The present disclosure relates generally to the field of computer vision. More specifically, the present disclosure relates to computer vision systems and methods for automatic alignment of parcels with geotagged aerial imagery.
In the computer vision field, increasingly sophisticated software-based systems are being developed for automatically aligning geotagged aerial images with geo-registered county parcels (land property boundaries) present in such images. Such systems have wide applicability, including but not limited to, land surveying, real estate, banking (e.g., underwriting mortgage loans), insurance (e.g., title insurance and claims processing), and re-insurance.
There is currently significant interest in developing systems that automatically align geotagged aerial images with geo-registered county parcels present in the aerial images requiring no (or, minimal) user involvement, and with a high degree of accuracy. For example, it would be highly beneficial to develop systems that can automatically clean parcel and semantic input information obtained from the geotagged aerial images, optimize the information, refine the information and regularize the information such that the geo-registered county parcels present in the geotagged aerial images are properly aligned with the geotagged aerial images. Accordingly, the system of the present disclosure addresses these and other needs.
The present disclosure relates to computer vision systems and methods for automatically aligning geo-registered parcels with geotagged aerial imagery, which require no (or, minimal) user involvement, and which operate with a high degree of accuracy. The system receives a geotagged aerial image, parcel information, and semantic information where each of the parcel information and the semantic information are overlaid on the geotagged aerial image. The geotagged aerial image can be a digital terrain model and can be identifiable by one of a postal address, latitude and longitude coordinates or Global Positioning System (GPS) coordinates. The parcel information delineates the geo-registered parcels present in the geotagged aerial image and the semantic information delineates and categorizes structures present within the geo-registered parcels present in the geotagged aerial image. The system cleans the parcel information and the semantic information by removing outlier parcel information and outlier semantic information overlaid on the geotagged aerial image. Additionally, the system optimizes the parcel information by grouping geo-registered parcels present in the geotagged aerial image into a plurality of islands and generating a plurality of parcel alignment solutions for each island of the plurality of islands. The system refines the plurality of parcel alignment solutions for each island by at least one of removing a parcel alignment solution that exceeds a predetermined margin of error or removing a parcel alignment solution that contradicts the semantic information. The system also regularizes each island. The system generates a composite parcel alignment solution based on the refined plurality of parcel alignment solutions for each regularized island to align the geo-registered parcels of each regularized island with the geotagged aerial image.
The foregoing features of the present disclosure will be apparent from the following Detailed Description of the Invention, taken in connection with the accompanying drawings, in which:
The present disclosure relates to a system and method for automatically aligning geotagged aerial images with geo-registered county parcels present in such images, as described in detail below in connection with
Turning to the drawings,
Large quantities of parcel information and aerial images requires laborious and time-consuming manual data cleaning. In addition, insufficient ground truth data complicates clarifying the delineation of a parcel when the parcel boundaries are obstructed or unclear. Ground truth data refers to data provided by direct observation. As such, ground truth data can clarify the delineation of a parcel when the parcel boundaries are obstructed by a tree and/or shadows or when the parcel boundaries are unclear because of a structure in addition to a home located on the parcel or in close proximity to the parcel boundaries. It is noted that a structure can be organic or inorganic and can include, but is not limited to, a lake, a pond, a tree, residential and commercial buildings, a flagpole, a water tower, a windmill, a street lamp, a power line, a greenhouse, a shed, a detached garage, a barn, a pool, a swing set, etc. Unknown physical models may also complicate parcel alignment processing. For example, during the acquisition processes of the parcel information and the aerial images, unique geometric shapes including, but not limited to, a torus; a octahedron, a hexagonal pyramid, a triangular prism, a cone, a cylinder, etc., of organic and non-organic structures present in the parcel information and the aerial images may not be recognized resulting in skewed parcel alignment. Challenges associated with noisy parcel and semantic input data are described in detail below in connection with
The processor could also include, but is not limited to, a personal computer, a laptop computer, a tablet computer, a smart telephone, a server, and/or a cloud-based computing platform. Further, code for carrying out the various steps/processes discussed herein could be distributed across multiple computer systems communicating with each other over a communications network, and/or stored and executed on a cloud computing platform and remotely accessed by a computer system in communication with the cloud platform. The code could communicate with the aerial image information database 64, the parcel information database 66 and the semantic information database 70 which could be stored on the same computer system as the code or on one or more other computer systems in communication with the code.
Then, in step 94, the system obtains (e.g., receives or downloads) parcel input information corresponding to the geotagged aerial image. As discussed above, parcel input information refers to information that delineates parcel boundaries present in the geotagged aerial image. In step 96, the system obtains (e.g., receives or downloads) semantic input information corresponding to the geotagged aerial image and parcel input information. Semantic input information refers to information labels that delineate and categorize structures and/or the features thereof present within parcel boundaries.
In step 98, the system cleans each of the parcel input information overlaid on the geotagged aerial image and the semantic input information overlaid on the geotagged aerial image. Then, in step 100, the system optimizes the parcel input information overlaid on the geotagged aerial image. Specifically, the system divides groups of parcels present in the aerial image into a series of islands and generates a plurality of parcel alignment solutions for each island. In step 102, the system refines the generated plurality of parcel alignment solutions for each island. For example, the system narrows the generated plurality of parcel alignment solutions for each island by rejecting parcel alignment solutions that exceed a predetermined margin of error and/or do not comply with the information labels that delineate and categorize structures and/or the features thereof present within parcel boundaries (e.g., a parcel boundary overlaying a roof structure).
In step 104, the system regularizes the islands by assigning each island a numerical value in ascending order along a shortest path connecting the islands to one another. Regularization allows for evaluating an accuracy of the refined plurality of parcel alignment solutions for each island. Lastly, in step 106, the system assigns the structures (i.e., assets) and/or features thereof present in the semantic input information to parcels present in a composite parcel alignment solution. The composite parcel alignment solution comprises the most accurate parcel alignment solution for each island from among the refined plurality of parcel alignment solutions for each island. As such, the composite parcel alignment solution comprises respective island parcel alignment solutions wherein each parcel alignment solution provides an assignment of assets contained therein.
Having thus described the present disclosure in detail, it is to be understood that the foregoing description is not intended to limit the spirit or scope thereof. What is desired to be protected by Letters Patent is set forth in the following claims.
This application is a continuation of, and claims the benefit of priority to, U.S. patent application Ser. No. 17/122,226 filed on Dec. 15, 2020, now U.S. Pat. No. 11,776,140 issued on Oct. 3, 2023, which claims priority to U.S. Provisional Patent Application Ser. No. 62/948,509 filed on Dec. 16, 2019, the entire disclosures of which are hereby expressly incorporated by reference.
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20240078689 A1 | Mar 2024 | US |
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62948509 | Dec 2019 | US |
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Parent | 17122226 | Dec 2020 | US |
Child | 18376144 | US |