Hand-eye calibration

For applications, in which the camera is integrated into one or more robot systems, it needs to be calibrated w.r.t. some robot reference frames. For this purpose, the rc_visard is shipped with an on-board calibration routine called the hand-eye calibration module. It is a base module which is available on every rc_visard.

Note

The implemented calibration routine is completely agnostic about the user-defined robot frame to which the camera is calibrated. It might be a robot’s end-effector (e.g., flange or tool center point) or any point on the robot structure. The method’s only requirement is that the pose (i.e., translation and rotation) of this robot frame w.r.t. a user-defined external reference frame (e.g., world or robot mounting point) is exactly observable by the robot controller and can be reported to the calibration module.

The Calibration routine itself is an easy-to-use multi-step procedure using a calibration grid which can be obtained from Roboception.

Calibration interfaces

The following two interfaces are offered to conduct hand-eye calibration:

  1. All services and parameters of this module required to conduct the hand-eye calibration programmatically are exposed by the rc_visard’s REST-API interface. The respective node name of this module is rc_hand_eye_calibration and the respective service calls are documented Services.

    Note

    The described approach requires a network connection between the rc_visard and the robot controller to pass robot poses from the controller to the rc_visard’s calibration module.

  2. For use cases where robot poses cannot be passed programmatically to the rc_visard’s hand-eye calibration module, the Web GUI’s Hand-Eye Calibration page under Configuration offers a guided process to conduct the calibration routine manually.

    Note

    During the process, the described approach requires the user to manually enter into the Web GUI robot poses, which need to be accessed from the respective robot-teaching or handheld device.

Camera mounting

As illustrated in Fig. 37 and Fig. 39, two different use cases w.r.t. to the mounting of the camera generally have to be considered:

  1. The camera is mounted on the robot, i.e., it is mechanically fixed to a robot link (e.g., at its flange or a flange-mounted tool), and hence moves with the robot.
  2. The camera is not mounted on the robot but is fixed to a table or other place in the robot’s vicinity and remains at a static position w.r.t. the robot.

While the general Calibration routine is very similar in both use cases, the calibration process’s output, i.e., the resulting calibration transform, will be semantically different, and the fixture of the calibration grid will also differ.

Calibration with a robot-mounted camera

When calibrating a robot-mounted camera with the robot, the calibration grid has to be secured in a static position w.r.t. the robot, e.g., on a table or some other fixed-base coordinate system as sketched in Fig. 37.

Warning

It is extremely important that the calibration grid does not move during step 2 of the Calibration routine. Securely fixing its position to prevent unintended movements such as those caused by vibrations, moving cables, or the like is therefore strongly recommended.

The result of the calibration (step 3 of the Calibration routine) is a pose \(\mathbf{T}^{\text{robot}}_{\text{camera}}\) describing the (previously unknown) relative positional and rotational transformation from the camera frame into the user-selected robot frame such that

(3)\[\mathbf{p}_{\text{robot}} = \mathbf{R}^{\text{robot}}_{\text{camera}} \cdot \mathbf{p}_{\text{camera}} + \mathbf{t}^{\text{robot}}_{\text{camera}} \:,\]

where \(\mathbf{p}_{\text{robot}} = (x,y,z)^T\) is a 3D point with its coordinates expressed in the robot frame, \(\mathbf{p}_{\text{camera}}\) is the same point represented in the camera coordinate frame, and \(\mathbf{R}^{\text{robot}}_{\text{camera}}\) as well as \(\mathbf{t}^{\text{robot}}_{\text{camera}}\) are the corresponding \(3\times 3\) rotation matrix and \(3\times 1\) translation vector of the pose \(\mathbf{T}^{\text{robot}}_{\text{camera}}\), respectively. In practice, in the calibration result and in the provided robot poses, the rotation is defined by Euler angles or as quaternion instead of a rotation matrix (see Pose formats).

_images/sketch_handeye_calib_robotmounted.svg

Fig. 37 Important frames and transformations for calibrating a camera that is mounted on a general robot. The camera is mounted with a fixed relative position to a user-defined robot frame (e.g., flange or TCP). It is important that the pose \(\mathbf{T}^{\text{ext}}_{\text{robot}}\) of this robot frame w.r.t. a user-defined external reference frame ext is observable during the calibration routine. The result of the calibration process is the desired calibration transformation \(\mathbf{T}^{\text{robot}}_{\text{camera}}\), i.e., the pose of the camera frame within the user-defined robot frame.

