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Richard Mann

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2 papers
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2

AAMAS Conference 2017 Conference Paper

Cooperative Set Function Optimization Without Communication or Coordination

  • Gustavo Malkomes
  • Kefu Lu
  • Blakeley Hoffman
  • Roman Garnett
  • Benjamin Moseley
  • Richard Mann

We introduce a new model for cooperative agents that seek to optimize a common goal without communication or coordination. Given a universe of elements V, a set of agents, and a set function f, we ask each agent i to select a subset Si ⊂ V such that the size of Si is constrained (i. e. , |Si| < k). The goal is for the agents to cooperatively choose the sets Si to maximize the function evaluated at the union of these sets, ∪iSi; we seek max f(∪iSi). We assume the agents can neither communicate nor coordinate how they choose their sets. This model arises naturally in many real-world settings such as swarms of surveillance robots and colonies of foraging insects. Even for simple classes of set functions, there are strong lower bounds on the achievable performance of coordinating deterministic agents. We show, surprisingly, that for the fundamental class of submodular set functions, there exists a near-optimal distributed algorithm for this problem that does not require communication. We demonstrate that our algorithm performs nearly as well as recently published algorithms that allow full coordination.

AAAI Conference 2002 Conference Paper

Detection and Classification of Motion Boundaries

  • Richard Mann

We segment the trajectory of a moving object into piecewise smooth motion intervals separated by motion boundaries. Motion boundaries are classified into various types, including starts, stops, pauses, and discontinuous changes of motion due to force impulses. We localize and classify motion boundaries by fitting a mixture of two polynomials near the boundary. Given a classification of motion boundaries, we use naive physical rules to infer a set of changing contact relationships which explain the observed motion. We show segmentation and classification results for several image sequences of a basketball undergoing gravitational and nongravitational motion.