Exemplo n.º 1
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def stimuli_with_attributes():
    stimuli_data = [np.random.randint(0, 255, size=(25, 30, 3)) for i in range(10)]
    attributes = {
        'dva': list(range(10)),
        'other_stuff': np.random.randn(10),
    }
    return pysaliency.Stimuli(stimuli_data, attributes=attributes)
Exemplo n.º 2
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    def test_constant(self):
        stimuli = pysaliency.Stimuli([np.random.randn(600, 1000, 3),
                                      np.random.randn(600, 1000, 3)])
        csmm = ConstantSaliencyModel()

        log_likelihoods = csmm.log_likelihoods(stimuli, self.f)
        np.testing.assert_allclose(log_likelihoods, -np.log(600*1000))
Exemplo n.º 3
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def stimuli_with_filenames(tmpdir):
    filenames = []
    stimuli = []
    for i in range(3):
        filename = tmpdir.join('stimulus_{:04d}.png'.format(i))
        stimuli.append(
            np.random.randint(low=0,
                              high=255,
                              size=(100, 100, 3),
                              dtype=np.uint8))
        filenames.append(str(filename))

    for sub_directory_index in range(3):
        sub_directory = tmpdir.join(
            'sub_directory_{:04d}'.format(sub_directory_index))
        for i in range(5):
            filename = sub_directory.join('stimulus_{:04d}.png'.format(i))
            stimuli.append(
                np.random.randint(low=0,
                                  high=255,
                                  size=(100, 100, 3),
                                  dtype=np.uint8))
            filenames.append(str(filename))
    return pysaliency.Stimuli(stimuli=stimuli,
                              attributes={'filenames': filenames})
Exemplo n.º 4
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    def test_slicing(self):
        count = 10
        widths = np.random.randint(20, 200, size=count)
        heights = np.random.randint(20, 200, size=count)
        images = [np.random.randn(h, w, 3) for h, w in zip(heights, widths)]

        stimuli = pysaliency.Stimuli(images)
        for i in range(count):
            s = stimuli[i]
            np.testing.assert_allclose(s.stimulus_data, stimuli.stimuli[i])
            self.assertEqual(s.stimulus_id, stimuli.stimulus_ids[i])
            self.assertEqual(s.shape, stimuli.shapes[i])
            self.assertEqual(s.size, stimuli.sizes[i])

        indices = [2, 4, 7]
        ss = stimuli[indices]
        for k, i in enumerate(indices):
            np.testing.assert_allclose(ss.stimuli[k], stimuli.stimuli[i])
            self.assertEqual(ss.stimulus_ids[k], stimuli.stimulus_ids[i])
            self.assertEqual(ss.shapes[k], stimuli.shapes[i])
            self.assertEqual(ss.sizes[k], stimuli.sizes[i])

        slc = slice(2, 8, 3)
        ss = stimuli[slc]
        indices = range(len(stimuli))[slc]
        for k, i in enumerate(indices):
            np.testing.assert_allclose(ss.stimuli[k], stimuli.stimuli[i])
            self.assertEqual(ss.stimulus_ids[k], stimuli.stimulus_ids[i])
            self.assertEqual(ss.shapes[k], stimuli.shapes[i])
            self.assertEqual(ss.sizes[k], stimuli.sizes[i])
Exemplo n.º 5
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    def test_stimuli(self):
        img1 = np.random.randn(100, 200, 3)
        img2 = np.random.randn(50, 150)
        stimuli = pysaliency.Stimuli([img1, img2])

        self.assertEqual(stimuli.stimuli, [img1, img2])
        self.assertEqual(stimuli.shapes, [(100, 200, 3), (50, 150)])
        self.assertEqual(list(stimuli.sizes), [(100, 200), (50, 150)])
        self.assertEqual(stimuli.stimulus_ids[1],
                         pysaliency.datasets.get_image_hash(img2))
        np.testing.assert_allclose(stimuli.stimulus_objects[1].stimulus_data,
                                   img2)
        self.assertEqual(stimuli.stimulus_objects[1].stimulus_id,
                         stimuli.stimulus_ids[1])

        new_stimuli = self.pickle_and_reload(stimuli, pickler=dill)
        print(new_stimuli.stimuli)

        self.assertEqual(len(new_stimuli.stimuli), 2)
        for s1, s2 in zip(new_stimuli.stimuli, [img1, img2]):
            np.testing.assert_allclose(s1, s2)
        self.assertEqual(new_stimuli.shapes, [(100, 200, 3), (50, 150)])
        self.assertEqual(list(new_stimuli.sizes), [(100, 200), (50, 150)])
        self.assertEqual(new_stimuli.stimulus_ids[1],
                         pysaliency.datasets.get_image_hash(img2))
        self.assertEqual(new_stimuli.stimulus_objects[1].stimulus_id,
                         stimuli.stimulus_ids[1])
Exemplo n.º 6
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    def test_gauss(self):
        stimuli = pysaliency.Stimuli([np.random.randn(40, 40, 3),
                                      np.random.randn(40, 40, 3)])
        gsmm = GaussianSaliencyModel()