Additional user input is required if the movement of the robot is constrained and the robot can rotate the Tool Center Point (TCP) only around one axis. This is typically the case for robots with four Degrees Of Freedom (4DOF) that are often used for palletizing tasks. In this case, the user must specify which axis of the robot frame is the rotation axis of the TCP. Further, the signed offset from the TCP to the camera coordinate system along the TCP rotation axis has to be provided. Fig. 38 illustrates the situation.

For the rc_visard, the camera coordinate system is located in the optical center of the left camera. The approximate location is given in section Coordinate frames.

_images/sketch_handeye_calib_robotmounted_4dof.svg

Fig. 38 In case of a 4DOF robot, the TCP rotation axis and the offset from the TCP to the camera coordinate system along the TCP rotation axis must be provided. In the illustrated case, this offset is negative.

Calibration with a statically-mounted camera

In use cases where the camera is positioned statically w.r.t. the robot, the calibration grid needs to be mounted to the robot as shown for example in Fig. 39 and Fig. 40.

Note

The hand-eye calibration module is completely agnostic about the exact mounting and positioning of the calibration grid w.r.t. the user-defined robot frame. That means, the relative positioning of the calibration grid to that frame neither needs to be known, nor it is relevant for the calibration routine, as shown in Fig. 40.

Warning

It is extremely important that the calibration grid is attached securely to the robot such that it does not change its relative position w.r.t. the user-defined robot frame during step 2 of the Calibration routine.

In this use case, the result of the calibration (step 3 of the Calibration routine) is the pose \(\mathbf{T}^{\text{ext}}_{\text{camera}}\) describing the (previously unknown) relative positional and rotational transformation between the camera frame and the user-selected external reference frame ext such that

(4)\[\mathbf{p}_{\text{ext}} = \mathbf{R}^{\text{ext}}_{\text{camera}} \cdot \mathbf{p}_{\text{camera}} + \mathbf{t}^{\text{ext}}_{\text{camera}} \:,\]

where \(\mathbf{p}_{\text{ext}} = (x,y,z)^T\) is a 3D point with its coordinates expressed in the external reference frame ext, \(\mathbf{p}_{\text{camera}}\) is the same point represented in the camera coordinate frame, and \(\mathbf{R}^{\text{ext}}_{\text{camera}}\) as well as \(\mathbf{t}^{\text{ext}}_{\text{camera}}\) are the corresponding \(3\times 3\) rotation matrix and \(3\times 1\) translation vector of the pose \(\mathbf{T}^{\text{ext}}_{\text{camera}}\), respectively. In practice, in the calibration result and in the provided robot poses, the rotation is defined by Euler angles or as quaternion instead of a rotation matrix (see Pose formats).

_images/sketch_handeye_calib_static.svg

Fig. 39 Important frames and transformations for calibrating a statically mounted camera: The latter is mounted with a fixed position relative to a user-defined external reference frame ext (e.g., the world coordinate frame or the robot’s mounting point). It is important that the pose \(\mathbf{T}^{\text{ext}}_{\text{robot}}\) of the user-defined robot frame w.r.t. this frame is observable during the calibration routine. The result of the calibration process is the desired calibration transformation \(\mathbf{T}^{\text{ext}}_{\text{camera}}\), i.e., the pose of the camera frame in the user-defined external reference frame ext.

_images/sketch_handeye_calib_gridmount.svg

Fig. 40 Alternate mounting options for attaching the calibration grid to the robot

Additional user input is required if the movement of the robot is constrained and the robot can rotate the Tool Center Point (TCP) only around one axis. This is typically the case for robots with four Degrees Of Freedom (4DOF) that are often used for palletizing tasks. In this case, the user must specify which axis of the robot frame is the rotation axis of the TCP. Further, the signed offset from the TCP to the visible surface of the calibration grid along the TCP rotation axis has to be provided. The grid must be mounted such that the TCP rotation axis is orthogonal to the grid. Fig. 41 illustrates the situation.

_images/sketch_handeye_calib_static_4dof.svg

Fig. 41 In case of a 4DOF robot, the TCP rotation axis and the offset from the TCP to the visible surface of the grid along the TCP rotation axis must be provided. In the illustrated case, this offset is negative.

