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import logging
from abc import abstractmethod, ABC

import numpy as np
import sklearn
import sklearn.svm
import torch
import torch.nn as nn
import torch.nn.functional as F
from joblib import Parallel, delayed
from scipy import linalg

from models.ade20k import SegmentationModule, NUM_CLASS, segm_options
from .fid.inception import InceptionV3
from .lpips import PerceptualLoss
from .ssim import SSIM

LOGGER = logging.getLogger(__name__)


def get_groupings(groups):
    """
    :param groups: group numbers for respective elements
    :return: dict of kind {group_idx: indices of the corresponding group elements}
    """
    label_groups, count_groups = np.unique(groups, return_counts=True)

    indices = np.argsort(groups)

    grouping = dict()
    cur_start = 0
    for label, count in zip(label_groups, count_groups):
        cur_end = cur_start + count
        cur_indices = indices[cur_start:cur_end]
        grouping[label] = cur_indices
        cur_start = cur_end
    return grouping


class EvaluatorScore(nn.Module):
    @abstractmethod
    def forward(self, pred_batch, target_batch, mask):
        pass

    @abstractmethod
    def get_value(self, groups=None, states=None):
        pass

    @abstractmethod
    def reset(self):
        pass


class PairwiseScore(EvaluatorScore, ABC):
    def __init__(self):
        super().__init__()
        self.individual_values = None

    def get_value(self, groups=None, states=None):
        """
        :param groups:
        :return:
            total_results: dict of kind {'mean': score mean, 'std': score std}
            group_results: None, if groups is None;
                else dict {group_idx: {'mean': score mean among group, 'std': score std among group}}
        """
        individual_values = torch.stack(states, dim=0).reshape(-1).cpu().numpy() if states is not None \
            else self.individual_values

        total_results = {
            'mean': individual_values.mean(),
            'std': individual_values.std()
        }

        if groups is None:
            return total_results, None

        group_results = dict()
        grouping = get_groupings(groups)
        for label, index in grouping.items():
            group_scores = individual_values[index]
            group_results[label] = {
                'mean': group_scores.mean(),
                'std': group_scores.std()
            }
        return total_results, group_results

    def reset(self):
        self.individual_values = []


class SSIMScore(PairwiseScore):
    def __init__(self, window_size=11):
        super().__init__()
        self.score = SSIM(window_size=window_size, size_average=False).eval()
        self.reset()

    def forward(self, pred_batch, target_batch, mask=None):
        batch_values = self.score(pred_batch, target_batch)
        self.individual_values = np.hstack([
            self.individual_values, batch_values.detach().cpu().numpy()
        ])
        return batch_values


class LPIPSScore(PairwiseScore):
    def __init__(self, model='net-lin', net='vgg', model_path=None, use_gpu=True):
        super().__init__()
        self.score = PerceptualLoss(model=model, net=net, model_path=model_path,
                                    use_gpu=use_gpu, spatial=False).eval()
        self.reset()

    def forward(self, pred_batch, target_batch, mask=None):
        batch_values = self.score(pred_batch, target_batch).flatten()
        self.individual_values = np.hstack([
            self.individual_values, batch_values.detach().cpu().numpy()
        ])
        return batch_values


def fid_calculate_activation_statistics(act):
    mu = np.mean(act, axis=0)
    sigma = np.cov(act, rowvar=False)
    return mu, sigma


def calculate_frechet_distance(activations_pred, activations_target, eps=1e-6):
    mu1, sigma1 = fid_calculate_activation_statistics(activations_pred)
    mu2, sigma2 = fid_calculate_activation_statistics(activations_target)

    diff = mu1 - mu2

    # Product might be almost singular
    covmean, _ = linalg.sqrtm(sigma1.dot(sigma2), disp=False)
    if not np.isfinite(covmean).all():
        msg = ('fid calculation produces singular product; '
               'adding %s to diagonal of cov estimates') % eps
        LOGGER.warning(msg)
        offset = np.eye(sigma1.shape[0]) * eps
        covmean = linalg.sqrtm((sigma1 + offset).dot(sigma2 + offset))

