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Decentralized multi-agent entropy-driven exploration under sparsity constraints

机译:稀疏限制下分散的多档熵驱动探索

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This paper proposes a new algorithm, which uses the second order information of a Least Absolute Shrinkage and Selection Operator (LASSO) to achieve an active sensing approach driven by minimizing the entropy of sparse unknown environments, for the multi agent case. For this, a signal model, which restricts the agent's measurements according to its sensor's view, is introduced into the Distributed LASSO (DLASSO) framework. With the help of Compressed Sensing (CS), the DLASSO is able to estimate the environment with less measurements. After the DLASSO converged to a solution, each agent evaluates the proposed algorithm for choosing new measurement locations.
机译:本文提出了一种新的算法,它使用最小绝对收缩和选择运算符(套索)的二阶信息来实现通过最小化稀疏未知环境的熵驱动的主动感测方法,用于多代理案例。为此,将根据其传感器视图限制代理的测量的信号模型被引入分布式套索(DLasso)框架中。在压缩传感(CS)的帮助下,DLASSO能够估计较少的测量值。在DLASSO融合到解决方案之后,每个代理评估所提出的算法来选择新的测量位置。

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