scholarly journals Full body tracking using an agent-based architecture

Author(s):  
Bing Fang ◽  
Liguang Xie ◽  
Pak-Kiu Chung ◽  
Yong Cao ◽  
Francis Quek
Keyword(s):  
2008 ◽  
Vol 34 (12) ◽  
pp. 718-726 ◽  
Author(s):  
C. Colombo ◽  
A. Del Bimbo ◽  
A. Valli

2019 ◽  
Vol 87 ◽  
pp. 189-196 ◽  
Author(s):  
Maria do Carmo Vilas-Boas ◽  
Hugo Miguel Pereira Choupina ◽  
Ana Patrícia Rocha ◽  
José Maria Fernandes ◽  
João Paulo Silva Cunha

2008 ◽  
Vol 14 (3) ◽  
pp. 375-386 ◽  
Author(s):  
George Kampis ◽  
László Gulyás

This is a position paper on phenotype-based evolution modeling. It argues that evolutionary complexity is essentially a functional kind of complexity, and for it to evolve, a full body, or, in other words, a dynamically defined, deeply structured, and plasticity-bound phenotype is required. In approaching this subject, we ask and answer some key questions, which we think are interrelated. The questions we discuss and the answers we propose are: (a) How should complexity growth be measured or operationalized in natural and artificial systems? Evolutionary complexity is akin to that of machines, and to operationalize it, we need to study how machinelike organismic functions work and develop. Inspired by studies on causality, we propose the notion of mechanism. A mechanism is a simplified causal system that carries out a function. A growth of functional complexity involves interconversions between a deep (or unused) process and that of a mechanism. (b) Are the principles of natural selection, as they are currently understood, sufficient to explain the evolution of complexity? Our answer is strongly negative. Natural selection helps adapting mechanisms to carry out a given task, but will not generate a task. Hence there is a tradeoff between available tasks and mechanisms fulfilling them. To escape, we argue that competition avoidance is required for new complexity to emerge. (c) What are the environmental constraints on complexity growth in living systems? We think these constraints arise from the structure of the coevolving ecological system, and the basic frames are given by the niche structure. We consider the recently popular idea of niche construction and relate it to the plasticity of the phenotype. We derive a form of phenotype plasticity from the hidden (unused) and explicit (functional) factors discussed in the causality part. (d) What are the main hypotheses about complexity growth that can actually be tested? We hypothesize that a rich natural phenotype that supports causality-function conversions is a necessary ingredient of complexity growth. We review our work on the FATINT system, which incorporates similar ideas in a computer simulation, and shows that full-body phenotypes are sufficient for achieving functional evolution. (e) What language is most appropriate for speaking about the evolution of complexity in living systems? FATINT is developed using advanced agent-based modeling techniques, and we discuss the general relevance of this methodology for understanding and simulating the phenomena discussed.


2015 ◽  
Vol 15 (04) ◽  
pp. 1550016
Author(s):  
Chao Peng ◽  
Bing Fang ◽  
Francis Quek ◽  
Yong Cao ◽  
Seung In Park ◽  
...  

In this paper, we present an upper human body tracking system with agent-based architecture. Our agent-based approach departs from process-centric model where the agents are bound to specific processes, and introduces a novel model by which agents are bound to the objects or sub-objects being recognized or tracked. To demonstrate the effectiveness of our system, we use stereo video streams, which are captured by calibrated stereo cameras, as inputs and synthesize human animations which are represented by 3D skeletal motion data. Different from our previous researches, the new system does not require a restricted capture environment with special lighting condition and projected patterns and subjects can wear daily clothes (we do NOT use any markers). With the success from the previous researches, our pre-designed agents are autonomous, self-aware entities that are capable of communicating with other agents to perform tracking within agent coalitions. Each agent with high-level abstracted knowledge seeks 'evidence' for its existence from both low-level features (e.g. motion vector fields, color blobs) as well as from its peers (other agents representing body-parts with which it is compatible). The power of the agent-based approach is the flexibility by which domain information may be encoded within each agent to produce an overall tracking solution.


Author(s):  
Amit Bleiweiss ◽  
Dagan Eshar ◽  
Gershom Kutliroff ◽  
Alon Lerner ◽  
Yinon Oshrat ◽  
...  

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