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import base64
import json
import os
import re
import time
import uuid
from io import BytesIO
from pathlib import Path
import cv2   

# For inpainting

import numpy as np
import pandas as pd
import streamlit as st
from PIL import Image
from streamlit_drawable_canvas import st_canvas


import argparse
import io
import multiprocessing
from typing import Union

import torch

try:
    torch._C._jit_override_can_fuse_on_cpu(False)
    torch._C._jit_override_can_fuse_on_gpu(False)
    torch._C._jit_set_texpr_fuser_enabled(False)
    torch._C._jit_set_nvfuser_enabled(False)
except:
    pass

from src.helper import (
    download_model,
    load_img,
    norm_img,
    numpy_to_bytes,
    pad_img_to_modulo,
    resize_max_size,
)

NUM_THREADS = str(multiprocessing.cpu_count())

os.environ["OMP_NUM_THREADS"] = NUM_THREADS
os.environ["OPENBLAS_NUM_THREADS"] = NUM_THREADS
os.environ["MKL_NUM_THREADS"] = NUM_THREADS
os.environ["VECLIB_MAXIMUM_THREADS"] = NUM_THREADS
os.environ["NUMEXPR_NUM_THREADS"] = NUM_THREADS
if os.environ.get("CACHE_DIR"):
    os.environ["TORCH_HOME"] = os.environ["CACHE_DIR"]

#BUILD_DIR = os.environ.get("LAMA_CLEANER_BUILD_DIR", "./lama_cleaner/app/build")

# For Seam-carving

from scipy import ndimage as ndi

SEAM_COLOR = np.array([255, 200, 200])    # seam visualization color (BGR)
SHOULD_DOWNSIZE = True                    # if True, downsize image for faster carving
DOWNSIZE_WIDTH = 500                      # resized image width if SHOULD_DOWNSIZE is True
ENERGY_MASK_CONST = 100000.0              # large energy value for protective masking
MASK_THRESHOLD = 10                       # minimum pixel intensity for binary mask
USE_FORWARD_ENERGY = True                 # if True, use forward energy algorithm

device_str = os.environ.get("DEVICE", "cuda" if torch.cuda.is_available() else "cpu")
device = torch.device(device_str)
model_path = "./assets/big-lama.pt"
model = torch.jit.load(model_path, map_location=device)
model = model.to(device)
model.eval()


########################################
# UTILITY CODE
########################################


def visualize(im, boolmask=None, rotate=False):
    vis = im.astype(np.uint8)
    if boolmask is not None:
        vis[np.where(boolmask == False)] = SEAM_COLOR
    if rotate:
        vis = rotate_image(vis, False)
    cv2.imshow("visualization", vis)
    cv2.waitKey(1)
    return vis

def resize(image, width):
    dim = None
    h, w = image.shape[:2]
    dim = (width, int(h * width / float(w)))
    image = image.astype('float32')
    return cv2.resize(image, dim)

def rotate_image(image, clockwise):
    k = 1 if clockwise else 3
    return np.rot90(image, k)    


########################################
# ENERGY FUNCTIONS
########################################

def backward_energy(im):
    """
    Simple gradient magnitude energy map.
    """
    xgrad = ndi.convolve1d(im, np.array([1, 0, -1]), axis=1, mode='wrap')
    ygrad = ndi.convolve1d(im, np.array([1, 0, -1]), axis=0, mode='wrap')
    
    grad_mag = np.sqrt(np.sum(xgrad**2, axis=2) + np.sum(ygrad**2, axis=2))

    # vis = visualize(grad_mag)
    # cv2.imwrite("backward_energy_demo.jpg", vis)

    return grad_mag

def forward_energy(im):
    """
    Forward energy algorithm as described in "Improved Seam Carving for Video Retargeting"
    by Rubinstein, Shamir, Avidan.
    Vectorized code adapted from
    https://github.com/axu2/improved-seam-carving.
    """
    h, w = im.shape[:2]
    im = cv2.cvtColor(im.astype(np.uint8), cv2.COLOR_BGR2GRAY).astype(np.float64)

    energy = np.zeros((h, w))
    m = np.zeros((h, w))
    
