Ejemplo n.º 1
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    def test_batch_matrix_to_euler(self):
        y = 0.1745329
        x_prime = 0.3490659
        z_prime_prime = 0.7853982
        input_angles = [y, x_prime, z_prime_prime]

        input_tensor = torch.Tensor([
            input_angles, input_angles, input_angles, input_angles,
            input_angles, input_angles, input_angles, input_angles
        ]).requires_grad_(True)
        # 2 batches of 2 sequences of 2 frames
        input_tensor = input_tensor.view((2, 4, 3))

        matrix_tensor = TensorGeometry.batchEulerAnglesToRotationMatrixTensor(
            input_tensor)
        self.assertTrue(matrix_tensor.requires_grad)
        euler_tensor = TensorGeometry.batchRotationMatrixTensorToEulerAngles(
            matrix_tensor)
        self.assertTrue(euler_tensor.requires_grad)
        flat_actual_tensor = torch.flatten(euler_tensor,
                                           start_dim=0,
                                           end_dim=1).detach()

        expected_matrix = input_tensor[1, 1, :].detach()

        for actual_matrix in flat_actual_tensor:
            numpy.testing.assert_allclose(expected_matrix,
                                          actual_matrix,
                                          rtol=3.22578393e-07)
Ejemplo n.º 2
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    def _compute_rotational_ATE(self, prediction: torch.Tensor,
                                target: torch.Tensor):
        """
        Ins[ired by: https://github.com/uzh-rpg/rpg_trajectory_evaluation
        @param prediction:
        @param target:
        @return:
        """

        target_rot_matrix = TensorGeometry.batchEulerAnglesToRotationMatrixTensor(
            target)
        prediction_rot_matrix = TensorGeometry.batchEulerAnglesToRotationMatrixTensor(
            prediction)
        e_rot = torch.empty(target_rot_matrix.shape,
                            requires_grad=prediction.requires_grad).to(
                                prediction.device)

        for i, segment in enumerate(prediction_rot_matrix):
            for j, rotation in enumerate(segment):
                e_rot[i, j] = torch.mm(target_rot_matrix[i, j],
                                       rotation.inverse())

        e_rot = TensorGeometry.batchRotationMatrixTensorToEulerAngles(e_rot)

        return torch.mean(e_rot)
Ejemplo n.º 3
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    def test_batchEulerDifferences(self):
        y = 0.1745329
        x_prime = 0.3490659
        z_prime_prime = 0.7853982
        input_angles = [y, x_prime, z_prime_prime]

        expected_euler_rotation_batch = torch.Tensor([
            input_angles, input_angles, input_angles, input_angles,
            input_angles, input_angles, input_angles, input_angles
        ]).requires_grad_(True)

        # 2 segments of 4 euler rotations
        expected_euler_rotation_batch = expected_euler_rotation_batch.view(
            (2, 4, 3))

        absolute_euler_orientation_batch = TensorGeometry.batch_assembleDeltaEulerAngles(
            expected_euler_rotation_batch)
        self.assertTrue(absolute_euler_orientation_batch.requires_grad)

        actual_euler_rotation_batch = TensorGeometry.batch_eulerDifferences(
            absolute_euler_orientation_batch)
        self.assertTrue(actual_euler_rotation_batch.requires_grad)

        numpy.testing.assert_allclose(
            actual_euler_rotation_batch.detach().numpy(),
            expected_euler_rotation_batch.detach().numpy(),
            rtol=7.1029973e-07)
Ejemplo n.º 4
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    def compute(self, prediction: torch.Tensor, target: torch.Tensor):
        """
        Minimises the distance between locations that are within the radius defined by self.radius_threshold.
        The lowest value to which the distance can be minimized is the actual groundtruth distance between
        the two points.
        @param prediction: [rotations, translations] matrix where translations are in meters
        @param target: [rotations, translations] matrix where translations are in meters
        """
        predicted_positions = TensorGeometry.batch_assembleDeltaTranslationMatrices(
            prediction[:, :, -3:])
        target_positions = TensorGeometry.batch_assembleDeltaTranslationMatrices(
            target[:, :, -3:])
        loops = self._compute_loop_matrix(target_positions)
        loops = loops.type(torch.FloatTensor).to(prediction.device)

        predicted_distances = self._location_distances(predicted_positions)
        target_distances = self._location_distances(target_positions)

