def corresponding_chromaticities_prediction_Fairchild1990(experiment=1, **kwargs): """ Returns the corresponding chromaticities prediction for Fairchild (1990) chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. \**kwargs : dict, optional Keywords arguments. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_Fairchild1990(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.2089528677990308, 0.47240345174230519)), ((0.449, 0.511), (0.43756528098582792, 0.51210303139041924)), ((0.263, 0.505), (0.26213623665658092, 0.49725385033264224)), ((0.322, 0.545), (0.3235312762825191, 0.54756652922585702)), ((0.316, 0.537), (0.3151390992740366, 0.53983332031574016)), ((0.265, 0.553), (0.26347459238415272, 0.55443357809543037)), ((0.221, 0.538), (0.22115956537655593, 0.53244703908294599)), ((0.135, 0.532), (0.13969494108553854, 0.52072342107668024)), ((0.145, 0.472), (0.1512288710743511, 0.45330415352961834)), ((0.163, 0.331), (0.17156913711903982, 0.30262647410866889)), ((0.176, 0.431), (0.18257922398137369, 0.40778921192793854)), ((0.244, 0.349), (0.24189049501108895, 0.34134012046930529))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) XYZ_n = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_t)) * 100 XYZ_r = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_m)) * 100 xy_r = XYZ_to_xy(XYZ_r) Y_n = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get(experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_Fairchild1990( XYZ_1, XYZ_n, XYZ_r, Y_n) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_r), xy_r) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_Fairchild1990(experiment=1, **kwargs): """ Returns the corresponding chromaticities prediction for Fairchild (1990) chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. \*\*kwargs : \*\* Keywords arguments. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_Fairchild1990(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.2089528677990308, 0.47240345174230519)), ((0.449, 0.511), (0.43756528098582792, 0.51210303139041924)), ((0.263, 0.505), (0.26213623665658092, 0.49725385033264224)), ((0.322, 0.545), (0.3235312762825191, 0.54756652922585702)), ((0.316, 0.537), (0.3151390992740366, 0.53983332031574016)), ((0.265, 0.553), (0.26347459238415272, 0.55443357809543037)), ((0.221, 0.538), (0.22115956537655593, 0.53244703908294599)), ((0.135, 0.532), (0.13969494108553854, 0.52072342107668024)), ((0.145, 0.472), (0.1512288710743511, 0.45330415352961834)), ((0.163, 0.331), (0.17156913711903982, 0.30262647410866889)), ((0.176, 0.431), (0.18257922398137369, 0.40778921192793854)), ((0.244, 0.349), (0.24189049501108895, 0.34134012046930529))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) XYZ_n = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_t)) * 100 XYZ_r = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_m)) * 100 xy_r = XYZ_to_xy(XYZ_r) Y_n = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get(experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_Fairchild1990( XYZ_1, XYZ_n, XYZ_r, Y_n) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_r), xy_r) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_CMCCAT2000(experiment=1, **kwargs): """ Returns the corresponding chromaticities prediction for CMCCAT2000 chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. \**kwargs : dict, optional Keywords arguments. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_CMCCAT2000(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.20832101929657834, 0.47271680534693694)), ((0.449, 0.511), (0.44592707020371486, 0.50777351504395707)), ((0.263, 0.505), (0.26402624712986333, 0.4955361681706304)), ((0.322, 0.545), (0.33168840090358015, 0.54315801981008516)), ((0.316, 0.537), (0.32226245779851387, 0.53576245377085929)), ((0.265, 0.553), (0.27107058097430181, 0.5501997842556422)), ((0.221, 0.538), (0.22618269421847523, 0.52947407170848704)), ((0.135, 0.532), (0.14396930475660724, 0.51909841743126817)), ((0.145, 0.472), (0.14948357434418671, 0.45567605010224305)), ((0.163, 0.331), (0.15631720730028753, 0.31641514460738623)), ((0.176, 0.431), (0.17631993066748047, 0.41275893424542082)), ((0.244, 0.349), (0.22876382018951744, 0.3499324084859976))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) XYZ_w = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_t)) * 100 XYZ_wr = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_m)) * 100 xy_wr = XYZ_to_xy(XYZ_wr) L_A1 = L_A2 = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get( experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_CMCCAT2000( XYZ_1, XYZ_w, XYZ_wr, L_A1, L_A2) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_wr), xy_wr) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_CMCCAT2000(experiment=1, **kwargs): """ Returns the corresponding chromaticities prediction for CMCCAT2000 chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. \*\*kwargs : \*\* Keywords arguments. