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import numpy as np
import os
import pickle
from tqdm.auto import tqdm
from collections import defaultdict
import matplotlib.pyplot as plt
import seaborn as sns
from copy import deepcopy
import torch
from tqdm.contrib.concurrent import thread_map

class PredBBoxDistrPP:
    
    
    @staticmethod
    def _normalize_scene_id(value):
        return value.split("_")[0]
    
    def __init__(self, path, bins_path, gt_pkl_path, confidence_threshold=0.0, topk=True):
        self.path = path
        self.bins_path = bins_path
        self.gt_pkl_path = gt_pkl_path
        #self.gt_sample_counts = {}
        self.class_scores = defaultdict(list)
        self.confidence_threshold = confidence_threshold
        self.topk = topk

    def load_pkl_scene_by_id(self, scene_id):
        """
        Вернуть описание сцены из PKL по scene_id (без расширения).
        Поддерживает как id вида "sceneXXXX_YY", так и пути/имена с .bin.
        """
        target_id = self._normalize_scene_id(scene_id)
        with open(self.gt_pkl_path, 'rb') as file:
            data = pickle.load(file)
        for scene in data.get('data_list', []):
            lidar_path = scene.get('lidar_points', {}).get('lidar_path')
            if not lidar_path:
                continue
            candidate_id = self._normalize_scene_id(lidar_path)
            if candidate_id == target_id:
                return scene
        return None
    
    def get_scenes(self):
        self.scene_ids = []
        self.gt_sample_counts = defaultdict(int)
        with open(self.gt_pkl_path, 'rb') as file:
            data = pickle.load(file)
        picked_scenes = set(map(lambda x: x[:-4], os.listdir(self.path)))
        for scene in data['data_list']:
            scene_name = scene['lidar_points']['lidar_path'][:-4]
            if scene_name not in picked_scenes:
                continue
            self.scene_ids.append(scene_name)
            for instance in scene['instances']:
                inst_id = instance['bbox_label_3d']
                self.gt_sample_counts[0] += 1
    
    def get_scene_inst(self, scene_id):
        cls_path = f'{self.path}/{scene_id}.npz'
        cls_data = np.load(cls_path, allow_pickle=True)
        for class_id, class_score in zip(cls_data['pred_classes'], cls_data['pred_score']):
            self.class_scores[0].append(class_score)
    
    def plot_class_distr(self, class_name='all'):
        """
        Построить распределение оценок для конкретного класса или всех классов вместе
        
        Parameters:
        class_name: str or list - название класса, 'all' для всех классов, 
                   или список названий классов
        """
        if class_name == 'all':
            # Собираем все оценки из всех классов
            all_scores = []
            for scores in self.class_scores.values():
                all_scores.extend(scores)
            scores = all_scores
            display_name = 'All Classes'
        elif isinstance(class_name, list):
            # Собираем оценки из указанных классов
            selected_scores = []
            for cls in class_name:
                if cls in self.class_scores:
                    selected_scores.extend(self.class_scores[cls])
                else:
                    print(f"Warning: Class '{cls}' not found in class_scores")
            scores = selected_scores
            display_name = f'Classes: {", ".join(class_name[:3])}{"..." if len(class_name) > 3 else ""}'
        else:
            # Один конкретный класс
            if class_name not in self.class_scores:
                print(f"Class '{class_name}' not found in class_scores")
                print(f"Available classes: {list(self.class_scores.keys())[:10]}...")
                return
            scores = self.class_scores[class_name]
            display_name = class_name
        
        if not scores:
            print(f"No scores available for: {display_name}")
            return
        
        # Создаем фигуру
        fig, ax = plt.subplots(figsize=(12, 8))
        
        # Гистограмма с KDE (seaborn) с нормализованной осью Y
        sns.histplot(scores, bins=30, kde=True, ax=ax, color='skyblue', 
                    stat='density', alpha=0.7)
        ax.set_title(f'Distribution of scores for {display_name}', fontsize=14, fontweight='bold')
        ax.set_xlabel('Score', fontsize=12)
        ax.set_ylabel('Density', fontsize=12)
        ax.grid(True, alpha=0.3)
        
        # Добавляем вертикальную линию для среднего значения
#         mean_score = np.mean(scores)
#         ax.axvline(mean_score, color='red', linestyle='--', linewidth=2, 
#                   label=f'Mean: {mean_score:.3f}')
        
        # Добавляем вертикальную линию для медианы
        median_score = np.median(scores)
        ax.axvline(median_score, color='green', linestyle='--', linewidth=2, 
                  label=f'Median: {median_score:.3f}')
        ax.axvline(np.percentile(scores, 32.45), color='red', linestyle='-', linewidth=2, 
                  label=f'Size bound: {np.percentile(scores, 32.45):.3f}')
        # Добавляем легенду
        ax.legend()
        
