Example #1
0
    def getStartingColors(self, hueFilters=[], lightnessRange=[25,85],
        onlyUseRGB=True):
        """Randomly select a starting color from a subset of CIE Lab space.

        This function returns a set of highly preferable colors within a
        subspace of the typical 8,325-color CIE Lab space that fall within the
        range of any hue filters. Rather than the normal every-5 interval, the
        subspace specifies an every-15 interval along L, a, and b axis starting
        at the origin.

        Args:
            hueFilters (np.array): an n by 2 nd.array specifying lower and upper
                hue filter bounds that fall within [0,360) degrees.
            lightnessRange (list): a two-element list that sets the lightness
                range for filtering for color space before sampling.
            onlyUseRGB (bool): whether color space should be restricted to RGB.

        Returns:
            startingColors (np.array): an n x 3 array of n highly preferable CIE
                Lab D65 starting colors.
        """
        hueFilters = np.array(hueFilters)

        lIntervals = CIE_LAB_STARTING_SUBSPACE_INTERVALS["L"]
        aIntervals = CIE_LAB_STARTING_SUBSPACE_INTERVALS["a"]
        bIntervals = CIE_LAB_STARTING_SUBSPACE_INTERVALS["b"]

        isInterval = np.zeros((self.colorSpaces.shape[0], 3))
        isInterval[:,0] = np.in1d(self.colorSpaces[:,0], lIntervals)
        isInterval[:,1] = np.in1d(self.colorSpaces[:,1], aIntervals)
        isInterval[:,2] = np.in1d(self.colorSpaces[:,2], bIntervals)
        isIntervalMask = np.all(isInterval, axis=1)

        startColors = self.colorSpaces[isIntervalMask]

        isRGB = np.logical_and(startColors[:,[6,7,8]] >= 0, startColors[:,[6,7,8]] <= 255)
        isRGB = np.all(isRGB, axis=1)

        if lightnessRange[0] <= 10:
            minLightness = 0
        else:
            minLightness = lightnessRange[0] + 0.01
        if lightnessRange[1] <= 15:
            maxLightness = 15
        else:
            maxLightness = lightnessRange[1]

        inLightness = np.logical_not(np.logical_or(startColors[:,0] <
            minLightness, startColors[:,0] > maxLightness))

        startColors = startColors[np.logical_and(isRGB, inLightness)]

        if hueFilters.size > 0:
            hueFilters = convert.convertHueRanges(hueFilters)
            okHue = [np.logical_and(startColors[:,3] >= low,
                    startColors[:,3] <= high) for low,high in hueFilters]
            okHue = np.any(np.array(okHue), axis=0)
            startColors = startColors[okHue]

        # With the remaining subspace, enumerate all unique color pairs.
        # For efficiency, unique pairs are calculated via one of the triangles
        # of the cartesian product of all remaining colors.
        labs = startColors[:,:3]
        color_col_products = [cartesian((labs[:,i],labs[:,i]))
                                for i in xrange(labs.shape[1])]
        productSize = (color_col_products[0].shape[0],2*len(color_col_products))
        color_product = np.zeros(productSize)
        for i, d in enumerate(color_col_products):
            color_product[:,i] = d[:,0]
            color_product[:,i+len(color_col_products)] = d[:,0]
        idxs = np.transpose(np.array(np.triu_indices(len(labs),1)))
        colorPairs = np.ascontiguousarray(labs[idxs,].reshape((-1, 6)))
        colorPairPreferenceScores = npc.score(colorPairs)[:,2]

        # Penalize preference scores for colors that are ``ugly''.
        labs1 = np.ascontiguousarray(colorPairs[:,:3])
        labs2 = np.ascontiguousarray(colorPairs[:,3:6])
        penalties = np.minimum(npc.scorePenalty(labs1)[:,0],
                                npc.scorePenalty(labs2)[:,0])
        colorPairPreferenceScores = colorPairPreferenceScores * penalties

        maxPref = np.max(colorPairPreferenceScores)
        stdPref = np.std(colorPairPreferenceScores)
        prefThreshold = maxPref - 0.75*stdPref

        colorPairs = colorPairs[colorPairPreferenceScores > prefThreshold,]

        # Extract the unique colors from color combination list
        # http://stackoverflow.com/questions/16970982
        def getUnique(a):
            a = colorPairs[:,:3]
            b = np.ascontiguousarray(a).view(np.dtype((np.void, a.dtype.itemsize * a.shape[1])))
            _, idx = np.unique(b, return_index=True)
            return a[idx]

        uniq1 = getUnique(colorPairs[:,:3])
        uniq2 = getUnique(colorPairs[:,3:])
        startingColors = getUnique( np.vstack(( uniq1, uniq2 )) )

        return startingColors
Example #2
0
    def getStartingColors(self,
                          hueFilters=[],
                          lightnessRange=[25, 85],
                          onlyUseRGB=True):
        """Randomly select a starting color from a subset of CIE Lab space.

