        )
                        DataCombined = pd.concat([Data.T, DataMachine.T],
                                                 axis=0,
                                                 sort=False).T

                        RMSE, RMSEpcutoff = pairwisedistances(
                            DataCombined,
                            cfg["scorer"],
                            DLCscorer,
                            cfg["pcutoff"],
                            comparisonbodyparts,
                        )
                        testerror = np.nanmean(
                            RMSE.iloc[testIndices].values.flatten())
                        trainerror = np.nanmean(
                            RMSE.iloc[trainIndices].values.flatten())
                        testerrorpcutoff = np.nanmean(
                            RMSEpcutoff.iloc[testIndices].values.flatten())
                        trainerrorpcutoff = np.nanmean(
                            RMSEpcutoff.iloc[trainIndices].values.flatten())
                        results = [
                            trainingsiterations,
                            int(100 * trainFraction),
                            shuffle,
                            np.round(trainerror, 2),
                            np.round(testerror, 2),
                            cfg["pcutoff"],
                            np.round(trainerrorpcutoff, 2),
                            np.round(testerrorpcutoff, 2),
                        ]
                        final_result.append(results)

                        if show_errors:
                            print(
                                "Results for",
                                trainingsiterations,
                                " training iterations:",
                                int(100 * trainFraction),
                                shuffle,
                                "train error:",
                                np.round(trainerror, 2),
                                "pixels. Test error:",
                                np.round(testerror, 2),
                                " pixels.",
                            )
                            print(
                                "With pcutoff of",
                                cfg["pcutoff"],
                                " train error:",
                                np.round(trainerrorpcutoff, 2),
                                "pixels. Test error:",
                                np.round(testerrorpcutoff, 2),
                                "pixels",
                            )
                            if scale != 1:
                                print(
                                    "The predictions have been calculated for rescaled images (and rescaled ground truth). Scale:",
                                    scale,
                                )
                            print(
                                "Thereby, the errors are given by the average distances between the labels by DLC and the scorer."
                            )

                        if plotting:
                            print("Plotting...")
                            foldername = os.path.join(
                                str(evaluationfolder),
                                "LabeledImages_" + DLCscorer + "_" +
                                Snapshots[snapindex],
                            )
                            auxiliaryfunctions.attempttomakefolder(foldername)
                            Plotting(
                                cfg,
                                comparisonbodyparts,
                                DLCscorer,
                                trainIndices,
                                DataCombined * 1.0 / scale,
                                foldername,
                            )  # Rescaling coordinates to have figure in original size!

                        tf.compat.v1.reset_default_graph()
                        # print(final_result)
                    else:
                        DataMachine = pd.read_hdf(resultsfilename)
                        conversioncode.guarantee_multiindex_rows(DataMachine)
                        if plotting:
                            DataCombined = pd.concat([Data.T, DataMachine.T],
                                                     axis=0,
                                                     sort=False).T
                            print(
                                "Plotting...(attention scale might be inconsistent in comparison to when data was analyzed; i.e. if you used rescale)"
                            )
                            foldername = os.path.join(
                                str(evaluationfolder),
                                "LabeledImages_" + DLCscorer + "_" +
                                Snapshots[snapindex],
                            )
                            auxiliaryfunctions.attempttomakefolder(foldername)
                            Plotting(
                                cfg,
                                comparisonbodyparts,
                                DLCscorer,
                                trainIndices,
                                DataCombined * 1.0 / scale,
                                foldername,
                            )

                if len(final_result
                       ) > 0:  # Only append if results were calculated
                    make_results_file(final_result, evaluationfolder,
                                      DLCscorer)
                    print(
                        "The network is evaluated and the results are stored in the subdirectory 'evaluation_results'."
                    )
                    print(
                        "Please check the results, then choose the best model (snapshot) for prediction. You can update the config.yaml file with the appropriate index for the 'snapshotindex'.\nUse the function 'analyze_video' to make predictions on new videos."
                    )
                    print(
                        "Otherwise, consider adding more labeled-data and retraining the network (see DeepLabCut workflow Fig 2, Nath 2019)"
                    )

    # returning to initial folder
    os.chdir(str(start_path))
示例#5
0
def extract_maps(
    config,
    shuffle=0,
    trainingsetindex=0,
    gputouse=None,
    rescale=False,
    Indices=None,
    modelprefix="",
):
    """
    Extracts the scoremap, locref, partaffinityfields (if available).

