Drone detection and classification methods and apparatus
원문보기
IPC분류정보
국가/구분
United States(US) Patent
등록
국제특허분류(IPC7판)
G08G-001/04
G10L-025/51
G10L-019/00
G01S-003/80
G10L-025/18
G10L-025/54
H04R-029/00
G01S-005/18
G01H-001/00
출원번호
US-0950864
(2015-11-24)
등록번호
US-9858947
(2018-01-02)
발명자
/ 주소
Hearing, Brian
Franklin, John
출원인 / 주소
Droneshield, LLC
대리인 / 주소
K&L Gates LLP
인용정보
피인용 횟수 :
0인용 특허 :
12
초록▼
A system, method, and apparatus for drone detection and classification are disclosed. An example method includes receiving a sound signal in a microphone and recording, via a sound card, a digital sound sample of the sound signal, the digital sound sample having a predetermined duration. The method
A system, method, and apparatus for drone detection and classification are disclosed. An example method includes receiving a sound signal in a microphone and recording, via a sound card, a digital sound sample of the sound signal, the digital sound sample having a predetermined duration. The method also includes processing, via a processor, the digital sound sample into a feature frequency spectrum. The method further includes applying, via the processor, broad spectrum matching to compare the feature frequency spectrum to at least one drone sound signature stored in a database, the at least one drone sound signature corresponding to a flight characteristic of a drone model. The method moreover includes, conditioned on matching the feature frequency spectrum to one of the drone sound signatures, transmitting, via the processor, an alert.
대표청구항▼
1. A system for detecting a drone comprising: a microphone configured to receive a sound signal;a sound card configured to record a digital sound sample of the sound signal;a sample processor configured to: partition the digital sound sample into a predetermined number of segments,convert each of th
1. A system for detecting a drone comprising: a microphone configured to receive a sound signal;a sound card configured to record a digital sound sample of the sound signal;a sample processor configured to: partition the digital sound sample into a predetermined number of segments,convert each of the segments into a vector of frequency amplitudes by applying a frequency domain transformation to the segments,form a composite frequency vector by averaging the vectors,determine whether a drone component exists within the composite frequency vector by comparing the composite frequency vector to a database of known drone signatures,determine a drone detection of the drone if the drone component exists within the composite frequency vector,determine at least one of a distance and a heading related to the drone detection using at least one of the digital sound sample and the drone component of the composite frequency vector, andtransmit a message indicative of the drone detection including the at least one of the distance and the heading; anda server communicatively coupled to the sample processor and configured to: receive the message indicative of the drone detection; anddisplay within a user interface a graphical representation of the drone detection including the at least one of the distance and heading of the drone. 2. The apparatus of claim 1, wherein the server is configured to: receive a sequence of messages, subsequent to the message, from the sample processor indicative at the drone detection over time;determine an estimated flight path of the drone, in relation to a known location of the sample processor, based on the at least one of the distance and the heading within the message and the sequence of messages from the sample processor; anddisplay a graphical representation of the estimated flight path within the user interface. 3. The apparatus of claim 1, wherein the graphical representation of the estimated flight path includes at least one of a map and a picture of a building overlaid with a line depicting the estimated flight path. 4. The apparatus of claim 1, wherein the server is configured to: receive a sequence of messages, subsequent to the message, from the sample processor indicative of the drone detection over time; anddetermine a duration of time in which the drone was within a vicinity of the sample processor, based on the message and the sequence of messages from the sample processor. 5. The apparatus of claim 1, wherein the determined drone component related to the drone detection is associated with at least one of a drone type and a flight characteristic, and wherein the message indicative of the drone detection includes the at least one at the drone type and the flight characteristic. 6. The apparatus of claim 5, wherein the server is configured, to: receive a sequence of messages, subsequent to the message, from the sample processor indicative of the drone detection over time;determine an estimated flight path of the drone, in relation to a known location of the sample processor, based on the flight characteristic within the message and the sequence of messages from the sample processor; anddisplay a graphical representation of the estimated flight path within the user interface. 7. The apparatus of claim 6, wherein the flight characteristic includes at least one of retreating, advancing, sideways translating, rotating, hovering, inverting, ascending and descending. 8. The apparatus of claim 5, wherein the server is configured to display a graphical representation of the drone type within the user interface. 