Anomaly detection of remote sensing images

US2025035758A1 · US · A1

Patent metadata
FieldValue
Publication numberUS-2025035758-A1
Application numberUS-202418784801-A
CountryUS
Kind codeA1
Filing dateJul 25, 2024
Priority dateJul 27, 2023
Publication dateJan 30, 2025
Grant date

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Abstract

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Devices, systems, and methods for remote detection and ranging are described. In an embodiment, a remote sensing method includes obtaining data points that are spatially distributed and have respective intensity values, by performing a remote detection and ranging operation, determining a spatial autocorrelation of a set of data points, out of the data points, based on a difference in distances between data points in the data points, determining an intensity weight multiplier based on a reference intensity value of the data points and an average intensity value of the data points, and determining a quality score of the set of data points by applying the intensity weight multiplier to the spatial autocorrelation of the set of data points; and identifying, based on the quality score, whether the set of data points includes one or more data points that are created by a noise source.

First claim

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What is claimed is: 1 . A remote sensing method, comprising: obtaining data points that are spatially distributed and have respective intensity values by performing a remote detection and ranging operation; determining a spatial autocorrelation of a set of data points, out of the data points, based on a difference in distances between data points in the set of data points; determining an intensity weight multiplier based on a reference intensity value of the data points and an average intensity value of the data points; determining a quality score of the set of data points by applying the intensity weight multiplier to the spatial autocorrelation of the set of data points; and identifying, based on the quality score, whether the set of data points includes one or more data points that are created by a noise source. 2 . The method of claim 1 , wherein the reference intensity value of data points is determined based on an intensity during a normal operation of the remote detection and ranging operation. 3 . The method of claim 1 , wherein the one or more data points created by the noise source include at least one of: randomly and sparsely distributed data points; or data points with intensity values lower than an average intensity by a predetermined value. 4 . The method of claim 1 , wherein it is determined that the data points include one or more data points created by the noise source, upon a determination that the quality score of the set of data points is lower than a reference quality score. 5 . The method of claim 1 , wherein the applying the intensity weight multiplier to the spatial autocorrelation of the data points includes multiplying the spatial autocorrelation by the intensity weight multiplier. 6 . The method of claim 1 , wherein the intensity weight multiplier is a mean intensity or a standard deviation of the data points. 7 . The method of claim 1 , wherein the remote detection and ranging operation includes a light detection and ranging (LiDAR). 8 . A remote sensing method, comprising: generating a remote sensing image grid that includes a plurality of grid cells obtained by performing a remote detection and ranging operation, by dividing a spatial distribution of data points into the plurality of grid cells; determining an intensity weight multiplier based on a reference intensity value of the plurality of data points and an average intensity value of the plurality of data points; determining a spatial autocorrelation of data points for each grid cell based on a difference in distances between data points in each grid cell; determining a quality score of the data points in each grid cell by applying the intensity weight multiplier to the spatial autocorrelation of the data points in each grid cell; and identifying, based on the quality score, whether the data points in each grid cell include one or more data points that are created by a noise source. 9 . The method of claim 8 , wherein the spatial distribution of data points is an azimuth-elevation image of the data points. 10 . The method of claim 8 , wherein the reference intensity value of the plurality of data points is determined based on an intensity during a normal operation of the remote detection and ranging operation. 11 . The method of claim 8 , wherein the one or more data points created by the noise source include at least one of: randomly and sparsely distributed data points; or data points with intensity values lower than an average intensity by a predetermined value. 12 . The method of claim 8 , wherein it is determined that the data points include one or more data points created by the noise source, upon a determination that a sum of quality scores of the data points in the plurality of grid cells is lower than a reference quality score. 13 . The method of claim 10 , wherein the applying the intensity weight multiplier to the spatial autocorrelation of the data points includes multiplying the spatial autocorrelation by the intensity weight multiplier. 14 . The method of claim 10 , further comprising: providing the quality score to an autonomous driving controller to control an autonomous vehicle by considering, based on the quality score, data points other than the one or more data points created by the noise source. 15 . A remote sensing and perception system, comprising: a first data processing unit configured to: generate a remote sensing image grid that includes a plurality of grid cells obtained by performing a remote detection and ranging operation, by dividing a spatial distribution of data points into the plurality of grid cells; determine an intensity weight multiplier based on a reference intensity value of the plurality of data points and an average intensity value of the plurality of data points; and determine a quality score of the data points in each grid cell; and a second processing unit in communication with the first data processing unit and including a plurality of arithmetic-logic units configured to perform computations in parallel, each of the plurality of arithmetic-logic units configured to determine a spatial autocorrelation of data points in each corresponding grid cell based on a difference in distances between data points in each grid cell, wherein the quality score of the data points in each grid cell is determined by: applying the intensity weight multiplier to the spatial autocorrelation of the data points in each grid cell; and identifying, based on the quality score, whether the data points in each grid cell include one or more data points that are created by a noise source. 16 . The system of claim 15 , wherein the spatial distribution of data points is an azimuth-elevation image of the data points. 17 . The system of claim 15 , wherein the reference intensity value of the plurality of data points is determined based on an intensity during a normal operation of the remote detection and ranging operation. 18 . The system of claim 15 , wherein the one or more data points created by the noise source include at least one of: randomly and sparsely distributed data points; or data points with intensity values lower than an average intensity by a predetermined value. 19 . The system of claim 15 , wherein it is determined that the data points include one or more data points that are created by the noise source, upon a determination that a sum of quality scores of the data points in the plurality of grid cells is lower than a reference quality score. 20 . The system of claim 15 , wherein the applying the intensity weight multiplier to the spatial autocorrelation of the data points includes multiplying the spatial autocorrelation by the intensity weight multiplier.

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Classifications

  • for mapping or imaging · CPC title

  • G01S7/487Primary

    Extracting wanted echo signals {, e.g. pulse detection} · CPC title

  • Simultaneous measurement of distance and other co-ordinates (indirect measurement G01S17/46) · CPC title

  • Means for monitoring or calibrating · CPC title

  • G01S17/931Primary

    of land vehicles · CPC title

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What does patent US2025035758A1 cover?
Devices, systems, and methods for remote detection and ranging are described. In an embodiment, a remote sensing method includes obtaining data points that are spatially distributed and have respective intensity values, by performing a remote detection and ranging operation, determining a spatial autocorrelation of a set of data points, out of the data points, based on a difference in distances…
Who is the assignee on this patent?
Tusimple Inc
What technology area does this patent fall under?
Primary CPC classification G01S7/487. Mapped technology areas include Physics.
When was this patent published?
Publication date Thu Jan 30 2025 00:00:00 GMT+0000 (Coordinated Universal Time) (A1). Legal status and post-grant events are not shown on this page.
What related patents are in patentsdb?
We list 8 related publications on this page (citations in our corpus or others sharing the same primary CPC).