    Returns a dictionary indexed by: trainingsetfraction, snapshotindex, and imageindex
    for those keys, each item contains: (image,scmap,locref,paf,bpt names,partaffinity graph, imagename, True/False if this image was in trainingset)
    ----------
    config : string
        Full path of the config.yaml file as a string.

    shuffle: integer
        integers specifying shuffle index of the training dataset. The default is 0.

    trainingsetindex: int, optional
        Integer specifying which TrainingsetFraction to use. By default the first (note that TrainingFraction is a list in config.yaml). This
        variable can also be set to "all".

    rescale: bool, default False
        Evaluate the model at the 'global_scale' variable (as set in the test/pose_config.yaml file for a particular project). I.e. every
        image will be resized according to that scale and prediction will be compared to the resized ground truth. The error will be reported
        in pixels at rescaled to the *original* size. I.e. For a [200,200] pixel image evaluated at global_scale=.5, the predictions are calculated
        on [100,100] pixel images, compared to 1/2*ground truth and this error is then multiplied by 2!. The evaluation images are also shown for the
        original size!

    Examples
    --------
    If you want to extract the data for image 0 and 103 (of the training set) for model trained with shuffle 0.
    >>> deeplabcut.extract_maps(configfile,0,Indices=[0,103])

    """
    from deeplabcut.utils.auxfun_videos import imread, imresize
    from deeplabcut.pose_estimation_tensorflow.nnet import predict
    from deeplabcut.pose_estimation_tensorflow.nnet import (
        predict_multianimal as predictma, )
    from deeplabcut.pose_estimation_tensorflow.config import load_config
    from deeplabcut.pose_estimation_tensorflow.dataset.pose_dataset import data_to_input
    from deeplabcut.utils import auxiliaryfunctions
    from tqdm import tqdm
    import tensorflow as tf

    vers = (tf.__version__).split(".")
    if int(vers[0]) == 1 and int(vers[1]) > 12:
        TF = tf.compat.v1
    else:
        TF = tf

    import pandas as pd
    from pathlib import Path
    import numpy as np

    TF.reset_default_graph()
    os.environ["TF_CPP_MIN_LOG_LEVEL"] = "2"  #
    #    tf.logging.set_verbosity(tf.logging.WARN)

    start_path = os.getcwd()
    # Read file path for pose_config file. >> pass it on
    cfg = auxiliaryfunctions.read_config(config)

    if gputouse is not None:  # gpu selectinon
        os.environ["CUDA_VISIBLE_DEVICES"] = str(gputouse)

    if trainingsetindex == "all":
        TrainingFractions = cfg["TrainingFraction"]
    else:
        if trainingsetindex < len(
                cfg["TrainingFraction"]) and trainingsetindex >= 0:
            TrainingFractions = [
                cfg["TrainingFraction"][int(trainingsetindex)]
            ]
        else:
            raise Exception(
                "Please check the trainingsetindex! ",
                trainingsetindex,
                " should be an integer from 0 .. ",
                int(len(cfg["TrainingFraction"]) - 1),
            )

    # Loading human annotatated data
    trainingsetfolder = auxiliaryfunctions.GetTrainingSetFolder(cfg)
    Data = pd.read_hdf(
        os.path.join(
            cfg["project_path"],
            str(trainingsetfolder),
            "CollectedData_" + cfg["scorer"] + ".h5",
        ),
        "df_with_missing",
    )

    # Make folder for evaluation
    auxiliaryfunctions.attempttomakefolder(
        str(cfg["project_path"] + "/evaluation-results/"))

