Calibration is the process of mapping raw sensor readings into corrected values by identifying and correcting systematic bias. Calibration is important from both off-line and on-line perspectives. Major objectives of calibration procedure include accuracy, resiliency against random errors, ability to be applied in various scenarios, and to address a variety of error models. In addition, a compact mapping function is attractive in terms of both storage and robustness. We start by introducing the nonparametric statistical approach for conducting off-line calibration. After that, we present the non-parametric statistical percentile method for establishing the confidence interval for a particular mapping function. Furthermore, we propose the fi...
Numerous factors contribute to errors in sensor measure- ments. In order to be useful, any sensor de...
The problem of fitting models to measured data has been studied extensively, not least in the field ...
This paper considers the problem of blindly calibrating sen-sor response using routine sensor networ...
Calibration is the process of identifying and correcting for the systematic bias component of the e...
Sensor-based measurements are intrinsically prone to errors. One can distinguish two types of errors...
In this paper we present a new approach to calibrate sensors in sensor networks in an uncontrolled e...
Systematic biases in sensor measurements undermine the performance of wireless sensor networks in mi...
Wireless sensor networks are typically composed of low-cost sensors that are deeply integrated in ph...
International audienceThe drastically increasing availability of low-cost sensors for environmental ...
The use of sensors is ubiquitous in our IT-based society; smartphones, consumer electronics, wearabl...
Frequent sensor calibration is essential in sensor networks with low-cost sensors. We exploit the fa...
Calibration costs still limit the mass deployment of smart systems based on low-cost chemical sensor...
This chapter considers the problem of blindly calibrating sensor response using routine sensor netwo...
Abstract. Numerous factors contribute to errors in sensor measurements. In order to be useful, any s...
of the Thesis University of California, Los Angeles, 2003 Professor Deborah Estrin, Chair Num...
Numerous factors contribute to errors in sensor measure- ments. In order to be useful, any sensor de...
The problem of fitting models to measured data has been studied extensively, not least in the field ...
This paper considers the problem of blindly calibrating sen-sor response using routine sensor networ...
Calibration is the process of identifying and correcting for the systematic bias component of the e...
Sensor-based measurements are intrinsically prone to errors. One can distinguish two types of errors...
In this paper we present a new approach to calibrate sensors in sensor networks in an uncontrolled e...
Systematic biases in sensor measurements undermine the performance of wireless sensor networks in mi...
Wireless sensor networks are typically composed of low-cost sensors that are deeply integrated in ph...
International audienceThe drastically increasing availability of low-cost sensors for environmental ...
The use of sensors is ubiquitous in our IT-based society; smartphones, consumer electronics, wearabl...
Frequent sensor calibration is essential in sensor networks with low-cost sensors. We exploit the fa...
Calibration costs still limit the mass deployment of smart systems based on low-cost chemical sensor...
This chapter considers the problem of blindly calibrating sensor response using routine sensor netwo...
Abstract. Numerous factors contribute to errors in sensor measurements. In order to be useful, any s...
of the Thesis University of California, Los Angeles, 2003 Professor Deborah Estrin, Chair Num...
Numerous factors contribute to errors in sensor measure- ments. In order to be useful, any sensor de...
The problem of fitting models to measured data has been studied extensively, not least in the field ...
This paper considers the problem of blindly calibrating sen-sor response using routine sensor networ...