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import sqlite3
import time
from feature_matcher_utilities import extract_keypoints, feature_matching, unrotate_kps_W
import os
import torch
import matplotlib.pyplot as plt
from tqdm import tqdm
import numpy as np
import cv2
import argparse
from pathlib import Path

from PIL import Image
import torchvision.transforms.functional as TF

from lightglue import LightGlue
from lightglue.utils import rbd
from lightglue import  SuperPoint, SIFT
from lightglue.utils import load_image

# ==========================================
# ==========================================
# DATABASE UTILITIES
# ==========================================
def load_colmap_db(db_path): 
    if not os.path.exists(db_path):
        raise FileNotFoundError(f"Database file not found: {db_path}")
    conn = sqlite3.connect(db_path)
    cursor = conn.cursor()
    return conn, cursor

def create_pair_id(image_id1, image_id2):
    if image_id1 > image_id2:
        image_id1, image_id2 = image_id2, image_id1
    return image_id1 * 2147483647 + image_id2

def clean_database(cursor):
    """Removes existing features and matches to ensure a clean overwrite."""
    tables = ["keypoints", "descriptors"]#, "matches"], "two_view_geometry"]
    for table in tables:
        cursor.execute(f"DELETE FROM {table};")
    print("Database cleaned (keypoints, descriptors, matches removed).")

def insert_keypoints(cursor, image_id, keypoints, descriptors):
    """
    keypoints: (N, 2) numpy array, float32
    descriptors: (N, D) numpy array, float32
    """
    keypoints_blob = keypoints.tobytes()
    descriptors_blob = descriptors.tobytes()
    
    # Keypoints
    cursor.execute(
        "INSERT INTO keypoints(image_id, rows, cols, data) VALUES(?, ?, ?, ?)",
        (image_id, keypoints.shape[0], keypoints.shape[1], keypoints_blob)
    )
    
    # Descriptors (Optional but good practice)
    cursor.execute(
        "INSERT INTO descriptors(image_id, rows, cols, data) VALUES(?, ?, ?, ?)",
        (image_id, descriptors.shape[0], descriptors.shape[1], descriptors_blob)
    )

def insert_matches(cursor, image_id1, image_id2, matches):
    """
    matches: (K, 2) numpy array, uint32. 
             Col 0 is index in image1, Col 1 is index in image2
    """
    pair_id = create_pair_id(image_id1, image_id2)
    matches_blob = matches.tobytes()
    
    cursor.execute(
        "INSERT INTO matches(pair_id, rows, cols, data) VALUES(?, ?, ?, ?)",
        (pair_id, matches.shape[0], matches.shape[1], matches_blob)
    )

def verify_matches_visual(cursor, image_id1, image_id2, image_dir):
    """
    Reads matches and keypoints from the COLMAP db and plots them.
    
    Args:
        cursor: SQLite cursor connected to the database.
        image_id1: ID of the first image.
        image_id2: ID of the second image.
        image_dir: Path to the directory containing the images.
    """
    
    # 1. Helper to ensure image_id1 < image_id2 for pair_id calculation
    if image_id1 > image_id2:
        image_id1, image_id2 = image_id2, image_id1
        swapped = True
    else:
        swapped = False
        
    pair_id = image_id1 * 2147483647 + image_id2

    # 2. Fetch Matches
    cursor.execute("SELECT data FROM matches WHERE pair_id = ?", (pair_id,))
    match_row = cursor.fetchone()
    
    if match_row is None:
        print(f"No matches found in DB for pair {image_id1}-{image_id2}")
        return

    # Decode Matches: UINT32 (N, 2)
    matches = np.frombuffer(match_row[0], dtype=np.uint32).reshape(-1, 2)

    # If we swapped inputs to generate pair_id, we must swap columns in matches
    # so matches[:,0] corresponds to the requested image_id1
    if swapped:
        matches = matches[:, [1, 0]]

    # 3. Fetch Keypoints for both images
    def get_keypoints_and_name(img_id):
        # Get Name
        cursor.execute("SELECT name FROM images WHERE image_id = ?", (img_id,))
        name = cursor.fetchone()[0]
        
        # Get Keypoints
        cursor.execute("SELECT data FROM keypoints WHERE image_id = ?", (img_id,))
        kp_row = cursor.fetchone()
        # Decode Keypoints: FLOAT32 (N, 2)
        kpts = np.frombuffer(kp_row[0], dtype=np.float32).reshape(-1, 2)
        return name, kpts

    name1, kpts1 = get_keypoints_and_name(image_id1)
    name2, kpts2 = get_keypoints_and_name(image_id2)