    Maps = {}
    for trainFraction in TrainingFractions:
        Maps[trainFraction] = {}
        ##################################################
        # Load and setup CNN part detector
        ##################################################
        datafn, metadatafn = auxiliaryfunctions.GetDataandMetaDataFilenames(
            trainingsetfolder, trainFraction, shuffle, cfg)

        modelfolder = os.path.join(
            cfg["project_path"],
            str(
                auxiliaryfunctions.GetModelFolder(trainFraction,
                                                  shuffle,
                                                  cfg,
                                                  modelprefix=modelprefix)),
        )
        path_test_config = Path(modelfolder) / "test" / "pose_cfg.yaml"
        # Load meta data
        (
            data,
            trainIndices,
            testIndices,
            trainFraction,
        ) = auxiliaryfunctions.LoadMetadata(
            os.path.join(cfg["project_path"], metadatafn))
        try:
            dlc_cfg = load_config(str(path_test_config))
        except FileNotFoundError:
            raise FileNotFoundError(
                "It seems the model for shuffle %s and trainFraction %s does not exist."
                % (shuffle, trainFraction))

        # change batch size, if it was edited during analysis!
        dlc_cfg["batch_size"] = 1  # in case this was edited for analysis.

        # Create folder structure to store results.
        evaluationfolder = os.path.join(
            cfg["project_path"],
            str(
                auxiliaryfunctions.GetEvaluationFolder(
                    trainFraction, shuffle, cfg, modelprefix=modelprefix)),
        )
        auxiliaryfunctions.attempttomakefolder(evaluationfolder,
                                               recursive=True)
        # path_train_config = modelfolder / 'train' / 'pose_cfg.yaml'

        # Check which snapshots are available and sort them by # iterations
        Snapshots = np.array([
            fn.split(".")[0]
            for fn in os.listdir(os.path.join(str(modelfolder), "train"))
            if "index" in fn
        ])
        try:  # check if any where found?
            Snapshots[0]
        except IndexError:
            raise FileNotFoundError(
                "Snapshots not found! It seems the dataset for shuffle %s and trainFraction %s is not trained.\nPlease train it before evaluating.\nUse the function 'train_network' to do so."
                % (shuffle, trainFraction))

        increasing_indices = np.argsort(
            [int(m.split("-")[1]) for m in Snapshots])
        Snapshots = Snapshots[increasing_indices]

        if cfg["snapshotindex"] == -1:
            snapindices = [-1]
        elif cfg["snapshotindex"] == "all":
            snapindices = range(len(Snapshots))
        elif cfg["snapshotindex"] < len(Snapshots):
            snapindices = [cfg["snapshotindex"]]
        else:
            print(
                "Invalid choice, only -1 (last), any integer up to last, or all (as string)!"
            )

        ########################### RESCALING (to global scale)
        scale = dlc_cfg["global_scale"] if rescale else 1
        Data *= scale

        bptnames = [
            dlc_cfg["all_joints_names"][i]
            for i in range(len(dlc_cfg["all_joints"]))
        ]

        for snapindex in snapindices:
            dlc_cfg["init_weights"] = os.path.join(
                str(modelfolder), "train", Snapshots[snapindex]
            )  # setting weights to corresponding snapshot.
            trainingsiterations = (
                dlc_cfg["init_weights"].split(os.sep)[-1]
            ).split("-")[
                -1]  # read how many training siterations that corresponds to.

            # Name for deeplabcut net (based on its parameters)
            # DLCscorer,DLCscorerlegacy = auxiliaryfunctions.GetScorerName(cfg,shuffle,trainFraction,trainingsiterations)
            # notanalyzed, resultsfilename, DLCscorer=auxiliaryfunctions.CheckifNotEvaluated(str(evaluationfolder),DLCscorer,DLCscorerlegacy,Snapshots[snapindex])
            # print("Extracting maps for ", DLCscorer, " with # of trainingiterations:", trainingsiterations)
            # if notanalyzed: #this only applies to ask if h5 exists...

