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import collections
import os
from os.path import join
import io

import matplotlib.pyplot as plt
import numpy as np
import torch.multiprocessing
import torch.nn as nn
import torch.nn.functional as F
import wget

import datetime

from dateutil.relativedelta import relativedelta
from PIL import Image
from scipy.optimize import linear_sum_assignment
from torch._six import string_classes
from torch.utils.data._utils.collate import np_str_obj_array_pattern, default_collate_err_msg_format
from torchmetrics import Metric
from torchvision import models
from torchvision import transforms as T
from torch.utils.tensorboard.summary import hparams
import matplotlib as mpl
from PIL import Image

import matplotlib as mpl

import torch.multiprocessing
import torchvision.transforms as T

import plotly.graph_objects as go
import plotly.express as px
import numpy as np
from plotly.subplots import make_subplots

import os   
os.environ['KMP_DUPLICATE_LIB_OK'] = 'True'

colors = ("red", "palegreen", "green", "steelblue", "blue", "yellow", "lightgrey")
class_names = ('Buildings', 'Cultivation', 'Natural green', 'Wetland', 'Water', 'Infrastructure', 'Background')
mapping_class = {
    "Buildings": 1,
    "Cultivation": 2,
    "Natural green": 3,
    "Wetland": 4,
    "Water": 5,
    "Infrastructure": 6,
    "Background": 0,
}

score_attribution = {
    "Buildings" : 0.,
    "Cultivation": 0.3,
    "Natural green": 1.,
    "Wetland": 0.9,
    "Water": 0.9,
    "Infrastructure": 0.,
    "Background": 0.
}
bounds = list(np.arange(len(mapping_class.keys()) + 1) + 1)
cmap = mpl.colors.ListedColormap(colors)
norm = mpl.colors.BoundaryNorm(bounds, cmap.N)

def compute_biodiv_score(class_image):
    """Compute the biodiversity score of an image

    Args:
        image (_type_): _description_

    Returns:
        biodiversity_score: the biodiversity score associated to the landscape of the image
    """
    score_matrice = class_image.copy().astype(int)
    for key in mapping_class.keys():
        score_matrice = np.where(score_matrice==mapping_class[key], score_attribution[key], score_matrice)
    number_of_pixel = np.prod(list(score_matrice.shape))
    score = np.sum(score_matrice)/number_of_pixel
    score_details = {
        key: np.sum(np.where(class_image == mapping_class[key], 1, 0))
        for key in mapping_class.keys()
        if key not in ["background"]
    }
    return score, score_details

def plot_imgs_labels(months, imgs, imgs_label, nb_values, scores) : 
    scores = [0.89, 0.70, 0.3, 0.2]      

    # fig2 = px.imshow(np.array(imgs), animation_frame=0, binary_string=True)
    # fig3 = px.imshow(np.array(imgs_label), animation_frame=0, binary_string=True)
    
    # # Scores 
    # scatters = [go.Scatter(
    #         x=months[:i+1], 
    #         y=scores[:i+1], 
    #         mode="lines+markers+text",  
    #         marker_color="black",  
    #         text = [f"{score:.4f}" for score in scores[:i+1]], 
    #         textposition="top center",
            
    #     ) for i in range(len(scores))]

    

    # fig.add_trace(fig2["frames"][0]["data"][0], row=1, col=1)
    # fig.add_trace(fig3["frames"][0]["data"][0], row=1, col=2)

    # fig.add_trace(go.Pie(labels = class_names,
    #             values = [nb_values[0][key] for key in mapping_class.keys()],
    #             marker_colors = colors, 
    #             name="Segment repartition",
    #             textposition='inside',
    #             texttemplate = "%{percent:.0%}",
    #             textfont_size=14
    #             ),
    #             row=1, col=3)


    # fig.add_trace(scatters[0], row=1, col=4)
    # # fig.update_traces(selector=dict(type='scatter'))

    # number_frames = len(imgs)
    # frames = [dict(
    #             name = k,
    #             data = [ fig2["frames"][k]["data"][0],
    #                     fig3["frames"][k]["data"][0],
    #                     go.Pie(labels = class_names,
    #                             values = [nb_values[k][key] for key in mapping_class.keys()],
    #                             marker_colors = colors, 
    #                             name="Segment repartition",
    #                             textposition='inside',
    #                             texttemplate = "%{percent:.0%}",
    #                             textfont_size=14
    #                             ),
    #                     scatters[k]
    #                     ],
    #             traces=[0, 1, 2, 3]
    #             ) for k in range(number_frames)]

