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@kalinon
Last active January 4, 2023 00:39
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Save kalinon/15f8fac6322c78b4bfcd352704858735 to your computer and use it in GitHub Desktop.
Crystal scripts to prep wow-tcg cards for MPC
import pathlib
import imageio
import requests
import time
import numpy as np
import os
from numpy.fft import fft2, ifft2, fftshift, ifftshift
from skimage.transform import resize
from skimage.filters import unsharp_mask
TOKEN = 'xxxxxx'
INPUT_FOLDER = "xxxxxx"
OUTPUT_FOLDER = "xxxxxx"
def process_image(filename, outputdir, imagename):
pathlib.Path(outputdir).mkdir(parents=True, exist_ok=True)
outputfile = outputdir + "/" + imagename + ".png"
if os.path.isfile(outputfile):
print(f"{imagename} already exists, skipping")
return
time.sleep(0.05)
print(f"Processing: {imagename} - input: {filename} output: {outputfile}")
# Process with waifu2x
r = requests.post(
"https://api.deepai.org/api/waifu2x",
files={
'image': open(filename, 'rb'),
},
headers={'api-key': TOKEN}
)
output_url = r.json()['output_url']
im = imageio.v3.imread(output_url)
# Read in filter image
filterimage = np.copy(imageio.v3.imread("./filterimagenew.png"))
# Resize filter to shape of input image
filterimage = resize(filterimage, [im.shape[0], im.shape[1]], anti_aliasing=True, mode="edge")
# Initialise arrays
im_filtered = np.zeros(im.shape, dtype=np.complex_)
im_recon = np.zeros(im.shape, dtype=np.float_)
# Apply filter to each RGB channel individually
for i in range(0, 3):
im_filtered[:, :, i] = np.multiply(fftshift(fft2(im[:, :, i])), filterimage)
im_recon[:, :, i] = ifft2(ifftshift(im_filtered[:, :, i])).real
# Scale between 0 and 255 for uint8
minval = np.min(im_recon)
maxval = np.max(im_recon)
im_recon_sc = (255 * ((im_recon - minval) / (maxval - minval))).astype(np.uint8)
# Borderify image
pad = 57 # Pad image by 1/8th of inch on each edge
bordertol = 16 # Overfill onto existing border by 16px
im_padded = np.zeros([im.shape[0] + 2 * pad, im.shape[1] + 2 * pad, 3])
# Set border colour
bordercolour = [0, 0, 0]
# Pad image
for i in range(0, 3):
im_padded[pad:im.shape[0] + pad, pad:im.shape[1] + pad, i] = im_recon_sc[:, :, i]
# Overfill onto existing border
# Left
im_padded[0:im_padded.shape[0],
0:pad + bordertol, :] = bordercolour
# Right
im_padded[0:im_padded.shape[0],
im_padded.shape[1] - (pad + bordertol):im_padded.shape[1], :] = bordercolour
# Top
im_padded[0:pad + bordertol,
0:im_padded.shape[1], :] = bordercolour
# Bottom
im_padded[im_padded.shape[0] - (pad + bordertol):im_padded.shape[0],
0:im_padded.shape[1], :] = bordercolour
im_sharp = unsharp_mask(im_padded.astype(np.uint8), radius=3, amount=0.3)
im_sharp = im_sharp * 255
# Write image to disk
imageio.imwrite(outputfile, im_sharp.astype(np.uint8))
def get_files_in_dir(directory):
dirs = []
for filename in os.listdir(directory):
f = os.path.join(directory, filename)
if filename == "into the mists": continue
if os.path.isdir(f):
for d in get_files_in_dir(f):
dirs.append(d)
if os.path.isfile(f):
dirs.append(f)
return dirs
if __name__ == "__main__":
# Loop through each image in images_local.txt and scan em all
# with open('images_local.txt', 'r') as fp:
# for filename in fp:
# filename = filename.rstrip()
# pipe_idx = filename.index("|")
# process_image(filename[0:pipe_idx], filename[pipe_idx+1:])
# iterate over files in input directory, process them, then save in output directory
directory = INPUT_FOLDER