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_CMCCAT2000(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.20832101929657834, 0.47271680534693694)), ((0.449, 0.511), (0.44592707020371486, 0.50777351504395707)), ((0.263, 0.505), (0.26402624712986333, 0.4955361681706304)), ((0.322, 0.545), (0.33168840090358015, 0.54315801981008516)), ((0.316, 0.537), (0.32226245779851387, 0.53576245377085929)), ((0.265, 0.553), (0.27107058097430181, 0.5501997842556422)), ((0.221, 0.538), (0.22618269421847523, 0.52947407170848704)), ((0.135, 0.532), (0.14396930475660724, 0.51909841743126817)), ((0.145, 0.472), (0.14948357434418671, 0.45567605010224305)), ((0.163, 0.331), (0.15631720730028753, 0.31641514460738623)), ((0.176, 0.431), (0.17631993066748047, 0.41275893424542082)), ((0.244, 0.349), (0.22876382018951744, 0.3499324084859976))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) XYZ_w = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_t)) * 100 XYZ_wr = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_m)) * 100 xy_wr = XYZ_to_xy(XYZ_wr) L_A1 = L_A2 = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get( experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_CMCCAT2000( XYZ_1, XYZ_w, XYZ_wr, L_A1, L_A2) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_wr), xy_wr) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_CIE1994(experiment=1): """ Returns the corresponding chromaticities prediction for CIE 1994 chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_CIE1994(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.2133909..., 0.4939794...)), ((0.449, 0.511), (0.4450345..., 0.5120939...)), ((0.263, 0.505), (0.2693262..., 0.5083212...)), ((0.322, 0.545), (0.3308593..., 0.5443940...)), ((0.316, 0.537), (0.3225195..., 0.5377826...)), ((0.265, 0.553), (0.2709737..., 0.5513666...)), ((0.221, 0.538), (0.2280786..., 0.5351592...)), ((0.135, 0.532), (0.1439436..., 0.5303576...)), ((0.145, 0.472), (0.1500743..., 0.4842895...)), ((0.163, 0.331), (0.1559955..., 0.3772379...)), ((0.176, 0.431), (0.1806318..., 0.4518475...)), ((0.244, 0.349), (0.2454445..., 0.4018004...))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) xy_o1 = Luv_uv_to_xy(illuminants.uvp_t) xy_o2 = Luv_uv_to_xy(illuminants.uvp_m) # :math:`Y_o` is set to an arbitrary value in domain [18, 100]. Y_o = 18 E_o1 = E_o2 = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get( experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_CIE1994( XYZ_1, xy_o1, xy_o2, Y_o, E_o1, E_o2) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_o2), xy_o2) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_CMCCAT2000(experiment=1): """ Returns the corresponding chromaticities prediction for CMCCAT2000 chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_CMCCAT2000(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.2083210..., 0.4727168...)), ((0.449, 0.511), (0.4459270..., 0.5077735...)), ((0.263, 0.505), (0.2640262..., 0.4955361...)), ((0.322, 0.545), (0.3316884..., 0.5431580...)), ((0.316, 0.537), (0.3222624..., 0.5357624...)), ((0.265, 0.553), (0.2710705..., 0.5501997...)), ((0.221, 0.538), (0.2261826..., 0.5294740...)), ((0.135, 0.532), (0.1439693..., 0.5190984...)), ((0.145, 0.472), (0.1494835..., 0.4556760...)), ((0.163, 0.331), (0.1563172..., 0.3164151...)), ((0.176, 0.431), (0.1763199..., 0.4127589...)), ((0.244, 0.349), (0.2287638..., 0.3499324...))