    # 4. Filter Keypoints using the Matches indices
    # matches[:, 0] are indices into kpts1
    # matches[:, 1] are indices into kpts2
    valid_kpts1 = kpts1[matches[:, 0]]
    valid_kpts2 = kpts2[matches[:, 1]]

    # 5. Load Images
    path1 = os.path.join(image_dir, name1)
    path2 = os.path.join(image_dir, name2)
    
    img1 = cv2.imread(path1)
    img2 = cv2.imread(path2)
    
    # Convert BGR (OpenCV) to RGB (Matplotlib)
    img1 = cv2.cvtColor(img1, cv2.COLOR_BGR2RGB)
    img2 = cv2.cvtColor(img2, cv2.COLOR_BGR2RGB)

    # 6. Plotting
    # Concatenate images side-by-side
    h1, w1, _ = img1.shape
    h2, w2, _ = img2.shape
    
    # Create a canvas large enough for both
    height = max(h1, h2)
    width = w1 + w2
    canvas = np.zeros((height, width, 3), dtype=np.uint8)
    
    canvas[:h1, :w1, :] = img1
    canvas[:h2, w1:w1+w2, :] = img2

    plt.figure(figsize=(15, 10))
    plt.imshow(canvas)
    
    # Plot lines
    # Shift x-coordinates of image2 by w1
    for (x1, y1), (x2, y2) in zip(valid_kpts1, valid_kpts2):
        plt.plot([x1, x2 + w1], [y1, y2], 'c-', alpha=0.6, linewidth=0.5)
        plt.plot(x1, y1, 'r.', markersize=2)
        plt.plot(x2 + w1, y2, 'r.', markersize=2)

    plt.title(f"DB Verification: {name1} (ID:{image_id1}) <-> {name2} (ID:{image_id2}) | Matches: {len(matches)}")
    plt.axis('off')
    plt.tight_layout()
    plt.show()

import numpy as np
import matplotlib.pyplot as plt
import cv2
import os
import sqlite3

def plot_matches_from_db(cursor, image_id1, image_id2, image_dir):
    """
    Reads matches and keypoints for a specific pair from the COLMAP DB and plots them.
    
    Args:
        cursor: SQLite cursor.
        image_id1, image_id2: The IDs of the two images to plot.
        image_dir: Path to the directory containing the actual image files.
    """
    
    # 1. Resolve Pair ID (Colmap requires id1 < id2 for unique pair_id)
    if image_id1 > image_id2:
        id_a, id_b = image_id2, image_id1
        swapped = True
    else:
        id_a, id_b = image_id1, image_id2
        swapped = False
        
    pair_id = id_a * 2147483647 + id_b

    # 2. Fetch Matches
    print(f"Fetching matches for pair {image_id1}-{image_id2} (PairID: {pair_id})...")
    cursor.execute("SELECT data, rows, cols FROM matches WHERE pair_id = ?", (pair_id,))
    match_row = cursor.fetchone()
    
    if match_row is None:
        print(f"No matches found in database for Pair {image_id1}-{image_id2}")
        return

    # Decode Matches (UINT32)
    # Blob is match_row[0], rows is [1], cols is [2]
    matches_blob = match_row[0]
    matches = np.frombuffer(matches_blob, dtype=np.uint32).reshape(-1, 2)
    
    # If inputs were swapped relative to how COLMAP stores them, swap the columns
    # so matches[:,0] refers to image_id1 and matches[:,1] refers to image_id2
    if swapped:
        matches = matches[:, [1, 0]]

    # 3. Fetch Keypoints & Image Names
    def get_image_data(img_id):
        cursor.execute("SELECT name FROM images WHERE image_id = ?", (img_id,))
        res = cursor.fetchone()
        if not res:
            raise ValueError(f"Image ID {img_id} not found in 'images' table.")
        name = res[0]
        
        cursor.execute("SELECT data FROM keypoints WHERE image_id = ?", (img_id,))
        kp_res = cursor.fetchone()
        if not kp_res:
             raise ValueError(f"No keypoints found for Image ID {img_id}.")
        