for filename in get_files_in_dir(INPUT_FOLDER):
if filename.endswith(".png"):
process_image(filename,
os.path.dirname(filename).replace(INPUT_FOLDER, OUTPUT_FOLDER),
os.path.basename(filename).replace(".png", ""))
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SUVORK5CYII=
require "stumpy_png"
require "json"
require "progress"
include StumpyPNG
GOLD_BORDER = StumpyCore::RGBA.from_rgb(161, 126, 33)
RED_BORDER = StumpyCore::RGBA.from_rgb(164, 0, 22)
BLACK_BORDER = StumpyCore::RGBA.from_rgb(0, 0, 0)
CARD_SIZES = Hash(Int32, Hash(Int32, String)).new
BORDER_SAMPLES = Array(Tuple(UInt8, UInt8, UInt8)).new
def compare(i, v, dif = 5) : Bool
i >= (v - dif) && i <= (v + dif)
end
def is_gold_border(color_tuple)
compare(color_tuple[0], 160) && compare(color_tuple[1], 125) && compare(color_tuple[2], 35)
end
def is_red_border(color_tuple)
compare(color_tuple[0], 162) && compare(color_tuple[1], 0) && compare(color_tuple[2], 22)
end
def find_first_nonblack(canvas)
c_width = canvas.width - 1
c_height = canvas.height - 1
(0..c_width).each do |x|
(0..c_height).each do |y|
next if canvas[x, y].to_rgb8 == {0, 0, 0}
puts "found nonblack at: {#{x},#{y}}"
return {x, y}
end
end
raise "No non-black pixel"
end
def sample(canvas, cord, size = 30)
colors = Array(Tuple(UInt8, UInt8, UInt8)).new
(0..size).each do |x|
x = cord[0] + x
(0..size).each do |y|
y = cord[1] + y
colors << canvas[x, y].to_rgb8
end
end
{
(colors.sum(&.[0].to_i64) / colors.size).ceil,
(colors.sum(&.[1].to_i64) / colors.size).ceil,
(colors.sum(&.[2].to_i64) / colors.size).ceil,
}
end
# Only supports 1256x1714
def parse_file(filepath)
name = File.basename filepath
canvas = StumpyPNG.read(filepath)
return if canvas.width < 1250 && canvas.height < 1714
x, y = find_first_nonblack(canvas)
corner_color = StumpyCore::RGBA.from_rgb *sample(canvas, {x, y})
# corner_color = canvas[x, y]
color_tuple = corner_color.to_rgb8
puts "#{name}: #{corner_color.to_rgb8}"
return if color_tuple == {0, 0, 0}
# if is_gold_border(color_tuple)
# fill_corners(canvas, GOLD_BORDER)
# elsif is_red_border(color_tuple)
# fill_corners(canvas, RED_BORDER)
# else
# BORDER_SAMPLES << corner_color.to_rgb8
# return
# end
fill_corners(canvas, corner_color, x, y)
StumpyPNG.write(canvas, filepath.gsub(".png", "-2.png"))
# puts "#{name}: #{corner_color.to_rgb8}"
# fill_corners(canvas, corner_color)
# StumpyPNG.write(canvas, filepath)
end
def fill_corners(canvas, color, b_x = 80, b_y = 80)
c_width = canvas.width - 1
c_height = canvas.height - 1
# Top border
(0..c_width).each do |x|
(0..b_y).each do |y|
canvas[x, y] = color
end
end
# Botom border
(0..c_width).each do |x|
((c_height - b_y)..c_height).each do |y|
canvas[x, y] = color
end
end
# Left Border
(0..b_x).each do |x|
(0..c_height).each do |y|
canvas[x, y] = color
end
end
# Right Border
((c_width - b_x)..c_width).each do |x|
(0..c_height).each do |y|
canvas[x, y] = color
end
end
end
def each_cord(canvas)
c_width = canvas.width - 1
c_height = canvas.height - 1
(0..c_width).each do |x|
(0..c_height).each do |y|
yield ({x, y})
end
end
end
def fill_alpha(filepath)
canvas = StumpyPNG.read(filepath)
each_cord(canvas) do |x, y|
color = canvas[x, y]
if color.a < 65535
canvas[x, y] = BLACK_BORDER
end
end
StumpyPNG.write(canvas, filepath.gsub(".png", "-2.png"))
end
def add_bleed(filepath, width = 1260, height = 1714)
