def test_saveAndLoad(self):

        # test basic saving a loading functionality
        # new registration methods should add tests
        # for loading and saving

        random.seed(42)
        ref = random.randn(25, 25)

        im = shift(ref, [2, 0], mode='constant', order=0)
        im2 = shift(ref, [0, 2], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays([im, im2])
        reg = Registration('crosscorr')
        reg.prepare(ref)
        model1 = reg.fit(imIn)

        t = tempfile.mkdtemp()
        model1.save(t + '/test.json')
        # with open(t + '/test.json', 'r') as fp:
        #    print fp.read()
        model2 = Registration.load(t + '/test.json')
        # print model2

        out1 = model1.transform(imIn).first()[1]
        out2 = model2.transform(imIn).first()[1]

        assert_true(allclose(out1, out2))
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    def test_saveAndLoad(self):

        # test basic saving a loading functionality
        # new registration methods should add tests
        # for loading and saving

        random.seed(42)
        ref = random.randn(25, 25)

        im = shift(ref, [2, 0], mode='constant', order=0)
        im2 = shift(ref, [0, 2], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays([im, im2])
        reg = Registration('crosscorr')
        reg.prepare(ref)
        model1 = reg.fit(imIn)

        t = tempfile.mkdtemp()
        model1.save(t + '/test.json')
        # with open(t + '/test.json', 'r') as fp:
        #    print fp.read()
        model2 = Registration.load(t + '/test.json')
        # print model2

        out1 = model1.transform(imIn).first()[1]
        out2 = model2.transform(imIn).first()[1]

        assert_true(allclose(out1, out2))
    def test_crosscorrImage(self):
        random.seed(42)
        ref = random.randn(25, 25)

        reg = Registration('crosscorr')

        im = shift(ref, [2, 0], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).transformations[0].delta
        imOut = reg.prepare(ref).run(imIn).first()[1]
        assert_true(allclose(ref[:-2, :], imOut[:-2, :]))
        assert_true(allclose(paramOut, [2, 0]))

        im = shift(ref, [0, 2], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).transformations[0].delta
        imOut = reg.prepare(ref).run(imIn).first()[1]
        assert_true(allclose(ref[:, :-2], imOut[:, :-2]))
        assert_true(allclose(paramOut, [0, 2]))

        im = shift(ref, [2, -2], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).transformations[0].delta
        imOut = reg.prepare(ref).run(imIn).first()[1]
        assert_true(allclose(ref[:-2, 2:], imOut[:-2, 2:]))
        assert_true(allclose(paramOut, [2, -2]))

        im = shift(ref, [-2, 2], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).transformations[0].delta
        imOut = reg.prepare(ref).run(imIn).first()[1]
        assert_true(allclose(ref[2:, :-2], imOut[2:, :-2]))
        assert_true(allclose(paramOut, [-2, 2]))
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    def test_crosscorrImage(self):
        random.seed(42)
        ref = random.randn(25, 25)

        reg = Registration('crosscorr')

        im = shift(ref, [2, 0], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).transformations[0].delta
        imOut = reg.prepare(ref).run(imIn).first()[1]
        assert_true(allclose(ref[:-2, :], imOut[:-2, :]))
        assert_true(allclose(paramOut, [2, 0]))

        im = shift(ref, [0, 2], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).transformations[0].delta
        imOut = reg.prepare(ref).run(imIn).first()[1]
        assert_true(allclose(ref[:, :-2], imOut[:, :-2]))
        assert_true(allclose(paramOut, [0, 2]))

        im = shift(ref, [2, -2], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).transformations[0].delta
        imOut = reg.prepare(ref).run(imIn).first()[1]
        assert_true(allclose(ref[:-2, 2:], imOut[:-2, 2:]))
        assert_true(allclose(paramOut, [2, -2]))

        im = shift(ref, [-2, 2], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).transformations[0].delta
        imOut = reg.prepare(ref).run(imIn).first()[1]
        assert_true(allclose(ref[2:, :-2], imOut[2:, :-2]))
        assert_true(allclose(paramOut, [-2, 2]))
    def test_run(self):

        # tests the run method which combines fit and transform

        random.seed(42)
        ref = random.randn(25, 25)

        im = shift(ref, [2, 0], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)

        reg = Registration('crosscorr')
        reg.prepare(ref)
        model = reg.fit(imIn)
        out1 = model.transform(imIn).first()[1]
        out2 = reg.run(imIn).first()[1]

        assert_true(allclose(out1, out2))
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    def test_run(self):

        # tests the run method which combines fit and transform

        random.seed(42)
        ref = random.randn(25, 25)

        im = shift(ref, [2, 0], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)

        reg = Registration('crosscorr')
        reg.prepare(ref)
        model = reg.fit(imIn)
        out1 = model.transform(imIn).first()[1]
        out2 = reg.run(imIn).first()[1]

        assert_true(allclose(out1, out2))
    def test_toarray(self):
        random.seed(42)
        ref = random.randn(25, 25)

        reg = Registration('crosscorr')

        im = shift(ref, [2, 0], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).toArray()
        assert_true(isinstance(paramOut, ndarray))
        assert_true(allclose(paramOut, [[2, 0]]))
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    def test_toarray(self):
        random.seed(42)
        ref = random.randn(25, 25)

        reg = Registration('crosscorr')

        im = shift(ref, [2, 0], mode='constant', order=0)
        imIn = ImagesLoader(self.sc).fromArrays(im)
        paramOut = reg.prepare(ref).fit(imIn).toArray()
        assert_true(isinstance(paramOut, ndarray))
        assert_true(allclose(paramOut, [[2, 0]]))
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    def test_save_load(self):

        # test basic saving a loading functionality
        # new registration methods should add tests
        # for loading and saving

        random.seed(42)
        ref = random.randn(25, 25)

        im = shift(ref, [2, 0], mode='constant', order=0)
        imin = ImagesLoader(self.sc).fromArrays(im)

        reg = Registration('crosscorr')
        reg.prepare(ref)
        model1 = reg.fit(imin)

        t = tempfile.mkdtemp()
        model1.save(t + '/test.json')
        model2 = Registration.load(t + '/test.json')

        out1 = model1.transform(imin).first()[1]
        out2 = model2.transform(imin).first()[1]

        assert (allclose(out1, out2))