Calibration routine

The hand-eye calibration can be performed manually using the Web GUI or programmatically via the REST-API interface. The general calibration routine will be described by following the steps of the hand-eye calibration wizard provided on the Web GUI. This wizard can be found in the rc_visard’s Web GUI under Configuration ‣ Hand-Eye Calibration. References to the corresponding REST-API calls are provided at the appropriate places.

Step 1: Hand-Eye Calibration Status

The starting page of the hand-eye calibration wizard shows the current status of the hand-eye calibration. If a hand-eye calibration is saved on the rc_visard, the calibration transformation is displayed here (see Fig. 42).

_images/webgui_hand_eye_calib1_calib_en.png

Fig. 42 Current status of the hand-eye calibration in case a hand-eye calibration is saved

To query the hand-eye calibration status programmatically, the module’s REST-API offers the get_calibration service call (see Services). An existing hand-eye calibration can be removed by pressing Remove Calibration or using remove_calibration in the REST-API (see Services).

To start a new hand-eye calibration, click on Perform Hand-Eye Calibration or Next.

Step 2: Checking Grid Detection

To achieve good calibration results, the images should be well exposed so that the calibration grid can be detected accurately and reliably. In this step, the grid detection can be checked and the camera settings can be adjusted if necessary. In case parts of the calibration grid are overexposed, the respective squares of the calibration grid will be highlighted in red. A successful grid detection is visualized by green check marks on every square of the calibration grid and a thick green border around the grid as shown in Fig. 43. However, to allow for more robust automatic hand-eye calibration, the grid detection will also be successful, if up to three squares of the calibration grid cannot be detected.

_images/webgui_hand_eye_calib2_en.png

Fig. 43 Checking the calibration grid detection

Step 3: Record Poses

In this step, the user records images of the calibration grid at several different robot poses. These poses must each ensure that the calibration grid is completely visible in the left camera image or at most three squares are missing. Furthermore, the robot poses need to be selected properly to achieve a variety of different perspectives for the camera to perceive the calibration grid. Fig. 44 shows a schematic recommendation of four different grid positions which should be recorded from a close and a far point of view, resulting in eight images for the calibration.

_images/handeyecalib-alldraw.png

Fig. 44 Recommended views on the calibration grid during the calibration procedure. In case of a 4DOF robot, other views have to be chosen, which should be as different as possible.

Warning

Calibration quality, i.e., the accuracy of the calculated calibration result, depends on the calibration-grid views provided. The more diverse the perspectives are, the better is the calibration. Choosing very similar views, i.e., varying the robot pose only slightly before recording a new calibration pose, may lead to inaccurate estimation of the desired calibration transformation.

After the robot reaches each calibration pose, the corresponding pose \(\mathbf{T}^{\text{ext}}_{\text{robot}}\) of the user-defined robot frame in the user-defined external reference frame ext needs to be reported to the hand-eye calibration module. For this purpose, the module offers different slots to store the reported poses and the corresponding left camera images. All filled slots will then be used to calculate the desired calibration transformation between the camera frame and either the user-defined robot frame (robot-mounted camera) or the user-defined external reference frame ext (static camera).

In the Web GUI, the user can choose between many different pose formats for providing the calibration poses (see Pose formats). When calibrating using the REST-API, the poses are always given in XYZ+quaternion. The Web GUI offers eight slots (Close View 1, Close View 2, etc.) for the user to fill manually with robot poses. Next to each slot, a figure suggests a respective dedicated viewpoint on the grid. For each slot, the robot should be operated to achieve the suggested view.

_images/webgui_hand_eye_calib3_en.png

Fig. 45 Filling the first slot in the hand-eye calibration process for a statically mounted camera

To record a calibration pose, click on Set Pose for the respective slot and enter the robot frame’s pose into the respective text fields. The pose is then stored with the corresponding camera image by clicking the Take Picture to Proceed button. This will save the calibration pose in the respective slot.

To transmit the poses programmatically, the module’s REST-API offers the set_pose service call (see Services).

Note

The user’s acquisition of robot pose data depends on the robot model and manufacturer – it might be read from a teaching or handheld device, which is shipped with the robot.

Warning

Please be careful to correctly and accurately enter the values; even small variations or typos may lead to calibration-process failure.

The Web GUI displays the currently saved poses (only with slot numbers from 0 to 7) with their camera images and also allows to delete them by clicking Delete Pose to remove a single pose, or clicking Clear all Poses to remove all poses. In the REST-API the currently stored poses can be retrieved via get_poses and removed via delete_poses for single poses or reset_calibration for removing all poses (see Services).