    # updatemenus = [dict(type='buttons',
    #                     buttons=[dict(
    #                         label='Play',
    #                         method='animate',
                            # args=[
                            #     [f'{k}' for k in range(number_frames)], 
                            #     dict(
                            #         frame=dict(duration=500, redraw=False), 
                            #         transition=dict(duration=0),
                            #         # easing='linear',
                            #         # fromcurrent=True,
                            #         # mode='immediate'
                            #     )
                            #     ])
    #                         ],
    #                     direction= 'left', 
    #                     pad=dict(r= 10, t=85), 
    #                     showactive=True, x= 0.1, y= 0.1, xanchor= 'right', yanchor= 'bottom')
    #             ]

    # sliders = [{'yanchor': 'top',
    #             'xanchor': 'left', 
    #             'currentvalue': {'font': {'size': 16}, 'prefix': 'Frame: ', 'visible': False, 'xanchor': 'right'},
    #             'transition': {'duration': 500.0, 'easing': 'linear'},
    #             'pad': {'b': 10, 't': 50}, 
    #             'len': 0.9, 'x': 0.1, 'y': 0, 
    #             'steps': [{'args': [[k], {'frame': {'duration': 500.0, 'easing': 'linear', 'redraw': False},
    #                                     'transition': {'duration': 0, 'easing': 'linear'}}], 
    #                     'label': months[k], 'method': 'animate'} for k in range(number_frames)       
    #                     ]}]


    # fig.update(frames=frames,
            #     layout={
            #     "xaxis1": {
            #                 "autorange":True,
            #                 'showgrid': False,
            #                 'zeroline': False, # thick line at x=0
            #                 'visible': False,  # numbers below
            #             },

            #     "yaxis1": {
            #                 "autorange":True,
            #                 'showgrid': False,
            #                 'zeroline': False,
            #                 'visible': False,},
                            
            #     "xaxis2": {
            #                 "autorange":True,
            #                 'showgrid': False,
            #                 'zeroline': False,
            #                 'visible': False,
            #             },

            #     "yaxis2": {
            #                 "autorange":True,
            #                 'showgrid': False,
            #                 'zeroline': False,
            #                 'visible': False,},
                            
                
            #     "xaxis4": {
            #                 "ticktext": months,
            #                 "tickvals": months,
            #                 "tickangle": 90,
            #     },
            #     "yaxis4": {
            #                 'range': [min(scores)*0.9, max(scores)* 1.1],
            #                 'showgrid': False,
            #                 'zeroline': False,
            #                 'visible': True
            #              },
            # })
    # fig.update_layout(
    #     updatemenus=updatemenus,
    #     sliders=sliders,
    #     # legend=dict(
    #     #     yanchor= 'bottom',
    #     #     xanchor= 'center', 
    #     #     orientation="h"),
        
    # )
    # Scores 
    fig = make_subplots(
        rows=1, cols=4,
        specs=[[{"type": "image"},{"type": "image"}, {"type": "pie"}, {"type": "scatter"}]],
        subplot_titles=("Localisation visualization", "Labeled visualisation", "Segments repartition", "Biodiversity scores")
    )

    fig2 = px.imshow(np.array(imgs), animation_frame=0, binary_string=True)
    fig3 = px.imshow(np.array(imgs_label), animation_frame=0, binary_string=True)
    pie_charts = [go.Pie(labels = class_names,
                                values = [nb_values[k][key] for key in mapping_class.keys()],
                                marker_colors = colors, 
                                name="Segment repartition",
                                textposition='inside',
                                texttemplate = "%{percent:.0%}",
                                textfont_size=14,
                                )
                                for k in range(len(scores))]
    scatters = [go.Scatter(
            x=months[:i+1], 
            y=scores[:i+1], 
            mode="lines+markers+text",  
            marker_color="black",  
            text = [f"{score:.4f}" for score in scores[:i+1]], 
            textposition="top center",
        ) for i in range(len(scores))]