        This function returns a set of highly preferable colors within a
        subspace of the typical 8,325-color CIE Lab space that fall within the
        range of any hue filters. Rather than the normal every-5 interval, the
        subspace specifies an every-15 interval along L, a, and b axis starting
        at the origin.

        Args:
            hueFilters (np.array): an n by 2 nd.array specifying lower and upper
                hue filter bounds that fall within [0,360) degrees.
            lightnessRange (list): a two-element list that sets the lightness
                range for filtering for color space before sampling.
            onlyUseRGB (bool): whether color space should be restricted to RGB.

        Returns:
            startingColors (np.array): an n x 3 array of n highly preferable CIE
                Lab D65 starting colors.
        """
        hueFilters = np.array(hueFilters)

        lIntervals = CIE_LAB_STARTING_SUBSPACE_INTERVALS["L"]
        aIntervals = CIE_LAB_STARTING_SUBSPACE_INTERVALS["a"]
        bIntervals = CIE_LAB_STARTING_SUBSPACE_INTERVALS["b"]

        isInterval = np.zeros((self.colorSpaces.shape[0], 3))
        isInterval[:, 0] = np.in1d(self.colorSpaces[:, 0], lIntervals)
        isInterval[:, 1] = np.in1d(self.colorSpaces[:, 1], aIntervals)
        isInterval[:, 2] = np.in1d(self.colorSpaces[:, 2], bIntervals)
        isIntervalMask = np.all(isInterval, axis=1)

        startColors = self.colorSpaces[isIntervalMask]

        isRGB = np.logical_and(startColors[:, [6, 7, 8]] >= 0,
                               startColors[:, [6, 7, 8]] <= 255)
        isRGB = np.all(isRGB, axis=1)

        if lightnessRange[0] <= 10:
            minLightness = 0
        else:
            minLightness = lightnessRange[0] + 0.01
        if lightnessRange[1] <= 15:
            maxLightness = 15
        else:
            maxLightness = lightnessRange[1]

        inLightness = np.logical_not(
            np.logical_or(startColors[:, 0] < minLightness,
                          startColors[:, 0] > maxLightness))

        startColors = startColors[np.logical_and(isRGB, inLightness)]

        if hueFilters.size > 0:
            hueFilters = convert.convertHueRanges(hueFilters)
            okHue = [
                np.logical_and(startColors[:, 3] >= low,
                               startColors[:, 3] <= high)
                for low, high in hueFilters
            ]
            okHue = np.any(np.array(okHue), axis=0)
            startColors = startColors[okHue]

        # With the remaining subspace, enumerate all unique color pairs.
        # For efficiency, unique pairs are calculated via one of the triangles
        # of the cartesian product of all remaining colors.
        labs = startColors[:, :3]
        color_col_products = [
            cartesian((labs[:, i], labs[:, i])) for i in xrange(labs.shape[1])
        ]
        productSize = (color_col_products[0].shape[0],
                       2 * len(color_col_products))
        color_product = np.zeros(productSize)
        for i, d in enumerate(color_col_products):
            color_product[:, i] = d[:, 0]
            color_product[:, i + len(color_col_products)] = d[:, 0]
        idxs = np.transpose(np.array(np.triu_indices(len(labs), 1)))
        colorPairs = np.ascontiguousarray(labs[idxs, ].reshape((-1, 6)))
        colorPairPreferenceScores = npc.score(colorPairs)[:, 2]

