drawing-machine/linedraw.py

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Python
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2018-03-21 11:06:44 -04:00
import os
from random import *
import math
from PIL import Image, ImageDraw, ImageOps
no_cv = True
export_path = "output/out.svg"
draw_contours = True
draw_hatch = False
try:
import numpy as np
import cv2
except:
print("Cannot import numpy/openCV. Switching to NO_CV mode.")
no_cv = True
F_Blur = {
(-2,-2):2,(-1,-2):4,(0,-2):5,(1,-2):4,(2,-2):2,
(-2,-1):4,(-1,-1):9,(0,-1):12,(1,-1):9,(2,-1):4,
(-2,0):5,(-1,0):12,(0,0):15,(1,0):12,(2,0):5,
(-2,1):4,(-1,1):9,(0,1):12,(1,1):9,(2,1):4,
(-2,2):2,(-1,2):4,(0,2):5,(1,2):4,(2,2):2,
}
F_SobelX = {(-1,-1):1,(0,-1):0,(1,-1):-1,(-1,0):2,(0,0):0,(1,0):-2,(-1,1):1,(0,1):0,(1,1):-1}
F_SobelY = {(-1,-1):1,(0,-1):2,(1,-1):1,(-1,0):0,(0,0):0,(1,0):0,(-1,1):-1,(0,1):-2,(1,1):-1}
def appmask(IM,masks):
PX = IM.load()
w,h = IM.size
NPX = {}
for x in range(0,w):
for y in range(0,h):
a = [0]*len(masks)
for i in range(len(masks)):
for p in masks[i].keys():
if 0<x+p[0]<w and 0<y+p[1]<h:
a[i] += PX[x+p[0],y+p[1]] * masks[i][p]
if sum(masks[i].values())!=0:
a[i] = a[i] / sum(masks[i].values())
NPX[x,y]=int(sum([v**2 for v in a])**0.5)
for x in range(0,w):
for y in range(0,h):
PX[x,y] = NPX[x,y]
def distsum(*args):
return sum([ ((args[i][0]-args[i-1][0])**2 + (args[i][1]-args[i-1][1])**2)**0.5 for i in range(1,len(args))])
def sortlines(lines):
print("optimizing stroke sequence...")
clines = lines[:]
slines = [clines.pop(0)]
while clines != []:
x,s,r = None,1000000,False
for l in clines:
d = distsum(l[0],slines[-1][-1])
dr = distsum(l[-1],slines[-1][-1])
if d < s:
x,s,r = l[:],d,False
if dr < s:
x,s,r = l[:],s,True
clines.remove(x)
if r == True:
x = x[::-1]
slines.append(x)
return slines
def auto_canny(img, sigma=0.33):
"""
Automatically determines appropriate upper and lower boundries for the Canny function.
"""
med = np.median(img)
lower = int(max(0, (1.0 - sigma) * med))
upper = int(min(255, (1.0 + sigma) * med))
edges = cv2.Canny(img, lower, upper)
return edges
def find_edges(IM):
print("finding edges...")
no_cv = True
if no_cv:
#appmask(IM,[F_Blur])
appmask(IM,[F_SobelX,F_SobelY])
else:
im = np.array(IM)
im = cv2.GaussianBlur(im,(3,3),0)
#im = cv2.Canny(im,100,200)
im = auto_canny(im)
IM = Image.fromarray(im)
return IM.point(lambda p: p > 128 and 255)
def getdots(IM):
print("getting contour points...")
