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doc:writing_an_interface_to_your_perception_system [2014/11/27 14:38] – [KnowRob integration] admindoc:writing_an_interface_to_your_perception_system [2014/11/27 15:24] (current) – [KnowRob integration] admin
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 </code> </code>
  
-To start a rosjava node from KnowRob, you first need to instantiate the class containing the node definition, create an array with the fully-qualified class name, and pass it to  +To start a rosjava node from KnowRob, you first need to instantiate the class containing the node definition, create an array with the fully-qualified class name, and pass it to the ''runRosjavaNode'' method. After starting the dummy publisher in another terminalyou can start KnowRob, create the topic listener, and query for object instances and their poses.
- +
-If the dummy publisher is runningthe following sequence of commands starts the topic listener, queries for object instances and their poses.+
  
 <code prolog> <code prolog>
 ?- obj_detections_listener(L). ?- obj_detections_listener(L).
-L = @'J#00000000000173056232'. +L = @'J#00000000000034668496
-Attaching 0x8afd1010+% ... several rosjava INFO messages ...
  
 % wait for a few seconds... % wait for a few seconds...
  
 ?- owl_individual_of(A, knowrob:'HumanScaleObject'). ?- owl_individual_of(A, knowrob:'HumanScaleObject').
-A = 'http://ias.cs.tum.edu/kb/knowrob.owl#Cup_vUXiHMJy' ; +A = knowrob:'Cup_uGmuwKPo' ; 
-A = 'http://ias.cs.tum.edu/kb/knowrob.owl#Cup_bneXbLGX' ; +A = knowrob:'DrinkingBottle_TaVWzXre' ; 
-A = 'http://ias.cs.tum.edu/kb/knowrob.owl#DinnerFork_TaVWzXre'+A = knowrob:'DrinkingBottle_rMsqkRjP'
 +A = knowrob:'DinnerFork_tDjYwuhx'
  
-?- current_object_pose('http://ias.cs.tum.edu/kb/knowrob.owl#DinnerFork_TaVWzXre', P).+?- current_object_pose(knowrob:'DinnerFork_tDjYwuhx', P).
 P = [1.0,0.0,0.0,2.9473,0.0,1.0,0.0,2.6113,0.0,0.0,1.0,0.2590,0.0,0.0,0.0,1.0]. P = [1.0,0.0,0.0,2.9473,0.0,1.0,0.0,2.6113,0.0,0.0,1.0,0.2590,0.0,0.0,0.0,1.0].
 </code> </code>
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 ===== Perception service ===== ===== Perception service =====
  
-The dummy perception service is very similar to the dummy publisher. Whenever a request for an object detection is received, it responds with a simulated detection of a random object type at a random pose. In real scenarios, the request will probably not be empty, but specify properties of the perception method to be used. The code of the dummy service can be found in the file src/edu/tum/cs/ias/knowrob/tutorial/DummyService.java. It can be started with the following command:+The dummy perception service is very similar to the dummy publisher. Whenever a request for an object detection is received, it responds with a simulated detection of a random object type at a random pose. In the example, the 'request' part of the service is empty -- in real scenarios, the request will often specify properties of the perception method to be used. The code of the dummy service can be found in the file src/edu/tum/cs/ias/knowrob/tutorial/DummyService.java. It can be started with the following command:
 <code> <code>
 rosrun knowrob_perception_tutorial dummy_service rosrun knowrob_perception_tutorial dummy_service
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 ===== KnowRob integration ===== ===== KnowRob integration =====
  
-While the service client is much simpler than the topic listener, the integration with KnowRob is a bit more complex. The reason is that the service call needs to be actively triggered, while the topic listener just runs in the background in a separate thread. This means that the inference needs to be aware of the possibility of acquiring information about object detections by calling this service. Such functionality can be realized using [[doc/defining_computables|computables]] that describe for an OWL class or property how individuals of this class or values of this property can be computed. To better understand the following steps, it is recommended to have completed the [[doc/defining_computables|tutorial on defining computables]]. +While the Java side of the service client is much simpler than the topic listener, the integration with KnowRob is a bit more complex. The reason is that the service call needs to be actively triggered, while the topic listener just runs in the background in a separate thread. This means that the inference needs to be aware of the possibility of acquiring information about object detections by calling this service. Such functionality can be realized using [[doc/defining_computables|computables]] that describe for an OWL class or property how individuals of this class or values of this property can be computed. To better understand the following steps, it is recommended to have completed the [[doc/defining_computables|tutorial on defining computables]]. 
  