    fig.add_trace(fig2["frames"][0]["data"][0], row=1, col=1)
    fig.add_trace(fig3["frames"][0]["data"][0], row=1, col=2)
    fig.add_trace(pie_charts[0], row=1, col=3)
    fig.add_trace(scatters[0], row=1, col=4)

    start_date = datetime.datetime.strptime(months[0], "%Y-%m-%d") - relativedelta(months=1)
    end_date = datetime.datetime.strptime(months[-1], "%Y-%m-%d") + relativedelta(months=1)
    interval = [start_date.strftime("%Y-%m-%d"),end_date.strftime("%Y-%m-%d")]
    fig.update_layout({
                "xaxis": {
                            "autorange":True,
                            'showgrid': False,
                            'zeroline': False, # thick line at x=0
                            'visible': False,  # numbers below
                        },

                "yaxis": {
                            "autorange":True,
                            'showgrid': False,
                            'zeroline': False,
                            'visible': False,},
                            
                "xaxis1": {
                            "range":[0,imgs[0].shape[1]],
                            'showgrid': False,
                            'zeroline': False,
                            'visible': False,
                        },

                "yaxis1": {
                            "range":[imgs[0].shape[0],0],
                            'showgrid': False,
                            'zeroline': False,
                            'visible': False,},
                            
                
                "xaxis3": {
                            "dtick":"M3",
                            "range":interval
                },
                "yaxis3": {
                            'range': [min(scores)*0.9, max(scores)* 1.1],
                            'showgrid': False,
                            'zeroline': False,
                            'visible': True
                         }}
    )
    
    frames = [dict(
                name = k,
                data = [ fig2["frames"][k]["data"][0],
                        fig3["frames"][k]["data"][0],
                        pie_charts[k],
                        scatters[k]
                        ],
                
        traces=[0,1,2,3]
                ) for k in range(len(scores))]


    updatemenus = [dict(type='buttons',
                        buttons=[dict(label='Play',
                                    method='animate',
                                    args=[
                                        [f'{k}' for k in range(len(scores))], 
                                        dict(
                                            frame=dict(duration=500, redraw=False), 
                                            transition=dict(duration=0),
                                            # easing='linear',
                                            # fromcurrent=True,
                                            # mode='immediate'
                                        )
                                        ]
                                    
                                    )],
                        direction= 'left', 
                        pad=dict(r= 10, t=85), 
                        showactive =True, x= 0.1, y= 0, xanchor= 'right', yanchor= 'top')
                ]

    sliders = [{'yanchor': 'top',
                'xanchor': 'left', 
                'currentvalue': {
                    'font': {'size': 16}, 
                    'visible': True, 
                    'xanchor': 'right'},
                'transition': {
                    'duration': 500.0, 
                    'easing': 'linear'},
                'pad': {'b': 10, 't': 50}, 
                'len': 0.9, 'x': 0.1, 'y': 0, 
                'steps': [{'args': [None, {'frame': {'duration': 500.0,'redraw': False},
                                        'transition': {'duration': 0}}], 
                        'label': k, 'method': 'animate'} for k in range(len(scores))       
                        ]
            }]

    fig.update_layout(updatemenus=updatemenus,
            sliders=sliders,
            )
    fig.update(frames=frames)
    return fig


def transform_to_pil(output, alpha=0.3):
    # Transform img with torch
    img = torch.moveaxis(prep_for_plot(output['img']),-1,0)
    img=T.ToPILImage()(img)

    cmaplist = np.array([np.array(cmap(i)) for i in range(cmap.N)])
    labels = np.array(output['linear_preds'])-1
    label = T.ToPILImage()((cmaplist[labels]*255).astype(np.uint8))