canvas = StumpyPNG.read(filepath)
if canvas.width >= width || canvas.height >= height
puts "card is already #{width}x#{height} or larger"
exit 1
end
x_diff = width - canvas.width
y_diff = height - canvas.height
new_canvas = Canvas.new(width, height)
x_border = (x_diff/2).to_i
y_border = (y_diff/2).to_i
fill_corners(new_canvas, BLACK_BORDER, x_border, y_border)
each_cord(canvas) do |x, y|
new_canvas[(x + x_border).to_i, (y + y_border).to_i] = canvas[x, y]
end
# (0..(width - 1)).each do |x|
# (0..(height - 1)).each do |y|
# end
# end
StumpyPNG.write(new_canvas, filepath.gsub(".png", "-2.png"))
end
# add_bleed("wow-tcg-mpc/card-back3.png")
#
# files = Dir.glob("raid and dungeons/**/*.png")
# bar = ProgressBar.new(total: files.size)
# files.each do |file|
# next if /^lib/ =~ file
# parse_file(file)
# bar.inc
# end
# # # puts "Sizes: "
# # # puts CARD_SIZES.to_json
# # # puts ""
# # puts "Colors: "
# # puts BORDER_SAMPLES.uniq.to_json
# failed = [
# "raid and dungeons/Assault on Icecrown Citadel/The Lich King - Backside.png",
# "raid and dungeons/Battle of the Aspects/Chaos Heroes and Bosses/Kalecgos the Spell-Weaver - Backside.png",
# "raid and dungeons/Dungeon Series - Scarlet Monastery/Scarlet Commander Mograine - Level 1.png",
# "raid and dungeons/Dungeon Series - Scarlet Monastery/Scarlet Commander Mograine - Level 3.png",
# "raid and dungeons/Dungeon Series - Shadowfang Keep/Godfrey's Crystal Scope.png",
# "raid and dungeons/Dungeon Series - Shadowfang Keep/Haunting Spirit.png",
# "raid and dungeons/Dungeon Series - Shadowfang Keep/Pistol Barrage.png",
# "raid and dungeons/Dungeon Series - The Deadmines/'Captain' Cookie - Level 2.png",
# "raid and dungeons/Magtheridon's Lair/Magtheridon Unleashed - Backside.png",
# "raid and dungeons/Magtheridon's Lair/Magtheridon's Blood.png",
# "raid and dungeons/Naxxramas/Bosses/Grobbulus - Backside.png",
# "raid and dungeons/Naxxramas/Bosses/Thaddius - Backside.png",
# "raid and dungeons/Naxxramas/Tokens/Frostwyrm Lair.png",
# "raid and dungeons/Naxxramas/Tokens/The Arachnid Quarter.png",
# "raid and dungeons/Naxxramas/Tokens/The Plague Quarter.png",
# "raid and dungeons/The Black Temple/Bosses/High Warlord Naj'entus - Backside.png",
# "raid and dungeons/The Black Temple/Bosses/Teron Gorefiend - Backside.png",
# ]
# # failed.each do |file|
# # parse_file(file)
# # end
# # "raid and dungeons/Magtheridon's Lair/Dark Mending Channeler.png"
# # "raid and dungeons/Magtheridon's Lair/Shadow Channeler 1.png"
require "file_utils"
require "json"
require "csv"
OUT_DIR = "../mpc-prep"
IN_DIR = "wow-tcg-mpc"
CARD_BACK_NAME = "Card Back.png"
BLOCKS = {
"AZ" => "Azeroth",
"BC" => "Burning Crusade",
"DW" => "Drums of War",
"SW" => "Scourgewar",
"WB" => "Worldbreaker",
"AF" => "Aftermath",
"TW" => "Timewalkers",
"MP" => "Mists of Pandaria",
}
BLOCK_KEYS = BLOCKS.keys
SETS = {
"HOA" => "Heroes of Azeroth",
"TDP" => "Through the Dark Portal",
"FOO" => "Fires of Outland",
"MOL" => "March of the Legion",
"SOB" => "Servants of the Betrayer",
"THI" => "The Hunt for Illidan",
"DOW" => "Drums of War",
"BLG" => "Blood of Gladiators",
"FOH" => "Fields of Honor",
"SCW" => "Scourgewar",
"ICE" => "Icecrown",
"WRA" => "Wrathgate",
"WBR" => "Worldbreaker",
"WOE" => "War of the Elements",
"TOD" => "Twilight of the Dragons",
"TOT" => "Throne of the Tides",
"COH" => "Crown of the Heavens",
"TOF" => "Tomb of the Forgotten",
"WOA" => "War of the Ancients",