        # Добавляем статистику в текстовом блоке
        if class_name == 'all':
            class_info = f"Total classes: {len(self.class_scores)}"
        elif isinstance(class_name, list):
            class_info = f"Selected classes: {len(class_name)}"
        else:
            class_info = f"Class: {class_name}"
            
        stats_text = f"""Statistics for {display_name}:
        {class_info}
        Total instances: {len(scores):,}
        Mean: {np.mean(scores):.3f}
        Median: {np.median(scores):.3f}
        Std: {np.std(scores):.3f}
        Min: {np.min(scores):.3f}
        Max: {np.max(scores):.3f}
        Q1: {np.percentile(scores, 25):.3f}
        Q : {np.percentile(scores, 32.45):.3f}
        Q3: {np.percentile(scores, 75):.3f}"""
        
        # Размещаем текстовый блок в удобном месте
        props = dict(boxstyle="round,pad=0.5", facecolor="lightgray", alpha=0.8)
        ax.text(0.02, 0.98, stats_text, transform=ax.transAxes, fontfamily='monospace',
                verticalalignment='top', bbox=props, fontsize=10)
        
        plt.tight_layout()
        plt.show()
        
        # Также выводим статистику в консоль
        print(stats_text)
        
        return scores  # Возвращаем массив оценок для дальнейшего анализа

    # Дополнительный метод для сравнения нескольких классов
    def plot_multiple_classes(self, class_names: list):
        """
        Сравнить распределения нескольких классов на одном графике
        """
        fig, ax = plt.subplots(figsize=(12, 8))
        
        colors = ['skyblue', 'lightcoral', 'lightgreen', 'gold', 'lightpink']
        
        for i, cls in enumerate(class_names):
            if cls not in self.class_scores:
                print(f"Warning: Class '{cls}' not found, skipping")
                continue
                
            scores = self.class_scores[cls]
            if scores:
                sns.kdeplot(scores, ax=ax, label=cls, color=colors[i % len(colors)], 
                           linewidth=2, alpha=0.8)
        
        ax.set_title('Score Distribution Comparison', fontsize=14, fontweight='bold')
        ax.set_xlabel('Score', fontsize=12)
        ax.set_ylabel('Density', fontsize=12)
        ax.grid(True, alpha=0.3)
        ax.legend()
        
        plt.tight_layout()
        plt.show()
    
    def get_class_lowerbound(self, class_name='all', percentile=32.45):
        if class_name == 'all':
            # Собираем все оценки из всех классов
            all_scores = []
            for scores in self.class_scores.values():
                all_scores.extend(scores)
            scores = all_scores
        elif isinstance(class_name, list):
            selected_scores = []
            for cls in class_name:
                if cls in self.class_scores:
                    selected_scores.extend(self.class_scores[cls])
                else:
                    print(f"Warning: Class '{cls}' not found in class_scores")
            scores = selected_scores
        else:
            # Один конкретный класс
            if class_name not in self.class_scores:
                print(f"Class '{class_name}' not found in class_scores")
                print(f"Available classes: {list(self.class_scores.keys())[:10]}...")
                return
            scores = self.class_scores[class_name]
        
        return np.percentile(scores, percentile)
    
    def get_bboxes_by_masks(self, masks, points):
        boxes = []
        for mask in masks:
            object_points = points[mask][:, :3]
            # xyz_min = object_points.min(dim=0).values
            # xyz_max = object_points.max(dim=0).values
            xyz_min = object_points.quantile(0.01, dim=0)
            xyz_max = object_points.quantile(0.99, dim=0)
            center = (xyz_max + xyz_min) / 2
            size = xyz_max - xyz_min
            box = torch.cat((center, size, torch.zeros_like(center)[:1]))
            boxes.append(box)
        assert len(boxes) != 0, "Why 0 masks in scene?"
        boxes = torch.stack(boxes)
        return boxes
    
    def get_scene_instances(self, scene_name, score_bounds, class_agnostic):
        instances = []
        points_path = f'{self.bins_path}/{scene_name}.bin'
        points = torch.from_numpy(np.fromfile(points_path, dtype=np.float32).reshape((-1, 6)))
        # Применяем axis_align_matrix из GT к точкам
        gt_scene = self.load_pkl_scene_by_id(scene_name)
        if gt_scene is not None and 'axis_align_matrix' in gt_scene:
            a = torch.as_tensor(np.array(gt_scene['axis_align_matrix'], dtype=np.float32))
            R = a[:3, :3]
            t = a[:3, 3]
            xyz = points[:, :3]
            points[:, :3] = xyz @ R.T + t
        cls_path = f'{self.path}/{scene_name}.npz'
        cls_data = np.load(cls_path, allow_pickle=True)
        pred_masks = torch.from_numpy(cls_data['pred_masks']).T
        pred_classes = cls_data['pred_classes']
        pred_scores = cls_data['pred_score']
        boxes = self.get_bboxes_by_masks(pred_masks, points)
        for box, pred_class, pred_score in zip(boxes, pred_classes, pred_scores):
            if pred_score > score_bounds.get(pred_class, 0):
                write_class = 0
                instances.append({'bbox_3d': box.numpy().tolist(), 'bbox_label_3d': write_class})
        return instances
    
