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import os
import shutil
import gc
import json
import pickle
import cv2
import numpy as np
from tqdm import tqdm
import threading
from concurrent.futures import ProcessPoolExecutor

from multi_fractal_db import ifs
from multi_fractal_db import serach_ifs_systems
from multi_fractal_db.multi_fractal_dataset import MultiFractalDataset
from multi_fractal_db.multi_fractal_generator import MultiGenerator

from PIL import Image

class Generator():
    @classmethod
    def get_params(cls, params_path):
        # デバッグ表示
        cls.debug = True

        # Conner's FractalDBのパラメータ
        with open(os.path.join(params_path, 'multi_fractal_ifs_params.json')) as f:
            cls.ifs_params = json.load(f)

        # IFSシステムの探索パラメータ
        kwargs = dict(
          # IFSシステム数 
          num_systems=cls.ifs_params["num_systems"],
          # 連立方程式の数
          n=(2, 4),
          bval=1,
          beta=None,
          sample_fn=None,
        )
        # 全IFSシステムのパラメータ作成
        sys = serach_ifs_systems.random_systems(**kwargs)
        cls.ifs_systems = {'params': sys, 'hparams': kwargs}
        print(f"ifs_systems length {len(cls.ifs_systems['params'])}")

        # デバッグモード
        cls.debug = True

        return True

    @classmethod
    def generate(cls, out_path, start_index : int = None, end_index : int = None, jpeg_quality : int = 95):
        if cls.debug:
            print(out_path)

        # MixUp元フォルダ作成
        base_path = out_path.replace("pretrain", "base")

        # クラス数
        num_classes = cls.ifs_params['num_classes']
        # 1クラスあたりの画像枚数
        num_image_per_class = cls.ifs_params['num_image_per_class']

        if start_index is None:
            start_index = 0
        if end_index is None:
            end_index = num_classes
        
        # 全クラス分の画像作成
        for iclass in range(start_index, end_index):
            print(f"iclass = {iclass:05}")
            class_dir = os.path.join(out_path, f"{iclass:05}")
            if os.path.exists(class_dir):
                files = os.listdir(class_dir)
                files = [f for f in files if f.endswith(".jpg")]
                if len(files) == num_image_per_class:
                    print(f"this iclass already processed = {iclass:05}")
                    once_load_failed = False
                    for f in files:
                        path = os.path.join(class_dir, f)
                        try:
                            img = Image.open(path)
                        except:
                            once_load_failed = True
                            break
                    if not once_load_failed:
                        continue
                    else:
                        print(f"[RE] this iclass already processed = {iclass:05}, but file corrupted. ")
                        for f in files:
                            os.remove(os.path.join(class_dir, f))
                else:
                    for f in files:
                        os.remove(os.path.join(class_dir, f))

            base_images = []
            # MixUp元ベースクラス作成
            for ib, ibase in enumerate([iclass*2, iclass*2+1]):
                # クラスフォルダ
                
                # 1クラスあたりのIFSシステム数
                num_systems_per_calss = cls.ifs_params['num_systems_per_calss']
                # 使用するIFSシステムパラメータ
                st = ibase * num_systems_per_calss
                en = (ibase+1)*num_systems_per_calss
                # print(f"ib={ib}, ibase={ibase}, st={st}, en={en}")
                ifs_syss =  {'params':cls.ifs_systems['params'][st:en], 
                                'hparams': cls.ifs_systems['hparams']}
                
                # chaceサイズ
                #cache_size = num_systems_per_calss * num_image_per_class
                cache_size = min(500, num_image_per_class*num_systems_per_calss)

                # 別スレッドで実行
                future =  make_multi_fractal_images( 
                            ifs_syss, cls.ifs_params, num_systems_per_calss, 
                            num_image_per_class, cache_size, cls.debug, out_path, ibase)
                base_images.append(future)
        
            # MixUp画像作成
            # クラスフォルダ
            class_dir = os.path.join(out_path, f"{iclass:05}")
            if os.path.exists(class_dir)==False:
                os.makedirs(class_dir, exist_ok=True)
            