"BOG" => "Betrayal of the Guardian",
"ROF" => "Reign of Fire",
"TIW" => "Timewalkers",
"ITM" => "Into the Mists",
"EOT" => "Echos of Thunder",
}
SET_KEYS = SETS.keys
RAIDS = {
"ONX" => "Onyxia's Lair",
"TMC" => "The Molten Core",
"MAG" => "Magtheridon's Lair",
"TBT" => "The Black Temple",
"NAX" => "Naxxramas",
"AIC" => "Assault on Icecrown Citadel",
"SFK" => "Shadowfang Keep",
"SCM" => "Scarlet Monastery",
"TDM" => "The Deadmines",
"BOA" => "Battle of the Aspects",
"COT" => "Caverns of Time",
"SOO" => "Siege of Orgrimmar",
}
RAID_KEYS = RAIDS.keys
BLOCK_FOLDERS = {
"01-BLOK-AZ-HOA" => "blocks/Azeroth/Heroes of Azeroth",
"02-BLOK-AZ-TDP" => "blocks/Azeroth/Through the Dark Portal",
"03-BLOK-AZ-FOO" => "blocks/Azeroth/Fires of Outland",
"04-BLOK-BC-MOL" => "blocks/Burning Crusade/March of the Legion",
"05-BLOK-BC-SOB" => "blocks/Burning Crusade/Servants of the Betrayer",
"06-BLOK-BC-THI" => "blocks/Burning Crusade/The Hunt for Illidan",
"07-BLOK-DW-DOW" => "blocks/Drums of War/Drums of War",
"08-BLOK-DW-BLG" => "blocks/Drums of War/Blood of Gladiators",
"09-BLOK-DW-FOH" => "blocks/Drums of War/Fields of Honor",
"10-BLOK-SW-SCW" => "blocks/Scourgewar/Scourgewar",
"11-BLOK-SW-ICE" => "blocks/Scourgewar/Icecrown",
"12-BLOK-SW-WRA" => "blocks/Scourgewar/Wrathgate",
"13-BLOK-WB-WBR" => "blocks/Worldbreaker/Worldbreaker",
"14-BLOK-WB-WOE" => "blocks/Worldbreaker/War of the Elements",
"15-BLOK-WB-TOD" => "blocks/Worldbreaker/Twilight of the Dragons",
"16-BLOK-AF-TOT" => "blocks/Aftermath/Throne of the Tides",
"17-BLOK-AF-COH" => "blocks/Aftermath/Crown of the Heavens",
"18-BLOK-AF-TOF" => "blocks/Aftermath/Tomb of the Forgotten",
"19-BLOK-TW-WOA" => "blocks/Timewalkers/War of the Ancients",
"20-BLOK-TW-BOG" => "blocks/Timewalkers/Betrayal of the Guardian",
"21-BLOK-TW-ROF" => "blocks/Timewalkers/Reign of Fire",
"22-BLOK-TW-TIW" => "blocks/Timewalkers/Timewalkers",
"23-BLOK-MP-ITM" => "reborn/into the mists",
"24-BLOK-MP-EOT" => "reborn/echos of thunder",
}
RAID_FOLDERS = {
"01-R-ONX" => "raid and dungeons/Onyxia's Lair",
"02-R-TMC" => "raid and dungeons/The Molten Core",
"03-R-MAG" => "raid and dungeons/Magtheridon's Lair",
"04-R-TBT" => "raid and dungeons/The Black Temple",
"05-R-NAX" => "raid and dungeons/Naxxramas",
"06-R-AIC" => "raid and dungeons/Assault on Icecrown Citadel",
"07-DS-SFK" => "raid and dungeons/Dungeon Series - Shadowfang Keep",
"08-DS-SCM" => "raid and dungeons/Dungeon Series - Scarlet Monastery",
"09-DS-TDM" => "raid and dungeons/Dungeon Series - The Deadmines",
"10-R-BOA" => "raid and dungeons/Battle of the Aspects",
"11-R-COT" => "raid and dungeons/Caverns of Time",
}
MISC = {
"A-AGM" => "aditional/Arena Grand Melee",
"A-DARK" => "aditional/Darkmoon Faire",
"A-DR-2008" => "aditional/2009 Demo Reward",
"A-FOW" => "aditional/Feast of Winterveil",
"A-FOW-2012" => "aditional/Feast of Winterveil 2012",
"A-HOG" => "aditional/Hogger",
"A-P-BCON-2007" => "aditional/Blizzcon 2007 Promo",
"A-P-BCON-2011" => "aditional/Blizzcon 2011",
"A-P-BEP-2007" => "aditional/Blizzard Employee Promo 2007",
"A-P-BEP-2009" => "aditional/Blizzard Employee Promo 2009",
"A-P-BEP-2010" => "aditional/Blizzard Employee Promo 2010",
"A-P-CE-BCEP" => "aditional/Burning Crusade Collector's Edition Promo",
"A-P-CE-CCEP" => "aditional/Cataclysm Collector's Edition Promo",
"A-P-CE-WCEP" => "aditional/Wotlk Collector's Edition Promo",