    def filter_instances_topk_by_gt(self, scene_name, class_agnostic=True):
        """
        Фильтрует предсказанные инстансы по top-K, где K = количество GT-инстансов.
        Шаги:
          1) Берем все маски, переводим в 3D bbox-ы
          2) Сортируем по убыванию предикт-скор
          3) Оставляем top-K, где K равно числу GT-инстансов в PKL
        Возвращает список инстансов в формате mmdet3d (bbox_3d, bbox_label_3d).
        """
        scene_id = self._normalize_scene_id(scene_name)
        gt_scene = self.load_pkl_scene_by_id(scene_name)
        gt_count = len(gt_scene.get('instances', [])) if gt_scene else 0
        if gt_count <= 0:
            return []

        points_path = f'{self.bins_path}/{scene_id}_point.bin'
        points = torch.from_numpy(np.fromfile(points_path, dtype=np.float32).reshape((-1, 6)))
        # Применяем axis_align_matrix к точкам GT: points @ R^T + t
        if gt_scene is not None and 'axis_align_matrix' in gt_scene:
            a = torch.as_tensor(np.array(gt_scene['axis_align_matrix'], dtype=np.float32))
            print(a)
            R = a[:3, :3]
            t = a[:3, 3]
            xyz = points[:, :3]
            points[:, :3] = xyz @ R.T + t
        cls_path = f'{self.path}/{scene_id}.npz'
        cls_data = np.load(cls_path, allow_pickle=True)
        pred_masks = torch.from_numpy(cls_data['pred_masks']).T
        pred_classes = cls_data['pred_classes']
        pred_scores = cls_data['pred_score']

        mask = pred_scores >= self.confidence_threshold

        pred_masks = torch.from_numpy(cls_data['pred_masks']).T
        pred_classes = cls_data['pred_classes']
        pred_scores = cls_data['pred_score']

        if len(pred_scores) == 0:
            return []

        if self.topk:
            topk = int(min(gt_count, len(pred_scores)))
        else:
            topk = len(pred_scores)
        np_topk_indices = np.argsort(-pred_scores)[:topk]

        # вычисляем боксы только для выбранных масок
        torch_topk_indices = torch.as_tensor(np_topk_indices, dtype=torch.long)
        selected_masks = pred_masks[torch_topk_indices]
        boxes = self.get_bboxes_by_masks(selected_masks, points)
        selected_classes = pred_classes[np_topk_indices]

        instances = []
        for box, pred_class in zip(boxes, selected_classes):
            write_class = 0
            instances.append({'bbox_3d': box.numpy().tolist(), 'bbox_label_3d': write_class})
        return instances
    
        
    @property
    def scores(self):
        return self.class_scores
            

if __name__ == "__main__":
    pred_path = \
        "/home/jovyan/users/bulat/workspace/3drec/Indoor/MaskClustering/data/prediction/arkit_vggt"
    bins_path = \
        "/home/jovyan/users/bulat/workspace/3drec/Indoor/OKNO/data/arkitscenes/points_vggt"
    out_pkl_path = \
        "arkit_vggt_ca_ct05_topk_false.pkl"
    gt_pkl_path = \
        "/home/jovyan/users/bulat/workspace/3drec/Indoor/OKNO/data/arkitscenes/arkitscenes_offline_infos_train.pkl"
    confidence_threshold = 0.5
    distr = PredBBoxDistrPP(pred_path, bins_path, gt_pkl_path, confidence_threshold=confidence_threshold, topk=False)

    with open(gt_pkl_path, 'rb') as file:
        gt_data = pickle.load(file)

    new_data = {"metainfo": gt_data["metainfo"]}
    data_list = []

    picked_scenes = set(map(lambda x: x.split("_")[0], os.listdir(bins_path)))
    scene_names = [distr._normalize_scene_id(scene['lidar_points']['lidar_path']) for scene in gt_data['data_list']]
    indices = [i for i, scene_name in enumerate(scene_names) if scene_name in picked_scenes]
    data = [scene_name for scene_name in scene_names if scene_name in picked_scenes]
    instances = thread_map(distr.filter_instances_topk_by_gt, data, chunksize=128)
    for i, instance in enumerate(instances):
        tmp_scene = deepcopy(gt_data['data_list'][indices[i]])
        tmp_scene['instances'] = instance
        data_list.append(tmp_scene)

    new_data['data_list'] = data_list
    with open(out_pkl_path, 'wb') as f:
        pickle.dump(new_data, f)