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# ------------------------------------------------------------------------------------
# Original RoomFormer implementation (https://github.com/ywyue/RoomFormer.git)
# ------------------------------------------------------------------------------------

import copy
import math

import torch
import torch.nn.functional as F
from torch import nn

from util.misc import NestedTensor, nested_tensor_from_tensor_list

from .backbone import build_backbone
from .deformable_transformer import build_deforamble_transformer
from .losses import MaskRasterizationLoss, custom_L1_loss
from .matcher import build_matcher


def _get_clones(module, N):
    return nn.ModuleList([copy.deepcopy(module) for i in range(N)])


class RoomFormer(nn.Module):
    """This is the RoomFormer module that performs floorplan reconstruction"""

    def __init__(
        self,
        backbone,
        transformer,
        num_classes,
        num_queries,
        num_polys,
        num_feature_levels,
        aux_loss=True,
        with_poly_refine=False,
        masked_attn=False,
        semantic_classes=-1,
        patch_size=1,
    ):
        """Initializes the model.
        Parameters:
            backbone: torch module of the backbone to be used. See backbone.py
            transformer: torch module of the transformer architecture. See transformer.py
            num_classes: number of object classes
            num_queries: number of object queries, ie detection slot. This is the maximal number of possible corners
                         in a single image.
            num_polys: maximal number of possible polygons in a single image.
                       num_queries/num_polys would be the maximal number of possible corners in a single polygon.
            aux_loss: True if auxiliary decoding losses (loss at each decoder layer) are to be used.
            with_poly_refine: iterative polygon refinement
        """
        super().__init__()
        self.num_queries = num_queries
        self.num_polys = num_polys
        self.num_classes = num_classes
        assert num_queries % num_polys == 0
        self.transformer = transformer
        hidden_dim = transformer.d_model
        self.class_embed = nn.Linear(hidden_dim, num_classes)
        self.coords_embed = MLP(hidden_dim, hidden_dim, 2, 3)
        self.num_feature_levels = num_feature_levels
        self.patch_size = patch_size

        self.query_embed = nn.Embedding(num_queries, 2)
        self.tgt_embed = nn.Embedding(num_queries, hidden_dim)
        if num_feature_levels > 1:
            num_backbone_outs = len(backbone.strides)
            input_proj_list = []
            for _ in range(num_backbone_outs):
                in_channels = backbone.num_channels[_]
                input_proj_list.append(
                    nn.Sequential(
                        nn.Conv2d(in_channels, hidden_dim, kernel_size=patch_size, stride=patch_size, padding=0),
                        nn.GroupNorm(32, hidden_dim),
                    )
                )
            for _ in range(num_feature_levels - num_backbone_outs):
                if patch_size == 1:
                    input_proj_list.append(
                        nn.Sequential(
                            nn.Conv2d(in_channels, hidden_dim, kernel_size=3, stride=2, padding=1),
                            nn.GroupNorm(32, hidden_dim),
                        )
                    )
                else:
                    input_proj_list.append(
                        nn.Sequential(
                            nn.Conv2d(
                                in_channels, hidden_dim, kernel_size=2 * patch_size, stride=2 * patch_size, padding=0
                            ),
                            nn.GroupNorm(32, hidden_dim),
                        )
                    )
                in_channels = hidden_dim
            self.input_proj = nn.ModuleList(input_proj_list)
        else:
            self.input_proj = nn.ModuleList(
                [
                    nn.Sequential(
                        nn.Conv2d(backbone.num_channels[0], hidden_dim, kernel_size=1),
                        nn.GroupNorm(32, hidden_dim),
                    )
                ]
            )
        self.backbone = backbone
        self.aux_loss = aux_loss
        self.with_poly_refine = with_poly_refine

        prior_prob = 0.01
        bias_value = -math.log((1 - prior_prob) / prior_prob)
        self.class_embed.bias.data = torch.ones(num_classes) * bias_value
        nn.init.constant_(self.coords_embed.layers[-1].weight.data, 0)
        nn.init.constant_(self.coords_embed.layers[-1].bias.data, 0)
        for proj in self.input_proj:
            nn.init.xavier_uniform_(proj[0].weight, gain=1)
            nn.init.constant_(proj[0].bias, 0)

        num_pred = transformer.decoder.num_layers

        if with_poly_refine:
            self.class_embed = _get_clones(self.class_embed, num_pred)
            self.coords_embed = _get_clones(self.coords_embed, num_pred)
            nn.init.constant_(self.coords_embed[0].layers[-1].bias.data[2:], -2.0)
        else:
            nn.init.constant_(self.coords_embed.layers[-1].bias.data[2:], -2.0)
            self.class_embed = nn.ModuleList([self.class_embed for _ in range(num_pred)])
            self.coords_embed = nn.ModuleList([self.coords_embed for _ in range(num_pred)])

        self.transformer.decoder.coords_embed = self.coords_embed
        self.transformer.decoder.class_embed = self.class_embed