"A-SGA" => "aditional/2011 Showdown Goblins of Anarchy",
"A-T" => "aditional/Tokens",
"BLOK-AF-B" => "aditional/Crafting/Aftermath Block/Badges",
"BLOK-AF-C" => "aditional/Crafting/Aftermath Block",
"BLOK-AF-HP" => "aditional/Holiday Promos - Aftermath Block",
"BLOK-AZ-C" => "aditional/Crafting/Azeroth & Burning Crusade Block",
"BLOK-DW-C" => "aditional/Crafting/Drums of War Block",
"BLOK-DW-P" => "aditional/Drums of War Promos",
"BLOK-DW-ST" => "aditional/Drums of War and Death Knight Starter/Death Knight Starter",
"BLOK-DW-ST-DK" => "aditional/Drums of War and Death Knight Starter/Drums of War Starter",
"BLOK-MP-ITM-T" => "reborn/into the mists/Tokens",
"BLOK-SW-ICE-B" => "aditional/Crafting/Scourgewar Block/Icecrown/Badges",
"BLOK-SW-ICE-C" => "aditional/Crafting/Scourgewar Block/Icecrown",
"BLOK-SW-SCW-B" => "aditional/Crafting/Scourgewar Block/Scourgewar/Badges",
"BLOK-SW-SCW-C" => "aditional/Crafting/Scourgewar Block/Scourgewar",
"BLOK-SW-SOTA" => "aditional/Scrourgewar Strand of the Ancients",
"BLOK-SW-WRA-B" => "aditional/Crafting/Scourgewar Block/Wrathgate/Badges",
"BLOK-SW-WRA-C" => "aditional/Crafting/Scourgewar Block/Wrathgate",
"BLOK-TW-AA" => "aditional/Timewalkers Alternate Art",
"BLOK-TW-B" => "aditional/Crafting/Timewalker Block/Badges",
"BLOK-TW-C" => "aditional/Crafting/Timewalker Block",
"BLOK-TW-HP" => "aditional/Holiday Promos - Timewalkers Block",
"BLOK-WB-B" => "aditional/Crafting/Worldbreaker Block/Badges",
"BLOK-WB-C" => "aditional/Crafting/Worldbreaker Block",
"BLOK-WB-HP" => "aditional/Holiday Promos - Worldbreaker Block",
"CD-D-ELD" => "aditional/Champion Decks/Elderlimb",
"CD-D-HOG" => "aditional/Champion Decks/Hogger",
"CD-D-JAI" => "aditional/Champion Decks/Jaina",
"CD-D-MUR" => "aditional/Champion Decks/Murkdeep",
"CD-D-SYL" => "aditional/Champion Decks/Sylvanas",
"CD-EPICS" => "aditional/Champion Decks/Epics",
"CD-T" => "aditional/Champion Decks/Tokens",
"CS-2010-ST" => "aditional/Class Starter 2010",
"CS-2011-ALLY-DK" => "aditional/Class Starter 2011 Alliance/Death Knight",
"CS-2011-ALLY-DRUID" => "aditional/Class Starter 2011 Alliance/Druid",
"CS-2011-ALLY-HUNT" => "aditional/Class Starter 2011 Alliance/Hunter",
"CS-2011-ALLY-LOCK" => "aditional/Class Starter 2011 Alliance/Warlock",
"CS-2011-ALLY-MAGE" => "aditional/Class Starter 2011 Alliance/Mage",
"CS-2011-ALLY-PALY" => "aditional/Class Starter 2011 Alliance/Paladin",
"CS-2011-ALLY-PRIEST" => "aditional/Class Starter 2011 Alliance/Priest",
"CS-2011-ALLY-ROGUE" => "aditional/Class Starter 2011 Alliance/Rogue",
"CS-2011-ALLY-SHAMAN" => "aditional/Class Starter 2011 Alliance/Shaman",
"CS-2011-ALLY-WARR" => "aditional/Class Starter 2011 Alliance/Warrior",
"CS-2013-ALLY-HUNT" => "aditional/Class Starter 2013/Alliance Hunter",
"CS-2013-ALLY-LOCK" => "aditional/Class Starter 2013/Alliance Warlock",
"CS-2013-ALLY-PRIEST" => "aditional/Class Starter 2013/Alliance Priest",
"CS-2013-ALLY-ROGUE" => "aditional/Class Starter 2013/Alliance Rogue",
"CS-2013-ALLY-SHAMAN" => "aditional/Class Starter 2013/Alliance Shaman",
"CS-2013-HORDE-DK" => "aditional/Class Starter 2013/Horde Death Knight",
"CS-2013-HORDE-DRUID" => "aditional/Class Starter 2013/Horde Druid",
"CS-2013-HORDE-MAGE" => "aditional/Class Starter 2013/Horde Mage",
"CS-2013-HORDE-PALY" => "aditional/Class Starter 2013/Horde Paladin",
"CS-2013-HORDE-WARR" => "aditional/Class Starter 2013/Horde Warrior",
"DS-TR" => "aditional/Treasure/Dungeon Treasure",