        log_likelihoods = gsmm.log_likelihoods(stimuli, self.f)
        np.testing.assert_allclose(log_likelihoods, np.array([-10.276835,  -9.764182,  -9.286885,  -9.286885,
                                                              -9.286885,   -9.057075,  -8.067126,  -9.905604]))
Exemplo n.º 7
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def many_stimuli():
    stimuli = [np.random.randn(40, 40, 3) for i in range(1003)]
    category = np.array([i % 10 for i in range(len(stimuli))])
    category2 = np.array([i // 500 for i in range(len(stimuli))])
    return pysaliency.Stimuli(stimuli,
                              attributes={
                                  'category': category,
                                  'category2': category2
                              })
Exemplo n.º 8
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    def test_constant(self):
        stimuli = pysaliency.Stimuli([np.random.randn(600, 1000, 3),
                                      np.random.randn(600, 1000, 3)])
        csmm = ConstantSaliencyModel()

        fb_kl = csmm.fixation_based_KL_divergence(stimuli, self.f, nonfixations='uniform')
        np.testing.assert_allclose(fb_kl, 0.0)

        fb_kl = csmm.fixation_based_KL_divergence(stimuli, self.f, nonfixations='shuffled')
        np.testing.assert_allclose(fb_kl, 0.0)
Exemplo n.º 9
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    def test_gauss(self):
        stimuli = pysaliency.Stimuli([np.random.randn(40, 40, 3),
                                      np.random.randn(40, 40, 3)])
        gsmm = GaussianSaliencyModel()

        fb_kl = gsmm.fixation_based_KL_divergence(stimuli, self.f, nonfixations='uniform')
        np.testing.assert_allclose(fb_kl, 0.8763042309253437)

        fb_kl = gsmm.fixation_based_KL_divergence(stimuli, self.f, nonfixations='shuffled')
        np.testing.assert_allclose(fb_kl, 0.0)
Exemplo n.º 10
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    def test_constant(self):

        stimuli = pysaliency.Stimuli([np.random.randn(600, 1000, 3),
                                      np.random.randn(600, 1000, 3)])
        csmm = ConstantSaliencyModel()

        aucs = csmm.AUCs(stimuli, self.f, nonfixations='uniform')
        np.testing.assert_allclose(aucs, np.ones(len(self.f.x))*0.5)

        aucs = csmm.AUCs(stimuli, self.f, nonfixations='shuffled')
        np.testing.assert_allclose(aucs, np.ones(len(self.f.x))*0.5)
Exemplo n.º 11
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def stimuli_with_different_sizes():
    return pysaliency.Stimuli([
        np.random.randn(40, 40, 3),
        np.random.randn(40, 40, 3),
        np.random.randn(20, 40, 3),
        np.random.randn(20, 40, 3),
        np.random.randn(40, 20, 3),
        np.random.randn(40, 20, 3),
        np.random.randn(40, 20),
        np.random.randn(20, 20, 3),
        np.random.randn(20, 20, 3),
    ])
    def test_mixed(self):
        stimuli = pysaliency.Stimuli([np.random.randn(40, 40, 3),
                                      np.random.randn(40, 40, 3)])
        gsmm = MixedSaliencyMapModel()

        fb_kl = gsmm.fixation_based_KL_divergence(stimuli, self.f, nonfixations='uniform')
        np.testing.assert_allclose(fb_kl, 0.19700844437943388)

        fb_kl = gsmm.fixation_based_KL_divergence(stimuli, self.f, nonfixations='shuffled')
        np.testing.assert_allclose(fb_kl, 5.874655219107867)

        fb_kl = gsmm.fixation_based_KL_divergence(stimuli, self.f, nonfixations=self.f)
        np.testing.assert_allclose(fb_kl, 0.0)
Exemplo n.º 13
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 def test_model(self):
     stimuli = pysaliency.Stimuli([np.random.randn(40, 40, 3),
                                   np.random.randn(40, 50, 3)])
     model = pysaliency.UniformModel()
     np.testing.assert_allclose(model.log_likelihoods(stimuli, self.f),
                                [-np.log(40*40),
                                 -np.log(40*40),
                                 -np.log(40*40),
                                 -np.log(40*40),
                                 -np.log(40*40),
                                 -np.log(40*50),
                                 -np.log(40*50),
                                 -np.log(40*50),
                                 ])
Exemplo n.º 14
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    def test_gauss(self):

        stimuli = pysaliency.Stimuli([np.random.randn(40, 40, 3),
                                      np.random.randn(40, 40, 3)])
        gsmm = GaussianSaliencyModel()

