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LRAP: A Learned Reflex Action Embedded Associative Context Learning based Processing Efficient Paradigm in Visual Sensor Networks

Published: 01 July 2019 Publication History

Abstract

In contemporary context aware systems when an event is triggered, system responds through sense-decide-actuate cycle and carries out requisite task with corresponding processing expenditure. However, such systems are lacking the capability to establish learned association among subsequent events, furthermore, the notion of the context is embedded into applications that may pose certain processing overhead. Therefore, each event is considered as arrival of afresh situation and dealt with entirely replicated processing cycle. Such computing mechanism where each event is stimulus to complete resource utilization leads the system towards processing overwhelming. This research work proposes a LRAP: a Learned Reflex action embedded Associative context learning based processing efficient Paradigm in visual sensor networks. In which each actuation of the system serves as new context to succeeding event and aids it to evolve internally. Gradually, with exposition to multiple events system refines its context repository with introspective context extracted through processed retrospective context that serves as meta-context to upcoming events leading the system towards evolution of context addition. Such context learning through improved introspective context utilization maximizes the system internal actuation that further optimizes the independent functions of reduced sensing and improved decision with minimal resource exploitation evolving it as a cut-through processing mechanism. Furthermore, when system gains the maximum internal actuation it responds impulsively against repetition of an event through intro-spectively evolved actuation based associative learning that imitates learned reflex action through associative context learning leading the system towards exceedingly processing efficient paradigm.

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  • (2023)A conditioned reflex action embedded associative context learning‐based energy efficient paradigm in smart city milieuIET Wireless Sensor Systems10.1049/wss2.1206413:4(151-162)Online publication date: 11-Jul-2023

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  1. LRAP: A Learned Reflex Action Embedded Associative Context Learning based Processing Efficient Paradigm in Visual Sensor Networks

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    ICFNDS '19: Proceedings of the 3rd International Conference on Future Networks and Distributed Systems
    July 2019
    346 pages
    ISBN:9781450371636
    DOI:10.1145/3341325
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    Published: 01 July 2019

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    Author Tags

    1. context addition
    2. context awareness
    3. introspective actuation
    4. processing efficient
    5. reflex action

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    • (2023)A conditioned reflex action embedded associative context learning‐based energy efficient paradigm in smart city milieuIET Wireless Sensor Systems10.1049/wss2.1206413:4(151-162)Online publication date: 11-Jul-2023

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