"R-AIC-TR" => "aditional/Treasure/Assault on Icecrown Citadel",
"R-BOA-CHB" => "raid and dungeons/Battle of the Aspects/Chaos Heroes and Bosses",
"R-BOA-GIFT" => "raid and dungeons/Battle of the Aspects/Gift of the Aspects",
"R-BOA-HM" => "raid and dungeons/Battle of the Aspects/Hard Mode",
"R-BOA-TR" => "aditional/Treasure/Battle of the Aspects",
"R-COT-TR" => "aditional/Treasure/Cavern's of Time",
"R-MAG-TR" => "aditional/Treasure/Magtheridon",
"R-NAX-TR" => "aditional/Treasure/Naxxramas",
"R-ONX-TR" => "aditional/Treasure/Onyxia",
"R-SOO-TR" => "reborn/siege of orgrimmar - treasure",
"R-TBT-BE" => "raid and dungeons/The Black Temple/Betrayer Events",
"R-TBT-E" => "raid and dungeons/The Black Temple/Events",
"R-TBT-TR" => "aditional/Treasure/Black Temple",
"R-TMC-RAG" => "raid and dungeons/The Molten Core/Ragnaros Deck",
"R-TMC-RUNE" => "raid and dungeons/The Molten Core/Runes",
"R-TMC-TR" => "aditional/Treasure/Molten Core",
}
ALIASES = {
"TR" => "Treasure",
"B" => "Badges",
"A" => "Misc",
"C" => "Crafting",
"T" => "Tokens",
"P" => "Promos",
"D" => "Decks",
"E" => "Events",
"R" => "Raids",
"BLOK" => "Blocks",
"DS" => "Dungeon Series",
"CHB" => "Chaos Heroes and Bosses",
"GIFT" => "Gift of the Aspects",
"HM" => "Hard Mode",
"CD" => "Champion Decks",
"ST" => "Starter",
"CS" => "Class Starter",
"BE" => "Betrayer Events",
"RAG" => "Ragnaros Deck",
"RUNE" => "Runes",
# Classes
"ALLY" => "Alliance",
"HORDE" => "Horde",
"DRUID" => "Druid",
"DK" => "Death Knight",
"HUNT" => "Hunter",
"LOCK" => "Warlock",
"MAGE" => "Mage",
"PRIEST" => "Priest",
"PALY" => "Paladin",
"ROGUE" => "Rogue",
"SHAMAN" => "Shaman",
"WARR" => "Warrior",
# Misc
"EPICS" => "Epics",
"HP" => "Holidy",
"BCON" => "Blizzcon",
"AGM" => "Arena Grand Melee",
"CE" => "Collector's Edition",
"BCEP" => "Burning Crusade",
"BEP" => "Blizzard Employee Promo",
"CCEP" => "Cataclysm",
"DARK" => "Darkmoon Faire",
"DR" => "Demo Reward",
"FOW" => "Feast of Winterveil",
"HOG" => "Hogger",
"SGA" => "Showdown Goblins of Anarchy",
"WCEP" => "Wrath of the Lich King",
"ELD" => "Elderlimb",
"JAI" => "Jaina",
"MUR" => "Murkdeep",
"SYL" => "Sylvanas",
"SOTA" => "Strand of the Ancients",
"AA" => "Alternate Art",
}
# MISC.keys.sort.each do |k|
# puts %|"#{k}" => "#{MISC[k]}",|
# end
# exit
alias CardInfo = NamedTuple(path: String, num: String, dbl_sided: Bool, is_back: Bool, set_code: String, name: String, raid: Bool, token: Bool, card_back: String)
DOUBLES = Hash(String, Hash(String, String)).new
CARDS = Array(CardInfo).new
def is_block?(code)
BLOCK_KEYS.includes?(code)
end
def is_set?(code)
SET_KEYS.includes?(code)
end
def is_raid?(code)
RAID_KEYS.includes?(code)
end
def is_dbl(set_code, num, name)
DOUBLES[set_code][num]? == name
end
def parse_file_path(set_code, file, raid : Bool = false, token : Bool = false)
name = File.basename(file)
dir = File.dirname(file)
# Check for custom cardback
card_back = File.join(dir, CARD_BACK_NAME)
if name =~ /^(\d{3})b?\s-\s(.*)\.png/
num = $1
CARDS.push({
path: file,
num: num,
dbl_sided: is_dbl(set_code, num, $2),
is_back: /^(\d{3})b/.matches?(name),
set_code: set_code,
name: $2,
raid: raid,
token: token,
card_back: File.exists?(card_back) ? card_back : "",
})
end
end
def parse_dir(set_code, dir, raid : Bool = false, token : Bool = false)
DOUBLES[set_code] = Hash(String, String).new unless DOUBLES[set_code]?
files = Dir.glob(File.join(dir, "*.png")).sort!