    U = np.roll(im, 1, axis=0)
    L = np.roll(im, 1, axis=1)
    R = np.roll(im, -1, axis=1)
    
    cU = np.abs(R - L)
    cL = np.abs(U - L) + cU
    cR = np.abs(U - R) + cU
    
    for i in range(1, h):
        mU = m[i-1]
        mL = np.roll(mU, 1)
        mR = np.roll(mU, -1)
        
        mULR = np.array([mU, mL, mR])
        cULR = np.array([cU[i], cL[i], cR[i]])
        mULR += cULR

        argmins = np.argmin(mULR, axis=0)
        m[i] = np.choose(argmins, mULR)
        energy[i] = np.choose(argmins, cULR)
    
    # vis = visualize(energy)
    # cv2.imwrite("forward_energy_demo.jpg", vis)     
        
    return energy

########################################
# SEAM HELPER FUNCTIONS
######################################## 

def add_seam(im, seam_idx):
    """
    Add a vertical seam to a 3-channel color image at the indices provided 
    by averaging the pixels values to the left and right of the seam.
    Code adapted from https://github.com/vivianhylee/seam-carving.
    """
    h, w = im.shape[:2]
    output = np.zeros((h, w + 1, 3))
    for row in range(h):
        col = seam_idx[row]
        for ch in range(3):
            if col == 0:
                p = np.mean(im[row, col: col + 2, ch])
                output[row, col, ch] = im[row, col, ch]
                output[row, col + 1, ch] = p
                output[row, col + 1:, ch] = im[row, col:, ch]
            else:
                p = np.mean(im[row, col - 1: col + 1, ch])
                output[row, : col, ch] = im[row, : col, ch]
                output[row, col, ch] = p
                output[row, col + 1:, ch] = im[row, col:, ch]

    return output

def add_seam_grayscale(im, seam_idx):
    """
    Add a vertical seam to a grayscale image at the indices provided 
    by averaging the pixels values to the left and right of the seam.
    """    
    h, w = im.shape[:2]
    output = np.zeros((h, w + 1))
    for row in range(h):
        col = seam_idx[row]
        if col == 0:
            p = np.mean(im[row, col: col + 2])
            output[row, col] = im[row, col]
            output[row, col + 1] = p
            output[row, col + 1:] = im[row, col:]
        else:
            p = np.mean(im[row, col - 1: col + 1])
            output[row, : col] = im[row, : col]
            output[row, col] = p
            output[row, col + 1:] = im[row, col:]

    return output

def remove_seam(im, boolmask):
    h, w = im.shape[:2]
    boolmask3c = np.stack([boolmask] * 3, axis=2)
    return im[boolmask3c].reshape((h, w - 1, 3))

def remove_seam_grayscale(im, boolmask):
    h, w = im.shape[:2]
    return im[boolmask].reshape((h, w - 1))

def get_minimum_seam(im, mask=None, remove_mask=None):
    """
    DP algorithm for finding the seam of minimum energy. Code adapted from 
    https://karthikkaranth.me/blog/implementing-seam-carving-with-python/
    """
    h, w = im.shape[:2]
    energyfn = forward_energy if USE_FORWARD_ENERGY else backward_energy
    M = energyfn(im)

    if mask is not None:
        M[np.where(mask > MASK_THRESHOLD)] = ENERGY_MASK_CONST

    # give removal mask priority over protective mask by using larger negative value
    if remove_mask is not None:
        M[np.where(remove_mask > MASK_THRESHOLD)] = -ENERGY_MASK_CONST * 100

    seam_idx, boolmask = compute_shortest_path(M, im, h, w)

    return np.array(seam_idx), boolmask

def compute_shortest_path(M, im, h, w):
    backtrack = np.zeros_like(M, dtype=np.int_)


