コード例 #1
0
from autolab_core import RigidTransform

from frankapy import FrankaArm


if __name__ == "__main__":
    fa = FrankaArm()
    
    # reset franka to its home joints
    fa.reset_joints()

    # read functions
    T_ee_world = fa.get_pose()
    print('Translation: {} | Rotation: {}'.format(T_ee_world.translation, T_ee_world.quaternion))

    joints = fa.get_joints()
    print('Joints: {}'.format(joints))

    gripper_width = fa.get_gripper_width()
    print('Gripper width: {}'.format(gripper_width))

    # gripper controls
    print('Closing gripper')
    fa.close_gripper()

    print('Opening gripper to a specified position')
    fa.goto_gripper(0.02)

    print('Opening gripper all the way')
    fa.open_gripper()
コード例 #2
0
                                        cartesian_impedances=gains)

    if open_gripper:
        fa.open_gripper()


if __name__ == '__main__':
    # Examples and for collecting robot poses
    # Everything is hard coded :/
    
    print('Starting robot')
    fa = FrankaArm()
    go2start(fa)
    dw = DoorWorld()
    print(fa.get_pose())
    print(fa.get_joints())

    input("Press enter to continue")
    go2door(fa, close_gripper=True, use_planner = True, world=dw)
    fa.close_gripper()

    res = turn_knob(fa, use_planner = True, world = dw)
    if res == "expected_model_failure" or res == "model_deviation":
        gains1 = [1000,1000,1000,1,1,1]
        dmp_info2 = "/home/stevenl3/misc_backups/robot_data_door_turn2_position_weights.pkl"
        fa.execute_position_dmp(dmp_info2, duration=10,
            skill_desc='position_dmp', cartesian_impedance=gains1)
    else:
        print("Worked as expected!")

コード例 #3
0
def run_main():
    parser = argparse.ArgumentParser()
    parser.add_argument('--filename', type=str, default=None)
    args = parser.parse_args()

    fa = FrankaArm()

    fa.open_gripper()

    # fa.reset_pose()
    fa.reset_joints(10)

    initial_magnet_position1 = RigidTransform(
        rotation=np.array([[0, -1, 0], [0, 0, 1], [-1, 0, 0]]),
        translation=np.array([0.38592997, 0.10820438, 0.08264024]),
        from_frame='franka_tool',
        to_frame='world')

    initial_magnet_position2 = RigidTransform(
        rotation=np.array([[0, -1, 0], [0, 0, 1], [-1, 0, 0]]),
        translation=np.array([0.38592997, 0.20820438, 0.08264024]),
        from_frame='franka_tool',
        to_frame='world')

    squeeze_position1 = RigidTransform(
        rotation=np.array([[0, 1, 0], [0, 0, 1], [1, 0, 0]]),
        translation=np.array([0.54900978, 0.20820438, 0.20654183]),
        from_frame='franka_tool',
        to_frame='world')

    squeeze_position2 = RigidTransform(
        rotation=np.array([[0, 1, 0], [0, 0, 1], [1, 0, 0]]),
        translation=np.array([0.54900978, 0.20820438, 0.15654183]),
        from_frame='franka_tool',
        to_frame='world')

    relative_pos_dist_z = RigidTransform(rotation=np.array([[1, 0,
                                                             0], [0, 1, 0],
                                                            [0, 0, 1]]),
                                         translation=np.array([0.0, 0.0, 0.1]),
                                         from_frame='franka_tool',
                                         to_frame='franka_tool')

    relative_pos_dist_y = RigidTransform(rotation=np.array([[1, 0,
                                                             0], [0, 1, 0],
                                                            [0, 0, 1]]),
                                         translation=np.array([0.0, 0.1, 0.0]),
                                         from_frame='franka_tool',
                                         to_frame='franka_tool')

    relative_rotation_z = RigidTransform(rotation=np.array([[0, 1, 0],
                                                            [-1, 0, 0],
                                                            [0, 0, 1]]),
                                         translation=np.array([0.0, 0.0, 0.0]),
                                         from_frame='franka_tool',
                                         to_frame='franka_tool')

    relative_neg_rotation_z = RigidTransform(rotation=np.array([[0, -1, 0],
                                                                [1, 0, 0],
                                                                [0, 0, 1]]),
                                             translation=np.array(
                                                 [0.0, 0.0, 0.0]),
                                             from_frame='franka_tool',
                                             to_frame='franka_tool')