    # Numerical error might give slight imaginary component
    if np.iscomplexobj(covmean):
        # if not np.allclose(np.diagonal(covmean).imag, 0, atol=1e-3):
        if not np.allclose(np.diagonal(covmean).imag, 0, atol=1e-2):
            m = np.max(np.abs(covmean.imag))
            raise ValueError('Imaginary component {}'.format(m))
        covmean = covmean.real

    tr_covmean = np.trace(covmean)

    return (diff.dot(diff) + np.trace(sigma1) +
            np.trace(sigma2) - 2 * tr_covmean)


class FIDScore(EvaluatorScore):
    def __init__(self, dims=2048, eps=1e-6):
        LOGGER.info("FIDscore init called")
        super().__init__()
        if getattr(FIDScore, '_MODEL', None) is None:
            block_idx = InceptionV3.BLOCK_INDEX_BY_DIM[dims]
            FIDScore._MODEL = InceptionV3([block_idx]).eval()
        self.model = FIDScore._MODEL
        self.eps = eps
        self.reset()
        LOGGER.info("FIDscore init done")

    def forward(self, pred_batch, target_batch, mask=None):
        activations_pred = self._get_activations(pred_batch)
        activations_target = self._get_activations(target_batch)

        self.activations_pred.append(activations_pred.detach().cpu())
        self.activations_target.append(activations_target.detach().cpu())

        return activations_pred, activations_target

    def get_value(self, groups=None, states=None):
        LOGGER.info("FIDscore get_value called")
        activations_pred, activations_target = zip(*states) if states is not None \
            else (self.activations_pred, self.activations_target)
        activations_pred = torch.cat(activations_pred).cpu().numpy()
        activations_target = torch.cat(activations_target).cpu().numpy()

        total_distance = calculate_frechet_distance(activations_pred, activations_target, eps=self.eps)
        total_results = dict(mean=total_distance)

        if groups is None:
            group_results = None
        else:
            group_results = dict()
            grouping = get_groupings(groups)
            for label, index in grouping.items():
                if len(index) > 1:
                    group_distance = calculate_frechet_distance(activations_pred[index], activations_target[index],
                                                                eps=self.eps)
                    group_results[label] = dict(mean=group_distance)

                else:
                    group_results[label] = dict(mean=float('nan'))

        self.reset()

        LOGGER.info("FIDscore get_value done")

        return total_results, group_results

    def reset(self):
        self.activations_pred = []
        self.activations_target = []

    def _get_activations(self, batch):
        activations = self.model(batch)[0]
        if activations.shape[2] != 1 or activations.shape[3] != 1:
            assert False, \
                'We should not have got here, because Inception always scales inputs to 299x299'
            # activations = F.adaptive_avg_pool2d(activations, output_size=(1, 1))
        activations = activations.squeeze(-1).squeeze(-1)
        return activations


class SegmentationAwareScore(EvaluatorScore):
    def __init__(self, weights_path):
        super().__init__()
        self.segm_network = SegmentationModule(weights_path=weights_path, use_default_normalization=True).eval()
        self.target_class_freq_by_image_total = []
        self.target_class_freq_by_image_mask = []
        self.pred_class_freq_by_image_mask = []

    def forward(self, pred_batch, target_batch, mask):
        pred_segm_flat = self.segm_network.predict(pred_batch)[0].view(pred_batch.shape[0], -1).long().detach().cpu().numpy()
        target_segm_flat = self.segm_network.predict(target_batch)[0].view(pred_batch.shape[0], -1).long().detach().cpu().numpy()
        mask_flat = (mask.view(mask.shape[0], -1) > 0.5).detach().cpu().numpy()

        batch_target_class_freq_total = []
        batch_target_class_freq_mask = []
        batch_pred_class_freq_mask = []

        for cur_pred_segm, cur_target_segm, cur_mask in zip(pred_segm_flat, target_segm_flat, mask_flat):
            cur_target_class_freq_total = np.bincount(cur_target_segm, minlength=NUM_CLASS)[None, ...]
            cur_target_class_freq_mask = np.bincount(cur_target_segm[cur_mask], minlength=NUM_CLASS)[None, ...]
            cur_pred_class_freq_mask = np.bincount(cur_pred_segm[cur_mask], minlength=NUM_CLASS)[None, ...]

