Tracking Objects with Networked Scattered Directional Sensors

We study the problem of object tracking using highly directional sensors—sensors whose field of vision is a line or a line segment. A network of such sensors monitors a certain region of the plane. Sporadically, objects moving in straight lines and at a constant speed cross the region. A sensor...

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Main Authors: P. R. Kumar, Kurt Plarre
Format: Article
Language:English
Published: SpringerOpen 2007-12-01
Series:EURASIP Journal on Advances in Signal Processing
Online Access:http://dx.doi.org/10.1155/2008/360912
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spelling doaj-24b5e4be2dec4462b8048a994cc694062020-11-24T21:56:12ZengSpringerOpenEURASIP Journal on Advances in Signal Processing1687-61722007-12-01200810.1155/2008/360912Tracking Objects with Networked Scattered Directional SensorsP. R. KumarKurt PlarreWe study the problem of object tracking using highly directional sensors—sensors whose field of vision is a line or a line segment. A network of such sensors monitors a certain region of the plane. Sporadically, objects moving in straight lines and at a constant speed cross the region. A sensor detects an object when it crosses its line of sight, and records the time of the detection. No distance or angle measurements are available. The task of the sensors is to estimate the directions and speeds of the objects, and the sensor lines, which are unknown a priori. This estimation problem involves the minimization of a highly nonconvex cost function. To overcome this difficulty, we introduce an algorithm, which we call “adaptive basis algorithm.†This algorithm is divided into three phases: in the first phase, the algorithm is initialized using data from six sensors and four objects; in the second phase, the estimates are updated as data from more sensors and objects are incorporated. The third phase is an optional coordinated transformation. The estimation is done in an “ad-hoc†coordinate system, which we call “adaptive coordinate system.†When more information is available, for example, the location of six sensors, the estimates can be transformed to the “real-world†coordinate system. This constitutes the third phase.http://dx.doi.org/10.1155/2008/360912
collection DOAJ
language English
format Article
sources DOAJ
author P. R. Kumar
Kurt Plarre
spellingShingle P. R. Kumar
Kurt Plarre
Tracking Objects with Networked Scattered Directional Sensors
EURASIP Journal on Advances in Signal Processing
author_facet P. R. Kumar
Kurt Plarre
author_sort P. R. Kumar
title Tracking Objects with Networked Scattered Directional Sensors
title_short Tracking Objects with Networked Scattered Directional Sensors
title_full Tracking Objects with Networked Scattered Directional Sensors
title_fullStr Tracking Objects with Networked Scattered Directional Sensors
title_full_unstemmed Tracking Objects with Networked Scattered Directional Sensors
title_sort tracking objects with networked scattered directional sensors
publisher SpringerOpen
series EURASIP Journal on Advances in Signal Processing
issn 1687-6172
publishDate 2007-12-01
description We study the problem of object tracking using highly directional sensors—sensors whose field of vision is a line or a line segment. A network of such sensors monitors a certain region of the plane. Sporadically, objects moving in straight lines and at a constant speed cross the region. A sensor detects an object when it crosses its line of sight, and records the time of the detection. No distance or angle measurements are available. The task of the sensors is to estimate the directions and speeds of the objects, and the sensor lines, which are unknown a priori. This estimation problem involves the minimization of a highly nonconvex cost function. To overcome this difficulty, we introduce an algorithm, which we call “adaptive basis algorithm.†This algorithm is divided into three phases: in the first phase, the algorithm is initialized using data from six sensors and four objects; in the second phase, the estimates are updated as data from more sensors and objects are incorporated. The third phase is an optional coordinated transformation. The estimation is done in an “ad-hoc†coordinate system, which we call “adaptive coordinate system.†When more information is available, for example, the location of six sensors, the estimates can be transformed to the “real-world†coordinate system. This constitutes the third phase.
url http://dx.doi.org/10.1155/2008/360912
work_keys_str_mv AT prkumar trackingobjectswithnetworkedscattereddirectionalsensors
AT kurtplarre trackingobjectswithnetworkedscattereddirectionalsensors
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