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#!/usr/bin/python
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"""
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Find Squares in image by finding countours and filtering
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"""
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#Results slightly different from C version on same images, but is
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#otherwise ok
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import math
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import cv2.cv as cv
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def angle(pt1, pt2, pt0):
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"calculate angle contained by 3 points(x, y)"
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dx1 = pt1[0] - pt0[0]
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dy1 = pt1[1] - pt0[1]
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dx2 = pt2[0] - pt0[0]
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dy2 = pt2[1] - pt0[1]
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nom = dx1*dx2 + dy1*dy2
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denom = math.sqrt( (dx1*dx1 + dy1*dy1) * (dx2*dx2 + dy2*dy2) + 1e-10 )
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ang = nom / denom
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return ang
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def is_square(contour):
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"""
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Squareness checker
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Square contours should:
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-have 4 vertices after approximation,
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-have relatively large area (to filter out noisy contours)
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-be convex.
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-have angles between sides close to 90deg (cos(ang) ~0 )
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Note: absolute value of an area is used because area may be
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positive or negative - in accordance with the contour orientation
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"""
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area = math.fabs( cv.ContourArea(contour) )
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isconvex = cv.CheckContourConvexity(contour)
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s = 0
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if len(contour) == 4 and area > 1000 and isconvex:
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for i in range(1, 4):
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# find minimum angle between joint edges (maximum of cosine)
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pt1 = contour[i]
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pt2 = contour[i-1]
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pt0 = contour[i-2]
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t = math.fabs(angle(pt0, pt1, pt2))
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if s <= t:s = t
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# if cosines of all angles are small (all angles are ~90 degree)
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# then its a square
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if s < 0.3:return True
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return False
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def find_squares_from_binary( gray ):
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"""
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use contour search to find squares in binary image
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returns list of numpy arrays containing 4 points
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"""
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squares = []
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storage = cv.CreateMemStorage(0)
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contours = cv.FindContours(gray, storage, cv.CV_RETR_TREE, cv.CV_CHAIN_APPROX_SIMPLE, (0,0))
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storage = cv.CreateMemStorage(0)
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while contours:
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#approximate contour with accuracy proportional to the contour perimeter
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arclength = cv.ArcLength(contours)
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polygon = cv.ApproxPoly( contours, storage, cv.CV_POLY_APPROX_DP, arclength * 0.02, 0)
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if is_square(polygon):
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squares.append(polygon[0:4])
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contours = contours.h_next()
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return squares
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def find_squares4(color_img):
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"""
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Finds multiple squares in image
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Steps:
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-Use Canny edge to highlight contours, and dilation to connect
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the edge segments.
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-Threshold the result to binary edge tokens
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-Use cv.FindContours: returns a cv.CvSequence of cv.CvContours
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-Filter each candidate: use Approx poly, keep only contours with 4 vertices,
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enough area, and ~90deg angles.
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Return all squares contours in one flat list of arrays, 4 x,y points each.
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"""
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#select even sizes only
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width, height = (color_img.width & -2, color_img.height & -2 )
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timg = cv.CloneImage( color_img ) # make a copy of input image
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gray = cv.CreateImage( (width,height), 8, 1 )
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# select the maximum ROI in the image
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cv.SetImageROI( timg, (0, 0, width, height) )
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# down-scale and upscale the image to filter out the noise
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pyr = cv.CreateImage( (width/2, height/2), 8, 3 )
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cv.PyrDown( timg, pyr, 7 )
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cv.PyrUp( pyr, timg, 7 )
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tgray = cv.CreateImage( (width,height), 8, 1 )
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squares = []
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# Find squares in every color plane of the image
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# Two methods, we use both:
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# 1. Canny to catch squares with gradient shading. Use upper threshold
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# from slider, set the lower to 0 (which forces edges merging). Then
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# dilate canny output to remove potential holes between edge segments.
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# 2. Binary thresholding at multiple levels
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N = 11
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for c in [0, 1, 2]:
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#extract the c-th color plane
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cv.SetImageCOI( timg, c+1 );
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cv.Copy( timg, tgray, None );
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cv.Canny( tgray, gray, 0, 50, 5 )
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cv.Dilate( gray, gray)
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squares = squares + find_squares_from_binary( gray )
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# Look for more squares at several threshold levels
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for l in range(1, N):
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cv.Threshold( tgray, gray, (l+1)*255/N, 255, cv.CV_THRESH_BINARY )
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squares = squares + find_squares_from_binary( gray )
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return squares
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RED = (0,0,255)
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GREEN = (0,255,0)
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def draw_squares( color_img, squares ):
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"""
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Squares is py list containing 4-pt numpy arrays. Step through the list
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and draw a polygon for each 4-group
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"""
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color, othercolor = RED, GREEN
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for square in squares:
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cv.PolyLine(color_img, [square], True, color, 3, cv.CV_AA, 0)
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color, othercolor = othercolor, color
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cv.ShowImage(WNDNAME, color_img)
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WNDNAME = "Squares Demo"
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def main():
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"""Open test color images, create display window, start the search"""
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cv.NamedWindow(WNDNAME, 1)
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for name in [ "../c/pic%d.png" % i for i in [1, 2, 3, 4, 5, 6] ]:
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img0 = cv.LoadImage(name, 1)
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try:
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img0
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except ValueError:
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print "Couldn't load %s\n" % name
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continue
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# slider deleted from C version, same here and use fixed Canny param=50
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img = cv.CloneImage(img0)
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cv.ShowImage(WNDNAME, img)
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# force the image processing
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draw_squares( img, find_squares4( img ) )
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# wait for key.
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if cv.WaitKey(-1) % 0x100 == 27:
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break
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if __name__ == "__main__":
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main()
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cv.DestroyAllWindows()
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