Passive acoustic detection, tracking and classification system and method
원문보기
IPC분류정보
국가/구분
United States(US) Patent
등록
국제특허분류(IPC7판)
G01S-003/80
G01S-003/802
출원번호
US-0209548
(2014-03-13)
등록번호
US-9651649
(2017-05-16)
발명자
/ 주소
Salloum, Hady
Sedunov, Alexander
Sedunov, Nikolay
Sutin, Alexander
출원인 / 주소
The Trustees of the Stevens Institute of Technology
대리인 / 주소
Greenberg Traurig, LLP
인용정보
피인용 횟수 :
3인용 특허 :
35
초록▼
An acoustic sensing system and method includes at least one cluster of acoustic sensors in communication with a computing device. The computing device is configured to process received acoustic signals, and provide at least one of detection of the acoustic source presence; determination of direction
An acoustic sensing system and method includes at least one cluster of acoustic sensors in communication with a computing device. The computing device is configured to process received acoustic signals, and provide at least one of detection of the acoustic source presence; determination of direction of arrival of an acoustic wave emitted by an acoustic source; and classification of the acoustic source as to its nature. The cluster may include at least two sensors and the computing device may be configured to process the received acoustic signals and provide localization of the acoustic source in three dimensions. The cluster of acoustic sensors may comprise at least one seismic wave sensor.
대표청구항▼
1. A passive acoustic sensing system comprising at least one cluster of at least four acoustic sensors having a data connection with a computing device, the at least one cluster of at least four acoustic sensors arranged in a polyhedral arrangement with at least one of the acoustic sensors of the cl
1. A passive acoustic sensing system comprising at least one cluster of at least four acoustic sensors having a data connection with a computing device, the at least one cluster of at least four acoustic sensors arranged in a polyhedral arrangement with at least one of the acoustic sensors of the cluster at each vertex of the polyhedral arrangement and at least one of the acoustic sensors of the cluster being an upper acoustic sensor that is at a position above a plane described by at least three other acoustic sensors of the cluster, each acoustic sensor of the cluster of acoustic sensors being configured to receive acoustical signals generated by at least one target and propagating from the at least one target to the at least one cluster of at least four acoustic sensors through air, the computing device configured to receive the acoustical signals from the at least one cluster of at least four acoustic sensors via the data connection and to process the acoustical signals and provide at least one of (a) a detection of presence of the at least one target, (b) a determination of direction of arrival of an acoustic wave emitted by the at least one target, and (c) a classification of the at least one target, wherein the at least one cluster of at least four acoustic sensors includes a minimal subset of sensors selected by an algorithm running on the computing device to provide an estimate of the direction of arrival of the acoustic wave such that the estimate has the lowest uncertainty corresponding to the minimal subset of sensors, based on geometry of the sensor arrangement in the minimal subset. 2. The passive acoustic sensing system of claim 1, further comprising at least one other cluster of at least four acoustic sensors, the at least one other cluster of at least four acoustic sensors arranged in another polyhedral arrangement with at least one of the acoustic sensors of the cluster at each vertex of the another polyhedral arrangement and at least one of the acoustic sensors of the at least one other cluster being another upper acoustic sensor that is at a position above a plane described by three other acoustic sensors of the at least one other cluster of at least four acoustic sensors, each acoustic sensor of the at least one other cluster of at least four acoustic sensors being configured to receive acoustical signals generated by the at least one target and propagating from the at least one target to the at least one other cluster of at least four acoustic sensors through air, wherein the computing device is configured to process the acoustical signals received from the at least one cluster of at least four acoustic sensors and the at least one other cluster of at least four acoustic sensors and provide localization of the at least one target. 3. The passive acoustic sensing system of claim 1, further including at least one seismic wave sensor configured to receive signals propagated through the ground. 4. The passive acoustic sensing system of claim 2, further including at least one pair of seismic wave sensors configured to receive signals propagated through the ground. 5. The passive acoustic sensing system of claim 3, wherein the cluster of at least four acoustic sensors includes a plurality of interfaced sensor elements. 6. The passive acoustic sensing system of claim 4, wherein the at least one pair of seismic wave sensors includes a plurality of interfaced sensor elements. 7. The passive acoustic sensing system of claim 1, wherein the computing device is further configured to extract and track at least one tonal component in a spectrum of a signal acquired by at least one acoustic sensor of the at least one cluster of at least four acoustic sensors, and to provide target presence detection based upon the at least one tonal component. 