        # Decode Keypoints (FLOAT32)
        kpts = np.frombuffer(kp_res[0], dtype=np.float32).reshape(-1, 2)
        return name, kpts

    name1, kpts1 = get_image_data(image_id1)
    name2, kpts2 = get_image_data(image_id2)

    # 4. Filter Keypoints using Match Indices
    valid_kpts1 = kpts1[matches[:, 0]]
    valid_kpts2 = kpts2[matches[:, 1]]

    # 5. Visualization
    path1 = os.path.join(image_dir, name1)
    path2 = os.path.join(image_dir, name2)
    
    if not os.path.exists(path1) or not os.path.exists(path2):
        print(f"Error: Could not find image files at \n{path1}\n{path2}")
        return

    img1 = cv2.imread(path1)
    img2 = cv2.imread(path2)
    img1 = cv2.cvtColor(img1, cv2.COLOR_BGR2RGB)
    img2 = cv2.cvtColor(img2, cv2.COLOR_BGR2RGB)

    # Create canvas
    h1, w1 = img1.shape[:2]
    h2, w2 = img2.shape[:2]
    height = max(h1, h2)
    width = w1 + w2
    canvas = np.zeros((height, width, 3), dtype=np.uint8)
    canvas[:h1, :w1] = img1
    canvas[:h2, w1:w1+w2] = img2

    plt.figure(figsize=(20, 10))
    plt.imshow(canvas)
    
    # Plot matches
    # x2 coordinates need to be shifted by w1
    for (x1, y1), (x2, y2) in zip(valid_kpts1, valid_kpts2):
        plt.plot([x1, x2 + w1], [y1, y2], 'g-', alpha=0.5, linewidth=1.5)
        plt.plot(x1, y1, 'r.', markersize=4)
        plt.plot(x2 + w1, y2, 'r.', markersize=4)

    plt.title(f"{name1} <-> {name2} | Total Matches: {len(matches)}")
    plt.axis('off')
    plt.tight_layout()
    plt.show()


if __name__ == "__main__":

    parser = argparse.ArgumentParser()
    
    parser.add_argument("--database", type=Path, required=True)
    parser.add_argument("--rgb_path", type=Path, required=True)
    parser.add_argument("--feature", type=str, required=True)
    parser.add_argument("--matcher", type=str, required=True)

    args, _ = parser.parse_known_args()

    DB_PATH = args.database
    IMAGE_DIR = args.rgb_path
    FEATURE_TYPE = args.feature
    MATCHER_TYPE = args.matcher
    DEVICE = 'cuda' if torch.cuda.is_available() else 'cpu'
    matches_file_path = os.path.join(os.path.dirname(DB_PATH), "matches.txt")

    conn, cursor = load_colmap_db(DB_PATH)
    cursor.execute("SELECT image_id, name FROM images")
    images_info = {row[0]: row[1] for row in cursor.fetchall()}
    image_ids = sorted(images_info.keys())

    clean_database(cursor)
    conn.commit() 

    # Keypoint Extraction
    extractor = SuperPoint(max_num_keypoints=128, detection_threshold=0.0).eval().cuda()
    matcher = LightGlue(width_confidence=-1).eval().cuda()

    total_time = 0.0
    with open(matches_file_path, "w") as f_match:
        for i, id_i in enumerate(tqdm(image_ids, desc="Outer Loop")):
            fname_i = images_info[id_i]
            path_i = os.path.join(IMAGE_DIR, fname_i)
            img_i = Image.open(path_i).convert("RGB")
            t_i = TF.to_tensor(img_i)   
            imgs_i = []
            imgs_j = []
            ids_j =  []
            for j, id_j in enumerate(tqdm(image_ids[i+1:], desc="Inner Loop", leave=False), start=i+1):
                fname_j = images_info[id_j]
                path_j = os.path.join(IMAGE_DIR, fname_j)
                img_j = Image.open(path_j).convert("RGB")
                t_j = TF.to_tensor(img_j)   
                imgs_j.append(t_j)
                imgs_i.append(t_i)
                ids_j.append(id_j)

            if len(imgs_j) == 0:
                continue
            print(f"Processing batch: Image {fname_i} with {len(imgs_j)} images.")
            batch_i = torch.stack(imgs_i, dim=0).to(DEVICE)  # (B,3,H,W)
            batch_j = torch.stack(imgs_j, dim=0).to(DEVICE)  # (B,3,H,W)

            with torch.no_grad():
                feats_i = extractor({"image": batch_i})
                feats_j = extractor({"image": batch_j})
                
            kpts = feats_i['keypoints'][0].squeeze(0).cpu().numpy().astype(np.float32)
            descs = feats_i['descriptors'][0].squeeze(0).cpu().numpy().astype(np.float32)
            insert_keypoints(cursor, id_i, kpts, descs)

            data = {}
            data['image0'] = {}
            data['image1'] = {}
            data['image0']['keypoints'] = feats_i['keypoints']
            data['image0']['descriptors'] = feats_i['descriptors']
            data['image1']['keypoints'] = feats_j['keypoints']
            data['image1']['descriptors'] = feats_j['descriptors']
            # data['image0']['image'] = batch_i
            # data['image1']['image'] = batch_j

