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from fontTools.varLib.models import supportScalar, normalizeValue
from fontTools.misc.fixedTools import MAX_F2DOT14
from functools import lru_cache
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__all__ = ['rebaseTent']
def _reverse_negate(v):
return (-v[2], -v[1], -v[0])
def _solve(tent, axisLimit, negative=False):
axisMin, axisDef, axisMax = axisLimit
lower, peak, upper = tent
# Mirror the problem such that axisDef <= peak
if axisDef > peak:
return [(scalar, _reverse_negate(t) if t is not None else None)
for scalar,t
in _solve(_reverse_negate(tent), _reverse_negate(axisLimit), not negative)]
# axisDef <= peak
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# case 1: The whole deltaset falls outside the new limit; we can drop it
#
# peak
# 1.........................................o..........
# / \
# / \
# / \
# / \
# 0---|-----------|----------|-------- o o----1
# axisMin axisDef axisMax lower upper
#
if axisMax <= lower and axisMax < peak:
return [] # No overlap
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# case 2: Only the peak and outermost bound fall outside the new limit;
# we keep the deltaset, update peak and outermost bound and and scale deltas
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# by the scalar value for the restricted axis at the new limit, and solve
# recursively.
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#
# |peak
# 1...............................|.o..........
# |/ \
# / \
# /| \
# / | \
# 0---|-----------|----------- o | o----1
# axisMin axisDef lower | upper
# |
# axisMax
#
# Convert to:
#
# 1............................................
# |
# o peak
# /|
# /x|
# 0---|-----------|----------- o o upper ----1
# axisMin axisDef lower |
# |
# axisMax
if axisMax < peak:
mult = supportScalar({'tag': axisMax}, {'tag': tent})
tent = (lower, axisMax, axisMax)
return [(scalar*mult, t) for scalar,t in _solve(tent, axisLimit)]
# lower <= axisDef <= peak <= axisMax
gain = supportScalar({'tag': axisDef}, {'tag': tent})
out = [(gain, None)]
# First, the positive side
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# outGain is the scalar of axisMax at the tent.
outGain = supportScalar({'tag': axisMax}, {'tag': tent})
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# Case 3a: Gain is more than outGain. The tent down-slope crosses
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# the axis into negative. We have to split it into multiples.
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#
# | peak |
# 1...................|.o.....|..............
# |/x\_ |
# gain................+....+_.|..............
# /| |y\|
# ................../.|....|..+_......outGain
# / | | | \
# 0---|-----------o | | | o----------1
# axisMin lower | | | upper
# | | |
# axisDef | axisMax
# |
# crossing
if gain > outGain:
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# Crossing point on the axis.
crossing = peak + ((1 - gain) * (upper - peak) / (1 - outGain))
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loc = (peak, peak, crossing)
scalar = 1
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# The part before the crossing point.
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out.append((scalar - gain, loc))
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# The part after the crossing point may use one or two tents,
# depending on whether upper is before axisMax or not, in one
# case we need to keep it down to eternity.
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# Case 3a1, similar to case 1neg; just one tent needed, as in
# the drawing above.
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if upper >= axisMax:
loc = (crossing, axisMax, axisMax)
scalar = supportScalar({'tag': axisMax}, {'tag': tent})
out.append((scalar - gain, loc))
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# Case 3a2: Similar to case 2neg; two tents needed, to keep
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# down to eternity.
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#
# | peak |
# 1...................|.o................|...
# |/ \_ |
# gain................+....+_............|...
# /| | \xxxxxxxxxxy|
# / | | \_xxxxxyyyy|
# / | | \xxyyyyyy|
# 0---|-----------o | | o-------|--1
# axisMin lower | | upper |
# | | |
# axisDef | axisMax
# |
# crossing
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else:
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# Downslope.
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loc1 = (crossing, upper, axisMax)
scalar1 = 0
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# Eternity justify.
