Home | History | Annotate | Download | only in tools
      1 #!/usr/bin/python
      2 
      3 '''
      4 Copyright 2013 Google Inc.
      5 
      6 Use of this source code is governed by a BSD-style license that can be
      7 found in the LICENSE file.
      8 '''
      9 
     10 import math
     11 import pprint
     12 
     13 def withinStdDev(n):
     14   """Returns the percent of samples within n std deviations of the normal."""
     15   return math.erf(n / math.sqrt(2))
     16 
     17 def withinStdDevRange(a, b):
     18   """Returns the percent of samples within the std deviation range a, b"""
     19   if b < a:
     20     return 0;
     21 
     22   if a < 0:
     23     if b < 0:
     24       return (withinStdDev(-a) - withinStdDev(-b)) / 2;
     25     else:
     26       return (withinStdDev(-a) + withinStdDev(b)) / 2;
     27   else:
     28     return (withinStdDev(b) - withinStdDev(a)) / 2;
     29 
     30 
     31 #We have a bunch of smudged samples which represent the average coverage of a range.
     32 #We have a 'center' which may not line up with those samples.
     33 #From the 'center' we want to make a normal approximation where '5' sample width out we're at '3' std deviations.
     34 #The first and last samples may not be fully covered.
     35 
     36 #This is the sub-sample shift for each set of FIR coefficients (the centers of the lcds in the samples)
     37 #Each subpxl takes up 1/3 of a pixel, so they are centered at x=(i/n+1/2n), or 1/6, 3/6, 5/6 of a pixel.
     38 #Each sample takes up 1/4 of a pixel, so the results fall at (x*4)%1, or 2/3, 0, 1/3 of a sample.
     39 samples_per_pixel = 4
     40 subpxls_per_pixel = 3
     41 #sample_offsets is (frac, int) in sample units.
     42 sample_offsets = [math.modf((float(subpxl_index)/subpxls_per_pixel + 1.0/(2.0*subpxls_per_pixel))*samples_per_pixel) for subpxl_index in range(subpxls_per_pixel)]
     43 
     44 #How many samples to consider to the left and right of the subpxl center.
     45 sample_units_width = 5
     46 
     47 #The std deviation at sample_units_width.
     48 std_dev_max = 3
     49 
     50 #The target sum is in some fixed point representation.
     51 #Values larger the 1 in fixed point simulate ink spread.
     52 target_sum = 0x110
     53 
     54 for sample_offset, sample_align in sample_offsets:
     55   coeffs = []
     56   coeffs_rounded = []
     57 
     58   #We start at sample_offset - sample_units_width
     59   current_sample_left = sample_offset - sample_units_width
     60   current_std_dev_left = -std_dev_max
     61 
     62   done = False
     63   while not done:
     64     current_sample_right = math.floor(current_sample_left + 1)
     65     if current_sample_right > sample_offset + sample_units_width:
     66       done = True
     67       current_sample_right = sample_offset + sample_units_width
     68     current_std_dev_right = current_std_dev_left + ((current_sample_right - current_sample_left) / sample_units_width) * std_dev_max
     69 
     70     coverage = withinStdDevRange(current_std_dev_left, current_std_dev_right)
     71     coeffs.append(coverage * target_sum)
     72     coeffs_rounded.append(int(round(coverage * target_sum)))
     73 
     74     current_sample_left = current_sample_right
     75     current_std_dev_left = current_std_dev_right
     76 
     77   # Now we have the numbers we want, but our rounding needs to add up to target_sum.
     78   delta = 0
     79   coeffs_rounded_sum = sum(coeffs_rounded)
     80   if coeffs_rounded_sum > target_sum:
     81     # The coeffs add up to too much. Subtract 1 from the ones which were rounded up the most.
     82     delta = -1
     83 
     84   if coeffs_rounded_sum < target_sum:
     85     # The coeffs add up to too little. Add 1 to the ones which were rounded down the most.
     86     delta = 1
     87 
     88   if delta:
     89     print "Initial sum is 0x%0.2X, adjusting." % (coeffs_rounded_sum,)
     90     coeff_diff = [(coeff_rounded - coeff) * delta
     91                   for coeff, coeff_rounded in zip(coeffs, coeffs_rounded)]
     92 
     93     class IndexTracker:
     94       def __init__(self, index, item):
     95         self.index = index
     96         self.item = item
     97       def __lt__(self, other):
     98         return self.item < other.item
     99       def __repr__(self):
    100         return "arr[%d] == %s" % (self.index, repr(self.item))
    101 
    102     coeff_pkg = [IndexTracker(i, diff) for i, diff in enumerate(coeff_diff)]
    103     coeff_pkg.sort()
    104 
    105     # num_elements_to_force_round had better be < (2 * sample_units_width + 1) or
    106     # * our math was wildy wrong
    107     # * an awful lot of the curve is out side our sample
    108     # either is pretty bad, and probably means the results will not be useful.
    109     num_elements_to_force_round = abs(coeffs_rounded_sum - target_sum)
    110     for i in xrange(num_elements_to_force_round):
    111       print "Adding %d to index %d to force round %f." % (delta, coeff_pkg[i].index, coeffs[coeff_pkg[i].index])
    112       coeffs_rounded[coeff_pkg[i].index] += delta
    113 
    114   print "Prepending %d 0x00 for allignment." % (sample_align,)
    115   coeffs_rounded_aligned = ([0] * int(sample_align)) + coeffs_rounded
    116 
    117   print ', '.join(["0x%0.2X" % coeff_rounded for coeff_rounded in coeffs_rounded_aligned])
    118   print sum(coeffs), hex(sum(coeffs_rounded))
    119   print
    120