            self.target_class_freq_by_image_total.append(cur_target_class_freq_total)
            self.target_class_freq_by_image_mask.append(cur_target_class_freq_mask)
            self.pred_class_freq_by_image_mask.append(cur_pred_class_freq_mask)

            batch_target_class_freq_total.append(cur_target_class_freq_total)
            batch_target_class_freq_mask.append(cur_target_class_freq_mask)
            batch_pred_class_freq_mask.append(cur_pred_class_freq_mask)

        batch_target_class_freq_total = np.concatenate(batch_target_class_freq_total, axis=0)
        batch_target_class_freq_mask = np.concatenate(batch_target_class_freq_mask, axis=0)
        batch_pred_class_freq_mask = np.concatenate(batch_pred_class_freq_mask, axis=0)
        return batch_target_class_freq_total, batch_target_class_freq_mask, batch_pred_class_freq_mask

    def reset(self):
        super().reset()
        self.target_class_freq_by_image_total = []
        self.target_class_freq_by_image_mask = []
        self.pred_class_freq_by_image_mask = []


def distribute_values_to_classes(target_class_freq_by_image_mask, values, idx2name):
    assert target_class_freq_by_image_mask.ndim == 2 and target_class_freq_by_image_mask.shape[0] == values.shape[0]
    total_class_freq = target_class_freq_by_image_mask.sum(0)
    distr_values = (target_class_freq_by_image_mask * values[..., None]).sum(0)
    result = distr_values / (total_class_freq + 1e-3)
    return {idx2name[i]: val for i, val in enumerate(result) if total_class_freq[i] > 0}


def get_segmentation_idx2name():
    return {i - 1: name for i, name in segm_options['classes'].set_index('Idx', drop=True)['Name'].to_dict().items()}


class SegmentationAwarePairwiseScore(SegmentationAwareScore):
    def __init__(self, *args, **kwargs):
        super().__init__(*args, **kwargs)
        self.individual_values = []
        self.segm_idx2name = get_segmentation_idx2name()

    def forward(self, pred_batch, target_batch, mask):
        cur_class_stats = super().forward(pred_batch, target_batch, mask)
        score_values = self.calc_score(pred_batch, target_batch, mask)
        self.individual_values.append(score_values)
        return cur_class_stats + (score_values,)

    @abstractmethod
    def calc_score(self, pred_batch, target_batch, mask):
        raise NotImplementedError()

    def get_value(self, groups=None, states=None):
        """
        :param groups:
        :return:
            total_results: dict of kind {'mean': score mean, 'std': score std}
            group_results: None, if groups is None;
                else dict {group_idx: {'mean': score mean among group, 'std': score std among group}}
        """
        if states is not None:
            (target_class_freq_by_image_total,
             target_class_freq_by_image_mask,
             pred_class_freq_by_image_mask,
             individual_values) = states
        else:
            target_class_freq_by_image_total = self.target_class_freq_by_image_total
            target_class_freq_by_image_mask = self.target_class_freq_by_image_mask
            pred_class_freq_by_image_mask = self.pred_class_freq_by_image_mask
            individual_values = self.individual_values

        target_class_freq_by_image_total = np.concatenate(target_class_freq_by_image_total, axis=0)
        target_class_freq_by_image_mask = np.concatenate(target_class_freq_by_image_mask, axis=0)
        pred_class_freq_by_image_mask = np.concatenate(pred_class_freq_by_image_mask, axis=0)
        individual_values = np.concatenate(individual_values, axis=0)

        total_results = {
            'mean': individual_values.mean(),
            'std': individual_values.std(),
            **distribute_values_to_classes(target_class_freq_by_image_mask, individual_values, self.segm_idx2name)
        }

        if groups is None:
            return total_results, None

        group_results = dict()
        grouping = get_groupings(groups)
        for label, index in grouping.items():
            group_class_freq = target_class_freq_by_image_mask[index]
            group_scores = individual_values[index]
            group_results[label] = {
                'mean': group_scores.mean(),
                'std': group_scores.std(),
                ** distribute_values_to_classes(group_class_freq, group_scores, self.segm_idx2name)
            }
        return total_results, group_results

    def reset(self):
        super().reset()
        self.individual_values = []


class SegmentationClassStats(SegmentationAwarePairwiseScore):
    def calc_score(self, pred_batch, target_batch, mask):
        return 0

