This paper introduces an extension of the target surveillance problem in which the surveillance agent is exposed to an adversarial ballistic threat. The problem is formulated as a mixed observability Markov decision process (MOMDP), which is a factored variant of the partially observable Markov decision process, to account for state and dynamic uncertainties. The control policy resulting from solving the MOMDP aims to optimize the frequency of target observations and minimize exposure to the ballistic threat. The adversary’s behavior is modeled with a level-k policy, which is used to construct the state transition of the MOMDP. The approach is empirically evaluated against a MOMDP adversary and against a human opponent in a target surveilla...
We introduce a Markov-model-based framework for Moving Target Defense (MTD) analysis. The framework ...
Those who defend systems against cyber-attacks can use moving target defense (MTD) to their advantag...
This dissertation presents efficient, on-line, convergent methods to find defense strategies against...
For moving target defense (MTD) to shift advantage away from cyber attackers, we need techniques whi...
One scenario that commonly arises in computer games and military training simulations is predator-pr...
Projecte final de Màster Oficial fet en col.laboració amb Institut de Robàtica i Informàtica Industr...
Abstract. We investigate a multi-agent patrolling problem in large stochastic environments where inf...
Moving target defense (MTD) is a promising strategy for gaining advantage over cyber attackers, but ...
We investigate a multi-agent patrolling problem where information is distributed alongside threats i...
We introduce a Markov-model-based framework for Moving Target Defense (MTD) analysis. The framework...
Partially observable Markov decision processes(POMDPs) provide a modeling framework for a variety of...
Partially observable Markov decision processes (POMDPs) are an attractive representation for represe...
Abstract—We consider surveillance problems to be a set of system-adversary interaction problems in w...
Stackelberg games form the core of a number of tools deployed for computing optimal patrolling strat...
Abstract Defender-Attacker Stackelberg games are the foundations of tools deployed for computing opt...
We introduce a Markov-model-based framework for Moving Target Defense (MTD) analysis. The framework ...
Those who defend systems against cyber-attacks can use moving target defense (MTD) to their advantag...
This dissertation presents efficient, on-line, convergent methods to find defense strategies against...
For moving target defense (MTD) to shift advantage away from cyber attackers, we need techniques whi...
One scenario that commonly arises in computer games and military training simulations is predator-pr...
Projecte final de Màster Oficial fet en col.laboració amb Institut de Robàtica i Informàtica Industr...
Abstract. We investigate a multi-agent patrolling problem in large stochastic environments where inf...
Moving target defense (MTD) is a promising strategy for gaining advantage over cyber attackers, but ...
We investigate a multi-agent patrolling problem where information is distributed alongside threats i...
We introduce a Markov-model-based framework for Moving Target Defense (MTD) analysis. The framework...
Partially observable Markov decision processes(POMDPs) provide a modeling framework for a variety of...
Partially observable Markov decision processes (POMDPs) are an attractive representation for represe...
Abstract—We consider surveillance problems to be a set of system-adversary interaction problems in w...
Stackelberg games form the core of a number of tools deployed for computing optimal patrolling strat...
Abstract Defender-Attacker Stackelberg games are the foundations of tools deployed for computing opt...
We introduce a Markov-model-based framework for Moving Target Defense (MTD) analysis. The framework ...
Those who defend systems against cyber-attacks can use moving target defense (MTD) to their advantag...
This dissertation presents efficient, on-line, convergent methods to find defense strategies against...