PX = IM.load()
dots = []
w,h = IM.size
for y in range(h-1):
row = []
for x in range(1,w):
if PX[x,y] == 255:
if len(row) > 0:
if x-row[-1][0] == row[-1][-1]+1:
row[-1] = (row[-1][0],row[-1][-1]+1)
else:
row.append((x,0))
else:
row.append((x,0))
dots.append(row)
return dots
def connectdots(dots):
print("connecting contour points...")
contours = []
for y in range(len(dots)):
for x,v in dots[y]:
if v > -1:
if y == 0:
contours.append([(x,y)])
else:
closest = -1
cdist = 100
for x0,v0 in dots[y-1]:
if abs(x0-x) < cdist:
cdist = abs(x0-x)
closest = x0
if cdist > 3:
contours.append([(x,y)])
else:
found = 0
for i in range(len(contours)):
if contours[i][-1] == (closest,y-1):
contours[i].append((x,y,))
found = 1
break
if found == 0:
contours.append([(x,y)])
for c in contours:
if c[-1][1] < y-1 and len(c)<4:
contours.remove(c)
return contours
def getcontours(IM,sc=2):
print("generating contours...")
IM = find_edges(IM)
IM1 = IM.copy()
IM2 = IM.rotate(-90,expand=True).transpose(Image.FLIP_LEFT_RIGHT)
dots1 = getdots(IM1)
contours1 = connectdots(dots1)
dots2 = getdots(IM2)
contours2 = connectdots(dots2)
for i in range(len(contours2)):
contours2[i] = [(c[1],c[0]) for c in contours2[i]]
contours = contours1+contours2
for i in range(len(contours)):
for j in range(len(contours)):
if len(contours[i]) > 0 and len(contours[j])>0:
if distsum(contours[j][0],contours[i][-1]) < 8:
contours[i] = contours[i]+contours[j]
contours[j] = []
for i in range(len(contours)):
contours[i] = [contours[i][j] for j in range(0,len(contours[i]),8)]
contours = [c for c in contours if len(c) > 1]
for i in range(0,len(contours)):
contours[i] = [(v[0]*sc,v[1]*sc) for v in contours[i]]
for i in range(0,len(contours)):
for j in range(0,len(contours[i])):
# contours[i][j] = int(contours[i][j][0]+10*perlin.noise(i*0.5,j*0.1,1)),int(contours[i][j][1]+10*perlin.noise(i*0.5,j*0.1,2))
contours[i][j] = int(contours[i][j][0]+10),int(contours[i][j][1]+10)
return contours
def hatch(IM,sc=16):
print("hatching...")
PX = IM.load()
w,h = IM.size
lg1 = []
lg2 = []
for x0 in range(w):
for y0 in range(h):
x = x0*sc
y = y0*sc
if PX[x0,y0] > 144:
pass
elif PX[x0,y0] > 64:
lg1.append([(x,y+sc/4),(x+sc,y+sc/4)])
elif PX[x0,y0] > 16:
lg1.append([(x,y+sc/4),(x+sc,y+sc/4)])
lg2.append([(x+sc,y),(x,y+sc)])
else:
lg1.append([(x,y+sc/4),(x+sc,y+sc/4)])
lg1.append([(x,y+sc/2+sc/4),(x+sc,y+sc/2+sc/4)])
lg2.append([(x+sc,y),(x,y+sc)])
lines = [lg1,lg2]
for k in range(0,len(lines)):
for i in range(0,len(lines[k])):
for j in range(0,len(lines[k])):
if lines[k][i] != [] and lines[k][j] != []:
if lines[k][i][-1] == lines[k][j][0]:
lines[k][i] = lines[k][i]+lines[k][j][1:]
lines[k][j] = []
lines[k] = [l for l in lines[k] if len(l) > 0]
lines = lines[0]+lines[1]
for i in range(0,len(lines)):
for j in range(0,len(lines[i])):
print(perlin.noise(i*0.5,j*0.1,1))
#lines[i][j] = int(lines[i][j][0]+sc*perlin.noise(i*0.5,j*0.1,1)),int(lines[i][j][1]+sc*perlin.noise(i*0.5,j*0.1,2))-j
lines[i][j] = int(lines[i][j][0]+sc),int(lines[i][j][1]+sc)-j
return lines
def sketch(path, resolution=1024, hatch_size=16, contour_simplify=2):
image = Image.open(path)
w,h = image.size
image = image.convert("L")
image = ImageOps.autocontrast(image ,10)
lines = []
if draw_contours:
lines += getcontours(image.resize((int(resolution/contour_simplify), int(resolution/contour_simplify*h/w))), contour_simplify)
if draw_hatch:
lines += hatch(image.resize((int(resolution/hatch_size), int(resolution/hatch_size*h/w))), hatch_size)
lines = sortlines(lines)
export_path = path.replace("received", "converted")
export_path = os.path.splitext(export_path)[0]
with open(export_path + ".svg", "w") as file:
file.write(makePathSvg(lines))
with open(export_path + ".ngc", "w") as file:
file.write(makeGcode(lines))
print(len(lines), "strokes.")