When at least four poses are set, the user can continue to the computation of the calibration result by pressing Next.

Note

To successfully calculate the hand-eye calibration transformation, at least four different robot calibration poses need to be reported and stored in slots. However, to prevent errors induced by possible inaccurate measurements, at least eight calibration poses are recommended.

Step 4: Compute Calibration

Before computing the calibration result, the user has to provide the correct calibration parameters. These include the exact calibration grid dimensions and the sensor mounting type. The Web GUI also offers settings for calibrating 4DOF robots. In this case, the rotation axis, as well as the offset from the TCP to the camera coordinate system (robot-mounted camera) or grid surface (statically mounted camera) must be given. For the REST-API, the respective parameters are listed in Parameters.

_images/webgui_hand_eye_calib4_en.png

Fig. 46 Defining hand-eye calibration parameters and computing the calibration result via the rc_visard’s Web GUI

When the parameters are correct, the desired calibration transformation can be computed from the collected poses and camera images by clicking Compute Calibration. The REST-API offers this functionality via the calibrate service call (see Services).

Depending on the way the camera is mounted, the calibration result contains the transformation (i.e., the pose) between the camera frame and either the user-defined robot frame (robot-mounted camera) or the user-defined external reference frame ext (statically mounted camera); see Camera mounting.

To enable users to judge the quality of the resulting calibration transformation, the translational and rotational calibration errors are reported, which are computed from the variance of the calibration result.

If the calibration error is not acceptable, the user can change the calibration parameters and recompute the result, or return to step 3 of the calibration procedure and add more poses or update poses.

To save the calibration result, press Save Calibration or use the REST-API save_calibration service call (see Services).

Parameters

The hand-eye calibration module is called rc_hand_eye_calibration in the REST-API and is represented in the Web GUI under Configuration ‣ Hand-Eye Calibration. The user can change the calibration parameters there or use the REST-API interface.

Parameter overview

This module offers the following run-time parameters:

Table 42 The rc_hand_eye_calibration module’s run-time parameters
Name Type Min Max Default Description
grid_height float64 0.0 10.0 0.0 The height of the calibration pattern in meters
grid_width float64 0.0 10.0 0.0 The width of the calibration pattern in meters
robot_mounted bool false true true Whether the camera is mounted on the robot
tcp_offset float64 -10.0 10.0 0.0 Offset from TCP along tcp_rotation_axis
tcp_rotation_axis int32 -1 2 -1 -1 for off, 0 for x, 1 for y, 2 for z

Description of run-time parameters

The parameter descriptions are given with the corresponding Web GUI names in brackets.

grid_width (Width)

Width of the calibration grid in meters. The width should be given with a very high accuracy, preferably with sub-millimeter accuracy.

Via the REST-API, this parameter can be set as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/parameters?grid_width=<value>
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/parameters?grid_width=<value>

grid_height (Height)

Height of the calibration grid in meters. The height should be given with a very high accuracy, preferably with sub-millimeter accuracy.

Via the REST-API, this parameter can be set as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/parameters?grid_height=<value>
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/parameters?grid_height=<value>

robot_mounted (Sensor Mounting)

If set to true, the camera is mounted on the robot. If set to false, the camera is mounted statically and the calibration grid is mounted on the robot.

Via the REST-API, this parameter can be set as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/parameters?robot_mounted=<value>
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/parameters?robot_mounted=<value>

tcp_offset (TCP Offset)

The signed offset from the TCP to the camera coordinate system (robot-mounted sensor) or the visible surface of the calibration grid (statically mounted sensor) along the TCP rotation axis in meters. This is required if the robot’s movement is constrained and it can rotate its TCP only around one axis (e.g., 4DOF robot).

Via the REST-API, this parameter can be set as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/parameters?tcp_offset=<value>
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/parameters?tcp_offset=<value>

tcp_rotation_axis (TCP Rotation Axis)

The axis of the robot frame around which the robot can rotate its TCP. 0 is used for X, 1 for Y and 2 for the Z axis. This is required if the robot’s movement is constrained and it can rotate its TCP only around one axis (e.g., 4DOF robot). -1 means that the robot can rotate its TCP around two independent rotation axes. tcp_offset is ignored in this case.