        # Penalize preference scores for colors that are ``ugly''.
        labs1 = np.ascontiguousarray(colorPairs[:, :3])
        labs2 = np.ascontiguousarray(colorPairs[:, 3:6])
        penalties = np.minimum(
            npc.scorePenalty(labs1)[:, 0],
            npc.scorePenalty(labs2)[:, 0])
        colorPairPreferenceScores = colorPairPreferenceScores * penalties

        maxPref = np.max(colorPairPreferenceScores)
        stdPref = np.std(colorPairPreferenceScores)
        prefThreshold = maxPref - 0.75 * stdPref

        colorPairs = colorPairs[colorPairPreferenceScores > prefThreshold, ]

        # Extract the unique colors from color combination list
        # http://stackoverflow.com/questions/16970982
        def getUnique(a):
            a = colorPairs[:, :3]
            b = np.ascontiguousarray(a).view(
                np.dtype((np.void, a.dtype.itemsize * a.shape[1])))
            _, idx = np.unique(b, return_index=True)
            return a[idx]

        uniq1 = getUnique(colorPairs[:, :3])
        uniq2 = getUnique(colorPairs[:, 3:])
        startingColors = getUnique(np.vstack((uniq1, uniq2)))

        return startingColors
Example #3
0
    def make(self, palSize, hueFilters=[], lightnessRange=[25,85],
        onlyUseRGB=True, noticeableDifferenceAngle=1.0/3.0, startPalette=[],
        weights={"ciede2000":1,"nameDifference":1,"nameUniqueness":0,
        "pairPreference":1}):
        """Make a palette with palSize colors by sampling using weights.

        Args:
            palSize (int): the number of colors to sample for the palette.
            hueFilters (list): a two-dimensional list, such that each element of
                hue filters is a two-element list that contains the lower and
                upper hue angle boundary for each hue angle region to include
                when sampling colors.
            lightnessRange (list): a two-element list that sets the lightness
                range for filtering for color space before sampling.
            onlyUseRGB (bool): whether color space should be restricted to RGB.
            noticeableDifferenceAngle (float): the visual angle that should be
                used when calculating CIE Lab noticeable difference intervals
                using Stone, Szafir, and Setlur's engineering color difference
                model http://www.danielleszafir.com/2014CIC_48_Stone_v3.pdf.
            startPalette (list): a two-dimensional list, such that each element
                of startPalette is a 3-element list that specifies a valid CIE
                Lab D65 color. Any dimension that are not a multiple of 5 will
                be rounded accordingly.
            weights (dict): user-defined weights ([0,1]) for the four palette
                scores such that the total weight always sums to 1. The weight
                names are `ciede2000`, `nameDifference`, `nameUniqueness`, and
                `pairPreference`.
        Returns:
            palette (np.ndarray): an array of CIE Lab D65 colors.
        """

        assert isinstance(palSize, ( int, long )) and palSize > 0
        assert "ciede2000" in weights and "nameDifference" in weights and\
            "nameUniqueness" in weights and "pairPreference" in weights
        assert np.sum([weights[w] >= 0.0 and weights[w] <= 1.0
            for w in weights]) == 4

        hueFilters = np.array(hueFilters)
        hueFilters = convert.convertHueRanges(hueFilters)

        startPalette = list(startPalette)

        ndL, ndA, ndB = [d*3 for d in jnd.cieLabJND(noticeableDifferenceAngle)]

        if len(startPalette) > 0:
            palette = startPalette
        else:
            possibleStartColors = self.getStartingColors(hueFilters=hueFilters,
                lightnessRange=lightnessRange, onlyUseRGB=onlyUseRGB)
            startColorIdx = np.random.choice(possibleStartColors.shape[0])
            palette = [possibleStartColors[startColorIdx]]

        if len(palette) >= palSize:
            return palette

        colorSpaces = self.colorSpaces
        nus = self.nameUniquenesses

        if hueFilters.size > 0:
            okHue = [np.logical_and(colorSpaces[:,3] >= low,
                    colorSpaces[:,3] <= high) for low,high in hueFilters]
            okHue = np.any(np.array(okHue), axis=0)
            colorSpaces = colorSpaces[okHue]
            nus = nus[okHue]

        isRGB = np.logical_and(colorSpaces[:,[6,7,8]] >= 0, colorSpaces[:,[6,7,8]] <= 255)
        isRGB = np.all(isRGB, axis=1)

        minLightness = lightnessRange[0] + 0.01
        maxLightness = lightnessRange[1]
        inLightness = np.logical_not(np.logical_or(colorSpaces[:,0] <
            minLightness, colorSpaces[:,0] > maxLightness))

        rgbAndLightnessMask = np.logical_and(isRGB, inLightness)
        colorSpaces = colorSpaces[rgbAndLightnessMask]
        nus = nus[rgbAndLightnessMask]