            # Specifying state of model (snapshot / training state)
            sess, inputs, outputs = predict.setup_pose_prediction(dlc_cfg)
            Numimages = len(Data.index)
            PredicteData = np.zeros(
                (Numimages, 3 * len(dlc_cfg["all_joints_names"])))
            print("Analyzing data...")
            if Indices is None:
                Indices = enumerate(Data.index)
            else:
                Ind = [Data.index[j] for j in Indices]
                Indices = enumerate(Ind)

            DATA = {}
            for imageindex, imagename in tqdm(Indices):
                image = imread(os.path.join(cfg["project_path"], imagename),
                               mode="RGB")
                if scale != 1:
                    image = imresize(image, scale)

                image_batch = data_to_input(image)
                # Compute prediction with the CNN
                outputs_np = sess.run(outputs, feed_dict={inputs: image_batch})

                if cfg.get("multianimalproject", False):
                    scmap, locref, paf = predictma.extract_cnn_output(
                        outputs_np, dlc_cfg)
                    pagraph = dlc_cfg["partaffinityfield_graph"]
                else:
                    scmap, locref = predict.extract_cnn_output(
                        outputs_np, dlc_cfg)
                    paf = None
                    pagraph = []

                if imageindex in testIndices:
                    trainingfram = False
                else:
                    trainingfram = True

                DATA[imageindex] = [
                    image,
                    scmap,
                    locref,
                    paf,
                    bptnames,
                    pagraph,
                    imagename,
                    trainingfram,
                ]
            Maps[trainFraction][Snapshots[snapindex]] = DATA
    os.chdir(str(start_path))
    return Maps
Augmentations.append([augtype, seq])

augtype = 'fog'
seq = iaa.Sequential([iaa.Fog()])
Augmentations.append([augtype, seq])

augtype = 'snow'
seq = iaa.Sequential([
    iaa.Snowflakes(flake_size=(.2, .5),
                   density=(0.005, 0.07),
                   speed=(0.01, 0.05))
])
Augmentations.append([augtype, seq])

for ind, imname in enumerate(Dataframe.index):
    image = imresize(imread(os.path.join('montblanc_images', imname)),
                     size=scale)
    ny, nx, nc = np.shape(image)

    kpts = []
    for i in individuals:
        for b in bodyparts:
            x, y = Dataframe.iloc[ind][scorer][i][b]['x'], Dataframe.iloc[ind][
                scorer][i][b]['y']
            if np.isfinite(x) and np.isfinite(y):
                kpts.append(Keypoint(x=x * scale, y=y * scale))

    kps = KeypointsOnImage(kpts, shape=image.shape)

    cells = []

    # image with keypoints before augmentation
    def make_batch(self, data_item, scale, mirror):
        im_file = data_item.im_path
        logging.debug("image %s", im_file)
        logging.debug("mirror %r", mirror)
        image = imread(os.path.join(self.cfg['project_path'], im_file), mode="RGB")

        if self.has_gt:
            joints = np.copy(data_item.joints)

        if self.cfg['crop']:  # adapted cropping for DLC
            if np.random.rand() < self.cfg['cropratio']:
                j = np.random.randint(np.shape(joints)[1])  # pick a random joint
                joints, image = CropImage(
                    joints, image, joints[0, j, 1], joints[0, j, 2], self.cfg
                )
                """
                print(joints)
                import matplotlib.pyplot as plt
                plt.clf()
                plt.imshow(image)
                plt.plot(joints[0,:,1],joints[0,:,2],'.')
                plt.savefig("abc"+str(np.random.randint(int(1e6)))+".png")
                """
            else:
                pass  # no cropping!

        img = imresize(image, scale) if scale != 1 else image
        scaled_img_size = arr(img.shape[0:2])
        if mirror:
            img = np.fliplr(img)

        batch = {Batch.inputs: img}

        if self.has_gt:
            stride = self.cfg['stride']

            if mirror:
                joints = [
                    self.mirror_joints(
                        person_joints, self.symmetric_joints, image.shape[1]
                    )
                    for person_joints in joints
                ]

            sm_size = np.ceil(scaled_img_size / (stride * 2)).astype(int) * 2

            scaled_joints = [person_joints[:, 1:3] * scale for person_joints in joints]

