Humanoid Robotics Laboratory
Humanoid Robotics Laboratory
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ItemThe Motion Grammar: Analysis of a Linguistic Method for Robot Control(Georgia Institute of Technology, 2013-06) Dantam, Neil ; Stilman, MikeWe present the Motion Grammar: an approach to represent and verify robot control policies based on Context-Free Grammars. The production rules of the grammar represent a top-down task decomposition of robot behavior. The terminal symbols of this language represent sensor readings that are parsed in real-time. Efficient algorithms for context-free parsing guarantee that online parsing is computationally tractable. We analyze verification properties and language constraints of this linguistic modeling approach, show a linguistic basis that unifies several existing methods, and demonstrate effectiveness through experiments on a 14-DOF manipulator interacting with 32 objects (chess pieces) and an unpredictable human adversary. We provide many of the algorithms discussed as Open Source, permissively licensed software. ¹
ItemMulti-Process Control Software for HUBO2 Plus Robot(Georgia Institute of Technology, 2013-04) Grey, M .X. ; Dantam, Neil ; Lofaro, Daniel M. ; Bobick, Aaron F. ; Egerstedt, Magnus B. ; Oh, Paul ; Stilman, MikeHumanoid robots require greater software reliability than traditional mechantronic systems if they are to perform useful tasks in typical human-oriented environments. This paper covers a software architecture which distributes the load of computation and control tasks over multiple processes, enabling fail-safes within the software. These fail-safes ensure that unexpected crashes or latency do not produce damaging behavior in the robot. The distribution also offers benefits for future software development by making the architecture modular and extensible. Utilizing a low-latency inter-process communication protocol (Ach), processes are able to communicate with high control frequencies. The key motivation of this software architecture is to provide a practical framework for safe and reliable humanoid robot software development. The authors test and verify this framework on a HUBO2 Plus humanoid robot.
ItemRobust and Efficient Communication for Real-Time Multi-Process Robot Software(Georgia Institute of Technology, 2012-11) Dantam, Neil ; Stilman, MikeWe present a new Interprocess Communication (IPC) mechanism and library. Ach is uniquely suited for coordinating drivers, controllers, and algorithms in complex robotic systems such as humanoid robots. Ach eliminates the Head-of-Line Blocking problem for applications that always require access to the newest message. Ach is efficient, robust, and formally verified. It has been tested and demonstrated on a variety of physical robotic systems, and we discuss the implementation on our humanoid robot Golem Krang. Finally, the source code for Ach is available under an Open Source permissive license.
ItemLinguistic Transfer of Human Assembly Tasks to Robots(Georgia Institute of Technology, 2012-10) Dantam, Neil ; Essa, Irfan ; Stilman, MikeWe demonstrate the automatic transfer of an assembly task from human to robot. This work extends efforts showing the utility of linguistic models in verifiable robot control policies by now performing real visual analysis of human demonstrations to automatically extract a policy for the task. This method tokenizes each human demonstration into a sequence of object connection symbols, then transforms the set of sequences from all demonstrations into an automaton, which represents the task-language for assembling a desired object. Finally, we combine this assembly automaton with a kinematic model of a robot arm to reproduce the demonstrated task.
ItemLinguistic Composition of Semantic Maps and Hybrid Controllers(Georgia Institute of Technology, 2012-06) Dantam, Neil ; Nieto-Granda, Carlos ; Christensen, Henrik I. ; Stilman, MikeThis work combines semantic maps with hybrid control models, generating a direct link between action and environment models to produce a control policy for mobile manipulation in unstructured environments. First, we generate a semantic map for our environment and design a base model of robot action. Then, we combine this map and action model using the Motion Grammar Calculus to produce a combined robot-environment model. Using this combined model, we apply supervisory control to produce a policy for the manipulation task. We demonstrate this approach on a Segway RMP-200 mobile platform.