        aucs = gsmm.AUCs(stimuli, self.f, nonfixations='uniform')
        np.testing.assert_allclose(aucs, [0.099375,  0.158125,  0.241875,  0.241875,
                                          0.241875,  0.291875, 0.509375,  0.138125],
                                   rtol=1e-6)

        aucs = gsmm.AUCs(stimuli, self.f, nonfixations='shuffled')
        np.testing.assert_allclose(aucs, [0.0,         0.33333333,  0.33333333,  0.33333333,
                                          0.33333333,  1.,          1.,          0.2],
                                   rtol=1e-6)
Exemplo n.º 15
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def test_saliency_map_model_operators():
    stimuli = pysaliency.Stimuli([
        np.random.randn(50, 50, 3),
        np.random.randn(50, 50, 3),
        np.random.randn(100, 200, 3)
    ])
    m1 = ConstantSaliencyMapModel()
    m2 = GaussianSaliencyMapModel()

    for s in stimuli:
        smap1 = m1.saliency_map(s)
        smap2 = m2.saliency_map(s)
        np.testing.assert_allclose((m1 + m2).saliency_map(s), smap1 + smap2)
        np.testing.assert_allclose((m1 - m2).saliency_map(s), smap1 - smap2)
        np.testing.assert_allclose((m1 * m2).saliency_map(s), smap1 * smap2)
        np.testing.assert_allclose((m1 / m2).saliency_map(s), smap1 / smap2)
    def test_gauss(self):
        stimuli = pysaliency.Stimuli([np.random.randn(40, 40, 3),
                                      np.random.randn(40, 40, 3)])
        gsmm = GaussianSaliencyMapModel()
        constant_gold = ConstantSaliencyMapModel()
        gold = pysaliency.FixationMap(stimuli, self.f, kernel_size = 10)

        ib_kl = gsmm.image_based_kl_divergence(stimuli, gsmm)
        np.testing.assert_allclose(ib_kl, 0.0)

        ib_kl = gsmm.image_based_kl_divergence(stimuli, constant_gold)
        np.testing.assert_allclose(ib_kl, 0.8152272380729648)

        ib_kl = gsmm.image_based_kl_divergence(stimuli, gold)
        np.testing.assert_allclose(ib_kl, 1.961124862592289)

        ib_kl = gold.image_based_kl_divergence(stimuli, gold)
        np.testing.assert_allclose(ib_kl, 0.0)
 def setUp(self):
     xs_trains = [
         [0, 1, 2],
         [2, 2],
         [1, 10, 3],
         [4, 5, 33, 7]]
     ys_trains = [
         [10, 11, 12],
         [12, 12],
         [21, 25, 33],
         [41, 42, 43, 44]]
     ts_trains = [
         [0, 200, 600],
         [100, 400],
         [50, 500, 900],
         [0, 1, 2, 3]]
     ns = [0, 0, 1, 2]
     subjects = [0, 1, 1, 0]
     self.f = pysaliency.FixationTrains.from_fixation_trains(xs_trains, ys_trains, ts_trains, ns, subjects)
     self.stimuli = pysaliency.Stimuli([np.random.randn(50, 50, 3),
                                        np.random.randn(50, 50, 3),
                                        np.random.randn(100, 200, 3)])
Exemplo n.º 18
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def test_lambda_saliency_map_model():
    stimuli = pysaliency.Stimuli([
        np.random.randn(50, 50, 3),
        np.random.randn(50, 50, 3),
        np.random.randn(100, 200, 3)
    ])
    m1 = ConstantSaliencyMapModel()
    m2 = GaussianSaliencyMapModel()
    fn1 = lambda smaps: np.exp(smaps[0])
    fn2 = lambda smaps: np.sum(smaps, axis=0)
    lambda_model_1 = pysaliency.saliency_map_models.LambdaSaliencyMapModel(
        [m1, m2], fn1)
    lambda_model_2 = pysaliency.saliency_map_models.LambdaSaliencyMapModel(
        [m1, m2], fn2)

    for s in stimuli:
        smap1 = m1.saliency_map(s)
        smap2 = m2.saliency_map(s)
        np.testing.assert_allclose(lambda_model_1.saliency_map(s),
                                   fn1([smap1, smap2]))
        np.testing.assert_allclose(lambda_model_2.saliency_map(s),
                                   fn2([smap1, smap2]))
Exemplo n.º 19
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def stimuli():
    return pysaliency.Stimuli(
        [np.random.randn(40, 40, 3),
         np.random.randn(40, 40, 3)])
Exemplo n.º 20
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def many_stimuli():
    return pysaliency.Stimuli([np.random.randn(40, 40, 3) for i in range(1003)])
def stimuli():
    return pysaliency.Stimuli(
        [np.random.randint(0, 255, size=(25, 30, 3)) for i in range(50)])
Exemplo n.º 22
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def more_stimuli():
    return pysaliency.Stimuli([
        np.random.randn(50, 50, 3),
        np.random.randn(50, 50, 3),
        np.random.randn(100, 200, 3)
    ])