Via the REST-API, this parameter can be set as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/parameters?tcp_rotation_axis=<value>
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/parameters?tcp_rotation_axis=<value>

Services

The REST-API service calls offered to programmatically conduct the hand-eye calibration and to restore this module’s parameters are explained below.

get_calibration

returns the hand-eye calibration currently stored on the rc_visard.

Details

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/get_calibration
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/get_calibration
This service has no arguments.

The field error gives the calibration error in pixels which is computed from the translational error translation_error_meter and the rotational error rotation_error_degree. This value is only given for compatibility with older versions. The translational and rotational errors should be preferred.

Table 43 Return codes of the get_calibration service call
status success Description
0 true returned valid calibration pose
2 false calibration result is not available

The definition for the response with corresponding datatypes is:

{
  "name": "get_calibration",
  "response": {
    "error": "float64",
    "message": "string",
    "pose": {
      "orientation": {
        "w": "float64",
        "x": "float64",
        "y": "float64",
        "z": "float64"
      },
      "position": {
        "x": "float64",
        "y": "float64",
        "z": "float64"
      }
    },
    "robot_mounted": "bool",
    "rotation_error_degree": "float64",
    "status": "int32",
    "success": "bool",
    "translation_error_meter": "float64"
  }
}

remove_calibration

removes the persistent hand-eye calibration on the rc_visard. After this call the get_calibration service reports again that no hand-eye calibration is available. This service call will also delete all the stored calibration poses and corresponding camera images in the slots.

Details

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/remove_calibration
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/remove_calibration
This service has no arguments.
Table 44 Return codes of the get_calibration service call
status success Description
0 true removed persistent calibration, device reports as uncalibrated
1 true no persistent calibration found, device reports as uncalibrated
2 false could not remove persistent calibration

The definition for the response with corresponding datatypes is:

{
  "name": "remove_calibration",
  "response": {
    "message": "string",
    "status": "int32",
    "success": "bool"
  }
}

set_pose

allows to provide a robot pose as calibration pose to the hand-eye calibration routine and records the current image of the calibration grid.

Details

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/set_pose
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/set_pose

The slot argument is used to assign unique numbers to the different calibration poses. The range for slot is from 0 to 15. At each instant when set_pose is called, an image is recorded. This service call fails if the grid was undetectable in the current image.

The definition for the request arguments with corresponding datatypes is:

{
  "args": {
    "pose": {
      "orientation": {
        "w": "float64",
        "x": "float64",
        "y": "float64",
        "z": "float64"
      },
      "position": {
        "x": "float64",
        "y": "float64",
        "z": "float64"
      }
    },
    "slot": "uint32"
  }
}
Table 45 Return codes of the set_pose service call
status success Description
1 true pose stored successfully
3 true pose stored successfully; collected enough poses for calibration, i.e., ready to calibrate
4 false calibration grid was not detected, e.g., not fully visible in camera image
8 false no image data available
12 false given orientation values are invalid
13 false invalid slot number

The field overexposed indicates if parts of the calibration grid were overexposed in this image.

The definition for the response with corresponding datatypes is:

{
  "name": "set_pose",
  "response": {
    "message": "string",
    "overexposed": "bool",
    "status": "int32",
    "success": "bool"
  }
}

get_poses

returns the robot poses that are currently stored for the hand-eye calibration routine.

Details

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/get_poses
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/get_poses
This service has no arguments.
Table 46 Return codes of the get_poses service call
status success Description
0 true stored poses are returned
1 true no calibration pose available

The field overexposed indicates if parts of the calibration grid were overexposed in this image.

The definition for the response with corresponding datatypes is:

{
  "name": "get_poses",
  "response": {
    "message": "string",
    "poses": [
      {
        "overexposed": "bool",
        "pose": {
          "orientation": {
            "w": "float64",
            "x": "float64",
            "y": "float64",
            "z": "float64"
          },
          "position": {
            "x": "float64",
            "y": "float64",
            "z": "float64"
          }
        },
        "slot": "uint32"
      }
    ],
    "status": "int32",
    "success": "bool"
  }
}

delete_poses

deletes the calibration poses and corresponding images with the specified slots.

Details

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/delete_poses
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/delete_poses

The slots argument specifies which calibration poses should be deleted. If no slots are provided, nothing will be deleted.