# Save a list of all doublesided
files.each do |file|
DOUBLES[set_code][$1] = $2 if File.basename(file) =~ /^(\d{3})b\s-\s(.*)\.png/
end
# Go through and copy cards around
files.each do |file|
parse_file_path(set_code, file, raid: raid, token: token)
end
token_dir = File.join(dir, "Tokens")
if Dir.exists?(token_dir)
parse_dir("#{set_code}-TR", token_dir, raid: true, token: true)
end
end
def parse_raids
RAID_FOLDERS.keys.sort!.each do |k|
DOUBLES[k] = Hash(String, String).new
parse_dir(k, RAID_FOLDERS[k], true)
boss_dir = File.join(RAID_FOLDERS[k], "Bosses")
if Dir.exists?(boss_dir)
parse_dir("#{k}-B", boss_dir, true)
end
end
end
def parse_blocks
BLOCK_FOLDERS.keys.sort!.each do |k|
DOUBLES[k] = Hash(String, String).new
parse_dir(k, BLOCK_FOLDERS[k])
end
end
def sort_cards(cards)
cards.sort! { |a, b| "#{a.[:set_code]}-#{a.[:num]}" <=> "#{b.[:set_code]}-#{b.[:num]}" }
end
def find_mismatch(dbl_front, dbl_back)
# Check backs
dbl_front.each do |x|
backs = dbl_back.select do |y|
x[:num] == y[:num] && x[:set_code] == y[:set_code] && x[:raid] == y[:raid] && x[:token] == y[:token]
end
if backs.size == 0
puts "Missing back for #{x.to_json}"
exit
end
if backs.size > 1
puts "Multiple backs for #{x.to_json}"
exit
end
end
# Check for missing fronts
dbl_back.each do |x|
cards = dbl_front.select do |y|
x[:num] == y[:num] && x[:set_code] == y[:set_code] && x[:raid] == y[:raid] && x[:token] == y[:token]
end
if cards.size == 0
puts "Missing front for #{x.to_json}"
exit
end
if cards.size > 1
puts "Multiple fronts for #{x.to_json}"
exit
end
end
end
def get_part_path(part, set_code)
if is_raid?(part)
return RAIDS[part]
elsif is_set?(part)
return SETS[part]
elsif is_block?(part)
return BLOCKS[part]
end
if ALIASES[part]?
ALIASES[part]
elsif part =~ /(19|20)\d\d/
part
else
puts "unknown part: #{part} in set_code: #{set_code}"
exit(1)
end
end
def get_path(set_code)
parts = set_code.split("-")
if parts[0] =~ /\d+/
parts.shift
end
new_path = [] of String
parts.each do |part|
new_path << get_part_path(part, set_code)
end
new_path
end
def check_missing
count = 0
Dir.glob("**/*.png").each do |file|
next if file =~ /Card Back/
next if file =~ /Thank You Card/
next if file =~ /Hogger Leaflet/
next if file =~ /Limb Tentacle Colorized/
if CARDS.find(&.[:path].==(file)).nil?
count += 1
puts "missing: #{file}"
end
end
count
end
def write_cards_json
cards = Array(NamedTuple(path: String, num: String, dbl_sided: Bool, is_back: Bool,
name: String, block: String?, set: String?, raid: String?, card_back: String?,
token: Bool, badge: Bool, crafting: Bool, treasure: Bool,
)).new
CARDS.each do |card|
labels = get_path(card[:set_code])
filename = File.basename(card[:path])
dir = File.join(labels)
block = nil
set = nil
raid = nil
badge = false
crafting = false
treasure = false
token = card[:token]
parts = card[:set_code].split("-")
parts.each do |x|
block = BLOCKS[x] if is_block?(x)
raid = RAIDS[x] if is_raid?(x)
set = SETS[x] if is_set?(x)
badge = true if x == "B"
crafting = true if x == "C"
treasure = true if x == "TR"
token = true if x == "T"
end
cards << {
path: File.join(dir, filename),
num: card[:num],
dbl_sided: card[:dbl_sided],
is_back: card[:is_back],
name: card[:name],
block: block,
set: set,
raid: raid,
badge: badge,
crafting: crafting,
treasure: treasure,
token: token,
card_back: card[:card_back].empty? ? nil : File.join(dir, CARD_BACK_NAME),
}
end
File.write(File.join(OUT_DIR, "cards.json"), cards.sort! { |a, b| a[:path] <=> b[:path] }.to_pretty_json)
end
Dir.cd(IN_DIR)
parse_blocks
parse_raids
# Extra parsing
MISC.each do |k, v|
case k
when /\w\w\w-T/
parse_dir(k, v, raid: true)
when "A-TOKEN", "MP-ITM-TOKEN"
parse_dir(k, v, token: true)
else
parts = k.split("-")
parse_dir(k, v, raid: is_raid?(parts[0]))
end
end
regular = sort_cards(CARDS.select { |c| !c.[:dbl_sided] })
dbl_front = sort_cards(CARDS.select { |c| c.[:dbl_sided] && !c.[:is_back] })
dbl_back = sort_cards(CARDS.select { |c| c.[:dbl_sided] && c.[:is_back] })
puts "total: #{CARDS.size} reg: #{regular.size} dbl: #{dbl_front.size} backs: #{dbl_back.size}"
names = CARDS.map(&.[:name]).uniq!