        # filter ``ugly'' colors
        # TODO push this to the scorePenalty C function as a 0 weighting
        isUgly = np.zeros((colorSpaces.shape[0], 4))
        isUgly[:,0] = colorSpaces[:,3] >= 85
        isUgly[:,1] = colorSpaces[:,3] <= 114
        isUgly[:,2] = colorSpaces[:,0] <= 75
        isUgly[:,3] = colorSpaces[:,0] >= 35
        isUglyMask = np.logical_not(np.all(isUgly, axis=1))

        colorSpaces = colorSpaces[isUglyMask]
        nus = nus[isUglyMask]

        # remove any colors that aren't noticeably different from start palette
        for color in palette:
            diffs = np.absolute(colorSpaces[:,0:3] - color)
            isND = np.logical_or(diffs[:,0] >= ndL,
                    np.logical_or(diffs[:,1] >= ndA, diffs[:,2] >= ndB))
            colorSpaces = colorSpaces[isND]
            nus = nus[isND]

        if colorSpaces.shape[0] == 0:
            print 'Ran out of candidates.'
            return np.array(palette)

        lab = colorSpaces[:,0:3]
        lch = colorSpaces[:,[0,4,3]]
        rgb = colorSpaces[:,6:]

        candidates = lab
        scorePenalty = npc.scorePenalty(np.ascontiguousarray(candidates))[:,0]

        # apply the name uniqueness weight to all NU values
        nus *= weights["nameUniqueness"]
        nus = nus.reshape( (nus.shape[0], 1) ) # reshape for join

        startPalSize = len(palette)
        # TODO memoize loop s.t. previous results don't need to be recomputed
        for pi in xrange(palSize - startPalSize):
            # create combinations of candidates + palette colors
            # Each tile stores a candidate color paired with a palette color
            tiled = np.tile(candidates, (pi+startPalSize, 1))
            tiled = np.hstack(( tiled,
                np.zeros(tiled.shape[0]*3).reshape(tiled.shape[0], 3) ))

            for i, p in enumerate(palette):
                tiled[:,3:] = p

            # stack the tiles to into the score ufunc format (2 Lab colors/row)
            scores = npc.score( np.ascontiguousarray(tiled) )[:,0:3]

            # reshape the 2 Lab colors/row so that each row is instead a
            # potential candidate and the columns are its scores to all of the
            # already-picked palette colors
            scores = np.hstack(np.split(scores,pi+startPalSize))

            # Take the minimum value for each candidate score
            des = scores[:,0::3].min(axis=1)
            nds = scores[:,1::3].min(axis=1)
            pps = scores[:,2::3].min(axis=1)

            # Normalize CIEDE2000 and Pair Preference to [0,1] to match the Name
            # Difference and Name Uniqueness scores
            # The following distance bounds are precomputed from the 8325 colors in the dataset
            maxDistance = 122.48163103
            minDistance = 1.02043527056
            des = (des - minDistance) / (maxDistance - minDistance)

            maxPreference = 107.909
            minPreference = -101.423
            pps = (pps - minPreference) / (maxPreference - minPreference)

            # apply weights to the palette scores
            des *= weights["ciede2000"]
            nds *= weights["nameDifference"]
            pps *= weights["pairPreference"]

            # reshape scores for stacking
            des = des.reshape( (des.shape[0], 1) )
            nds = nds.reshape( (nds.shape[0], 1) )
            pps = pps.reshape( (pps.shape[0], 1) )

            scores = np.hstack( (des, nds, pps, nus) )
            scores = np.sum(scores, axis=1)
            # apply the ugly-color penalty function
            scores *= scorePenalty

            # sample a color above the score threshold limit
            threshold = np.max(scores) - 0.75*np.std(scores)
            choices = candidates[ scores > threshold, :]

            # If the thresholding yielded no candidates, don't perform it
            # This typically happens with low (i.e., 1) color candidate sets
            if choices.shape[0] == 0:
                choices = candidates

            choice = choices[np.random.choice(choices.shape[0])]

            palette = palette + [choice]