9. The apparatus of claim 1, wherein the sample processor is configured to determine the distance related, to the drone detection by: determining a voltage amplitude of at least one of the digital sound sample and the drone component of the composite frequency vector; andestimating the distance from the voltage amplitude. 10. The apparatus of claim 1, wherein the sample processor is configured to determine the heading related to the drone detection by: preforming Doppler processing of at least one of the digital sound sample and the drone component of the composite frequency vector; andestimating the heading from the Doppler processing. 11. A method for detecting a drone comprising: (i) receiving, in a microphone, a sound signal;(ii) recording, via a sound card, a digital sound sample of the sound signal;(iii) partitioning, via a processor, the digital sound sample into a predetermined number of segments;(iv) converting, via the processor, each of the segments into a vector of frequency amplitudes by applying a frequency domain transformation to the segments;(v) forming, via the processor, a composite frequency vector by averaging the vectors;(vi) determining, via the processor, whether a drone component exists within the composite frequency vector by comparing the composite frequency vector to a database of known drone signatures;(vii) determining, via the processor, a drone detection of the drone if the drone component exists within the composite frequency vector;(viii) identifying, via the processor, a flight characteristic referencing a drone signature that matches the drone component within the composite frequency vector;(is) determining, via the processor, an estimated flight path of the drone based on the flight characteristic and a known location of the microphone; and(x) displaying, via the processor within a user interface, a graphical representation of the drone detection including at least one of the estimated flight path of the drone and the location of the microphone. 12. The method of claim 11, wherein the processor for steps (iii) to (viii) includes a sample processor located within a drone detection device, and wherein processor for steps (ix) and (x) includes a management server remote from and communicatively coupled to the sample processor. 13. The method of claim 11, wherein steps (i) to (vi) are performed a number of times for subsequent sound signals, and wherein the drone detection of step (vii) occurs if a number of times a drone component exists within a respective composite frequency vector for the subsequent sound signals exceeds a predetermined threshold. 14. The method of claim 13, further comprising: updating, via the processor, the estimated flight path of the drone based on the drone detection from the subsequent sound signals; anddisplaying, via the processor within the user interface, the graphical representation including the updated flight path. 15. The method of claim 14, wherein the updated estimated flight path of the drone includes an indication as to where the drone detection began, where the drone traveled during the drone detection for subsequent sound signals, and where the drone detection ended. 16. The method of claim 13, wherein the drone detection of step (vii) does not occur if the number of times the drone component exists within the respective component frequency vector for the subsequent sound signals is below the predetermined threshold. 17. The method of claim 11, further comprising: determining, via the processor, at least one of a distance and a heading related to the drone detection using at least one of the digital sound sample and the drone component of the composite frequency vector;determining the estimated flight path based on the flight characteristic in conjunction with the least one of the distance and the heading of the drone; anddisplaying, via the processor within the user interface, at least one of an altitude of the drone, an X-distance of the drone from the microphone, and a Y-distance of the drone from the microphone. 18. The method of claim 11, further comprising displaying, via the processor within the user interface, an alert related to the drone detection. 19. An apparatus for detecting a drone comprising: an interface configured to receive a digital sound sample from a sound card; anda sample processor configured to: partition the digital sound sample into a predetermined number of segments,convert each of the segments into a vector of frequency amplitudes by applying a frequency domain transformation to the segments,form a composite frequency vector by averaging the vectors,determine whether a drone component exists within the composite frequency vector by comparing the composite frequency vector to a database of known drone signatures,determine a drone detection of a drone if the drone component exists within the composite frequency vector, andtransmit a message indicative of the drone detection. 20. The apparatus of claim 19, wherein the sample processor is configured to: determine a background noise component within the composite frequency vector;compensate for the background noise component by removing the background noise component from the composite frequency vector to create a filtered composite frequency vector; anddetermine whether a drone component exists performing step using the filtered composite frequency vector instead of the composite frequency vector.
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이 특허에 인용된 특허 (12)
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