            t0 = time.perf_counter()
            matches01 = matcher(data)
            t1 = time.perf_counter()
            elapsed = t1 - t0
            print(f"Matching took {elapsed:.4f} seconds")
            total_time += elapsed
            
            for k in range(len(matches01["matches0"])):
                m0 = matches01["matches0"][k]         
                valid = m0 > -1
                if valid.any():
                    fname_j = images_info[ids_j[k]]
                    f_match.write(f"{fname_i} {fname_j}\n")
                    idx0 = torch.nonzero(valid, as_tuple=False).squeeze(1)
                    idx1 = m0[valid].long()
                    matches_np = torch.stack([idx0, idx1], dim=1).cpu().numpy().astype(int)
                    np.savetxt(f_match, matches_np, fmt="%d")
                    f_match.write("\n")

            del batch_i, batch_j, feats_i, feats_j, data, matches01, imgs_i, imgs_j
            torch.cuda.synchronize()
            torch.cuda.empty_cache()
            import gc
            gc.collect()

    conn.commit()

    #plot_matches_from_db(cursor, image_ids[0], image_ids[1], IMAGE_DIR)

    conn.close()
    print("Database overwrite complete.")    
    print(f"Total matching time: {total_time:.2f} seconds.")

    # B = len(image_ids)
    # print("matches01 keys:", list(matches01.keys()))
    # B0, N0 = matches01["matches0"].shape
    # B1, N1 = matches01["matches1"].shape
    # print(f"Batch size: {B0}, Num keypoints image0: {N0}")
    # print(f"Batch size: {B1}, Num keypoints image1: {N1}")
    # print(matches01["matches"][0].shape)
    # print(matches01["matches"][0].shape)
    # saved_images = set()

    # with open(matches_file_path, "w") as f_match:
    #     for i in range(B):
    #         for j in range(i + 1, B):
    #             fname1 = images_info[image_ids[i]]
    #             fname2 = images_info[image_ids[j]]

    #             if "matches" in matches01 and matches01["matches"] is not None:
    #                 m = matches01["matches"]
    #                 # Handle (1, M, 2) or (M, 2)
    #                 if m.dim() == 3:
    #                     m = m[0]
    #                 matches_np = m.detach().cpu().numpy().astype(int)

    #             # Fallback: build pairs from matches0
    #             else:
    #                 m0 = matches01["matches0"][0]          # (N0,)
    #                 valid = m0 > -1
    #                 if valid.any():
    #                     idx0 = torch.nonzero(valid, as_tuple=False).squeeze(1)
    #                     idx1 = m0[valid].long()
    #                     matches_np = torch.stack([idx0, idx1], dim=1).cpu().numpy().astype(int)
    #                 else:
    #                     matches_np = np.empty((0, 2), dtype=int)
    #             f_match.write(f"{fname1} {fname2}\n")
    #             np.savetxt(f_match, matches_np, fmt="%d")
    #             f_match.write("\n")

    # with open(matches_file_path, "w") as f_match:
    #     for i in range(B):
    #         for j in range(i + 1, B):
    #     fname1 = ""
    #     fname2 = ""
    #     matches_np = np.array([])
    #     f_match.write(f"{fname1} {fname2}\n")
    #     np.savetxt(f_match, matches_np, fmt="%d")
    #     f_match.write("\n")

    # with open(matches_file_path, "w") as f_match:
    #     for i in tqdm(range(len(image_ids)), desc="Feature Extraction"):
    #         id1 = image_ids[i]
    #         fname1 = images_info[id1]
    #         path1 = os.path.join(IMAGE_DIR, fname1)

    #         for j in range(i + 1, len(image_ids)):
    #             if j == i:
    #                 continue
    #             id2 = image_ids[j]

    #             fname2 = images_info[id2]
    #             path2 = os.path.join(IMAGE_DIR, fname2)
    #             matches_tensor = feature_matching(fts[id1], fts[id2], matcher=matcher, features=FEATURE_TYPE, matcher_type=MATCHER_TYPE) 

    #             if matches_tensor is not None and len(matches_tensor) > 0:
    #                 matches_np = matches_tensor.cpu().numpy().astype(np.uint32)
    #                 #insert_matches(cursor, id1, id2, matches_np)
                    
    #                 f_match.write(f"{fname1} {fname2}\n")
    #                 np.savetxt(f_match, matches_np, fmt="%d")
    #                 f_match.write("\n")
                
    #                 #verify_matches_visual(cursor, image_ids[i], image_ids[j], IMAGE_DIR)                
    #         #plt.show()
    
    # conn.commit()

    # #plot_matches_from_db(cursor, image_ids[0], image_ids[1], IMAGE_DIR)

    # conn.close()
    # print("Database overwrite complete.")