            # Prune choice and not noticeably different colors from sample space
            diffs = np.absolute(candidates-choice)
            isND = np.logical_or(diffs[:,0] >= ndL, np.logical_or(diffs[:,1] >=
                ndA, diffs[:,2] >= ndB))

            candidates = candidates[isND]
            nus = nus[isND]
            scorePenalty = scorePenalty[isND]

            if candidates.shape[0] == 0:
                print 'Ran out when picking color #'+str(pi)
                break

        return np.array(palette)
Example #4
0
    def make(
        self,
        palSize,
        hueFilters=[],
        lightnessRange=[25, 85],
        onlyUseRGB=True,
        noticeableDifferenceAngle=1.0 / 3.0,
        startPalette=[],
        weights={
            "ciede2000": 1,
            "nameDifference": 1,
            "nameUniqueness": 0,
            "pairPreference": 1
        }):
        """Make a palette with palSize colors by sampling using weights.

        Args:
            palSize (int): the number of colors to sample for the palette.
            hueFilters (list): a two-dimensional list, such that each element of
                hue filters is a two-element list that contains the lower and
                upper hue angle boundary for each hue angle region to include
                when sampling colors.
            lightnessRange (list): a two-element list that sets the lightness
                range for filtering for color space before sampling.
            onlyUseRGB (bool): whether color space should be restricted to RGB.
            noticeableDifferenceAngle (float): the visual angle that should be
                used when calculating CIE Lab noticeable difference intervals
                using Stone, Szafir, and Setlur's engineering color difference
                model http://www.danielleszafir.com/2014CIC_48_Stone_v3.pdf.
            startPalette (list): a two-dimensional list, such that each element
                of startPalette is a 3-element list that specifies a valid CIE
                Lab D65 color. Any dimension that are not a multiple of 5 will
                be rounded accordingly.
            weights (dict): user-defined weights ([0,1]) for the four palette
                scores such that the total weight always sums to 1. The weight
                names are `ciede2000`, `nameDifference`, `nameUniqueness`, and
                `pairPreference`.
        Returns:
            palette (np.ndarray): an array of CIE Lab D65 colors.
        """

        assert isinstance(palSize, (int, long)) and palSize > 0
        assert "ciede2000" in weights and "nameDifference" in weights and\
            "nameUniqueness" in weights and "pairPreference" in weights
        assert np.sum(
            [weights[w] >= 0.0 and weights[w] <= 1.0 for w in weights]) == 4

        hueFilters = np.array(hueFilters)
        hueFilters = convert.convertHueRanges(hueFilters)

        startPalette = list(startPalette)

        ndL, ndA, ndB = [
            d * 3 for d in jnd.cieLabJND(noticeableDifferenceAngle)
        ]

        if len(startPalette) > 0:
            palette = startPalette
        else:
            possibleStartColors = self.getStartingColors(
                hueFilters=hueFilters,
                lightnessRange=lightnessRange,
                onlyUseRGB=onlyUseRGB)
            startColorIdx = np.random.choice(possibleStartColors.shape[0])
            palette = [possibleStartColors[startColorIdx]]

        if len(palette) >= palSize:
            return palette

        colorSpaces = self.colorSpaces
        nus = self.nameUniquenesses

        if hueFilters.size > 0:
            okHue = [
                np.logical_and(colorSpaces[:, 3] >= low,
                               colorSpaces[:, 3] <= high)
                for low, high in hueFilters
            ]
            okHue = np.any(np.array(okHue), axis=0)
            colorSpaces = colorSpaces[okHue]
            nus = nus[okHue]

        isRGB = np.logical_and(colorSpaces[:, [6, 7, 8]] >= 0,
                               colorSpaces[:, [6, 7, 8]] <= 255)
        isRGB = np.all(isRGB, axis=1)

        minLightness = lightnessRange[0] + 0.01
        maxLightness = lightnessRange[1]
        inLightness = np.logical_not(
            np.logical_or(colorSpaces[:, 0] < minLightness,
                          colorSpaces[:, 0] > maxLightness))

        rgbAndLightnessMask = np.logical_and(isRGB, inLightness)
        colorSpaces = colorSpaces[rgbAndLightnessMask]
        nus = nus[rgbAndLightnessMask]

