Patents by Inventor Conrad M. Albrecht
Conrad M. Albrecht has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).
-
Patent number: 11874415Abstract: From each of a plurality of cameras, a visual input of a location is received over a network. For each visual input from the plurality of cameras, a coupling correction is performed between a shaking of the camera with respect to the visual input by subtracting velocity vectors of the plurality of cameras from velocity vectors of pixels defining the visual input to provide a processed input. It is determined whether a shaking identified in the processed input is above a predetermined threshold based on the processed input, thereby detecting one or more anomalies. From the one or more anomalies, at least one of a location, magnitude, or depth of an earthquake are inferred based on the shaking identified in the processed input of each of the plurality of cameras.Type: GrantFiled: December 22, 2020Date of Patent: January 16, 2024Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATIONInventors: Carlo Siebenschuh, Conrad M. Albrecht, Johannes Walter Schmude, Hendrik F. Hamann, Siyuan Lu, Oki Gunawan
-
Patent number: 11861780Abstract: A computer implemented method rasterizes point cloud data. A number of processor units rasterizes the point cloud data into rasterized layers based on classes in which each rasterized layer in the rasterized layers corresponds to a class in the classes. The number of processor units creates key value pairs from the rasterized layers. The number of processor units store the key value pairs in a key value store. According to other illustrative embodiments, a computer system and a computer program product for rasterizing point cloud data are provided.Type: GrantFiled: November 17, 2021Date of Patent: January 2, 2024Assignee: International Business Machines CorporationInventors: Hendrik F. Hamann, Carlo Siebenschuh, Siyuan Lu, Conrad M. Albrecht
-
Publication number: 20230154098Abstract: A computer implemented method rasterizes point cloud data. A number of processor units rasterizes the point cloud data into rasterized layers based on classes in which each rasterized layer in the rasterized layers corresponds to a class in the classes. The number of processor units creates key value pairs from the rasterized layers. The number of processor units store the key value pairs in a key value store. According to other illustrative embodiments, a computer system and a computer program product for rasterizing point cloud data are provided.Type: ApplicationFiled: November 17, 2021Publication date: May 18, 2023Inventors: Hendrik F. Hamann, Carlo Siebenschuh, Siyuan Lu, Conrad M. Albrecht
-
Patent number: 11594004Abstract: In some examples, a method of vector-raster data fusion includes receiving vector data for a geographical location, and statistically analyzing the vector data to obtain vector statistics. In some examples the method further includes rasterizing the vector statistics, and storing at least one of the vector data and the rasterized vector statistics together in a key-value store together with previously stored raster data for the geographical location. In some examples, the vector data further includes metadata, and the method further includes storing the metadata in at least one of the key-value store or a separate vector database.Type: GrantFiled: December 26, 2019Date of Patent: February 28, 2023Assignee: International Business Machines CorporationInventors: Conrad M Albrecht, Ildar Khabibrakhmanov, Sharathchandra Pankanti, Levente Klein, Wang Zhou, Bruce Gordon Elmegreen, Siyuan Lu, Hendrik F Hamann, Carlo Siebenschuh
-
Patent number: 11557053Abstract: Techniques for image processing and transformation are provided. A plurality of images and a plurality of maps are received, and a system of neural networks is trained based on the plurality of images and the plurality of maps. A first image is received, and a first map is generated by processing the first image using the system of neural networks.Type: GrantFiled: February 7, 2020Date of Patent: January 17, 2023Assignee: International Business Machines CorporationInventors: Rui Zhang, Conrad M. Albrecht, Siyuan Lu, Wei Zhang, Ulrich Alfons Finkler, David S. Kung, Xiaodong Cui, Marcus Freitag
-
Patent number: 11527062Abstract: A computer-implemented method for determining field boundaries and crop forecasts in each field is provided. The method includes deriving vegetation indices for each geo-spatial pixel of each image of multi-spectral imagery at a plurality of points in time, constructing minimum bounding boxes for each image according to the vegetation indices, and generating, based on a neural network analysis of each image and the minimum bounding boxes, a geo-spatial plot of crops including a predicted plot of future crop usage for an area including each field in the multi-spectral imagery.Type: GrantFiled: March 27, 2020Date of Patent: December 13, 2022Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATIONInventors: Conrad M. Albrecht, Siyuan Lu, Fernando J. Marianno, Hendrik F. Hamann, Marcus O. Freitag, Levente I. Klein
-