    # populate DP matrix
    for i in range(1, h):
        for j in range(0, w):
            if j == 0:
                idx = np.argmin(M[i - 1, j:j + 2])
                backtrack[i, j] = idx + j
                min_energy = M[i-1, idx + j]
            else:
                idx = np.argmin(M[i - 1, j - 1:j + 2])
                backtrack[i, j] = idx + j - 1
                min_energy = M[i - 1, idx + j - 1]

            M[i, j] += min_energy

    # backtrack to find path
    seam_idx = []
    boolmask = np.ones((h, w), dtype=np.bool_)
    j = np.argmin(M[-1])
    for i in range(h-1, -1, -1):
        boolmask[i, j] = False
        seam_idx.append(j)
        j = backtrack[i, j]

    seam_idx.reverse()
    return seam_idx, boolmask

########################################
# MAIN ALGORITHM
######################################## 

def seams_removal(im, num_remove, mask=None, vis=False, rot=False):
    for _ in range(num_remove):
        seam_idx, boolmask = get_minimum_seam(im, mask)
        if vis:
            visualize(im, boolmask, rotate=rot)
        im = remove_seam(im, boolmask)
        if mask is not None:
            mask = remove_seam_grayscale(mask, boolmask)
    return im, mask


def seams_insertion(im, num_add, mask=None, vis=False, rot=False):
    seams_record = []
    temp_im = im.copy()
    temp_mask = mask.copy() if mask is not None else None

    for _ in range(num_add):
        seam_idx, boolmask = get_minimum_seam(temp_im, temp_mask)
        if vis:
            visualize(temp_im, boolmask, rotate=rot)

        seams_record.append(seam_idx)
        temp_im = remove_seam(temp_im, boolmask)
        if temp_mask is not None:
            temp_mask = remove_seam_grayscale(temp_mask, boolmask)

    seams_record.reverse()

    for _ in range(num_add):
        seam = seams_record.pop()
        im = add_seam(im, seam)
        if vis:
            visualize(im, rotate=rot)
        if mask is not None:
            mask = add_seam_grayscale(mask, seam)

        # update the remaining seam indices
        for remaining_seam in seams_record:
            remaining_seam[np.where(remaining_seam >= seam)] += 2         

    return im, mask

########################################
# MAIN DRIVER FUNCTIONS
########################################

def seam_carve(im, dy, dx, mask=None, vis=False):
    im = im.astype(np.float64)
    h, w = im.shape[:2]
    assert h + dy > 0 and w + dx > 0 and dy <= h and dx <= w

    if mask is not None:
        mask = mask.astype(np.float64)

    output = im

    if dx < 0:
        output, mask = seams_removal(output, -dx, mask, vis)

    elif dx > 0:
        output, mask = seams_insertion(output, dx, mask, vis)

    if dy < 0:
        output = rotate_image(output, True)
        if mask is not None:
            mask = rotate_image(mask, True)
        output, mask = seams_removal(output, -dy, mask, vis, rot=True)
        output = rotate_image(output, False)

    elif dy > 0:
        output = rotate_image(output, True)
        if mask is not None:
            mask = rotate_image(mask, True)
        output, mask = seams_insertion(output, dy, mask, vis, rot=True)
        output = rotate_image(output, False)

    return output


def object_removal(im, rmask, mask=None, vis=False, horizontal_removal=False):
    im = im.astype(np.float64)
    rmask = rmask.astype(np.float64)
    if mask is not None:
        mask = mask.astype(np.float64)
    output = im

    h, w = im.shape[:2]

    if horizontal_removal:
        output = rotate_image(output, True)
        rmask = rotate_image(rmask, True)
        if mask is not None:
            mask = rotate_image(mask, True)

    while len(np.where(rmask > MASK_THRESHOLD)[0]) > 0:
        seam_idx, boolmask = get_minimum_seam(output, mask, rmask)
        if vis:
            visualize(output, boolmask, rotate=horizontal_removal)            
        output = remove_seam(output, boolmask)
        rmask = remove_seam_grayscale(rmask, boolmask)
        if mask is not None:
            mask = remove_seam_grayscale(mask, boolmask)

