3 research outputs found

    Resource Management in Grids: Overview and a discussion of a possible approach for an Agent-Based Middleware

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    14 pagesInternational audienceResource management and job scheduling are important research issues in computational grids. When software agents are used as resource managers and brokers in the Grid a number of additional issues and possible approaches materialize. The aim of this chapter is twofold. First, we discuss traditional job scheduling in grids, and when agents are utilized as grid middleware. Second, we use this as a context for discussion of how job scheduling can be done in the agent-based system under development

    Survey on deep learning methods in human action recognition

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    A study on one of the most important issues in a human action recognition task, i.e. how to create proper data representations with a high‐level abstraction from large dimensional noisy video data, is carried out. Most of the recent successful studies in this area are mainly focused on deep learning. Deep learning methods have gained superiority to other approaches in the field of image recognition. In this survey, the authors first investigate the role of deep learning in both image and video processing and recognition. Owing to the variety and plenty of deep learning methods, the authors discuss them in a comparative form. For this purpose, the authors present an analytical framework to classify and to evaluate these methods based on some important functional measures. Furthermore, a categorisation of the state‐of‐the‐art approaches in deep learning for human action recognition is presented. The authors summarise the significantly related works in each approach and discuss their performance
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