Patent number: 11514630Abstract: Methods and systems for generating a composite image in remote sensing applications are described. In an example, a device can receive an image having a plurality of points specified in an image space. The device can extract a portion of the image and transform points among the extracted portion from the image space to a parameter space defined by a distance parameter and an orientation parameter. The device can identify a set of intersection points in the parameter space that indicate at least one occurrence of a geometry feature in the extracted portion of the image. The device can augment the portion of the image with a plurality of new pixels based on the identified set of intersection points. The device can generate a composite image using the augmented image, where the composite image can include a plurality of augmented images corresponding to other portions of the image.Type: GrantFiled: April 1, 2020Date of Patent: November 29, 2022Assignee: International Business Machines CorporationInventors: Conrad M. Albrecht, Marcus Oliver Freitag, Sharathchandra Pankanti, Siyuan Lu, Hendrik F. Hamann
-
Publication number: 20220309292Abstract: A computer-implemented method, a computing system, and a computer program product, for automatically labeling an amount of unlabeled data for training one or more classifiers of a machine learning system. A method includes iteratively processing unlabeled data items. Receiving an unlabeled data item into each autoencoder in an autoencoder architecture. Each autoencoder processing with a lowest loss of information the unlabeled data item that is likely associated with a label associated with the autoencoder, while processing with a higher loss of information the unlabeled data item that is likely not associated with the label. Predicting, based on loss of information, a probability distribution for the unlabeled data item. Automatically associating the label to the unlabeled data item, based on the label being associated with a highest probability in a peaking probability distribution associated with the unlabeled data item. The autoencoder architecture can include a cloud computing network architecture.Type: ApplicationFiled: March 12, 2021Publication date: September 29, 2022Inventors: Conrad M. ALBRECHT, Siyuan LU
-
Patent number: 11436712Abstract: Methods and systems for managing vegetation include training a machine learning model based on an image of a training data region before a weather event, an image of the training data region after the weather event, and information regarding the weather event. A risk score is generated for a second region using the trained machine learning model based on an image of the second region and predicted weather information for the second region. The risk score is determined to indicate high-risk vegetation in the second region. A corrective action is performed to reduce the risk of vegetation in the second region.Type: GrantFiled: October 21, 2019Date of Patent: September 6, 2022Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATIONInventors: Conrad M. Albrecht, Hendrik F. Hamann, Levente Klein, Siyuan Lu, Sharathchandra Pankanti, Wang Zhou
-
Publication number: 20220196860Abstract: From each of a plurality of cameras, a visual input of a location is received over a network. For each visual input from the plurality of cameras, a coupling correction is performed between a shaking of the camera with respect to the visual input by subtracting velocity vectors of the plurality of cameras from velocity vectors of pixels defining the visual input to provide a processed input. It is determined whether a shaking identified in the processed input is above a predetermined threshold based on the processed input, thereby detecting one or more anomalies. From the one or more anomalies, at least one of a location, magnitude, or depth of an earthquake are inferred based on the shaking identified in the processed input of each of the plurality of cameras.Type: ApplicationFiled: December 22, 2020Publication date: June 23, 2022Inventors: Carlo Siebenschuh, Conrad M. Albrecht, Johannes Walter Schmude, Hendrik F. Hamann, Siyuan Lu, Oki Gunawan
-
Patent number: 11360970Abstract: A computer-implemented method includes accessing, by a processing unit, an existing layer representing geospatial-temporal data at a selected timestamp. A first overview layer of the existing layer is generated by iteratively aggregating each cluster of cells of the existing layer into a corresponding lower-resolution cell of the first overview layer. The first overview layer therefore has a lower resolution than the existing layer. A query is received related to the geospatial-temporal data in the existing layer, and the query is processed with reference to the first overview layer.Type: GrantFiled: November 13, 2018Date of Patent: June 14, 2022Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATIONInventors: Marcus Oliver Freitag, Conrad M. Albrecht, Fernando Jimenez Marianno, Siyuan Lu, Hendrik F. Hamann, Johannes Walter Schmude
-
