Skip to content

mrhosseini75/TIAGo-manipulator-controller

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

5 Commits
 
 
 
 

Repository files navigation

Tiago Robot simulation using ROS, Rviz and Gazebo.

Introduction

The purpose of this assignment is to develop a software architecture that uses opensource 3D object detection models to allow a robot manipulator to independently estimate the position of a given object (through an RGB-D camera) and potentially grasp it. In order to verify the simulation in a real environment, given the availability of the Tiago robot in the laboratory, the latter mentioned was selected to carry out the software simulation on Gazebo.

Installing and Running

The simulation is built on the ROS (Robot-Operating-Systems) platform, specifically the MELODIC version to be able to have the Tiago Ros package in it. Here the guide for Tiago installation Tiago robot. To use the melodic version it was necessary to work for the project on Ubuntu 18 which can be donwoloaded at Download Ubuntu 18.

The program requires the installation of the following packages and tools for the specific project before it can be launched:

For the part of the project relating to object recognition, the Mediapipe library was used, thanks to which we were able to simply obtain the identification of a certain object with respect to the robot's camera, in our case we chose the recognition of a cup. MediaPipe Objectron is a mobile real-time 3D object detection solution for everyday objects. It detects objects in 2D images, and estimates their poses through a machine learning (ML) model. We found the tutorial and the downloadable packages here:

Another tool needed was the one concerned to the part of moving the robot and grasping the object in the correct way. MoveIt was chosen for the purpose, a system that provides the necessary trajectories for the arm of a robot to put the end effector in a given place. The wrappers provide functionality for most operations that the average user will likely need, specifically setting joint or pose goals, creating motion plans, moving the robot, adding objects into the environment and attaching/detaching objects from the robot.

Easy to install with:

	$ sudo apt install ros-melodic-moveit

Also, in order to correctly run the simulation, you have to install the following packages:

  • python3-rospkg
  • ros-numpy
  • scipy

Finally, to launch the simulation, you should run this .launch file:

	$ roslaunch SOFAR_Assignment launcher.launch

Environment

As soon as the simulation starts, Gazebo (an open-source 3D Robotics simulator) appears on the screen.

We used the Gazebo environment to control the right movement of the robot's joints and to verify the correct functioning of the code within a real simulation world. ROS creates the scenario described in the world folder, regarding to this we have built an environment called table_and_cup.world where the robot spawns and in front of him you can find a table with a cup on it.

Implementation choices

First of all, the purpose of the assignment was not a simple matter to deal with and we thought it was not the best idea to use a single script of code. We therefore decided to separate the things in order to achieve the goal of having a more modular code.

Then, the approach used was the more general that we could to better obtain as a final result, a robot which can adjust its position depending on the object coordinates in the space (however the object must remain in the range of the robot camera).

We also decided to use Ros parameters to have a more maintainable and editable code. The params can be found in the simulation_param.yaml file.

Another thing to face up with was that the Objectron tool from Mediapipe returns the frames and coordinates of the robot camera frame, more in specific the xtion_rgb_frame, so we had to dedicate a whole node to extract the relative pose of the object with respect to the camera and with the correct transformations, thanks to tf package functions, have the pose of the object with respect to the base frame (base_footprint) of the robot.

To achieve the final change of coordinates it was necessary to pass through the quaternions as regards the orientation of the object, and then multiply them thanks to the appropriate function quaternion_multiply with the corresponding component of each coordinate.

Object Recognition

It was decided to implement a single node that provided the recognition of an object as soon as it was displayed within the visual range of the camera of the Tiago robot. In order to achieve it, firstly we imported the needed libraries for our aim, such as ros_numpy, mediapipe, sensor_msgs to import from the robot sensors the image seen from the camera and from geometry_msgs the object Pose, useful to extrapolate the position with Point and the orientation in quaternions.

To obtain in the right way the rotation matrix we just pass through the scipy open source library that could extract and import the orientation of the object with respect to the robot camera frame.

At this point we made up the recognize function that takes in input the image which is taken from the subscription to the /xtion/rgb/image_raw topic. Now there is the definition of the object takes place via mediapipe as objectron, as shown below:

with mp_objectron.Objectron(
            static_image_mode=False,
            max_num_objects=1,
            min_detection_confidence=0.5,
            model_name='Cup') as objectron:

Then we converted the BGR image to RGB and process it with MediaPipe Objectron with objectron.process(ros_numpy.numpify(image)) and, if the object is detected, we printed out a log message for real-time feedback.