            joint_id = [person_joints[:, 0].astype(int) for person_joints in joints]
            (
                part_score_targets,
                part_score_weights,
                locref_targets,
                locref_mask,
            ) = self.compute_target_part_scoremap(
                joint_id, scaled_joints, data_item, sm_size, scale
            )

            batch.update(
                {
                    Batch.part_score_targets: part_score_targets,
                    Batch.part_score_weights: part_score_weights,
                    Batch.locref_targets: locref_targets,
                    Batch.locref_mask: locref_mask,
                }
            )

        batch = {key: data_to_input(data) for (key, data) in batch.items()}

        batch[Batch.data_item] = data_item

        return batch
    def make_batch(self, data_item, scale, mirror):

        im_file = data_item.im_path
        logging.debug("image %s", im_file)
        logging.debug("mirror %r", mirror)

        # print(im_file, os.getcwd())
        # print(self.cfg.project_path)
        image = imread(os.path.join(self.cfg.project_path, im_file),
                       mode="RGB")

        if self.has_gt:
            joints = np.copy(data_item.joints)

        if self.cfg.crop:  # adapted cropping for DLC
            if np.random.rand() < self.cfg.cropratio:
                # 1. get center of joints
                j = np.random.randint(
                    np.shape(joints)[1])  # pick a random joint
                # draw random crop dimensions & subtract joint points
                # print(joints,j,'ahah')
                joints, image = CropImage(joints, image, joints[0, j, 1],
                                          joints[0, j, 2], self.cfg)

                # if self.has_gt:
                #    joints[0,:, 1] -= x0
                #    joints[0,:, 2] -= y0
                """
                print(joints)
                import matplotlib.pyplot as plt
                plt.clf()
                plt.imshow(image)
                plt.plot(joints[0,:,1],joints[0,:,2],'.')
                plt.savefig("abc"+str(np.random.randint(int(1e6)))+".png")
                """
            else:
                pass  # no cropping!

        # Charlie addition
        if not self.cfg.using_z_slices:
            img = imresize(image, scale) if scale != 1 else image
            scaled_img_size = arr(img.shape[0:2])
        else:
            img = imresize(image, scale) if scale < 1 else image
            scaled_img_size = arr(img.shape[0:3])

        if mirror:
            img = np.fliplr(img)

        batch = {Batch.inputs: img}

        if self.has_gt:
            stride = self.cfg.stride

            if mirror:
                joints = [
                    self.mirror_joints(person_joints, self.symmetric_joints,
                                       image.shape[1])
                    for person_joints in joints
                ]

            sm_size = np.ceil(scaled_img_size / (stride * 2)).astype(int) * 2

            scaled_joints = [
                person_joints[:, 1:3] * scale for person_joints in joints
            ]

            joint_id = [
                person_joints[:, 0].astype(int) for person_joints in joints
            ]
            (
                part_score_targets,
                part_score_weights,
                locref_targets,
                locref_mask,
            ) = self.compute_target_part_scoremap(joint_id, scaled_joints,
                                                  data_item, sm_size, scale)

            batch.update({
                Batch.part_score_targets: part_score_targets,
                Batch.part_score_weights: part_score_weights,
                Batch.locref_targets: locref_targets,
                Batch.locref_mask: locref_mask,
            })

        batch = {key: data_to_input(data) for (key, data) in batch.items()}

        batch[Batch.data_item] = data_item

        return batch
Augmentations.append([augtype, seq])

augtype = 'edgedetect'
seq = iaa.Sequential([iaa.EdgeDetect(alpha=(0.8, 1.0))])
Augmentations.append([augtype, seq])

augtype = 'flipud'
seq = iaa.Sequential([iaa.Flipud(1)])
Augmentations.append([augtype, seq])

augtype = 'fliplr'
seq = iaa.Sequential([iaa.Fliplr(1)])
Augmentations.append([augtype, seq])

for ind, imname in enumerate(Dataframe.index):
    image = imresize(imread(os.path.join(imfolder, imname)), size=scale)
    ny, nx, nc = np.shape(image)

    kpts = []
    for b in bodyparts:
        x, y = Dataframe.iloc[ind][scorer][b]['x'], Dataframe.iloc[ind][
            scorer][b]['y']
        if np.isfinite(x) and np.isfinite(y):
            kpts.append(Keypoint(x=x * scale, y=y * scale))

    kps = KeypointsOnImage(kpts, shape=image.shape)

    cells = []