    # Overlay labels with img wit alpha
    background = img.convert("RGBA")
    overlay = label.convert("RGBA")
    
    labeled_img = Image.blend(background, overlay, alpha)

    return img, label, labeled_img


def prep_for_plot(img, rescale=True, resize=None):
    if resize is not None:
        img = F.interpolate(img.unsqueeze(0), resize, mode="bilinear")
    else:
        img = img.unsqueeze(0)

    plot_img = unnorm(img).squeeze(0).cpu().permute(1, 2, 0)
    if rescale:
        plot_img = (plot_img - plot_img.min()) / (plot_img.max() - plot_img.min())
    return plot_img


def add_plot(writer, name, step):
    buf = io.BytesIO()
    plt.savefig(buf, format='jpeg', dpi=100)
    buf.seek(0)
    image = Image.open(buf)
    image = T.ToTensor()(image)
    writer.add_image(name, image, step)
    plt.clf()
    plt.close()


@torch.jit.script
def shuffle(x):
    return x[torch.randperm(x.shape[0])]


def add_hparams_fixed(writer, hparam_dict, metric_dict, global_step):
    exp, ssi, sei = hparams(hparam_dict, metric_dict)
    writer.file_writer.add_summary(exp)
    writer.file_writer.add_summary(ssi)
    writer.file_writer.add_summary(sei)
    for k, v in metric_dict.items():
        writer.add_scalar(k, v, global_step)


@torch.jit.script
def resize(classes: torch.Tensor, size: int):
    return F.interpolate(classes, (size, size), mode="bilinear", align_corners=False)


def one_hot_feats(labels, n_classes):
    return F.one_hot(labels, n_classes).permute(0, 3, 1, 2).to(torch.float32)


def load_model(model_type, data_dir):
    if model_type == "robust_resnet50":
        model = models.resnet50(pretrained=False)
        model_file = join(data_dir, 'imagenet_l2_3_0.pt')
        if not os.path.exists(model_file):
            wget.download("http://6.869.csail.mit.edu/fa19/psets19/pset6/imagenet_l2_3_0.pt",
                          model_file)
        model_weights = torch.load(model_file)
        model_weights_modified = {name.split('model.')[1]: value for name, value in model_weights['model'].items() if
                                  'model' in name}
        model.load_state_dict(model_weights_modified)
        model = nn.Sequential(*list(model.children())[:-1])
    elif model_type == "densecl":
        model = models.resnet50(pretrained=False)
        model_file = join(data_dir, 'densecl_r50_coco_1600ep.pth')
        if not os.path.exists(model_file):
            wget.download("https://cloudstor.aarnet.edu.au/plus/s/3GapXiWuVAzdKwJ/download",
                          model_file)
        model_weights = torch.load(model_file)
        # model_weights_modified = {name.split('model.')[1]: value for name, value in model_weights['model'].items() if
        #                          'model' in name}
        model.load_state_dict(model_weights['state_dict'], strict=False)
        model = nn.Sequential(*list(model.children())[:-1])
    elif model_type == "resnet50":
        model = models.resnet50(pretrained=True)
        model = nn.Sequential(*list(model.children())[:-1])
    elif model_type == "mocov2":
        model = models.resnet50(pretrained=False)
        model_file = join(data_dir, 'moco_v2_800ep_pretrain.pth.tar')
        if not os.path.exists(model_file):
            wget.download("https://dl.fbaipublicfiles.com/moco/moco_checkpoints/"
                          "moco_v2_800ep/moco_v2_800ep_pretrain.pth.tar", model_file)
        checkpoint = torch.load(model_file)
        # rename moco pre-trained keys
        state_dict = checkpoint['state_dict']
        for k in list(state_dict.keys()):
            # retain only encoder_q up to before the embedding layer
            if k.startswith('module.encoder_q') and not k.startswith('module.encoder_q.fc'):
                # remove prefix
                state_dict[k[len("module.encoder_q."):]] = state_dict[k]
            # delete renamed or unused k
            del state_dict[k]
        msg = model.load_state_dict(state_dict, strict=False)
        assert set(msg.missing_keys) == {"fc.weight", "fc.bias"}
        model = nn.Sequential(*list(model.children())[:-1])
    elif model_type == "densenet121":
        model = models.densenet121(pretrained=True)
        model = nn.Sequential(*list(model.children())[:-1] + [nn.AdaptiveAvgPool2d((1, 1))])
    elif model_type == "vgg11":
        model = models.vgg11(pretrained=True)
        model = nn.Sequential(*list(model.children())[:-1] + [nn.AdaptiveAvgPool2d((1, 1))])
    else:
        raise ValueError("No model: {} found".format(model_type))