puts "unique names: #{names.size}"
missing = check_missing
if missing > 0
puts "missing #{missing} cards"
exit(1)
end
if dbl_front.size != dbl_back.size
# puts dbl_front.to_pretty_json
puts "MISSMATCH In double sided cards! ABORT"
puts "total: #{CARDS.size} reg: #{regular.size} dbl: #{dbl_front.size} backs: #{dbl_back.size}"
find_mismatch(dbl_front, dbl_back)
exit(1)
end
# Cycle through each card and move it
CARDS.each do |c|
new_path = get_path(c[:set_code])
new_path.unshift(OUT_DIR)
dir = File.join(new_path)
FileUtils.mkdir_p(dir)
new_file = File.join(dir, File.basename(c[:path]))
# Check for existing file
if File.exists? new_file
# puts "File already exists at: #{new_file}"
# puts c.to_pretty_json
# exit(1)
next
end
# Copy file
FileUtils.cp(c[:path], new_file)
# Check for custom cardback
unless c[:card_back].empty?
new_card_back = File.join(dir, CARD_BACK_NAME)
# Copy the card back unless it already exists
FileUtils.cp(c[:card_back], new_card_back) unless File.exists?(new_card_back)
end
end
# Copy the standard card backs
FileUtils.cp(CARD_BACK_NAME, File.join(OUT_DIR, CARD_BACK_NAME))
FileUtils.cp("Card Back - Upper Deck.png", File.join(OUT_DIR, "Card Back - Upper Deck.png"))
write_cards_json
require "csv"
require "file_utils"
def parse_dir(dir)
filepath = File.join(dir, "_cards.txt")
# puts filepath
card_info = CSV.parse(File.read(filepath), separator: '\t', quote_char: '|')
card_info.each do |row|
next unless row[1]?
name = row[1].chomp.gsub(/\s+$/, "")
cards = find_card(dir, name)
if cards && cards.size >= 1
rename_cards(row[0], name, cards)
end
end
end
def rename_cards(_num, name, cards)
num = 0
num = _num.to_i if _num =~ /\d+/
num_prefix = sprintf("%03d", num)
cards.each do |c|
dir = File.dirname(c)
filename = File.basename(c)
# First see if we have a match
# next unless filename =~ /#{name}/
# Now see if its a closer match
new_name = "#{num_prefix} - #{name.gsub('?', "")}.png"
new_path = File.join(dir, new_name)
# Skip if its already renamed
next if filename == new_name
next if filename == "#{num_prefix}b - #{name}.png"
# Skip if its already numbered
# next if filename =~ /\d\d\db? - /
if filename =~ /^#{num_prefix}/
clean_name = clean(name)
if clean(filename) =~ /#{clean_name}.png/i
puts "#{File.basename(c)} -> #{File.basename(new_path)}"
FileUtils.mv(c, new_path)
end
# if clean(filename) =~ /^#{clean_name} - Backside.png/
# puts "#{name} -> #{filename}"
# new_name = "#{num_prefix}b - #{name}.png"
# new_path = File.join(dir, new_name)
# # FileUtils.mv(c, new_path)
# end
end
# Skip if its already renamed
# next if new_name == filename
# new_path = File.join(dir, new_name)
# puts "#{c} -> #{new_path}"
# FileUtils.mv(c, new_path)
end
end
def clean(str)
str.gsub("\"", "").gsub(":", " -").gsub("'", "").gsub("!", "")
end
def find_card(dir, name)
files = Dir.glob(File.join(dir, "**", "*.png"))
if files.size > 0
return files
end
nil
end
lists = Dir.glob("**/_cards.txt")
lists.each do |l|
parse_dir(File.dirname(l))
end
name: wow-tcg-mpc
version: 0.1.0
dependencies:
stumpy_png:
github: stumpycr/stumpy_png
version: "~> 5.0"
progress:
github: askn/progress
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