Esempio n. 1
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    def load_flame(self, flame_origin, flame_target=None, lerp=0.0):
        loaded_flame = self.flame
        try:
            if (lerp == 0.0 or flame_target is None):
                loaded_flame = flame_origin
            elif (lerp >= 1.0 or flame_origin is None):
                loaded_flame = flame_target
            else:
                # interpolation:
                flame_origin.time = 0
                flame_target.time = 1
                flames_lerp = [flame_origin, flame_target]
                flames_str = "<flames>%s</flames>" % "".join(
                    map(flame_to_string, flames_lerp))
                genomes, ngenomes = Genome.from_string(flames_str)
                targetflame = Genome()
                flam3_interpolate(genomes, ngenomes, lerp, 0,
                                  byref(targetflame))
                loaded_flame = Flame(targetflame.to_string())

        except Exception as ex:
            print('[!] error during interpolation at %s: %s' % (lerp, str(ex)))
            traceback.print_exc()
            return None

        return loaded_flame
Esempio n. 2
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def interpolate(flames):
    s = "<flames>%s</flames>" % "".join(map(to_string, flames))
    genomes, ngenomes = Genome.from_string(s)
    
    target = Genome()
    for i in range(int(flames[0].time), int(flames[-1].time + 1)):
        flam3_interpolate(genomes, ngenomes, i, 0, byref(target))
        flame = Flame(target.to_string())
        flame.name = "morphed_%04d" % i
        yield flame
Esempio n. 3
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    def reframe(self):
        TwoDoubles = ctypes.c_double * 2

        b_min = TwoDoubles()
        b_max = TwoDoubles()
        b_eps = 0.1
        nsamples = 10000
        genome = Genome.from_string(self.to_string(False))[0]
        flam3_estimate_bounding_box(genome, b_eps, nsamples, b_min, b_max,
                                    RandomContext())
        bxoff = (b_min[0] + b_max[0]) / 2
        if abs(bxoff) < 5:
            self.x_offset = bxoff

        byoff = (b_min[1] + b_max[1]) / 2
        if abs(byoff) < 5:
            self.y_offset = byoff

        denom = min(b_max[1] - b_min[1], b_max[0] - b_min[0])

        if denom == 0:
            tmpscale = 0.0
        else:
            tmpscale = 0.4 * 100.0 / min(b_max[1] - b_min[1],
                                         b_max[0] - b_min[0])

        if tmpscale < 10:
            self.scale = 10
        elif tmpscale > 100:
            self.scale = 100
        else:
            self.scale = tmpscale
Esempio n. 4
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    def reframe(self):
        TwoDoubles = ctypes.c_double * 2

        b_min = TwoDoubles()
        b_max = TwoDoubles()
        b_eps = 0.01
        nsamples = 10000
        genome = Genome.from_string(self.to_string(False))[0]
        flam3_estimate_bounding_box(genome, b_eps, nsamples, b_min, b_max, RandomContext())
        #print "%f %f" % ((b_min[0]+b_max[0])/2,(b_min[1]+b_max[1])/2)
        bxoff = (b_min[0]+b_max[0])/2
        if abs(bxoff)<5:
            self.x_offset = bxoff

        byoff = (b_min[1]+b_max[1])/2
        if abs(byoff)<5:
            self.y_offset = byoff
            
        denom = min(b_max[1]-b_min[1],b_max[0]-b_min[0])

        if denom==0:
            tmpscale = 0.0
        else:
            tmpscale = 0.7 * 100.0/min(b_max[1]-b_min[1],b_max[0]-b_min[0])
        