        # Semantically-rich floorplan
        self.room_class_embed = None
        if semantic_classes > 0:
            self.room_class_embed = nn.Linear(hidden_dim, semantic_classes)

        self.num_queries_per_poly = num_queries // num_polys

        # The attention mask is used to prevent object queries in one polygon attending to another polygon, default false
        if masked_attn:
            self.attention_mask = torch.ones((num_queries, num_queries), dtype=torch.bool)
            for i in range(num_polys):
                self.attention_mask[
                    i * self.num_queries_per_poly : (i + 1) * self.num_queries_per_poly,
                    i * self.num_queries_per_poly : (i + 1) * self.num_queries_per_poly,
                ] = False
        else:
            self.attention_mask = None

    def forward(self, samples: NestedTensor):
        """The forward expects a NestedTensor, which consists of:
           - samples.tensors: batched images, of shape [batch_size x C x H x W]
           - samples.mask: a binary mask of shape [batch_size x H x W], containing 1 on padded pixels

        It returns a dict with the following elements:
           - "pred_logits": the classification logits (including no-object) for all queries.
                            Shape= [batch_size x num_queries x (num_classes + 1)]
           - "pred_coords": The normalized corner coordinates for all queries, represented as
                           (x, y). These values are normalized in [0, 1],
                           relative to the size of each individual image (disregarding possible padding).
           - "aux_outputs": Optional, only returned when auxilary losses are activated. It is a list of
                            dictionnaries containing the two above keys for each decoder layer.
        """
        if not isinstance(samples, NestedTensor):
            samples = nested_tensor_from_tensor_list(samples)
        features, pos = self.backbone(samples)

        bs = samples.tensors.shape[0]
        srcs = []
        masks = []
        for l, feat in enumerate(features):
            src, mask = feat.decompose()
            src = self.input_proj[l](src)
            srcs.append(src)
            if self.patch_size != 1:
                mask = F.interpolate(mask[None].float(), size=src.shape[-2:]).to(torch.bool)[0]
                pos[l] = self.backbone[1](NestedTensor(src, mask)).to(src.dtype)
            masks.append(mask)
            assert mask is not None
        if self.num_feature_levels > len(srcs):
            _len_srcs = len(srcs)
            for l in range(_len_srcs, self.num_feature_levels):
                if l == _len_srcs:
                    src = self.input_proj[l](features[-1].tensors)
                else:
                    src = self.input_proj[l](srcs[-1])
                m = samples.mask
                mask = F.interpolate(m[None].float(), size=src.shape[-2:]).to(torch.bool)[0]
                pos_l = self.backbone[1](NestedTensor(src, mask)).to(src.dtype)
                srcs.append(src)
                masks.append(mask)
                pos.append(pos_l)

        query_embeds = self.query_embed.weight
        tgt_embeds = self.tgt_embed.weight

        hs, init_reference, inter_references, inter_classes = self.transformer(
            srcs, masks, pos, query_embeds, tgt_embeds, self.attention_mask
        )

        num_layer = hs.shape[0]
        outputs_class = inter_classes.reshape(num_layer, bs, self.num_polys, self.num_queries_per_poly)
        outputs_coord = inter_references.reshape(num_layer, bs, self.num_polys, self.num_queries_per_poly, 2)

        out = {"pred_logits": outputs_class[-1], "pred_coords": outputs_coord[-1]}

        # hack implementation of room label prediction, not compatible with auxiliary loss
        if self.room_class_embed is not None:
            outputs_room_class = self.room_class_embed(
                hs[-1].view(bs, self.num_polys, self.num_queries_per_poly, -1).mean(axis=2)
            )
            out = {
                "pred_logits": outputs_class[-1],
                "pred_coords": outputs_coord[-1],
                "pred_room_logits": outputs_room_class,
            }

        if self.aux_loss:
            out["aux_outputs"] = self._set_aux_loss(outputs_class, outputs_coord)

        return out

    @torch.jit.unused
    def _set_aux_loss(self, outputs_class, outputs_coord):
        # this is a workaround to make torchscript happy, as torchscript
        # doesn't support dictionary with non-homogeneous values, such
        # as a dict having both a Tensor and a list.
        return [{"pred_logits": a, "pred_coords": b} for a, b in zip(outputs_class[:-1], outputs_coord[:-1])]