    relative_neg_dist_y = RigidTransform(rotation=np.array([[1, 0,
                                                             0], [0, 1, 0],
                                                            [0, 0, 1]]),
                                         translation=np.array([0.0, -0.1,
                                                               0.0]),
                                         from_frame='franka_tool',
                                         to_frame='franka_tool')

    relative_neg_dist_z = RigidTransform(rotation=np.array([[1, 0,
                                                             0], [0, 1, 0],
                                                            [0, 0, 1]]),
                                         translation=np.array([0.0, 0.0,
                                                               -0.1]),
                                         from_frame='franka_tool',
                                         to_frame='franka_tool')

    relative_pos_dist_x = RigidTransform(
        rotation=np.array([[1, 0, 0], [0, 1, 0], [0, 0, 1]]),
        translation=np.array([0.075, 0.0, 0.0]),
        from_frame='franka_tool',
        to_frame='franka_tool')

    relative_neg_dist_x = RigidTransform(
        rotation=np.array([[1, 0, 0], [0, 1, 0], [0, 0, 1]]),
        translation=np.array([-0.03, 0.0, 0.0]),
        from_frame='franka_tool',
        to_frame='franka_tool')

    fa.goto_pose_with_cartesian_control(initial_magnet_position1)

    fa.goto_pose_with_cartesian_control(initial_magnet_position2)

    magnetic_calibration = MagneticCalibration()

    filename = '../calibration/2020-01-14 11-08 E1 2X Board Calibration.npz'
    magnetic_calibration.load_calibration_file(filename)

    # Close the gripper and save corresponding robot state, gripper state, and magnetic state data
    magnetic_calibration.start_recording_data()
    time.sleep(1)
    # fa.goto_pose_delta_with_cartesian_control(relative_x_dist, 10)
    # max width is about 0.080 m

    gripper_step_size = 0.002  # in meters
    num_samples = 30
    noise_level = 13  # uT
    force_threshold = 1.05

    GRIPPER_CONTACT = False

    min_contact = None
    min_gripper_width = None
    global_min = None
    current_force_estimate = 1

    while (GRIPPER_CONTACT == False):

        current_width = magnetic_calibration.get_current_gripper_width()
        print(current_width)
        fa.goto_gripper(current_width - gripper_step_size)

        #magnetic_calibration.get_last_magnetic_data()
        mag_data = magnetic_calibration.get_previous_magnetic_samples(
            num_samples)  # grab last ten samples

        xyz_mag_data = mag_data[:, 6]
        print(xyz_mag_data)
        #slope = np.diff(xyz_mag_data, axis=0)
        #print(slope)
        # asign = np.sign(slope)
        # signchange = ((np.roll(asign, 1) - asign) != 0).astype(int)
        # print(signchange)

        # first make sure the signal changes are large enough to not just be noise jitter
        # then see if there is a signal change in slope - this signifies a contact.
        #if(np.any(abs(np.diff(mag_data)>noise_level))):
        #if(abs(np.sum(np.sign(np.diff(mag_data)))<numSamples) & abs(np.diff(mag_data))>noise_level):

        if global_min is None:
            global_min = np.min(xyz_mag_data, axis=0)

        elif global_min > np.min(xyz_mag_data, axis=0):
            global_min = np.min(xyz_mag_data, axis=0)

        if xyz_mag_data[-1] - global_min > noise_level:
            GRIPPER_CONTACT = True
            min_gripper_width = current_width - 2 * gripper_step_size
            print(min_gripper_width)
            print("Min Magnetic Values: ")
            print(min_contact)

        gripper_step_size -= 0.00003

        # if (np.any(np.logical_and((abs(slope)>noise_level), (slope > 0)))):
        #     # if last value is negative, contact. if last value is positive, release.
        #     # save max value so we can compare current value and strength of grip
        #     GRIPPER_CONTACT = True
        #     min_contact = np.min(xyz_mag_data, axis=0)
        #     min_gripper_width = current_width-gripper_step_size
        #     print(min_gripper_width)
        #     print("Min Magnetic Values: ")
        #     print(min_contact)
        #input("Press enter to continue to next step")

        #magnetic_calibration.close_gripper_magnetic_feedback()

    # current_width = min_gripper_width
    # num_samples = 100

    # while(current_force_estimate < force_threshold):
    #     current_width -= gripper_step_size
    #     print(current_width)
    #     fa.goto_gripper(current_width)

