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Location: OneEye/exp/kerokero/prepare_data.py - annotation
f1f8a2421f92
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import sys
import re
import random
import logging as log
import numpy as np
import cv2 as cv
import config as cfg
sys.path.append("..")
sys.path.append("../../src")
from annotations import DataFile,computeBoundingBox,Corners,EPoint,Board
from geometry import Line
from kerokero.transformation_matrices import getIdentity,getRotation,getTranslation,getScale,getMirroring,getProjection
random.seed(361)
class Stats:
counts=[0,0,0,0]
class Sample:
SIDE=224
def __init__(self,img,grid):
""":param img: a greyscale image as a 2D np.uint8
:param grid: iterable of 4 EPoints, ie. Corners"""
self.img=img
self.grid=grid
def transform(self):
""":return: (img, grid), where img is a 2D np.float32 with values in (0,1),
grid [(float) x, (float) y, ...], with x, y in (-1,1)"""
center=self._getCenter()
m=getIdentity()
t1=getTranslation(-center.x,-center.y)
proj=getProjection()
rot=getRotation()
mir=getMirroring()
for mi in [t1,mir,proj,rot]:
m=np.matmul(mi,m)
m=np.matmul(self._computeCrop(m),m)
img=cv.warpPerspective(self.img,m,(self.SIDE,self.SIDE))
img=np.uint8(img)
grid=Corners(c.transform(m) for c in self.grid)
grid=list(map(lambda p: list(2*p/self.SIDE-EPoint(1,1)), grid))
return (img,grid)
def _getCenter(self):
(a,b,c,d)=self.grid
p=Line.fromPoints(a,c)
q=Line.fromPoints(b,d)
return p.intersect(q)
def _computeCrop(self,m):
grid=Corners(c.transform(m) for c in self.grid)
(x1,y1,x2,y2)=computeBoundingBox(grid)
(wg,hg)=(x2-x1,y2-y1)
(left,top,right,bottom)=[random.uniform(0.05,0.2) for i in range(4)]
t2=getTranslation(left*wg-x1, top*hg-y1)
scale=getScale(self.SIDE/(wg*(1+left+right)), self.SIDE/(hg*(1+top+bottom)))
return np.matmul(scale,t2)
def show(self):
img=cv.cvtColor(self.img,cv.COLOR_GRAY2BGR)
for c in self.grid:
cv.circle(img,(int(c.x),int(c.y)),3,[0,255,0],-1)
img=cv.resize(img,(self.SIDE*2,self.SIDE*2))
show(img)
def traverseDirs(root):
stack=[root]
while len(stack)>0:
d=stack.pop()
contents=sorted(os.scandir(d),key=lambda f: f.name,reverse=True)
if any(f.name=="annotations.json.gz" for f in contents):
log.info(d)
yield d
for f in contents:
if f.is_dir(): stack.append(f.path)
def harvestDir(path):
annotations=DataFile(os.path.join(path,"annotations.json.gz"))
imgFilter=lambda f: f.is_file() and re.match(r".*\.(jpg|jpeg|png|gif)$", f.name.lower())
files=sorted(filter(imgFilter,os.scandir(path)),key=lambda f: f.name)
boards=annotations["."]
for f in files:
grade=annotations.get(f.name,[Board()])[0].grade
Stats.counts[grade]+=1
if not Board.UNSET<grade<=Board.POOR: continue
img=cv.imread(f.path)
img=cv.cvtColor(img,cv.COLOR_BGR2GRAY)
for b in boards:
sample=Sample(img,b.grid)
# sample.show()
(transformedImg,label)=sample.transform()
# Sample(np.uint8((transformedImg+1)*128),map(lambda c: (c+EPoint(1,1))*Sample.SIDE/2,transformedGrid)).show()
yield (transformedImg,label)
def loadDataset(root):
testRatio=0.1
trainRatio=1-testRatio
images=[]
labels=[]
for d in traverseDirs(root):
for (img,label) in harvestDir(d):
images.append(img)
labels.append(label)
log.info("clear images: %s",Stats.counts[1])
log.info("good images: %s",Stats.counts[2])
log.info("poor images: %s",Stats.counts[3])
log.info("unset images: %s",Stats.counts[0])
log.info("total: %s",sum(Stats.counts))
n=len(images)
keys=list(range(n))
random.shuffle(keys)
images=[images[k] for k in keys]
labels=[labels[k] for k in keys]
m=int(n*trainRatio)
return (
(np.uint8(images[:m]),np.float32(labels[:m])),
(np.uint8(images[m:]),np.float32(labels[m:]))
)
def show(img,filename="x"):
cv.imshow(filename,img)
cv.waitKey(0)
cv.destroyAllWindows()
if __name__=="__main__":
((trainImages,trainLabels),(testImages,testLabels))=loadDataset(sys.argv[1])
np.savez_compressed(
sys.argv[2],
trainImages=trainImages,
trainLabels=trainLabels,
testImages=testImages,
testLabels=testLabels
)
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