print("done.")
return lines
def makePolySvg(lines):
"""
Uses the provided set of contours to generate an SVG file and returns it as a string. Contours get
written as polyline as objects.
"""
print("generating svg file...")
out = '<svg xmlns="http://www.w3.org/2000/svg" version="1.1">\n'
for l in lines:
l = ",".join([str(p[0]*0.5)+","+str(p[1]*0.5) for p in l])
out += '<polyline points="'+l+'" stroke="black" stroke-width="2" fill="none" />\n'
out += '</svg>'
return out
def makePathSvg(lines):
"""
Uses the provided set of contours to generate an SVG file and returns it as a string. Contours get
written as path objects.
"""
print("generating svg file...")
out = '<svg xmlns="http://www.w3.org/2000/svg" version="1.1">\n'
for l in lines:
l = ",".join([str(p[0]*0.5)+","+str(p[1]*0.5) for p in l])
out += '<path d="M'+l+'" stroke="black" stroke-width="2" fill="none" />\n'
out += "</svg>"
return out
def makeGcode(lines, paper_size="letter"):
"""
Converts the provided contour lines into G-code commands and returns them as a string.
"""
paper_sizes = {
"letter": (67.46875, 87.3125),
"ledger": (87.3125, 139.2903226),
"max": (90, 140)}
tot = []
for line in lines:
tot += line
max_x = max([p[0] for p in tot])
max_y = max([p[1] for p in tot])
d_x = paper_sizes[paper_size][0] / max_x
d_y = paper_sizes[paper_size][1] / max_y
scale = min(d_x, d_y)
print("generating gcode file...")
out = "$X\n$32=1\nM03\nF600\nG17 G21 G90 G54\nG01\n\n"
for line in lines:
start = line.pop(0)
out += "S1000\n"
#out += f"X{start[0]*0.5} Y{start[1]*0.5}\n"
out += "X" + str(start[0]*scale) + " Y" + str(start[1]*scale) + "\n"
out += "S0\n"
for point in line:
#out += f"X{point[0]*0.5} Y{point[1]*0.5}\n"
out += "X" + str(point[0]*scale) + " Y" + str(point[1]*scale) + "\n"
out += "\n"
out += "S1000\nX0 Y0\nM2\n"
return out
if __name__ == "__main__":
import argparse
parser = argparse.ArgumentParser(
description="Convert image to vectorized line drawing for plotters.")
parser.add_argument(
'-i',
'--input',
nargs='?',
help='Input path')
parser.add_argument(
'-o',
'--output',
nargs='?',
help='Output path.')
parser.add_argument(
'--no_contour',
action='store_true',
help="Don't draw contours.")
parser.add_argument(
'--hatch',
action='store_true',
help='Enable hatching.')
parser.add_argument(
'--no_cv',
action='store_true',
help="Don't use OpenCV.")
parser.add_argument(
"--resolution",
default=1024,
type=int,
help="Resolution. eg. 512, 1024, 2048")
parser.add_argument(
'--contour_simplify',
default=2,
type=int,
help='Level of contour simplification. eg. 1, 2, 3')
parser.add_argument(
'--hatch_size',
default=16,
type=int,
help='Patch size of hatches. eg. 8, 16, 32')
args = parser.parse_args()
export_path = args.output
draw_hatch = args.hatch
draw_contours = not args.no_contour
no_cv = args.no_cv
sketch(args.input, args.resolution, args.contour_simplify, args.hatch_size)