The definition for the request arguments with corresponding datatypes is:

{
  "args": {
    "slots": [
      "uint32"
    ]
  }
}
Table 47 Return codes of the delete_poses service call
status success Description
0 true poses successfully deleted
1 true no slots given

The definition for the response with corresponding datatypes is:

{
  "name": "delete_poses",
  "response": {
    "message": "string",
    "status": "int32",
    "success": "bool"
  }
}

reset_calibration

deletes all previously provided poses and corresponding images. The last saved calibration result is reloaded. This service might be used to (re-)start the hand-eye calibration from scratch.

Details

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/reset_calibration
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/reset_calibration
This service has no arguments.

The definition for the response with corresponding datatypes is:

{
  "name": "reset_calibration",
  "response": {
    "message": "string",
    "status": "int32",
    "success": "bool"
  }
}

calibrate

calculates and returns the hand-eye calibration transformation with the robot poses configured by the set_pose service.

Details

save_calibration must be called to make the calibration available for other modules via the get_calibration service call and to store it persistently.

Note

For calculating the hand-eye calibration transformation at least four robot calibration poses are required (see set_pose service). However, eight calibration poses are recommended.

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/calibrate
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/calibrate
This service has no arguments.

The field error gives the calibration error in pixels which is computed from the translational error translation_error_meter and the rotational error rotation_error_degree. This value is only given for compatibility with older versions. The translational and rotational errors should be preferred.

Table 48 Return codes of the calibrate service call
status success Description
0 true calibration successful, returned calibration result
1 false not enough poses to perform calibration
2 false calibration result is invalid, please verify the input data
3 false given calibration grid dimensions are not valid
4 false insufficient rotation, tcp_offset and tcp_rotation_axis must be specified
5 false sufficient rotation available, tcp_rotation_axis must be set to -1
6 false poses are not distinct enough from each other

The definition for the response with corresponding datatypes is:

{
  "name": "calibrate",
  "response": {
    "error": "float64",
    "message": "string",
    "pose": {
      "orientation": {
        "w": "float64",
        "x": "float64",
        "y": "float64",
        "z": "float64"
      },
      "position": {
        "x": "float64",
        "y": "float64",
        "z": "float64"
      }
    },
    "robot_mounted": "bool",
    "rotation_error_degree": "float64",
    "status": "int32",
    "success": "bool",
    "translation_error_meter": "float64"
  }
}

save_calibration

persistently saves the result of hand-eye calibration to the rc_visard and overwrites the existing one. The stored result can be retrieved any time by the get_calibration service. This service call will also delete all the stored calibration poses and corresponding camera images in the slots.

Details

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/save_calibration
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/save_calibration
This service has no arguments.
Table 49 Return codes of the save_calibration service call
status success Description
0 true calibration saved successfully
1 false could not save calibration file
2 false calibration result is not available

The definition for the response with corresponding datatypes is:

{
  "name": "save_calibration",
  "response": {
    "message": "string",
    "status": "int32",
    "success": "bool"
  }
}

set_calibration

sets the hand-eye calibration transformation with arguments of this call.

Details

The calibration transformation is expected in the same format as returned by the calibrate and get_calibration calls. The given calibration information is also stored persistently on the sensor by internally calling save_calibration.

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/set_calibration
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/set_calibration

The definition for the request arguments with corresponding datatypes is:

{
  "args": {
    "pose": {
      "orientation": {
        "w": "float64",
        "x": "float64",
        "y": "float64",
        "z": "float64"
      },
      "position": {
        "x": "float64",
        "y": "float64",
        "z": "float64"
      }
    },
    "robot_mounted": "bool"
  }
}
Table 50 Return codes of the set_calibration service call
status success Description
0 true setting the calibration transformation was successful
12 false given orientation values are invalid

The definition for the response with corresponding datatypes is:

{
  "name": "set_calibration",
  "response": {
    "message": "string",
    "status": "int32",
    "success": "bool"
  }
}

reset_defaults

restores and applies the default values for this module’s parameters (“factory reset”). Does not affect the calibration result itself or any of the slots saved during calibration. Only parameters such as the grid dimensions and the mount type will be reset.

Details

This service can be called as follows.

PUT http://<host>/api/v2/pipelines/0/nodes/rc_hand_eye_calibration/services/reset_defaults
PUT http://<host>/api/v1/nodes/rc_hand_eye_calibration/services/reset_defaults
This service has no arguments.

The definition for the response with corresponding datatypes is:

{
  "name": "reset_defaults",
  "response": {
    "return_code": {
      "message": "string",
      "value": "int16"
    }
  }
}