Exploiting Submodular Value Functions for Faster Dynamic Sensor Selection: Extended Version
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| Publication date | 2014 |
| Series | IAS technical reports, IAS-UVA-14-02 |
| Number of pages | 18 |
| Publisher | Amsterdam: University of Amsterdam |
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| Abstract |
A key challenge in the design of multi-sensor systems is the ecient allocation of scarce resources such as bandwidth, CPU cycles, and energy, leading to the dynamic sensor selection problem in which a subset of the available sensors must be selected at each timestep. While partially observable Markov decision processes (POMDPs) provide a natural decision-theoretic model for this problem,
the computational cost of POMDP planning grows exponentially in the number of sensors, making it feasible only for small problems. We propose a new POMDP planning method that uses greedy maximization to greatly improve scalability in the number of sensors. We show that, under certain conditions, the value function of a dynamic sensor selection POMDP is submodular and use this result to bound the error introduced by performing greedy maximization. Experimental results on a real-world dataset from a multi-camera tracking system in a shopping mall show it achieves similar performance to existing methods but incurs only a fraction of the computational cost, leading to much better scalability in the number of cameras. This paper is an extended version of [Satsangi et al., 2015] including all the proofs and further experimental details that were omitted in the shorter version. |
| Document type | Report |
| Language | English |
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