        # Use the loops' positions as boolean indices to select only the loops in the predicted and target
        # distances matrix
        predicted_loops_distances = loops * predicted_distances
        target_loops_distances = loops * target_distances

        return torch.nn.functional.mse_loss(predicted_loops_distances,
                                            target_loops_distances)
Ejemplo n.º 5
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    def _compute_absolute_translation_loss(self, prediction: torch.Tensor,
                                           target: torch.Tensor):
        prediction = TensorGeometry.batch_assembleDeltaTranslationMatrices(
            prediction[:, :, -3:])
        target = TensorGeometry.batch_assembleDeltaTranslationMatrices(
            target[:, :, -3:])

        return torch.nn.functional.mse_loss(prediction, target)
Ejemplo n.º 6
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    def _compute_absolute_angle_loss(self, prediction: torch.Tensor,
                                     target: torch.Tensor):
        prediction = TensorGeometry.batch_assembleDeltaEulerAngles(
            prediction[:, :, :-3])
        target = TensorGeometry.batch_assembleDeltaEulerAngles(
            target[:, :, :-3])

        return 100 * torch.nn.functional.mse_loss(prediction, target)
Ejemplo n.º 7
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    def _compute_absolute_angle_loss(self, prediction: torch.Tensor,
                                     target: torch.Tensor):
        prediction_absolute_rot_matrices = TensorGeometry.batch_assembleDeltaRotationMatrices(
            TensorGeometry.batchEulerAnglesToRotationMatrixTensor(
                prediction[:, :, :-3]))
        target_absolute_rot_matrices = TensorGeometry.batch_assembleDeltaRotationMatrices(
            TensorGeometry.batchEulerAnglesToRotationMatrixTensor(
                target[:, :, :-3]))

        return 100 * torch.nn.functional.mse_loss(
            prediction_absolute_rot_matrices, target_absolute_rot_matrices)
Ejemplo n.º 8
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    def _compute_global_loss(self, prediction: torch.Tensor,
                             target: torch.Tensor):
        global_rotations = TensorGeometry.batch_assembleDeltaEulerAngles(
            target[:, :, :-3])
        global_translations = TensorGeometry.batch_assembleDeltaTranslationMatrices(
            target[:, :, -3:])
        global_pose_minus_start = torch.cat(
            (global_rotations, global_translations), dim=2)[:, 1:, :]

        loss = BatchSegmentMSELoss()
        return loss.compute(prediction, global_pose_minus_start)
Ejemplo n.º 9
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    def test_BatchRelativeTranslationMatricesToAbsolute(self):
        input_translation = [1, 1, 1]
        expected_relative_translation_batch = torch.Tensor([
            input_translation, input_translation, input_translation,
            input_translation, input_translation, input_translation,
            input_translation, input_translation
        ]).requires_grad_(True)
        # 2 segments of 4 translations
        expected_relative_translation_batch = expected_relative_translation_batch.view(
            (2, 4, 3))

        absolute_translation_batch = TensorGeometry.batch_assembleDeltaTranslationMatrices(
            expected_relative_translation_batch)
        self.assertTrue(absolute_translation_batch.requires_grad)
        actual_relative_translation_batch = torch.zeros(
            expected_relative_translation_batch.shape)

        # take the absolute translations tensor and make the translations relative
        for i, segment in enumerate(absolute_translation_batch):
            for j, translation in enumerate(segment[1:]):
                actual_relative_translation_batch[i,
                                                  j] = translation - segment[j]

        actual_relative_translation_batch = actual_relative_translation_batch.detach(
        ).numpy()
        expected_relative_translation_batch = expected_relative_translation_batch.detach(
        ).numpy()
        numpy.testing.assert_allclose(actual_relative_translation_batch,
                                      expected_relative_translation_batch)
Ejemplo n.º 10
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    def test_batch_assembleDeltaEulerAngles(self):
        y = 0.1745329
        x_prime = 0.3490659
        z_prime_prime = 0.7853982
        input_angles = [y, x_prime, z_prime_prime]

        relative_euler_rotation_batch = torch.Tensor([
            input_angles, input_angles, input_angles, input_angles,
            input_angles, input_angles, input_angles, input_angles
        ]).requires_grad_(True)