    model.eval()
    model.cuda()
    return model


class UnNormalize(object):
    def __init__(self, mean, std):
        self.mean = mean
        self.std = std

    def __call__(self, image):
        image2 = torch.clone(image)
        for t, m, s in zip(image2, self.mean, self.std):
            t.mul_(s).add_(m)
        return image2


normalize = T.Normalize([0.485, 0.456, 0.406], [0.229, 0.224, 0.225])
unnorm = UnNormalize([0.485, 0.456, 0.406], [0.229, 0.224, 0.225])


class ToTargetTensor(object):
    def __call__(self, target):
        return torch.as_tensor(np.array(target), dtype=torch.int64).unsqueeze(0)


def prep_args():
    import sys

    old_args = sys.argv
    new_args = [old_args.pop(0)]
    while len(old_args) > 0:
        arg = old_args.pop(0)
        if len(arg.split("=")) == 2:
            new_args.append(arg)
        elif arg.startswith("--"):
            new_args.append(arg[2:] + "=" + old_args.pop(0))
        else:
            raise ValueError("Unexpected arg style {}".format(arg))
    sys.argv = new_args


def get_transform(res, is_label, crop_type):
    if crop_type == "center":
        cropper = T.CenterCrop(res)
    elif crop_type == "random":
        cropper = T.RandomCrop(res)
    elif crop_type is None:
        cropper = T.Lambda(lambda x: x)
        res = (res, res)
    else:
        raise ValueError("Unknown Cropper {}".format(crop_type))
    if is_label:
        return T.Compose([T.Resize(res, Image.NEAREST),
                          cropper,
                          ToTargetTensor()])
    else:
        return T.Compose([T.Resize(res, Image.NEAREST),
                          cropper,
                          T.ToTensor(),
                          normalize])


def _remove_axes(ax):
    ax.xaxis.set_major_formatter(plt.NullFormatter())
    ax.yaxis.set_major_formatter(plt.NullFormatter())
    ax.set_xticks([])
    ax.set_yticks([])


def remove_axes(axes):
    if len(axes.shape) == 2:
        for ax1 in axes:
            for ax in ax1:
                _remove_axes(ax)
    else:
        for ax in axes:
            _remove_axes(ax)


class UnsupervisedMetrics(Metric):
    def __init__(self, prefix: str, n_classes: int, extra_clusters: int, compute_hungarian: bool,
                 dist_sync_on_step=True):
        # call `self.add_state`for every internal state that is needed for the metrics computations
        # dist_reduce_fx indicates the function that should be used to reduce
        # state from multiple processes
        super().__init__(dist_sync_on_step=dist_sync_on_step)

        self.n_classes = n_classes
        self.extra_clusters = extra_clusters
        self.compute_hungarian = compute_hungarian
        self.prefix = prefix
        self.add_state("stats",
                       default=torch.zeros(n_classes + self.extra_clusters, n_classes, dtype=torch.int64),
                       dist_reduce_fx="sum")

    def update(self, preds: torch.Tensor, target: torch.Tensor):
        with torch.no_grad():
            actual = target.reshape(-1)
            preds = preds.reshape(-1)
            mask = (actual >= 0) & (actual < self.n_classes) & (preds >= 0) & (preds < self.n_classes)
            actual = actual[mask]
            preds = preds[mask]
            self.stats += torch.bincount(
                (self.n_classes + self.extra_clusters) * actual + preds,
                minlength=self.n_classes * (self.n_classes + self.extra_clusters)) \
                .reshape(self.n_classes, self.n_classes + self.extra_clusters).t().to(self.stats.device)

    def map_clusters(self, clusters):
        if self.extra_clusters == 0:
            return torch.tensor(self.assignments[1])[clusters]
        else:
            missing = sorted(list(set(range(self.n_classes + self.extra_clusters)) - set(self.assignments[0])))
            cluster_to_class = self.assignments[1]
            for missing_entry in missing:
                if missing_entry == cluster_to_class.shape[0]:
                    cluster_to_class = np.append(cluster_to_class, -1)
                else:
                    cluster_to_class = np.insert(cluster_to_class, missing_entry + 1, -1)
            cluster_to_class = torch.tensor(cluster_to_class)
            return cluster_to_class[clusters]