8. The passive acoustic sensing system of claim 2, wherein the computing device is further configured to extract and track at least one narrow band component in a spectrum of a signal acquired by at least one acoustic sensor of the at least one cluster of at least four acoustic sensors and/or at least one acoustic sensor of the at least one other cluster of at least four acoustic sensors, and to provide target presence detection based upon at least one narrow band component. 9. The passive acoustic sensing system of claim 1, wherein the computing device is further configured to extract and track at least one tonal component in a spectrum of a signal acquired by at least one acoustic sensor of the at least one cluster of at least four acoustic sensors, and provide target classification based upon the at least one tonal component. 10. The passive acoustic sensing system of claim 2, wherein the computing device is further configured to extract and track at least one tonal component in the spectrum of signal acquired by at least one acoustic sensor of the at least one cluster of at least four acoustic sensors and/or at least one acoustic sensor of the at least one other cluster of at least four acoustic sensors, and provide target classification based upon at least one tonal component. 11. The passive acoustic sensing system of claim 3, wherein the computing device is configured to fuse the signals received from the at least one seismic detector with the signals received from the at least one cluster of at least four acoustic sensors. 12. The passive acoustic sensing system of claim 4, wherein the computing device is configured to fuse the signals received from the at least one pair of seismic detectors with the signals received from the at least one cluster of at least four acoustic sensors and the at least one other cluster of at least four acoustic sensors. 13. The passive acoustic sensing system of claim 1, wherein the computing device is further configured to process the acoustical signals received by the upper acoustic sensor and at least one of the three other acoustic sensors of the cluster of at least four acoustic sensors and provide an estimate of the elevation of the at least one target. 14. The passive acoustic sensing system of claim 1, wherein the at least one target is a known type of target, and wherein the computing device is configured to (i) select multiple reference sets of target metrics, each reference set associated with a known type of target, each reference set including a reference set of local maximum amplitudes associated with a duration of time, each metric having a respective value, (ii) obtain samples of a power spectrum of a signal received from the at least one cluster of acoustic sensors, each sample obtained over a respective period of time, (iii) identify a set of local maximum amplitudes of the samples of the power spectrum of the signal, (iv) associate the set of local maximum amplitudes with the periods of times over which the samples having the local maximums were collected, (iv) create a set of signal metrics associated with the received signal from the set of local maximum amplitudes of the power spectrum and the periods of time associated with the set of local maximum amplitudes, each signal metric corresponding to one of the target metrics, each signal metric having a respective value, and (v) compare the respective values of the set of signal metrics associated with the received signal with the values of the target metrics in the multiple reference sets of target metrics associated with known types of targets, thereby identifying the reference set of target metrics having values that most closely match the values of the set of signal metrics associated with the received signal, whereby the at least one target is detected. 15. The passive acoustic sensing system of claim 1, wherein the computing device is configured to (i) associate the acoustic sensors in the cluster into sensor pairs, (ii) receive and process the signals from each sensor pair using a time-difference-of-arrival method to produce an estimated time delay for arrival of an acoustic wave emitted by the at least one target for each of the sensor pairs, each estimated time delay having an uncertainty associated with it, (iii) identify the estimated time delay having the lowest uncertainty associated with it, (iv) select the subset of sensor pairs for which the identified estimated time delay was produced, (v) make an initial estimate of the directional location of the acoustic source from the signals received from the selected subset of sensor pairs, (vi) improve the initial estimate using estimated time delays and estimated directional location of the acoustic source associated with adjacent sensor pairs, thereby obtaining estimates of the azimuth and elevation angle of the of the acoustic source, and (vii) determining the direction of arrival of an acoustic wave from the at least one target from the estimates of the azimuth and elevational angle. 16. The passive acoustic sensing system of claim 15, wherein the computing device is further configured to select a sensor pair including the upper acoustic sensor as a member pair of the subset of sensor pairs.
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