        # 2 segments of 4 euler rotations
        relative_euler_rotation_batch = relative_euler_rotation_batch.view(
            (2, 4, 3))

        actual_absolute_euler_orientation_batch = TensorGeometry.batch_assembleDeltaEulerAngles(
            relative_euler_rotation_batch)
        self.assertTrue(actual_absolute_euler_orientation_batch.requires_grad)
        actual_absolute_matrix_orientation_batch = TensorGeometry.batchEulerAnglesToRotationMatrixTensor(
            actual_absolute_euler_orientation_batch)
        self.assertTrue(actual_absolute_matrix_orientation_batch.requires_grad)
        actual_relative_rotation_batch = torch.zeros(
            actual_absolute_matrix_orientation_batch[:, 1:, :].shape)

        #take the absolute rotation tensor and make the rotations relative
        for i, segment in enumerate(actual_absolute_matrix_orientation_batch):
            for j, rotation in enumerate(segment[1:]):
                actual_relative_rotation_batch[i, j] = torch.mm(
                    rotation, segment[j].inverse())

        actual_relative_rotation_batch = TensorGeometry.batchRotationMatrixTensorToEulerAngles(
            actual_relative_rotation_batch)
        self.assertTrue(actual_relative_rotation_batch.requires_grad)

        actual_relative_rotation_batch = actual_relative_rotation_batch.detach(
        ).numpy()
        expected_relative_rotation_batch = relative_euler_rotation_batch.detach(
        ).numpy()
        numpy.testing.assert_allclose(actual_relative_rotation_batch,
                                      expected_relative_rotation_batch,
                                      rtol=7.1029973e-07)
Ejemplo n.º 11
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    def test_batch_computeDeltaTranslations(self):
        input_translation = [1, 1, 1]
        expected_relative_translation_batch = torch.Tensor([
            input_translation, input_translation, input_translation,
            input_translation, input_translation, input_translation,
            input_translation, input_translation
        ]).requires_grad_(True)
        # 2 segments of 4 translations
        expected_relative_translation_batch = expected_relative_translation_batch.view(
            (2, 4, 3))

        global_positions_batch = TensorGeometry.batch_assembleDeltaTranslationMatrices(
            expected_relative_translation_batch)
        self.assertTrue(global_positions_batch.requires_grad)
        acutal_relative_translation_batch = TensorGeometry.batch_computeDeltaTranslations(
            global_positions_batch)
        self.assertTrue(acutal_relative_translation_batch.requires_grad)

        expected_relative_translation_batch = expected_relative_translation_batch.detach(
        ).numpy()
        acutal_relative_translation_batch = acutal_relative_translation_batch.detach(
        ).numpy()
        numpy.testing.assert_allclose(acutal_relative_translation_batch,
                                      expected_relative_translation_batch)
Ejemplo n.º 12
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 def test_rotation_matrix_to_euler(self):
     # Intrinsic Tait-Bryan x-y'-z'' angles
     y = 0.1745329
     x_prime = 0.3490659
     z_prime_prime = 0.7853982
     input_tensor = torch.Tensor(
         Rotation.from_euler(
             "YXZ",
             [y, x_prime, z_prime_prime]).as_matrix()).requires_grad_(True)
     actual_matrix = TensorGeometry.rotation_matrix_to_euler_tait_bryan(
         input_tensor)
     self.assertTrue(actual_matrix.requires_grad)
     expected_matrix = numpy.asarray([y, x_prime, z_prime_prime])
     numpy.testing.assert_allclose(expected_matrix,
                                   actual_matrix.detach(),
                                   rtol=3.22578393e-07)
Ejemplo n.º 13
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 def test_euler_angles_to_rotation_matrix(self):
     # Intrinsic Tait-Bryan y-x'-z'' angles
     y = 0.1745329
     x_prime = 0.3490659
     z_prime_prime = 0.7853982
     input_tensor = torch.Tensor([y, x_prime,
                                  z_prime_prime]).requires_grad_(True)
     expected_matrix = Rotation.from_euler(
         "YXZ", [y, x_prime, z_prime_prime]).as_matrix()
     actual_matrix = TensorGeometry.eulerAnglesToRotationMatrixTensor(
         input_tensor[0], input_tensor[1], input_tensor[2])
     self.assertTrue(actual_matrix.requires_grad)
     actual_matrix = actual_matrix.detach().numpy()
     numpy.testing.assert_allclose(expected_matrix,
                                   actual_matrix,
                                   rtol=3.22578393e-07)