 In a first step, we need to implement a Prolog predicate that performs the service call, processes the returned information, adds it to the knowledge base, and returns the identifiers of the detected object instances. This predicate is implemented in prolog/perception_tutorial.pl. In contrast to topic-based example above, which performed most processing in Java, this example shows how more of the processing can be done in Prolog: In a first step, we need to implement a Prolog predicate that performs the service call, processes the returned information, adds it to the knowledge base, and returns the identifiers of the detected object instances. This predicate is implemented in prolog/perception_tutorial.pl. In contrast to topic-based example above, which performed most processing in Java, this example shows how more of the processing can be done in Prolog:
  
-<code>+<code prolog>
 comp_object_detection(ObjInst, _ObjClass) :- comp_object_detection(ObjInst, _ObjClass) :-
  
   % Call the DetectObject service for retrieving a new object detection.   % Call the DetectObject service for retrieving a new object detection.
   % The method returns a reference to the Java ObjectDetection message object   % The method returns a reference to the Java ObjectDetection message object
-  jpl_call('edu.tum.cs.ias.knowrob.tutorial.DummyClient', 'callObjDetectionService', [], ObjectDetection),+  jpl_new('org.knowrob.tutorials.DummyClient', [], Client), 
 +  jpl_list_to_array(['org.knowrob.tutorials.DummyClient']Arr), 
 +  jpl_call('org.knowrob.utils.ros.RosUtilities', runRosjavaNode, [Client, Arr], _),
  
- +  jpl_call(Client, 'callObjDetectionService', [], ObjectDetection),
-  % Read information from the ObjectDetection object+
  
   % Read type -> simple string; combine with KnowRob namespace   % Read type -> simple string; combine with KnowRob namespace
-  jpl_get(ObjectDetection, 'type', T), +  jpl_call(ObjectDetection, 'getType', [], T), 
-  atom_concat('http://ias.cs.tum.edu/kb/knowrob.owl#', T, Type), +  atom_concat('http://knowrob.org/kb/knowrob.owl#', T, Type),
- +
- +
-  % Read pose -> convert from quaternion to pose list +
-  jpl_get(ObjectDetection, 'pose', PoseStamped), +
-  jpl_get(PoseStamped, 'pose', PoseQuat),+
  
-  jpl_call('edu.tum.cs.ias.knowrob.tutorial.DummyClient', 'quaternionToMatrix', [PoseQuat], PoseMatrix),+  % Convert the pose into a rotation matrix 
 +  jpl_call(ObjectDetection, 'getPose', [], PoseMatrix),
   knowrob_coordinates:matrix4d_to_list(PoseMatrix,PoseList),   knowrob_coordinates:matrix4d_to_list(PoseMatrix,PoseList),
  
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 </code> </code>
  
-The predicate first calls the static ''callObjDetectionService'' method in the ''DummyClient'' class and receives an ''ObjectDetection'' object as result. It then reads its member variables (type, pose) and converts them from a quaternion into a pose matrix and into a Prolog list as row-based matrix representation. In the end, it calls the same ''create_object_perception'' predicate that was also used in the previous example.+The predicate first calls the static ''callObjDetectionService'' method in the ''DummyClient'' class and receives an ''ObjectDetection'' object as result. It then reads its member variables (type, pose) and converts them from a quaternion into a pose matrix and into a Prolog list as row-based matrix representation. In the end, it calls the same ''create_object_perception'' predicate that was also used in the previous example. This predicate can be used to manually query the perception service from Prolog (assuming the perception service is running in another terminal):
  
-This predicate can be used to manually query the perception service from Prolog (assuming the perception service is running in another terminal): +<code prolog>
-<code>+
 rosrun rosprolog rosprolog knowrob_perception_tutorial rosrun rosprolog rosprolog knowrob_perception_tutorial
 ?- comp_object_detection(Obj, _). ?- comp_object_detection(Obj, _).
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 </code> </code>
  
-Such a manual query requires that the user is aware of the existence of this service. It also requires adaptation of the query whenever the context changes, e.g. when different or multiple recognition systems are used. We can avoid these problems by wrapping the predicate into a computable; with this definition, the predicate will automatically be called whenever the user asks for an object pose and when the service interface is available. The following OWL code defines a computable Prolog class for the example predicate:+Such a manual query however requires the user to know of the existence of this service. It also requires adaptation of the query whenever the context changes, e.g. when different or multiple recognition systems are used. We can avoid these problems by wrapping the predicate into a //computable//. With this definition, the predicate will automatically be called whenever the user asks for an object pose as long as the service interface is available. The following OWL code defines a computable Prolog class for the example predicate:
  
-<code>+<code xml>
 <computable:PrologClass rdf:about="#computeObjectDetections"> <computable:PrologClass rdf:about="#computeObjectDetections">
     <computable:command rdf:datatype="&xsd;string">comp_object_detection</computable:command>     <computable:command rdf:datatype="&xsd;string">comp_object_detection</computable:command>
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 </code> </code>
  
-Instead of calling the service directly, we can now query for object poses and obtain -- in addition to already known poses from e.g. a semantic map -- the poses generated by our service:+Instead of calling the service directly, we can now query for object poses and obtain the poses generated by our service in addition to other object poses that have already been in the knowledge base, e.g. in a semantic map:
 <code> <code>
 ?- rdfs_instance_of(A, knowrob:'HumanScaleObject'). ?- rdfs_instance_of(A, knowrob:'HumanScaleObject').
-A = 'http://ias.cs.tum.edu/kb/knowrob.owl#TableKnife_vUXiHMJy'.+A = knowrob:'TableKnife_vUXiHMJy'.
 </code> </code>