D Estrin
Microsoft
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Publication
Featured researches published by D Estrin.
Center for Embedded Network Sensing | 2004
Hanbiao Wang; K. Yao; Gregory J. Pottie; D Estrin
We propose an entropy-based sensor selection heuristic for localization. Given 1) a prior probability distribution of the target location, and 2) the locations and the sensing models of a set of candidate sensors for selection, the heuristic selects an informative sensor such that the fusion of the selected sensor observation with the prior target location distribution would yield on average the greatest or nearly the greatest reduction in the entropy of the target location distribution. The heuristic greedily selects one sensor in each step without retrieving any actual sensor observations. The heuristic is also computationally much simpler than the mutual-information-based approaches. The effectiveness of the heuristic is evaluated using localization simulations in which Gaussian sensing models are assumed for simplicity. The heuristic is more effective when the optimal candidate sensor is more informative.
Archive | 2004
Hanbiao Wang; K. Yao; Gregory Pottie; D Estrin
We propose an entropy-based sensor selection heuristic for localization. Given 1) a prior probability distribution of the target location, and 2) the locations and the sensing models of a set of candidate sensors for selection, the heuristic selects an informative sensor such that the fusion of the selected sensor observation with the prior target location distribution would yield on average the greatest or nearly the greatest reduction in the entropy of the target location distribution. The heuristic greedily selects one sensor in each step without retrieving any actual sensor observations. The heuristic is also computationally much simpler than the mutual-information-based approaches. The effectiveness of the heuristic is evaluated using localization simulations in which Gaussian sensing models are assumed for simplicity. The heuristic is more effective when the optimal candidate sensor is more informative.
Center for Embedded Network Sensing | 2007
August Joki; Jeffrey A Burke; D Estrin
Archive | 2009
Martin Lukac; Igor Stubailo; Richard Guy; Paul M. Davis; Victor Aguilar Puruhuaya; Robert W. Clayton; D Estrin
Center for Embedded Network Sensing | 2004
J. E. Haux; Thomas C. Harmon; Jose Saez; Juyoul Kim; Yeonjeong Park; Naim Busek; T. Schoellhammer; D Estrin
Center for Embedded Network Sensing | 2005
Lewis Girod; Thanos Stathopoulos; Nithya Ramanathan; Martin Lukac; Andrew Parker; Richard Guy; D Estrin
Archive | 2010
Nithya Ramanathan; Martin Lukac; Muvva Venkata Ramana; Praveen Siva; T. Ahmed; Abhishek Kar; I. H. Rehman; V. Ramanathan; D Estrin
Archive | 2007
Omprakash Gnawali; Ki-Young Jang; Jeongyeup Paek; Marcos Augusto M. Vieira; Vinayak S Naik; Karen Chandler; D Estrin; Ramesh Govindan; Eddie Kohler
Center for Embedded Network Sensing | 2007
Jeff Goldman; Nithya Ramanathan; Richard F. Ambrose; David A. Caron; D Estrin; Jason C. Fisher; Robert Gilbert; Mark Hansen; Tom Harmon; Jenny Jay; William J. Kaiser; Gaurav S. Sukhatme; Yu-Chong Tai
Archive | 2006
Sasank Reddy; Th. Schmid; Andrew J. Parker; Jake Porway; Guan Yow Chen; August Joki; Jeff Burke; Mark Hansen; D Estrin; Mani Srivastava