    num_add = (h if horizontal_removal else w) - output.shape[1]
    output, mask = seams_insertion(output, num_add, mask, vis, rot=horizontal_removal)
    if horizontal_removal:
        output = rotate_image(output, False)

    return output        



def s_image(im,mask,vs,hs,mode="resize"):
    im = cv2.cvtColor(im, cv2.COLOR_RGBA2RGB)
    mask = 255-mask[:,:,3]
    h, w = im.shape[:2]
    if SHOULD_DOWNSIZE and w > DOWNSIZE_WIDTH:
        im = resize(im, width=DOWNSIZE_WIDTH)
        if mask is not None:
            mask = resize(mask, width=DOWNSIZE_WIDTH)

    # image resize mode
    if mode=="resize":
        dy = hs#reverse
        dx = vs#reverse
        assert dy is not None and dx is not None
        output = seam_carve(im, dy, dx, mask, False)
        

    # object removal mode
    elif mode=="remove":
        assert mask is not None
        output = object_removal(im, mask, None, False, True)
        
    return output


##### Inpainting helper code

def run(image, mask):
    """
    image: [C, H, W]
    mask: [1, H, W]
    return: BGR IMAGE
    """
    origin_height, origin_width = image.shape[1:]
    image = pad_img_to_modulo(image, mod=8)
    mask = pad_img_to_modulo(mask, mod=8)

    mask = (mask > 0) * 1
    image = torch.from_numpy(image).unsqueeze(0).to(device)
    mask = torch.from_numpy(mask).unsqueeze(0).to(device)

    start = time.time()
    with torch.no_grad():
        inpainted_image = model(image, mask)

    print(f"process time: {(time.time() - start)*1000}ms")
    cur_res = inpainted_image[0].permute(1, 2, 0).detach().cpu().numpy()
    cur_res = cur_res[0:origin_height, 0:origin_width, :]
    cur_res = np.clip(cur_res * 255, 0, 255).astype("uint8")
    cur_res = cv2.cvtColor(cur_res, cv2.COLOR_BGR2RGB)
    return cur_res


def get_args_parser():
    parser = argparse.ArgumentParser()
    parser.add_argument("--port", default=8080, type=int)
    parser.add_argument("--device", default="cuda", type=str)
    parser.add_argument("--debug", action="store_true")
    return parser.parse_args()


def process_inpaint(image, mask, invert_mask=True):
    """
    Process inpainting - handles both alpha-based masks and RGB-based masks.
    Preserves original image quality and dimensions.
    Reference: https://huggingface.co/spaces/aryadytm/remove-photo-object
    """
    image = cv2.cvtColor(image, cv2.COLOR_RGBA2RGB)
    original_shape = image.shape  # (H, W, C)
    interpolation = cv2.INTER_CUBIC

    # Preserve original size - only resize if absolutely necessary for memory/performance
    # Keep original quality by preserving dimensions
    max_dimension = max(image.shape[:2])
    # Don't resize unless image is extremely large (over 3000px) to preserve quality
    if max_dimension > 3000:
        size_limit = 3000
        print(f"Very large image detected ({max_dimension}px), resizing to {size_limit}px for processing")
    else:
        size_limit = max_dimension  # Keep original size to preserve quality
        print(f"Preserving original image size: {max_dimension}px (no resize)")

    print(f"Origin image shape: {original_shape}")
    
    # Resize image only if needed
    if size_limit < max_dimension:
        image_resized = resize_max_size(image, size_limit=size_limit, interpolation=interpolation)
        print(f"Resized image shape: {image_resized.shape}")
    else:
        image_resized = image
        print(f"Image not resized: {image_resized.shape}")
    
    image = norm_img(image_resized)

    # Handle mask: check if we should use alpha channel or RGB channels
    alpha_channel = mask[:,:,3]
    rgb_channels = mask[:,:,:3]
    