    def get_value(self, groups=None, states=None):
        """
        :param groups:
        :return:
            total_results: dict of kind {'mean': score mean, 'std': score std}
            group_results: None, if groups is None;
                else dict {group_idx: {'mean': score mean among group, 'std': score std among group}}
        """
        if states is not None:
            (target_class_freq_by_image_total,
             target_class_freq_by_image_mask,
             pred_class_freq_by_image_mask,
             _) = states
        else:
            target_class_freq_by_image_total = self.target_class_freq_by_image_total
            target_class_freq_by_image_mask = self.target_class_freq_by_image_mask
            pred_class_freq_by_image_mask = self.pred_class_freq_by_image_mask

        target_class_freq_by_image_total = np.concatenate(target_class_freq_by_image_total, axis=0)
        target_class_freq_by_image_mask = np.concatenate(target_class_freq_by_image_mask, axis=0)
        pred_class_freq_by_image_mask = np.concatenate(pred_class_freq_by_image_mask, axis=0)

        target_class_freq_by_image_total_marginal = target_class_freq_by_image_total.sum(0).astype('float32')
        target_class_freq_by_image_total_marginal /= target_class_freq_by_image_total_marginal.sum()

        target_class_freq_by_image_mask_marginal = target_class_freq_by_image_mask.sum(0).astype('float32')
        target_class_freq_by_image_mask_marginal /= target_class_freq_by_image_mask_marginal.sum()

        pred_class_freq_diff = (pred_class_freq_by_image_mask - target_class_freq_by_image_mask).sum(0) / (target_class_freq_by_image_mask.sum(0) + 1e-3)

        total_results = dict()
        total_results.update({f'total_freq/{self.segm_idx2name[i]}': v
                              for i, v in enumerate(target_class_freq_by_image_total_marginal)
                              if v > 0})
        total_results.update({f'mask_freq/{self.segm_idx2name[i]}': v
                              for i, v in enumerate(target_class_freq_by_image_mask_marginal)
                              if v > 0})
        total_results.update({f'mask_freq_diff/{self.segm_idx2name[i]}': v
                              for i, v in enumerate(pred_class_freq_diff)
                              if target_class_freq_by_image_total_marginal[i] > 0})

        if groups is None:
            return total_results, None

        group_results = dict()
        grouping = get_groupings(groups)
        for label, index in grouping.items():
            group_target_class_freq_by_image_total = target_class_freq_by_image_total[index]
            group_target_class_freq_by_image_mask = target_class_freq_by_image_mask[index]
            group_pred_class_freq_by_image_mask = pred_class_freq_by_image_mask[index]

            group_target_class_freq_by_image_total_marginal = group_target_class_freq_by_image_total.sum(0).astype('float32')
            group_target_class_freq_by_image_total_marginal /= group_target_class_freq_by_image_total_marginal.sum()

            group_target_class_freq_by_image_mask_marginal = group_target_class_freq_by_image_mask.sum(0).astype('float32')
            group_target_class_freq_by_image_mask_marginal /= group_target_class_freq_by_image_mask_marginal.sum()

            group_pred_class_freq_diff = (group_pred_class_freq_by_image_mask - group_target_class_freq_by_image_mask).sum(0) / (
                    group_target_class_freq_by_image_mask.sum(0) + 1e-3)

            cur_group_results = dict()
            cur_group_results.update({f'total_freq/{self.segm_idx2name[i]}': v
                                      for i, v in enumerate(group_target_class_freq_by_image_total_marginal)
                                      if v > 0})
            cur_group_results.update({f'mask_freq/{self.segm_idx2name[i]}': v
                                      for i, v in enumerate(group_target_class_freq_by_image_mask_marginal)
                                      if v > 0})
            cur_group_results.update({f'mask_freq_diff/{self.segm_idx2name[i]}': v
                                      for i, v in enumerate(group_pred_class_freq_diff)
                                      if group_target_class_freq_by_image_total_marginal[i] > 0})

            group_results[label] = cur_group_results
        return total_results, group_results


class SegmentationAwareSSIM(SegmentationAwarePairwiseScore):
    def __init__(self, *args, window_size=11, **kwargs):
        super().__init__(*args, **kwargs)
        self.score_impl = SSIM(window_size=window_size, size_average=False).eval()

    def calc_score(self, pred_batch, target_batch, mask):
        return self.score_impl(pred_batch, target_batch).detach().cpu().numpy()


class SegmentationAwareLPIPS(SegmentationAwarePairwiseScore):
    def __init__(self, *args, model='net-lin', net='vgg', model_path=None, use_gpu=True,  **kwargs):
        super().__init__(*args, **kwargs)
        self.score_impl = PerceptualLoss(model=model, net=net, model_path=model_path,
                                         use_gpu=use_gpu, spatial=False).eval()