class SetCriterion(nn.Module):
    """This class computes the loss for multiple polygons.
    The process happens in two steps:
        1) we compute hungarian assignment between ground truth polygons and the outputs of the model
        2) we supervise each pair of matched ground-truth / prediction (supervise class and coords)
    """

    def __init__(self, num_classes, semantic_classes, matcher, weight_dict, losses, ignore_index=-1):
        """Create the criterion.
        Parameters:
            num_classes: number of classes for corner validity (binary)
            semantic_classes: number of semantic classes for polygon (room type, door, window)
            matcher: module able to compute a matching between targets and proposals
            weight_dict: dict containing as key the names of the losses and as values their relative weight.
            losses: list of all the losses to be applied. See get_loss for list of available losses.
        """
        super().__init__()
        self.num_classes = num_classes
        self.semantic_classes = semantic_classes
        self.matcher = matcher
        self.weight_dict = weight_dict
        self.losses = losses
        self.raster_loss = MaskRasterizationLoss(None)
        self.ignore_index = ignore_index

    def loss_labels(self, outputs, targets, indices):
        """Classification loss (NLL)
        targets dicts must contain the key "labels"
        """
        assert "pred_logits" in outputs
        src_logits = outputs["pred_logits"]

        idx = self._get_src_permutation_idx(indices)
        target_classes_o = torch.cat([t["labels"][J] for t, (_, J) in zip(targets, indices)])
        target_classes = torch.full(
            src_logits.shape, self.num_classes - 1, dtype=torch.float32, device=src_logits.device
        )
        target_classes[idx] = target_classes_o

        loss_ce = F.binary_cross_entropy_with_logits(src_logits, target_classes)

        losses = {"loss_ce": loss_ce}

        # hack implementation of room label/door/window prediction
        if "pred_room_logits" in outputs:
            room_src_logits = outputs["pred_room_logits"]
            room_target_classes_o = torch.cat([t["room_labels"][J] for t, (_, J) in zip(targets, indices)])
            room_target_classes = torch.full(
                room_src_logits.shape[:2], self.semantic_classes - 1, dtype=torch.int64, device=room_src_logits.device
            )
            room_target_classes[idx] = room_target_classes_o
            loss_ce_room = F.cross_entropy(
                room_src_logits.transpose(1, 2), room_target_classes, ignore_index=self.ignore_index
            )
            losses = {"loss_ce": loss_ce, "loss_ce_room": loss_ce_room}

        return losses

    @torch.no_grad()
    def loss_cardinality(self, outputs, targets, indices):
        """Compute the cardinality error, ie the absolute error in the number of predicted non-empty corners
        This is not really a loss, it is intended for logging purposes only. It doesn't propagate gradients
        """
        pred_logits = outputs["pred_logits"]
        device = pred_logits.device
        tgt_lengths = torch.as_tensor([sum(v["lengths"]) for v in targets], device=device) / 2
        # Count the number of predictions that are NOT "no-object" (invalid corners)
        card_pred = (pred_logits.sigmoid() > 0.5).flatten(1, 2).sum(1)
        card_err = F.l1_loss(card_pred.float(), tgt_lengths.float())
        losses = {"cardinality_error": card_err}
        return losses

    def loss_polys(self, outputs, targets, indices):
        """Compute the losses related to the polygons:
        1. L1 loss for polygon coordinates
        2. Dice loss for polygon rasterizated binary masks
        """
        assert "pred_coords" in outputs
        idx = self._get_src_permutation_idx(indices)
        src_polys = outputs["pred_coords"][idx]
        target_polys = torch.cat([t["coords"][i] for t, (_, i) in zip(targets, indices)], dim=0)
        target_len = torch.cat([t["lengths"][i] for t, (_, i) in zip(targets, indices)], dim=0)

        loss_coords = custom_L1_loss(src_polys.flatten(1, 2), target_polys, target_len)

        losses = {}
        losses["loss_coords"] = loss_coords

        # omit the rasterization loss for semantically-rich floorplan
        if self.semantic_classes == -1:
            loss_raster_mask = self.raster_loss(src_polys.flatten(1, 2), target_polys, target_len)
            losses["loss_raster"] = loss_raster_mask

        return losses

    def _get_src_permutation_idx(self, indices):
        # permute predictions following indices
        batch_idx = torch.cat([torch.full_like(src, i) for i, (src, _) in enumerate(indices)])
        src_idx = torch.cat([src for (src, _) in indices])
        return batch_idx, src_idx

    def _get_tgt_permutation_idx(self, indices):
        # permute targets following indices
        batch_idx = torch.cat([torch.full_like(tgt, i) for i, (_, tgt) in enumerate(indices)])
        tgt_idx = torch.cat([tgt for (_, tgt) in indices])
        return batch_idx, tgt_idx