    # Check if alpha is meaningful (not all 255)
    alpha_mean = alpha_channel.mean()
    
    if alpha_mean < 240:
        # Alpha channel is meaningful (has transparent areas)
        # Reference model logic: mask = 255-mask[:,:,3]
        # alpha=0 (transparent) → 255 (white/remove)
        # alpha=255 (opaque) → 0 (black/keep)
        mask = 255 - alpha_channel
        transparent_count = int((alpha_channel < 128).sum())
        print(f"Using alpha channel: {transparent_count} transparent pixels → white (to remove)")
        # For alpha-based masks: invert_mask=True means keep current (white=remove is correct)
        # invert_mask=False means invert (white becomes black)
        if not invert_mask:
            mask = 255 - mask
            print(f"Applied invert_mask=False: inverted alpha-based mask")
    else:
        # Alpha is mostly opaque (255), use RGB channels instead
        # RGB masks: white (255) = remove, black (0) = keep (standard convention)
        gray = cv2.cvtColor(rgb_channels, cv2.COLOR_RGB2GRAY)
        mask = (gray > 128).astype(np.uint8) * 255
        white_count = int((mask > 128).sum())
        print(f"Using RGB channels: {white_count} white pixels (to remove)")
        # For RGB-based masks: white=remove is already correct
        # invert_mask=False means we want black=remove (invert it)
        if not invert_mask:
            mask = 255 - mask  # invert: white becomes black, black becomes white
            print(f"Applied invert_mask=False: inverted RGB mask (now black=remove)")
    
    # Resize mask to match image dimensions (always force exact match)
    target_h, target_w = image_resized.shape[:2]
    if mask.shape[:2] != (target_h, target_w):
        mask = cv2.resize(mask, (target_w, target_h), interpolation=cv2.INTER_NEAREST)
    
    # Debug: log final mask statistics
    mask_nonzero = int((mask > 128).sum())
    mask_total = mask.shape[0] * mask.shape[1]
    print(f"Final mask before normalization: {mask_nonzero}/{mask_total} pixels marked for removal ({100*mask_nonzero/mask_total:.2f}%)")
    
    if mask_nonzero < 10:
        print("ERROR: Mask is empty or almost empty! Returning original image.")
        # Return original image at original size
        original_rgb = (image_resized * 255).astype(np.uint8)
        return cv2.resize(cv2.cvtColor(original_rgb, cv2.COLOR_RGB2BGR), 
                         (original_shape[1], original_shape[0]), 
                         interpolation=cv2.INTER_CUBIC)
    
    # Verify mask is correct before normalization
    print(f"Mask verification: {mask_nonzero} pixels will be removed, shape: {mask.shape}")
    
    mask = norm_img(mask)
    
    # Verify normalized mask
    mask_normalized_ones = int((mask > 0.5).sum())
    print(f"After normalization: {mask_normalized_ones} pixels marked for removal (value > 0.5)")

    # Run inpainting
    print("Running LaMa model for inpainting...")
    res_np_img = run(image, mask)
    print(f"Inpainting complete. Output shape: {res_np_img.shape}")
    
    # Verify output changed
    original_for_compare = (image_resized * 255).astype(np.uint8)
    original_bgr = cv2.cvtColor(original_for_compare, cv2.COLOR_RGB2BGR)
    diff = np.abs(res_np_img.astype(np.float32) - original_bgr.astype(np.float32))
    diff_pixels = int((diff.sum(axis=2) > 10).sum())  # Pixels that changed by more than 10 in any channel
    print(f"Output verification: {diff_pixels} pixels differ from input (should be > 0 if inpainting worked)")

    # Resize back to original dimensions if we resized (use LANCZOS4 for better quality)
    if size_limit < max_dimension:
        res_np_img = cv2.resize(res_np_img, (original_shape[1], original_shape[0]), 
                               interpolation=cv2.INTER_LANCZOS4)
        print(f"Resized output back to original size: {res_np_img.shape}")

    return cv2.cvtColor(res_np_img, cv2.COLOR_BGR2RGB)