    def calc_score(self, pred_batch, target_batch, mask):
        return self.score_impl(pred_batch, target_batch).flatten().detach().cpu().numpy()


def calculade_fid_no_img(img_i, activations_pred, activations_target, eps=1e-6):
    activations_pred = activations_pred.copy()
    activations_pred[img_i] = activations_target[img_i]
    return calculate_frechet_distance(activations_pred, activations_target, eps=eps)


class SegmentationAwareFID(SegmentationAwarePairwiseScore):
    def __init__(self, *args, dims=2048, eps=1e-6, n_jobs=-1, **kwargs):
        super().__init__(*args, **kwargs)
        if getattr(FIDScore, '_MODEL', None) is None:
            block_idx = InceptionV3.BLOCK_INDEX_BY_DIM[dims]
            FIDScore._MODEL = InceptionV3([block_idx]).eval()
        self.model = FIDScore._MODEL
        self.eps = eps
        self.n_jobs = n_jobs

    def calc_score(self, pred_batch, target_batch, mask):
        activations_pred = self._get_activations(pred_batch)
        activations_target = self._get_activations(target_batch)
        return activations_pred, activations_target

    def get_value(self, groups=None, states=None):
        """
        :param groups:
        :return:
            total_results: dict of kind {'mean': score mean, 'std': score std}
            group_results: None, if groups is None;
                else dict {group_idx: {'mean': score mean among group, 'std': score std among group}}
        """
        if states is not None:
            (target_class_freq_by_image_total,
             target_class_freq_by_image_mask,
             pred_class_freq_by_image_mask,
             activation_pairs) = states
        else:
            target_class_freq_by_image_total = self.target_class_freq_by_image_total
            target_class_freq_by_image_mask = self.target_class_freq_by_image_mask
            pred_class_freq_by_image_mask = self.pred_class_freq_by_image_mask
            activation_pairs = self.individual_values

        target_class_freq_by_image_total = np.concatenate(target_class_freq_by_image_total, axis=0)
        target_class_freq_by_image_mask = np.concatenate(target_class_freq_by_image_mask, axis=0)
        pred_class_freq_by_image_mask = np.concatenate(pred_class_freq_by_image_mask, axis=0)
        activations_pred, activations_target = zip(*activation_pairs)
        activations_pred = np.concatenate(activations_pred, axis=0)
        activations_target = np.concatenate(activations_target, axis=0)

        total_results = {
            'mean': calculate_frechet_distance(activations_pred, activations_target, eps=self.eps),
            'std': 0,
            **self.distribute_fid_to_classes(target_class_freq_by_image_mask, activations_pred, activations_target)
        }

        if groups is None:
            return total_results, None

        group_results = dict()
        grouping = get_groupings(groups)
        for label, index in grouping.items():
            if len(index) > 1:
                group_activations_pred = activations_pred[index]
                group_activations_target = activations_target[index]
                group_class_freq = target_class_freq_by_image_mask[index]
                group_results[label] = {
                    'mean': calculate_frechet_distance(group_activations_pred, group_activations_target, eps=self.eps),
                    'std': 0,
                    **self.distribute_fid_to_classes(group_class_freq,
                                                     group_activations_pred,
                                                     group_activations_target)
                }
            else:
                group_results[label] = dict(mean=float('nan'), std=0)
        return total_results, group_results

    def distribute_fid_to_classes(self, class_freq, activations_pred, activations_target):
        real_fid = calculate_frechet_distance(activations_pred, activations_target, eps=self.eps)

        fid_no_images = Parallel(n_jobs=self.n_jobs)(
            delayed(calculade_fid_no_img)(img_i, activations_pred, activations_target, eps=self.eps)
            for img_i in range(activations_pred.shape[0])
        )
        errors = real_fid - fid_no_images
        return distribute_values_to_classes(class_freq, errors, self.segm_idx2name)

    def _get_activations(self, batch):
        activations = self.model(batch)[0]
        if activations.shape[2] != 1 or activations.shape[3] != 1:
            activations = F.adaptive_avg_pool2d(activations, output_size=(1, 1))
        activations = activations.squeeze(-1).squeeze(-1).detach().cpu().numpy()
        return activations