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) XYZ_w = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_t)) * 100 XYZ_wr = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_m)) * 100 xy_wr = XYZ_to_xy(XYZ_wr) L_A1 = L_A2 = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get( experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_CMCCAT2000( XYZ_1, XYZ_w, XYZ_wr, L_A1, L_A2) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_wr), xy_wr) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_Fairchild1990(experiment=1): """ Returns the corresponding chromaticities prediction for Fairchild (1990) chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_Fairchild1990(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.2089528..., 0.4724034...)), ((0.449, 0.511), (0.4375652..., 0.5121030...)), ((0.263, 0.505), (0.2621362..., 0.4972538...)), ((0.322, 0.545), (0.3235312..., 0.5475665...)), ((0.316, 0.537), (0.3151390..., 0.5398333...)), ((0.265, 0.553), (0.2634745..., 0.5544335...)), ((0.221, 0.538), (0.2211595..., 0.5324470...)), ((0.135, 0.532), (0.1396949..., 0.5207234...)), ((0.145, 0.472), (0.1512288..., 0.4533041...)), ((0.163, 0.331), (0.1715691..., 0.3026264...)), ((0.176, 0.431), (0.1825792..., 0.4077892...)), ((0.244, 0.349), (0.2418904..., 0.3413401...))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) XYZ_n = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_t)) * 100 XYZ_r = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_m)) * 100 xy_r = XYZ_to_xy(XYZ_r) Y_n = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get(experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_Fairchild1990( XYZ_1, XYZ_n, XYZ_r, Y_n) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_r), xy_r) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_CIE1994(experiment=1): """ Returns the corresponding chromaticities prediction for CIE 1994 chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_CIE1994(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.2133909..., 0.4939794...)), ((0.449, 0.511), (0.4450345..., 0.5120939...)), ((0.263, 0.505), (0.2693262..., 0.5083212...)), ((0.322, 0.545), (0.3308593..., 0.5443940...)), ((0.316, 0.537), (0.3225195..., 0.5377826...)), ((0.265, 0.553), (0.2709737..., 0.5513666...)), ((0.221, 0.538), (0.2280786..., 0.5351592...)), ((0.135, 0.532), (0.1439436..., 0.5303576...)), ((0.145, 0.472), (0.1500743..., 0.4842895...)), ((0.163, 0.331), (0.1559955..., 0.3772379...)), ((0.176, 0.431), (0.1806318..., 0.4518475...)), ((0.244, 0.349), (0.2454445..., 0.4018004...))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) xy_o1 = Luv_uv_to_xy(illuminants.uvp_t) xy_o2 = Luv_uv_to_xy(illuminants.uvp_m) # :math:`Y_o` is set to an arbitrary value in domain [18, 100]. Y_o = 18 E_o1 = E_o2 = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get( experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_CIE1994(XYZ_1, xy_o1, xy_o2, Y_o, E_o1, E_o2) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_o2), xy_o2) prediction.append( CorrespondingChromaticitiesPrediction(result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_CMCCAT2000(experiment=1): """ Returns the corresponding chromaticities prediction for CMCCAT2000 chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_CMCCAT2000(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.2083210..., 0.4727168...)), ((0.449, 0.511), (0.4459270..., 0.5077735...)), ((0.263, 0.505), (0.2640262..., 0.4955361...)), ((0.322, 0.545), (0.3316884..., 0.5431580...)), ((0.316, 0.537), (0.3222624..., 0.5357624...)), ((0.265, 0.553), (0.2710705..., 0.5501997...)), ((0.221, 0.538), (0.2261826..., 0.5294740...)), ((0.135, 0.532), (0.1439693..., 0.5190984...)), ((0.145, 0.472), (0.1494835..., 0.4556760...)), ((0.163, 0.331), (0.1563172..., 0.3164151...)), ((0.176, 0.431), (0.1763199..., 0.4127589...)), ((0.244, 0.349), (0.2287638..., 0.3499324...))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) XYZ_w = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_t)) * 100 XYZ_wr = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_m)) * 100 xy_wr = XYZ_to_xy(XYZ_wr) L_A1 = L_A2 = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get( experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_CMCCAT2000(XYZ_1, XYZ_w, XYZ_wr, L_A1, L_A2) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_wr), xy_wr) prediction.append( CorrespondingChromaticitiesPrediction(result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_Fairchild1990(experiment=1): """ Returns the corresponding chromaticities prediction for Fairchild (1990) chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_Fairchild1990(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.2089528..., 0.4724034...)), ((0.449, 0.511), (0.4375652..., 0.5121030...)), ((0.263, 0.505), (0.2621362..., 0.4972538...)), ((0.322, 0.545), (0.3235312..., 0.5475665...)), ((0.316, 0.537), (0.3151390..., 0.5398333...)), ((0.265, 0.553), (0.2634745..., 0.5544335...)), ((0.221, 0.538), (0.2211595..., 0.5324470...)), ((0.135, 0.532), (0.1396949..., 0.5207234...)), ((0.145, 0.472), (0.1512288..., 0.4533041...)), ((0.163, 0.331), (0.1715691..., 0.3026264...)), ((0.176, 0.431), (0.1825792..., 0.4077892...)), ((0.244, 0.349), (0.2418904..., 0.3413401...))