    #     mag_data = magnetic_calibration.get_previous_magnetic_samples(num_samples) # grab last ten samples

    #     z_mag_data = np.max(mag_data[:,6])
    #     print(z_mag_data)

    #     current_force_estimate = global_min / z_mag_data
    #     print(current_force_estimate)

    fa.goto_pose_delta_with_cartesian_control(relative_pos_dist_z)

    current_joints = fa.get_joints()
    current_joints[6] -= math.pi

    fa.goto_joints(list(current_joints))

    current_position = fa.get_pose()

    fa.goto_pose_with_cartesian_control(squeeze_position1)

    fa.goto_pose_with_cartesian_control(squeeze_position2)

    for i in range(3):
        for j in range(i + 1):
            fa.goto_gripper(0.0, force=20)

            fa.goto_gripper(min_gripper_width)
        if i < 2:
            fa.goto_pose_delta_with_cartesian_control(relative_pos_dist_x)

    fa.goto_pose_with_cartesian_control(current_position, 5)

    current_joints = fa.get_joints()
    current_joints[6] += math.pi

    fa.goto_joints(list(current_joints))

    fa.goto_pose_delta_with_cartesian_control(relative_neg_dist_z)

    fa.open_gripper()

    fa.goto_pose_with_cartesian_control(initial_magnet_position1)

    #fa.goto_pose_delta_with_cartesian_control(relative_neg_dist_z)

    magnetic_calibration.stop_recording_data()

    #fa.open_gripper()

    print(magnetic_calibration.magnetic_data[0, :])

    if args.filename is not None:
        magnetic_calibration.saveData(args.filename, min_contact,
                                      min_gripper_width)

    magnetic_calibration.plotData(magnetic_calibration.magnetic_data,
                                  'Raw Data Over Time')
    magnetic_calibration.plotGripperData(
        magnetic_calibration.gripper_state_data, 'Raw Data Over Time')
    magnetic_calibration.plotGripperData(magnetic_calibration.robot_state_data,
                                         'Raw Data Over Time')
コード例 #4
0
ファイル: door_demo.py プロジェクト: amisaw/gastronomy
    relative_pos_dist_y = RigidTransform(rotation=np.array([[1, 0,
                                                             0], [0, 1, 0],
                                                            [0, 0, 1]]),
                                         translation=np.array([0.0, 0.05,
                                                               0.0]),
                                         from_frame='franka_tool',
                                         to_frame='franka_tool')

    fa.goto_pose_delta_with_cartesian_control(
        relative_pos_dist_y,
        3,
        stop_on_contact_forces=[20, 20, 20, 20, 20, 20])

    input("Press enter to continue to command")

    current_joints = fa.get_joints()
    current_joints[6] += math.pi

    fa.goto_joints(list(current_joints))

    current_joints = fa.get_joints()
    current_joints[6] -= math.pi

    fa.goto_joints(list(current_joints))

    fa.open_gripper()

    rgb_image_msg = rospy.wait_for_message('/rgb/image_raw', Image)
    try:
        rgb_cv_image = cv_bridge.imgmsg_to_cv2(rgb_image_msg)
    except CvBridgeError as e:
コード例 #5
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from frankapy import FrankaArm, SensorDataMessageType
from frankapy import FrankaConstants as FC
from frankapy.proto_utils import sensor_proto2ros_msg, make_sensor_group_msg
from frankapy.proto import JointPositionSensorMessage, ShouldTerminateSensorMessage
from franka_interface_msgs.msg import SensorDataGroup

from frankapy.utils import min_jerk

import rospy

if __name__ == "__main__":
    fa = FrankaArm()
    fa.reset_joints()

    rospy.loginfo('Generating Trajectory')
    joints_0 = fa.get_joints()
    p = fa.get_pose()
    p.translation[2] -= 0.2
    fa.goto_pose(p)
    joints_1 = fa.get_joints()

    T = 5
    dt = 0.02
    ts = np.arange(0, T, dt)
    joints_traj = [min_jerk(joints_1, joints_0, t, T) for t in ts]

    rospy.loginfo('Initializing Sensor Publisher')
    pub = rospy.Publisher(FC.DEFAULT_SENSOR_PUBLISHER_TOPIC,
                          SensorDataGroup,
                          queue_size=1000)
    rate = rospy.Rate(1 / dt)