    def compute(self):
        if self.compute_hungarian:
            self.assignments = linear_sum_assignment(self.stats.detach().cpu(), maximize=True)
            # print(self.assignments)
            if self.extra_clusters == 0:
                self.histogram = self.stats[np.argsort(self.assignments[1]), :]
            if self.extra_clusters > 0:
                self.assignments_t = linear_sum_assignment(self.stats.detach().cpu().t(), maximize=True)
                histogram = self.stats[self.assignments_t[1], :]
                missing = list(set(range(self.n_classes + self.extra_clusters)) - set(self.assignments[0]))
                new_row = self.stats[missing, :].sum(0, keepdim=True)
                histogram = torch.cat([histogram, new_row], axis=0)
                new_col = torch.zeros(self.n_classes + 1, 1, device=histogram.device)
                self.histogram = torch.cat([histogram, new_col], axis=1)
        else:
            self.assignments = (torch.arange(self.n_classes).unsqueeze(1),
                                torch.arange(self.n_classes).unsqueeze(1))
            self.histogram = self.stats

        tp = torch.diag(self.histogram)
        fp = torch.sum(self.histogram, dim=0) - tp
        fn = torch.sum(self.histogram, dim=1) - tp

        iou = tp / (tp + fp + fn)
        prc = tp / (tp + fn)
        opc = torch.sum(tp) / torch.sum(self.histogram)

        metric_dict = {self.prefix + "mIoU": iou[~torch.isnan(iou)].mean().item(),
                       self.prefix + "Accuracy": opc.item()}
        return {k: 100 * v for k, v in metric_dict.items()}


def flexible_collate(batch):
    r"""Puts each data field into a tensor with outer dimension batch size"""

    elem = batch[0]
    elem_type = type(elem)
    if isinstance(elem, torch.Tensor):
        out = None
        if torch.utils.data.get_worker_info() is not None:
            # If we're in a background process, concatenate directly into a
            # shared memory tensor to avoid an extra copy
            numel = sum([x.numel() for x in batch])
            storage = elem.storage()._new_shared(numel)
            out = elem.new(storage)
        try:
            return torch.stack(batch, 0, out=out)
        except RuntimeError:
            return batch
    elif elem_type.__module__ == 'numpy' and elem_type.__name__ != 'str_' \
            and elem_type.__name__ != 'string_':
        if elem_type.__name__ == 'ndarray' or elem_type.__name__ == 'memmap':
            # array of string classes and object
            if np_str_obj_array_pattern.search(elem.dtype.str) is not None:
                raise TypeError(default_collate_err_msg_format.format(elem.dtype))

            return flexible_collate([torch.as_tensor(b) for b in batch])
        elif elem.shape == ():  # scalars
            return torch.as_tensor(batch)
    elif isinstance(elem, float):
        return torch.tensor(batch, dtype=torch.float64)
    elif isinstance(elem, int):
        return torch.tensor(batch)
    elif isinstance(elem, string_classes):
        return batch
    elif isinstance(elem, collections.abc.Mapping):
        return {key: flexible_collate([d[key] for d in batch]) for key in elem}
    elif isinstance(elem, tuple) and hasattr(elem, '_fields'):  # namedtuple
        return elem_type(*(flexible_collate(samples) for samples in zip(*batch)))
    elif isinstance(elem, collections.abc.Sequence):
        # check to make sure that the elements in batch have consistent size
        it = iter(batch)
        elem_size = len(next(it))
        if not all(len(elem) == elem_size for elem in it):
            raise RuntimeError('each element in list of batch should be of equal size')
        transposed = zip(*batch)
        return [flexible_collate(samples) for samples in transposed]

    raise TypeError(default_collate_err_msg_format.format(elem_type))


if __name__ == "__main__":
    fig = plot_imgs_labels(months, imgs, imgs_label, nb_values, scores)