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loc2 = (upper, axisMax, axisMax)
scalar2 = supportScalar({'tag': axisMax}, {'tag': tent})
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out.append((scalar1 - gain, loc1))
out.append((scalar2 - gain, loc2))
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# Case 3: Outermost limit still fits within F2Dot14 bounds;
# we keep deltas as is and only scale the axes bounds. Deltas beyond -1.0
# or +1.0 will never be applied as implementations must clamp to that range.
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#
# | peak |
# 1.........|............o...|..................
# | /x\ |
# | /xxx\ |
# | /xxxxx\|
# | /xxxxxxx+
# | /xxxxxxxx|\
# 0---|-----|------oxxxxxxxxx|xo---------------1
# axisMin | lower | upper
# | |
# axisDef axisMax
#
elif axisDef + (axisMax - axisDef) * 2 >= upper:
if not negative and axisDef + (axisMax - axisDef) * MAX_F2DOT14 < upper:
# we clamp +2.0 to the max F2Dot14 (~1.99994) for convenience
upper = axisDef + (axisMax - axisDef) * MAX_F2DOT14
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# Special-case if peak is at axisMax.
if axisMax == peak:
upper = peak
loc = (max(axisDef, lower), peak, upper)
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# Don't add a dirac delta!
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if upper > axisDef:
out.append((1 - gain, loc))
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# Case 4: New limit doesn't fit; we need to chop into two tents,
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# because the shape of a triangle with part of one side cut off
# cannot be represented as a triangle itself.
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#
# | peak |
# 1.........|......o.|...................
# | /x\|
# | |xxy|\_
# | /xxxy| \_
# | |xxxxy| \_
# | /xxxxy| \_
# 0---|-----|-oxxxxxx| o----------1
# axisMin | lower | upper
# | |
# axisDef axisMax
#
else:
loc1 = (max(axisDef, lower), peak, axisMax)
scalar1 = 1
loc2 = (peak, axisMax, axisMax)
scalar2 = supportScalar({'tag': axisMax}, {'tag': tent})
out.append((scalar1 - gain, loc1))
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# Don't add a dirac delta!
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if (peak < axisMax):
out.append((scalar2 - gain, loc2))
# Now, the negative side
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# Case 1neg: Lower extends beyond axisMin: we chop. Simple.
#
# | |peak
# 1..................|...|.o.................
# | |/ \
# gain...............|...+...\...............
# |x_/| \
# |/ | \
# _/| | \
# 0---------------o | | o----------1
# lower | | upper
# | |
# axisMin axisDef
#
if lower <= axisMin:
loc = (axisMin, axisMin, axisDef)
scalar = supportScalar({'tag': axisMin}, {'tag': tent})
out.append((scalar - gain, loc))
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# Case 2neg: Lower is betwen axisMin and axisDef: we add two
# tents to keep it down all the way to eternity.
#
# | |peak
# 1...|...............|.o.................
# | |/ \
# gain|...............+...\...............
# |yxxxxxxxxxxxxx/| \
# |yyyyyyxxxxxxx/ | \
# |yyyyyyyyyyyx/ | \
# 0---|-----------o | o----------1
# axisMin lower | upper
# |
# axisDef
#
else:
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# Downslope.
loc1 = (axisMin, lower, axisDef)
scalar1 = 0
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# Eternity justify.
loc2 = (axisMin, axisMin, lower)
scalar2 = 0
out.append((scalar1 - gain, loc1))
out.append((scalar2 - gain, loc2))
return out
@lru_cache
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def rebaseTent(tent, axisLimit):
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"""Given a tuple (lower,peak,upper) "tent" and new axis limits
(axisMin,axisDefault,axisMax), solves how to represent the tent
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under the new axis configuration. All values are in normalized
-1,0,+1 coordinate system. Tent values can be outside this range.
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Return value is a list of tuples. Each tuple is of the form
(scalar,tent), where scalar is a multipler to multiply any
delta-sets by, and tent is a new tent for that output delta-set.
If tent value is None, that is a special deltaset that should
be always-enabled (called "gain")."""
axisMin, axisDef, axisMax = axisLimit
assert -1 <= axisMin <= axisDef <= axisMax <= +1
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lower, peak, upper = tent
assert -2 <= lower <= peak <= upper <= +2
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assert peak != 0
sols = _solve(tent, axisLimit)
n = lambda v: normalizeValue(v, axisLimit, extrapolate=True)
sols = [(scalar, (n(v[0]), n(v[1]), n(v[2])) if v is not None else None) for scalar,v in sols if scalar != 0]
return sols