Another matter was to use the quaternions to work properly in ROS with rotation matrices. For this reason scipy library was used, which provides the orientation as a rotation matrix and then it can be convertible to the quaternion format. The compact command used is the following:

q = R.from_matrix(results.detected_objects[0].rotation).as_quat()

Finally we ended up the node with the publishers to the '/sofar/target_pose/relative' and the '/sofar/target_pose/relative/stamped' for the Pose and PoseStamped topic for respectively publish the correct relative position of the coordinate frame of the object with respect to the robot camera frame and the other was used to visualize it on RViz to have an extra feedback.

Object change of coordinates to base frame

As already mentioned, the coordinates taken from the geometry_msgs topic are with respect to the camera frame of the Tiago robot. It is therefore necessary, through a transformation, to make a change of coordinates to pass to the reference system with respect to the base frame. To do this we used tf2 package to have the right transformation.

We made up the RelToAbsolute service which is build with this structure:

geometry_msgs/PoseStamped relative_pose

---

geometry_msgs/PoseStamped absolute_pose

Then we used a specific function which gets the transform between two frames by frame ID assuming fixed frame:

tfBuffer.lookup_transform('base_footprint', rel_pose.relative_pose.header.frame_id, rospy.Time())

Once the transformation was obtained, the do_transform_point function was used to pass from the cartesian cordinates with respect to the camera frame to the base footprint frame, corresponding to the base frame, the one attached to the base of the robot.

As previously done, the last thing to do is to pass into the quaternion domain to work in the format that ROS wants. This is simply made by the function quaternion_multiply which makes the change of coordinates multiplicating the two quaternions previously built with the coordinates components regarding the relative pose to the camera frame and the ones relative to the transformation.

In the end we have built up the final absolute pose with respect to the base frame and returned printing it.

Robot grasp

For the part concerning the grasping movement, two nodes have been implemented that deal specifically with that: one regarding the real final approach to the object and picking it (pickObject.py) and one about what the robot do when the simulation starts, so the various actions before the grab and after that (pickClient.py).

Pick client

As already stated, this node deals with managing what the robot has to do throughout the simulation. To do this we used the SimpleActionClient library to use PlayMotion, thanks to which we were able to send a goal to reach a certain position with an adequate configuration of the robot's joints and then perform a certain action; we used trajectory_msgs.msg package that defines messages for pointing out robot trajectories, so to adjust some movements more accurately or to make the robot move specific parts, such as the head to find the object; an ApproachObject service created by us as follows:

geometry_msgs/Pose pose

---

bool result

More in specific we have implemented some functions that were necessary to make Tiago perform the actions to do.

Before starting the quick analysis of Tiago's actions, it is important to say that the specific configurations of Tiago's joint positions for the movements he has to do can be found in pick_motions.yaml.

As soon as the node is launched, thanks to SimpleActionClient we can send a goal with PlayMotionGoal, using the send_goal_and_wait function. First we send the robot to the home position, then we managed to publish to the JointTrajectory topic in order to be able to change the configuration of the joints, in particular, for now, we just want to move the Tiago's head to find the object which is on the table. After that we subscribe to the /sofar/target_pose/relative to pick the relative position of the object.

At this point we have used the move_head() function that has precisely the purpose previously stated: look down for the object on the table. More precisely within the function we defined the head motion in a decreasing cycle with -0.1 step increments up to a maximum of -1, till an object is recognized (in this case, a cup).

Then we wait for rel_to_absolute_pose service and for one second for a correct object recognition.

After taking the position of the object with respect to the base frame, we introduced a displacement with camera recognition bias to check if the robot has to adjust its position to be able to take and see the object in a better way. In case the displacement is greater than a threshold (we put 0.1 in our case) a function is called: adjust_position. In the function we publish the velocity to change position of TIAGo to the cmd_vel topic. So we defined an angular velocity to turn with w.r.t z axis to prepare the robot to move to the side of the table. We used ros parameters to pass the correct index for rotating Tiago: rospy.get_param('right_rotation_index'). Then we set a linear velocity to move along the x axis to really get the needed displacement and after that the robot has to make the reverse movement to get to the table.

After this operation the object should be located quite precisely in the central part of the lens. To monitor the view of the object from the point of view of Tiago's camera, just launch the command rosrun look_to_point which allows you to have a view from inside the robot's head.

Now we called the function made to prepare the robot for the pregrasp movement: Play motion planning is necessary to put TIAGo in the configuration of pregrasp in order to reach the object.

