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from main import extract_frames, run

from PIL import Image
import numpy as np
from skimage.metrics import structural_similarity as ssim
from skimage.metrics import peak_signal_noise_ratio as psnr
import torch
import torchvision.transforms as transforms
import lpips
from pytorch_fid.fid_score import calculate_fid_given_paths
import os
import json

# Convert PIL to numpy
def pil_to_np(img):
    return np.array(img).astype(np.float32) / 255.0

# SSIM
def compute_ssim(img1, img2):
    img1_np = pil_to_np(img1)
    img2_np = pil_to_np(img2)

    h, w = img1_np.shape[:2]
    min_dim = min(h, w)
    win_size = min(7, min_dim if min_dim % 2 == 1 else min_dim - 1)  # ensure odd

    return ssim(img1_np, img2_np, win_size=win_size, channel_axis=-1, data_range=1.0)

# PSNR
def compute_psnr(img1, img2):
    img1_np = pil_to_np(img1)
    img2_np = pil_to_np(img2)
    return psnr(img1_np, img2_np, data_range=1.0)

# LPIPS
lpips_model = lpips.LPIPS(net='alex')
lpips_transform = transforms.Compose([
    transforms.Resize((256, 256)),
    transforms.ToTensor(),
    transforms.Normalize([0.5]*3, [0.5]*3)
])
def compute_lpips(img1, img2):
    
    img1_tensor = lpips_transform(img1).unsqueeze(0)
    img2_tensor = lpips_transform(img2).unsqueeze(0)
    return lpips_model(img1_tensor, img2_tensor).item()

# FID: Save images to temp folders for FID calculation
def compute_fid(img1, img2):
    os.makedirs('temp/img1', exist_ok=True)
    os.makedirs('temp/img2', exist_ok=True)
    img1.save('temp/img1/0.png')
    img2.save('temp/img2/0.png')
    fid = calculate_fid_given_paths(['temp/img1', 'temp/img2'], batch_size=1, device='cpu', dims=2048)
    return fid


with open('metrics.json', 'r') as file:
    metrics = json.load(file)

def get_score(item, image_paths, video_path, train_steps=100, inference_steps=10, fps=12, bg_remove=False):
    print(item)
    
    images = []
    for path in image_paths:
        img = Image.open(path)
        images.append(img)
    
    gt_frames = extract_frames(video_path, fps)
    
    os.makedirs('out/'+item, exist_ok=True)
    
    
    for i, frame in enumerate(gt_frames):
        frame.save("out/"+item+"/frame_"+str(i)+".png")
    
    results = run(images, video_path, train_steps=100, inference_steps=10, fps=12, bg_remove=False, finetune=True)
    
    for i, result in enumerate(results):
        result.save("out/"+item+"/result_"+str(i)+".png")
        
    results_base = run(images, video_path, train_steps=100, inference_steps=10, fps=12, bg_remove=False, finetune=False)
        
    for i, result in enumerate(results_base):
        result.save("out/"+item+"/base_"+str(i)+".png")
    
    """

    img1=gt_frames[0]

    img2=Image.open("out/base_0.png")

    print("SSIM:", compute_ssim(img1, img2))

    print("PSNR:", compute_psnr(img1, img2))

    print("LPIPS:", compute_lpips(img1, img2))

    print("FID:", compute_fid(img1, img2))

    """
    
    ssim = []
    psnr = []
    lpips = []
    fid = []
    ssim2 = []
    psnr2 = []
    lpips2 = []
    fid2 = []
    for gt, result, base in zip(gt_frames, results, results_base):
        ssim.append(float(compute_ssim(gt, result)))
        psnr.append(float(compute_psnr(gt, result)))
        lpips.append(float(compute_lpips(gt, result)))
        fid.append(float(compute_fid(gt, result)))
        
        ssim2.append(float(compute_ssim(gt, base)))
        psnr2.append(float(compute_psnr(gt, base)))
        lpips2.append(float(compute_lpips(gt, base)))
        fid2.append(float(compute_fid(gt, base)))
        