        # filter ``ugly'' colors
        # TODO push this to the scorePenalty C function as a 0 weighting
        isUgly = np.zeros((colorSpaces.shape[0], 4))
        isUgly[:, 0] = colorSpaces[:, 3] >= 85
        isUgly[:, 1] = colorSpaces[:, 3] <= 114
        isUgly[:, 2] = colorSpaces[:, 0] <= 75
        isUgly[:, 3] = colorSpaces[:, 0] >= 35
        isUglyMask = np.logical_not(np.all(isUgly, axis=1))

        colorSpaces = colorSpaces[isUglyMask]
        nus = nus[isUglyMask]

        # remove any colors that aren't noticeably different from start palette
        for color in palette:
            diffs = np.absolute(colorSpaces[:, 0:3] - color)
            isND = np.logical_or(
                diffs[:, 0] >= ndL,
                np.logical_or(diffs[:, 1] >= ndA, diffs[:, 2] >= ndB))
            colorSpaces = colorSpaces[isND]
            nus = nus[isND]

        if colorSpaces.shape[0] == 0:
            print 'Ran out of candidates.'
            return np.array(palette)

        lab = colorSpaces[:, 0:3]
        lch = colorSpaces[:, [0, 4, 3]]
        rgb = colorSpaces[:, 6:]

        candidates = lab
        scorePenalty = npc.scorePenalty(np.ascontiguousarray(candidates))[:, 0]

        # apply the name uniqueness weight to all NU values
        nus *= weights["nameUniqueness"]
        nus = nus.reshape((nus.shape[0], 1))  # reshape for join

        startPalSize = len(palette)
        # TODO memoize loop s.t. previous results don't need to be recomputed
        for pi in xrange(palSize - startPalSize):
            # create combinations of candidates + palette colors
            # Each tile stores a candidate color paired with a palette color
            tiled = np.tile(candidates, (pi + startPalSize, 1))
            tiled = np.hstack(
                (tiled,
                 np.zeros(tiled.shape[0] * 3).reshape(tiled.shape[0], 3)))

            for i, p in enumerate(palette):
                tiled[:, 3:] = p

            # stack the tiles to into the score ufunc format (2 Lab colors/row)
            scores = npc.score(np.ascontiguousarray(tiled))[:, 0:3]

            # reshape the 2 Lab colors/row so that each row is instead a
            # potential candidate and the columns are its scores to all of the
            # already-picked palette colors
            scores = np.hstack(np.split(scores, pi + startPalSize))

            # Take the minimum value for each candidate score
            des = scores[:, 0::3].min(axis=1)
            nds = scores[:, 1::3].min(axis=1)
            pps = scores[:, 2::3].min(axis=1)

            # Normalize CIEDE2000 and Pair Preference to [0,1] to match the Name
            # Difference and Name Uniqueness scores
            # The following distance bounds are precomputed from the 8325 colors in the dataset
            maxDistance = 122.48163103
            minDistance = 1.02043527056
            des = (des - minDistance) / (maxDistance - minDistance)

            maxPreference = 107.909
            minPreference = -101.423
            pps = (pps - minPreference) / (maxPreference - minPreference)

            # apply weights to the palette scores
            des *= weights["ciede2000"]
            nds *= weights["nameDifference"]
            pps *= weights["pairPreference"]

            # reshape scores for stacking
            des = des.reshape((des.shape[0], 1))
            nds = nds.reshape((nds.shape[0], 1))
            pps = pps.reshape((pps.shape[0], 1))

            scores = np.hstack((des, nds, pps, nus))
            scores = np.sum(scores, axis=1)
            # apply the ugly-color penalty function
            scores *= scorePenalty

            # sample a color above the score threshold limit
            threshold = np.max(scores) - 0.75 * np.std(scores)
            choices = candidates[scores > threshold, :]

            # If the thresholding yielded no candidates, don't perform it
            # This typically happens with low (i.e., 1) color candidate sets
            if choices.shape[0] == 0:
                choices = candidates

            choice = choices[np.random.choice(choices.shape[0])]

            palette = palette + [choice]

            # Prune choice and not noticeably different colors from sample space
            diffs = np.absolute(candidates - choice)
            isND = np.logical_or(
                diffs[:, 0] >= ndL,
                np.logical_or(diffs[:, 1] >= ndA, diffs[:, 2] >= ndB))

            candidates = candidates[isND]
            nus = nus[isND]
            scorePenalty = scorePenalty[isND]

            if candidates.shape[0] == 0:
                print 'Ran out when picking color #' + str(pi)
                break

        return np.array(palette)