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) XYZ_n = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_t)) * 100 XYZ_r = xy_to_XYZ(Luv_uv_to_xy(illuminants.uvp_m)) * 100 xy_r = XYZ_to_xy(XYZ_r) Y_n = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get(experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_Fairchild1990(XYZ_1, XYZ_n, XYZ_r, Y_n) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_r), xy_r) prediction.append( CorrespondingChromaticitiesPrediction(result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_CIE1994(experiment=1, **kwargs): """ Returns the corresponding chromaticities prediction for CIE 1994 chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. \**kwargs : dict, optional Keywords arguments. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_CIE1994(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.21339093279517196, 0.49397945742298016)), ((0.449, 0.511), (0.4450345313098153, 0.5120939085633327)), ((0.263, 0.505), (0.26932620724691858, 0.50832124608390727)), ((0.322, 0.545), (0.33085939370840811, 0.54439408389253441)), ((0.316, 0.537), (0.3225195584183046, 0.53778269440789594)), ((0.265, 0.553), (0.2709737181087471, 0.5513666373694861)), ((0.221, 0.538), (0.22807869730753863, 0.53515923458385406)), ((0.135, 0.532), (0.14394366662060523, 0.53035769204585748)), ((0.145, 0.472), (0.15007438031976222, 0.48428958620888679)), ((0.163, 0.331), (0.15599555781959967, 0.37723798698131394)), ((0.176, 0.431), (0.18063180902005657, 0.45184759430042898)), ((0.244, 0.349), (0.24544456656434688, 0.40180048388092021))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) xy_o1 = Luv_uv_to_xy(illuminants.uvp_t) xy_o2 = Luv_uv_to_xy(illuminants.uvp_m) # :math:`Y_o` is set to an arbitrary value in domain [18, 100]. Y_o = 18 E_o1 = E_o2 = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get( experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_CIE1994( XYZ_1, xy_o1, xy_o2, Y_o, E_o1, E_o2) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_o2), xy_o2) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)
def corresponding_chromaticities_prediction_CIE1994(experiment=1, **kwargs): """ Returns the corresponding chromaticities prediction for CIE 1994 chromatic adaptation model. Parameters ---------- experiment : integer, optional {1, 2, 3, 4, 6, 8, 9, 11, 12} Breneman (1987) experiment number. \*\*kwargs : \*\* Keywords arguments. Returns ------- tuple Corresponding chromaticities prediction. Examples -------- >>> from pprint import pprint >>> pr = corresponding_chromaticities_prediction_CIE1994(2) >>> pr = [(p.uvp_m, p.uvp_p) for p in pr] >>> pprint(pr) # doctest: +SKIP [((0.207, 0.486), (0.21339093279517196, 0.49397945742298016)), ((0.449, 0.511), (0.4450345313098153, 0.5120939085633327)), ((0.263, 0.505), (0.26932620724691858, 0.50832124608390727)), ((0.322, 0.545), (0.33085939370840811, 0.54439408389253441)), ((0.316, 0.537), (0.3225195584183046, 0.53778269440789594)), ((0.265, 0.553), (0.2709737181087471, 0.5513666373694861)), ((0.221, 0.538), (0.22807869730753863, 0.53515923458385406)), ((0.135, 0.532), (0.14394366662060523, 0.53035769204585748)), ((0.145, 0.472), (0.15007438031976222, 0.48428958620888679)), ((0.163, 0.331), (0.15599555781959967, 0.37723798698131394)), ((0.176, 0.431), (0.18063180902005657, 0.45184759430042898)), ((0.244, 0.349), (0.24544456656434688, 0.40180048388092021))] """ experiment_results = list(BRENEMAN_EXPERIMENTS.get(experiment)) illuminants = experiment_results.pop(0) xy_o1 = Luv_uv_to_xy(illuminants.uvp_t) xy_o2 = Luv_uv_to_xy(illuminants.uvp_m) # :math:`Y_o` is set to an arbitrary value in domain [18, 100]. Y_o = 18 E_o1 = E_o2 = BRENEMAN_EXPERIMENTS_PRIMARIES_CHROMATICITIES.get( experiment).Y prediction = [] for result in experiment_results: XYZ_1 = xy_to_XYZ(Luv_uv_to_xy(result.uvp_t)) * 100 XYZ_2 = chromatic_adaptation_CIE1994( XYZ_1, xy_o1, xy_o2, Y_o, E_o1, E_o2) uvp = Luv_to_uv(XYZ_to_Luv(XYZ_2, xy_o2), xy_o2) prediction.append(CorrespondingChromaticitiesPrediction( result.name, result.uvp_t, result.uvp_m, uvp)) return tuple(prediction)