        if tmpscale<10:
            self.scale = 10
        elif tmpscale>100:
            self.scale = 100
        else:
            self.scale = tmpscale
Esempio n. 5
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 def DrawHistogram(self, dc=None):
     """ Create and draw the color histogram."""
     dc = dc or wx.ClientDC(self)
     genome = Genome.from_string(self.parent.flame.to_string(True))[0]
     array = (c_double *256)()
     flam3_colorhist(genome, 1, array)
     dc.DrawLines([(i*1.5, 30-j*500) for i,j in enumerate(array)], 2, 2)
Esempio n. 6
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 def var_preview(self, xform, range, numvals, depth):
     result = (c_double * (2* (2*numvals+1)**2))()
     genome = Genome.from_string(xform._parent.to_string(True))[0]
     index = xform.index
     if index is None:
         index = genome.final_xform_index
     flam3_xform_preview(genome, index, range, numvals, depth,
                         result, RandomContext())
     return [(x,-y) for x,y in zip(*[iter(result)]*2)]
Esempio n. 7
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    def __init__(self, xform, Color):
        self.genome = Genome.from_string(xform._parent.to_string(True))[0][0]
        xform = xform._parent if xform.ispost() else xform
        self.index = xform.index
        if self.index is None:
            self.index = self.genome.final_xform_index

        kwds = config["Xform-Preview-Settings"].copy()
        depth = kwds.pop("depth")
        self.objects = [FC.PointSet(self.var_preview(depth=i + 1, **kwds), 
                                    Color=tuple(c/(depth - i) for c in Color))
                        for i in range(depth)]
Esempio n. 8
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    def Update(self, flame=None):
        flame = flame or self.parent.flame

        # Make the gradient image
        img = wx.ImageFromBuffer(256, 1, flame.gradient.to_buffer())
        img.Rescale(384, 50)
        self.bmp = wx.BitmapFromImage(img)

        # Calculate the color histogram
        genome = Genome.from_string(flame.to_string(omit_details=True))[0]
        flam3_colorhist(genome, 3, RandomContext(), self.colorhist_array)

        self.Refresh()
Esempio n. 9
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    def Update(self, flame=None):
        flame = flame or self.parent.flame

        # Make the gradient image
        img = wx.ImageFromBuffer(256, 1, flame.gradient.to_buffer())
        img.Rescale(384, 50)
        self.bmp = wx.BitmapFromImage(img)

        # Calculate the color histogram
        genome = Genome.from_string(flame.to_string(omit_details=True))[0]
        flam3_colorhist(genome, 3, RandomContext(), self.colorhist_array)

        self.Refresh()
Esempio n. 10
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    def __init__(self, xform, Color):
        self.genome = Genome.from_string(xform._parent.to_string(True))[0][0]
        xform = xform._parent if xform.ispost() else xform
        self.index = xform.index
        if self.index is None:
            self.index = self.genome.final_xform_index

        kwds = config["Xform-Preview-Settings"].copy()
        depth = kwds.pop("depth")
        self.objects = [
            FC.PointSet(self.var_preview(depth=i + 1, **kwds),
                        Color=tuple(c / (depth - i) for c in Color))
            for i in range(depth)
        ]
Esempio n. 11
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def flam3_render(flame, size, quality, **kwds):
    """Passes render requests on to flam3."""
    flame = flame if type(flame) is Flame else Flame(flame)
#    try:
    genome = Genome.from_string(flame.to_string())[0]
#    except Exception:
#        raise ValueError("Error while parsing flame string.")
        
    width,height = size

    try:
        genome.pixels_per_unit /= genome.width/float(width) # Adjusts scale
    except ZeroDivisionError:
        raise ZeroDivisionError("Size passed to render function is 0.")
    
    genome.width = width
    genome.height = height
    genome.sample_density = quality
    output_buffer, stats = genome.render(**kwds)
    return output_buffer
Esempio n. 12
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def flam3_render(flame, size, quality, transparent=0, **kwds):
    """Passes render requests on to flam3."""
    frame = Genome.load(to_string(flame), **kwds)
    output_buffer, stats = frame.render(size, quality, transparent)
    return output_buffer
Esempio n. 13
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def flam3_render(flame, size, quality, transparent=0, **kwds):
    """Passes render requests on to flam3."""
    frame = Genome.load(to_string(flame), **kwds)
    output_buffer, stats = frame.render(size, quality, transparent)
    return output_buffer
Esempio n. 14
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from fr0stlib.pyflam3 import flam3_colorhist, Genome, flam3_xform_preview, RandomContext
from ctypes import c_double

genome = Genome.from_string(self.flame.to_string())[0]
#array = (c_double *256)()
#flam3_colorhist(genome, 1, array)


array = (c_double *100)()

flam3_xform_preview(genome, 0, 1, 3, 1, array, RandomContext())


print array[:]