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"""
A two-view sparse feature matching pipeline.

This model contains sub-models for each step:
    feature extraction, feature matching, outlier filtering, pose estimation.
Each step is optional, and the features or matches can be provided as input.
Default: SuperPoint with nearest neighbor matching.

Convention for the matches: m0[i] is the index of the keypoint in image 1
that corresponds to the keypoint i in image 0. m0[i] = -1 if i is unmatched.
"""

import numpy as np
import torch

from .. import get_model
from .base_model import BaseModel


def keep_quadrant_kp_subset(keypoints, scores, descs, h, w):
    """Keep only keypoints in one of the four quadrant of the image."""
    h2, w2 = h // 2, w // 2
    w_x = np.random.choice([0, w2])
    w_y = np.random.choice([0, h2])
    valid_mask = (
        (keypoints[..., 0] >= w_x)
        & (keypoints[..., 0] < w_x + w2)
        & (keypoints[..., 1] >= w_y)
        & (keypoints[..., 1] < w_y + h2)
    )
    keypoints = keypoints[valid_mask][None]
    scores = scores[valid_mask][None]
    descs = descs.permute(0, 2, 1)[valid_mask].t()[None]
    return keypoints, scores, descs


def keep_random_kp_subset(keypoints, scores, descs, num_selected):
    """Keep a random subset of keypoints."""
    num_kp = keypoints.shape[1]
    selected_kp = torch.randperm(num_kp)[:num_selected]
    keypoints = keypoints[:, selected_kp]
    scores = scores[:, selected_kp]
    descs = descs[:, :, selected_kp]
    return keypoints, scores, descs


def keep_best_kp_subset(keypoints, scores, descs, num_selected):
    """Keep the top num_selected best keypoints."""
    sorted_indices = torch.sort(scores, dim=1)[1]
    selected_kp = sorted_indices[:, -num_selected:]
    keypoints = torch.gather(keypoints, 1, selected_kp[:, :, None].repeat(1, 1, 2))
    scores = torch.gather(scores, 1, selected_kp)
    descs = torch.gather(descs, 2, selected_kp[:, None].repeat(1, descs.shape[1], 1))
    return keypoints, scores, descs


class TwoViewPipeline(BaseModel):
    default_conf = {
        "extractor": {
            "name": "superpoint",
            "trainable": False,
        },
        "use_lines": False,
        "use_points": True,
        "randomize_num_kp": False,
        "detector": {"name": None},
        "descriptor": {"name": None},
        "matcher": {"name": "nearest_neighbor_matcher"},
        "filter": {"name": None},
        "solver": {"name": None},
        "ground_truth": {
            "from_pose_depth": False,
            "from_homography": False,
            "th_positive": 3,
            "th_negative": 5,
            "reward_positive": 1,
            "reward_negative": -0.25,
            "is_likelihood_soft": True,
            "p_random_occluders": 0,
            "n_line_sampled_pts": 50,
            "line_perp_dist_th": 5,
            "overlap_th": 0.2,
            "min_visibility_th": 0.5,
        },
    }
    required_data_keys = ["image0", "image1"]
    strict_conf = False  # need to pass new confs to children models
    components = ["extractor", "detector", "descriptor", "matcher", "filter", "solver"]

    def _init(self, conf):
        if conf.extractor.name:
            self.extractor = get_model(conf.extractor.name)(conf.extractor)
        else:
            if self.conf.detector.name:
                self.detector = get_model(conf.detector.name)(conf.detector)
            else:
                self.required_data_keys += ["keypoints0", "keypoints1"]
            if self.conf.descriptor.name:
                self.descriptor = get_model(conf.descriptor.name)(conf.descriptor)
            else:
                self.required_data_keys += ["descriptors0", "descriptors1"]

        if conf.matcher.name:
            self.matcher = get_model(conf.matcher.name)(conf.matcher)
        else:
            self.required_data_keys += ["matches0"]

        if conf.filter.name:
            self.filter = get_model(conf.filter.name)(conf.filter)

        if conf.solver.name:
            self.solver = get_model(conf.solver.name)(conf.solver)

    def _forward(self, data):
        def process_siamese(data, i):
            data_i = {k[:-1]: v for k, v in data.items() if k[-1] == i}
            if self.conf.extractor.name:
                pred_i = self.extractor(data_i)
            else:
                pred_i = {}
                if self.conf.detector.name:
                    pred_i = self.detector(data_i)
                else:
                    for k in [
                        "keypoints",
                        "keypoint_scores",
                        "descriptors",
                        "lines",
                        "line_scores",
                        "line_descriptors",
                        "valid_lines",
                    ]:
                        if k in data_i:
                            pred_i[k] = data_i[k]
                if self.conf.descriptor.name:
                    pred_i = {**pred_i, **self.descriptor({**data_i, **pred_i})}
            return pred_i

        pred0 = process_siamese(data, "0")
        pred1 = process_siamese(data, "1")

        pred = {
            **{k + "0": v for k, v in pred0.items()},
            **{k + "1": v for k, v in pred1.items()},
        }

        if self.conf.matcher.name:
            pred = {**pred, **self.matcher({**data, **pred})}

        if self.conf.filter.name:
            pred = {**pred, **self.filter({**data, **pred})}

        if self.conf.solver.name:
            pred = {**pred, **self.solver({**data, **pred})}

        return pred

    def loss(self, pred, data):
        losses = {}
        total = 0
        for k in self.components:
            if self.conf[k].name:
                try:
                    losses_ = getattr(self, k).loss(pred, {**pred, **data})
                except NotImplementedError:
                    continue
                losses = {**losses, **losses_}
                total = losses_["total"] + total
        return {**losses, "total": total}

    def metrics(self, pred, data):
        metrics = {}
        for k in self.components:
            if self.conf[k].name:
                try:
                    metrics_ = getattr(self, k).metrics(pred, {**pred, **data})
                except NotImplementedError:
                    continue
                metrics = {**metrics, **metrics_}
        return metrics