    # image with keypoints before augmentation
    image_before = kps.draw_on_image(image,
    def make_batch(self, data_item, scale, mirror):
        im_file = data_item.im_path
        logging.debug("image %s", im_file)
        logging.debug("mirror %r", mirror)

        # print(im_file, os.getcwd())
        # print(self.cfg.project_path)
        vid_fname = os.path.join(self.cfg.project_path, im_file)
        image = imread(vid_fname, mode="RGB")
        # print("Full image filename: ", vid_fname)
        # print("Shape of read image: ", image.shape)

        if self.has_gt:
            joints = np.copy(data_item.joints)

        if self.cfg.crop:  # adapted cropping for DLC
            if np.random.rand() < self.cfg.cropratio:
                j = np.random.randint(np.shape(joints)[1])  # pick a random joint
                joints, image = CropImage(
                    joints, image, joints[0, j, 1], joints[0, j, 2], self.cfg
                )
                """
                print(joints)
                import matplotlib.pyplot as plt
                plt.clf()
                plt.imshow(image)
                plt.plot(joints[0,:,1],joints[0,:,2],'.')
                plt.savefig("abc"+str(np.random.randint(int(1e6)))+".png")
                """
            else:
                pass  # no cropping!

        # Charlie addition
        if not self.cfg['using_z_slices']:
            img = imresize(image, scale) if scale != 1 else image
            scaled_img_size = arr(img.shape[0:2])
        else:
            # img = imresize(image, scale) if scale < 1 else image
            # if scale != 1:
            #     zspan = range(image.shape[0])
            #     img = np.array([imresize(image[z,...], scale) for z in zspan])
            #     print(f"{img.shape}")
            # else:
            #     img = image
            img = image # Just ignore scale
            scaled_img_size = arr(img.shape[:3]) # Ignore color
        if mirror:
            img = np.fliplr(img)

        batch = {Batch.inputs: img}

        if self.has_gt:
            stride = self.cfg.stride

            if mirror:
                joints = [
                    self.mirror_joints(
                        person_joints, self.symmetric_joints, image.shape[1]
                    )
                    for person_joints in joints
                ]

            # print("Input size: ", scaled_img_size)
            # print("Stride: ", stride)
            sm_size = np.ceil(scaled_img_size / (stride * 2)).astype(int) * 2
            if self.cfg.using_z_slices:
                sm_size[0] = scaled_img_size[0] # z should not be "strided"
            print(f"Resized to {sm_size} from {image.shape} using scale {scale}")

            if not self.cfg.using_z_slices:
                scaled_joints = [person_joints[:, 1:3] * scale for person_joints in joints]
            else:
                # print("Scale ", scale)
                scaled_joints = [person_joints[:, 1:4] * scale for person_joints in joints]
                # [print("Person joints ", person_joints) for person_joints in joints]

            joint_id = [person_joints[:, 0].astype(int) for person_joints in joints]
            if not self.cfg.using_z_slices:
                compute = self.compute_target_part_scoremap
            else:
                compute = self.compute_target_part_scoremap_slices
            (
                part_score_targets,
                part_score_weights,
                locref_targets,
                locref_mask,
            ) = compute(joint_id, scaled_joints, data_item, sm_size, scale)

            # print("part_score_targets: ", part_score_targets.shape)
            # print("locref_targets: ", locref_targets.shape)

            batch.update(
                {
                    Batch.part_score_targets: part_score_targets,
                    Batch.part_score_weights: part_score_weights,
                    Batch.locref_targets: locref_targets,
                    Batch.locref_mask: locref_mask,
                }
            )

        batch = {key: data_to_input(data) for (key, data) in batch.items()}

        batch[Batch.data_item] = data_item

        return batch