At that moment all we have to do is to wait for the pickObject node to make Tiago take the object, so we wait for a feedback from the /sofar/approach_object service and in case of lack of communication with server we launch an error log message:

except rospy.ServiceException as e:
        rospy.logerr(
            "PickClient - Could not connect to /sofar/approach_object service")
        exit()

Same process, we wait for the pick_object service, for which however we have not instantiated any specific service, as we just need to be Empty.

Finally we call the go_to_final_position() function that permits Tiago, after it had released the object, to go in the final configuration which is just to raise its arm and depart from the object.

Pick object

As anticipated, the aim of this node is to manage the actual grasping of the object, together with putting the robot in a position to pick it up in the configuration just prior to reaching the object (pregrasp_pose), and at the subsequent raising of the arm after having closed the grippers and got the object (post_grasp_pose).

First of all we there is the initialization of the moveit commander and the definition of the group of joint to adjust the height of TIAGo, in our case moveit_commander.MoveGroupCommander('arm_torso').

Then we implemented 4 main functions useful for our purpose.

The goToObject(object_pose) function serves to put the manipulator in the right position to take the object. The position of the final absolute object is passed via argument, and the final orientation of the end effector is built through Quaternion. We managed to set a vertical offset of the end effector, taking care of the environment and of the shape of the object, in order to not collide with the table and to pick the cup in the middle. After that we saved the grasp pose and set the distance betwwen the end effector and the object. Now we fixed the pregrasp_pose in such a way to be located with the robot arm in the right place to pick the object from the point of view of the z and x axis, but with a displacement of -0.2 on the y axis, so that the robot with the next move will easily go and grab the object. The function ends with a response ApproachObjectResponse() so that when the operation succeeded returns a true status.

The two fundamental functions for managing the closing and opening of the Tiago's end effector's grippers are close_gripper() and open_gripper(). A publisher was used to publish gripper status on joint trajectory when TIAGo close or open the gripper in this way:

rospy.Publisher('/gripper_controller/command', JointTrajectory, queue_size=1)

It was necessary to make a loop to wait for the closing or opening operation to take place and to be completed. We also needed to use JointTrajectory() to set the joint group for taking the object and JointTrajectoryPoint() to set the total aperture or the clamp of the grippers.

This time the gripper joints configuration for the closure has to be set at [0.0, 0.0] while for the maximum gap of opening to [0.044, 0.044].

Now, the main function used to cope with the process to make the robot do the right movements for grasping the object is the pick() function. At first we have to make Tiago move to the grasp position, the one just before the closing gripper action. We made so, calling the joint group, keep moving the manipulator group to reach the desired position and stopping the manipulator group after having reached the object position:

    move_group.set_pose_target(grasp_pose)
    move_group.go(wait=True)
    move_group.stop()
    move_group.clear_pose_targets()

Then we called the close_gripper() function, and wait till it is concluded. After that we defined post_grasp_pose adn make Tiago's arm move towards it. For the postgrasp pose we decided to make the robot raise up the cup like a cheers gesture and then return to the previous configuration. So the next Tiago's movement is to go back to the precedent position, the one where it pick up the cup.

Now the function open_gripper() is called and the robot release the cup on the table.

Hence the robot arm returned to the pregrasp_pose, the one with a little displacement from the object on the y-axis (-0.2).

At the end we chose to move the robot in the final configuration that is just the one from which it came from.

Rqt graph

The project graph, which illustrates the relationships between the nodes, is shown below. Keep in mind that this is a graph built by executing all the nodes at the same time in order to obtain a full graph.

The graph can be generated using this command:

$ rqt_graph

Diagram

This is the functioning diagram of the entire architecture:

Here it is shown the UML component diagram to better understand the whole system.

Simulation

A small video to better visualize Tiago's whole procedure to pick the cup during the simulation.

video.mp4

Conclusions and possible future improvements

The assignment carried out was challenging because we had to faced up a problem with different aspects to deal with. Gazebo was an environment which we have already been able to test its functionality in other course, together with ROS1. But working with the Tiago robot and involving other tools such as Mediapipe for the recognition of objects in a world created by us, as well as MoveIt to be able to make the movements in the right way and to reach certain positions for the robot was not easy.

Certainly one of the most difficult parts was to understand which parameters it was necessary to change according to the system where the simulation was running in order to have as much as possible a clear and clean movement of the robot arm, therefore without collision with objects and without displacements in the measurements that the robot reported.

We think that a possible improvement to continue our work could be, for instance, to allow Tiago to be able to evaluate and make several actions among a wider range of possible movements to get to the object differently and faster based on where it spawns.

Another aspect that can be evaluated to improve the flexibility of the code could be to implement a system that does the same things but with immediate portability for other robot models as well.