    def get_loss(self, loss, outputs, targets, indices, **kwargs):
        loss_map = {"labels": self.loss_labels, "cardinality": self.loss_cardinality, "polys": self.loss_polys}
        assert loss in loss_map, f"do you really want to compute {loss} loss?"
        return loss_map[loss](outputs, targets, indices, **kwargs)

    def forward(self, outputs, targets):
        """This performs the loss computation.
        Parameters:
             outputs: dict of tensors, see the output specification of the model for the format
             targets: list of dicts, such that len(targets) == batch_size.
                      The expected keys in each dict depends on the losses applied, see each loss' doc
        """
        outputs_without_aux = {k: v for k, v in outputs.items() if k != "aux_outputs" and k != "enc_outputs"}

        # Retrieve the matching between the outputs of the last layer and the targets
        indices = self.matcher(outputs_without_aux, targets)

        # Compute all the requested losses
        losses = {}
        for loss in self.losses:
            kwargs = {}
            losses.update(self.get_loss(loss, outputs, targets, indices, **kwargs))

        # In case of auxiliary losses, we repeat this process with the output of each intermediate layer.
        if "aux_outputs" in outputs:
            for i, aux_outputs in enumerate(outputs["aux_outputs"]):
                # indices = self.matcher(aux_outputs, targets)
                for loss in self.losses:
                    l_dict = self.get_loss(loss, aux_outputs, targets, indices)
                    l_dict = {k + f"_{i}": v for k, v in l_dict.items()}
                    losses.update(l_dict)

        if "enc_outputs" in outputs:
            enc_outputs = outputs["enc_outputs"]
            # bin_targets = copy.deepcopy(targets)
            # for bt in bin_targets:
            #     bt['labels'] = torch.zeros_like(bt['labels'])
            # indices = self.matcher(enc_outputs, bin_targets)
            indices = self.matcher(enc_outputs, targets)
            for loss in self.losses:
                # l_dict = self.get_loss(loss, enc_outputs, bin_targets, indices)
                l_dict = self.get_loss(loss, enc_outputs, targets, indices)
                l_dict = {k + "_enc": v for k, v in l_dict.items()}
                losses.update(l_dict)

        return losses


class MLP(nn.Module):
    """Very simple multi-layer perceptron (also called FFN)"""

    def __init__(self, input_dim, hidden_dim, output_dim, num_layers):
        super().__init__()
        self.num_layers = num_layers
        h = [hidden_dim] * (num_layers - 1)
        self.layers = nn.ModuleList(nn.Linear(n, k) for n, k in zip([input_dim] + h, h + [output_dim]))

    def forward(self, x):
        for i, layer in enumerate(self.layers):
            x = F.relu(layer(x)) if i < self.num_layers - 1 else layer(x)
        return x


def build(args, train=True):
    num_classes = 1  # valid or invalid corner

    backbone = build_backbone(args)
    transformer = build_deforamble_transformer(args)
    model = RoomFormer(
        backbone,
        transformer,
        num_classes=num_classes,
        num_queries=args.num_queries,
        num_polys=args.num_polys,
        num_feature_levels=args.num_feature_levels,
        aux_loss=args.aux_loss,
        with_poly_refine=args.with_poly_refine,
        masked_attn=args.masked_attn,
        semantic_classes=args.semantic_classes,
        patch_size=1,  # [1, 2][args.image_size == 512], # 1 for 256x256, 2 for 512x512
    )

    if not train:
        return model

    device = torch.device(args.device)
    matcher = build_matcher(args)
    weight_dict = {
        "loss_ce": args.cls_loss_coef,
        "loss_ce_room": args.room_cls_loss_coef,
        "loss_coords": args.coords_loss_coef,
        "loss_raster": args.raster_loss_coef,
    }
    weight_dict["loss_dir"] = 1

    enc_weight_dict = {}
    enc_weight_dict.update({k + "_enc": v for k, v in weight_dict.items()})
    weight_dict.update(enc_weight_dict)
    # TODO this is a hack
    if args.aux_loss:
        aux_weight_dict = {}
        for i in range(args.dec_layers - 1):
            aux_weight_dict.update({k + f"_{i}": v for k, v in weight_dict.items()})
        aux_weight_dict.update({k + "_enc": v for k, v in weight_dict.items()})
        weight_dict.update(aux_weight_dict)

    losses = ["labels", "polys", "cardinality"]
    # num_classes, matcher, weight_dict, losses
    criterion = SetCriterion(
        num_classes, args.semantic_classes, matcher, weight_dict, losses, ignore_index=args.ignore_index
    )
    criterion.to(device)

    return model, criterion