    
    print("SSIM:", sum(ssim)/len(ssim))
    print("PSNR:", sum(psnr)/len(psnr))
    print("LPIPS:", sum(lpips)/len(lpips))
    print("FID:", sum(fid)/len(fid))
    print('baseline:')
    print("SSIM:", sum(ssim2)/len(ssim2))
    print("PSNR:", sum(psnr2)/len(psnr2))
    print("LPIPS:", sum(lpips2)/len(lpips2))
    print("FID:", sum(fid2)/len(fid2))
    
    metrics[item] = {'ft': {}, 'base': {}}
    metrics[item]['ft']['ssim'] = {'avg': sum(ssim)/len(ssim), 'vals': ssim}
    metrics[item]['ft']['psnr'] = {'avg': sum(psnr)/len(psnr), 'vals': psnr}
    metrics[item]['ft']['lpips'] = {'avg': sum(lpips)/len(lpips), 'vals': lpips}
    metrics[item]['ft']['fid'] = {'avg': sum(fid)/len(fid), 'vals': fid}
    metrics[item]['base']['ssim'] = {'avg': sum(ssim2)/len(ssim2), 'vals': ssim2}
    metrics[item]['base']['psnr'] = {'avg': sum(psnr2)/len(psnr2), 'vals': psnr2}
    metrics[item]['base']['lpips'] = {'avg': sum(lpips2)/len(lpips2), 'vals': lpips2}
    metrics[item]['base']['fid'] = {'avg': sum(fid2)/len(fid2), 'vals': fid2}
    
    with open('metrics.json', "w", encoding="utf-8") as json_file:
        json.dump(metrics, json_file, ensure_ascii=False, indent=4)
    
    
    

items = ['sidewalk', 'aaa', 'azri', 'dead', 'frankgirl', 'kobold', 'ramona', 'renee', 'walk', 'woody']
for item in items: 
    if item in metrics:
        continue
    get_score(item, ['test/'+item+'/1.jpg', 'test/'+item+'/2.jpg', 'test/'+item+'/3.jpg'], 'test/'+item+'/v.mp4')



ssim = []
psnr = []
lpips = []
fid = []
ssim2 = []
psnr2 = []
lpips2 = []
fid2 = []
for item in metrics.keys():
    ssim.append(metrics[item]['ft']['ssim']['avg'])
    psnr.append(metrics[item]['ft']['psnr']['avg'])
    lpips.append(metrics[item]['ft']['lpips']['avg'])
    fid.append(metrics[item]['ft']['fid']['avg'])
    
    ssim2.append(metrics[item]['base']['ssim']['avg'])
    psnr2.append(metrics[item]['base']['psnr']['avg'])
    lpips2.append(metrics[item]['base']['lpips']['avg'])
    fid2.append(metrics[item]['base']['fid']['avg'])

    print(item)
    print("SSIM:", metrics[item]['ft']['ssim']['avg'], metrics[item]['base']['ssim']['avg'])
    print("PSNR:", metrics[item]['ft']['psnr']['avg'], metrics[item]['base']['psnr']['avg'])
    print("LPIPS:", metrics[item]['ft']['lpips']['avg'], metrics[item]['base']['lpips']['avg'])
    print("FID:", metrics[item]['ft']['fid']['avg'], metrics[item]['base']['fid']['avg'])

print('Results:')
print("SSIM:", sum(ssim)/len(ssim))
print("PSNR:", sum(psnr)/len(psnr))
print("LPIPS:", sum(lpips)/len(lpips))
print("FID:", sum(fid)/len(fid))
print('baseline:')
print("SSIM:", sum(ssim2)/len(ssim2))
print("PSNR:", sum(psnr2)/len(psnr2))
print("LPIPS:", sum(lpips2)/len(lpips2))
print("FID:", sum(fid2)/len(fid2))