Sampling of physical fields with mobile sensor is an emerging area. In this context, this work introduces and addresses some aspects of a fundamental question: can a spatial field be estimated from samples taken at unknown sampling locations? In a field (signal) sampling setup, unknown sampling locations, sample quantization, unknown bandwidth of the field, and presence of measurement-noise present difficulties in the process of field estimation. In this work, except for quantization, the other three issues will be tackled together in a mobile-sampling framework. Spatially bandlimited fields are considered. It is assumed that measurement-noise affected field samples are collected on spatial locations obtained from an unknown renewal process...
This dissertation addresses the near-optimal deployment problem of robot-sensory nodes in a spatiote...
Environmental monitoring is often performed through wireless sensor networks, by randomly deploying ...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...
In remote sensing with a large array of spatially distributed sensors, localization of individual se...
Abstract—Spatial sampling is traditionally studied in a static setting where static sensors scattere...
Classical sampling theory for sampling and reconstructing bandlimited fields in $\Re^d$ addresses th...
Abstract—Classical sampling theory for sampling and re-constructing bandlimited fields in Rd address...
In this paper, we address the problem of the estimation of a spatial field defined over a two-dimens...
Today's wireless sensor nodes can be easily attached to mobile platforms such as robots, cars and ce...
Abstract—We study the design of sampling trajectories for stable sampling and reconstruction of band...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2014.Ca...
This paper presents an adaptive sparse sampling approach and the corresponding real-time scalar fiel...
We consider an environmental monitoring application where a scalar field (e.g., atmospheric pressur...
Wireless sensor networks (WSNs) play a vital role in environmental monitoring. Advances in mobile se...
Abstract. We study the design of sampling trajectories for stable sampling and the re-construction o...
This dissertation addresses the near-optimal deployment problem of robot-sensory nodes in a spatiote...
Environmental monitoring is often performed through wireless sensor networks, by randomly deploying ...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...
In remote sensing with a large array of spatially distributed sensors, localization of individual se...
Abstract—Spatial sampling is traditionally studied in a static setting where static sensors scattere...
Classical sampling theory for sampling and reconstructing bandlimited fields in $\Re^d$ addresses th...
Abstract—Classical sampling theory for sampling and re-constructing bandlimited fields in Rd address...
In this paper, we address the problem of the estimation of a spatial field defined over a two-dimens...
Today's wireless sensor nodes can be easily attached to mobile platforms such as robots, cars and ce...
Abstract—We study the design of sampling trajectories for stable sampling and reconstruction of band...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Mechanical Engineering, 2014.Ca...
This paper presents an adaptive sparse sampling approach and the corresponding real-time scalar fiel...
We consider an environmental monitoring application where a scalar field (e.g., atmospheric pressur...
Wireless sensor networks (WSNs) play a vital role in environmental monitoring. Advances in mobile se...
Abstract. We study the design of sampling trajectories for stable sampling and the re-construction o...
This dissertation addresses the near-optimal deployment problem of robot-sensory nodes in a spatiote...
Environmental monitoring is often performed through wireless sensor networks, by randomly deploying ...
When a scalar field, such as temperature, is to be estimated from sensor readings corrupted by noise...