            # 全画像作成
            for idx in tqdm(range(num_image_per_class)):
                # MixUp元画像の読み込み
                image_base1 = base_images[0][idx]
                image_base2 = base_images[1][idx]               
                # MixUp
                alpha = 1.0
                lam = np.clip(np.random.beta(alpha, alpha), 0.4, 0.6)
                image_mixup = lam * image_base1 + (1 - lam) * image_base2
                image_mixup = image_mixup.astype(np.uint8)
                # 画像書き出し
                image_file = os.path.join(class_dir, f"{idx:05}.jpg")
                cv2.imwrite(image_file, image_mixup, [cv2.IMWRITE_JPEG_QUALITY, jpeg_quality])
                        
            # MixUp元フォルダの削除
            base_images = None
            del base_images
            futures = None
            del futures
            gc.collect()


def make_multi_fractal_images(ifs_systems, ifs_params,

                            num_systems_per_calss, num_image_per_class, cache_size,

                            debug, out_path, ibase):
    # Conner's Multi-FractalDB
    multi_fractal_dataset = MultiFractalDataset(
    ifs_params=ifs_systems,
    num_systems=num_systems_per_calss,
    num_class=1,
    per_class=num_image_per_class,
    generator=MultiGenerator(
        color=ifs_params["color"],
        background=ifs_params["background"],
        niter=ifs_params["niter"],
        patch=ifs_params["patch"],
        n_objects=ifs_params["n_objects"],
        size_range=ifs_params["size_range"],
        jitter_params=ifs_params["jitter_params"],
        cache_size=cache_size,
        size=ifs_params["image_size"]
        ),
    period=2)

    if debug:
        # 確認用フォルダ
        check_dir = out_path.replace("pretrain", "check")
        if os.path.exists(check_dir)==False:
            os.makedirs(check_dir, exist_ok=True)
        # 使用するIFSフラクタルを描画          
        for i, sys in enumerate(ifs_systems['params']):
            image_gray = multi_fractal_dataset.generator.render(sys['system'])
            image_gray = (image_gray * 255).astype(np.uint8)
            #image_gray = cv2.applyColorMap(image_gray, cv2.COLORMAP_BONE)
            image_file = os.path.join(check_dir, f"{ibase:05}_{i:02}.jpg")
            cv2.imwrite(image_file, image_gray)

    # 全画像数
    base_images = []
    num_fractal_images = len(multi_fractal_dataset)
    class_dir = os.path.join(check_dir, f"{ibase:05}")
    os.makedirs(class_dir, exist_ok=True)
    for idx in range(num_fractal_images):
        # 画像とラベルの取得
        image, labels = multi_fractal_dataset[idx]
        # 画像書き出し
        image_file = os.path.join(class_dir, f"{idx:05}.png")
        cv2.imwrite(image_file, image)
        base_images.append(image)
    
    # メモリ解放
    multi_fractal_dataset = None
    del multi_fractal_dataset
    gc.collect()

    return base_images

def multifractal_main(outputdir, start_index, end_index, jpeg_quality):
    Generator.get_params('../params')
    Generator.generate(outputdir, start_index, end_index, jpeg_quality)

if __name__ == "__main__":
    import argparse
    from tqdm import tqdm
    from copy import deepcopy
    import concurrent.futures
    import time
    from typing import List
    import multiprocessing
    worker_num=multiprocessing.cpu_count()
    print("workers : ", worker_num)
    parser = argparse.ArgumentParser()
    parser.add_argument('--fpath', type=str, default="../output/pretrain")
    parser.add_argument('--total', type=int, default=1000)
    parser.add_argument('--step', type=int, default=1000//worker_num+1)
    parser.add_argument('--offset', type=int, default=0)
    parser.add_argument('--jpeg_quality', type=int, default=95)

    args = parser.parse_args()

    os.makedirs(args.fpath, exist_ok=True)

    executor = concurrent.futures.ProcessPoolExecutor(max_workers=worker_num)
    futures : List[concurrent.futures.Future] = []

    for i in range(args.offset, args.total, args.step):
        start_index = i
        end_index = i + args.step
        futures.append(executor.submit(multifractal_main, args.fpath, start_index, end_index, args.jpeg_quality))
    
    for future in tqdm(concurrent.futures.as_completed(futures)):
        try:
            rr = future.result()
        except Exception as exc:
            print('generated an exception: %s' % (exc))

    print("All done!")