Publication number: 20220156636Abstract: In an approach for efficient flood water analysis from spatio-temporal data fusion and statistics, a processor classifies regular waters by using cartographic data in a first location. A processor generates a water stream network including a watershed based on elevation data. A processor performs statistical analysis of spectral information from a multi-spectral satellite imagery over water bodies including the regular waters and flood waters. A processor correlates the spectral statistics of the multi-spectral satellite imagery to kinetic energy of the flood waters using machine learning techniques and physical modeling. A processor builds a learning model based on the correlation between the spectral statistics and the flood waters with the kinetic energy. A processor estimates kinetic energy of flood waters in a second location using the learning model. A processor evaluates a flooding risk for the second location based on the estimated flood waters kinetic energy.Type: ApplicationFiled: November 13, 2020Publication date: May 19, 2022Inventors: Conrad M Albrecht, Marcus Oliver Freitag, Siyuan Lu, Hendrik F. Hamann
-
Patent number: 11210268Abstract: A database system includes a processing sub-system having an electronic hardware controller that receives first formatted data, and an electronic file formatting sub-system having an electronic hardware controller that assigns coordinate values corresponding to a second data format to the first formatted data. The file formatting sub-system generates a dual-format data file that fuses together the first formatted data with the coordinate values corresponding to a second data format. The database system further includes a storage sub-system having a data storage unit configured to store the dual-format data file.Type: GrantFiled: November 17, 2017Date of Patent: December 28, 2021Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATIONInventors: Conrad M. Albrecht, Marcus O. Freitag, Hendrik F. Hamann
-
Patent number: 11204896Abstract: A database system includes a processing sub-system having an electronic hardware controller that receives first formatted data, and an electronic file formatting sub-system having an electronic hardware controller that assigns coordinate values corresponding to a second data format to the first formatted data. The file formatting sub-system generates a dual-format data file that fuses together the first formatted data with the coordinate values corresponding to a second data format. The database system further includes a storage sub-system having a data storage unit configured to store the dual-format data file.Type: GrantFiled: August 18, 2017Date of Patent: December 21, 2021Assignee: INTERNATIONAL BUSINESS MACHINES CORPORATIONInventors: Conrad M. Albrecht, Marcus O. Freitag, Hendrik F. Hamann
-
Patent number: 11164310Abstract: A computer-implemented method is provided for improving farm management by determining farm boundary delineations within a target geographic area based on crop recognition. The method includes evaluating the data using a classification algorithm to generate one or more line segments at an interface separating each pixel in at least one pair of adjacent pixels. It also includes connecting the one or more line segments to an adjacent line segment to form a boundary delineation. The method further includes generating a boundary delineation map including the boundary delineation as well as generating a farm management plan including the boundary delineation map and a recommended crop type. The farm management plan can be generated based on at least a type of vegetation present.Type: GrantFiled: August 14, 2019Date of Patent: November 2, 2021Assignee: International Business Machines CorporationInventors: Conrad M. Albrecht, Hendrik F. Hamann, Levente Klein, Siyuan Lu, Fernando J. Marianno
-
Publication number: 20210312677Abstract: Methods and systems for generating a composite image in remote sensing applications are described. In an example, a device can receive an image having a plurality of points specified in an image space. The device can extract a portion of the image and transform points among the extracted portion from the image space to a parameter space defined by a distance parameter and an orientation parameter. The device can identify a set of intersection points in the parameter space that indicate at least one occurrence of a geometry feature in the extracted portion of the image. The device can augment the portion of the image with a plurality of new pixels based on the identified set of intersection points. The device can generate a composite image using the augmented image, where the composite image can include a plurality of augmented images corresponding to other portions of the image.Type: ApplicationFiled: April 1, 2020Publication date: October 7, 2021Inventors: Conrad M. Albrecht, Marcus Oliver Freitag, Sharathchandra Pankanti, Siyuan Lu, Hendrik F. Hamann
-
Publication number: 20210248765Abstract: Techniques for image processing and transformation are provided. A plurality of images and a plurality of maps are received, and a system of neural networks is trained based on the plurality of images and the plurality of maps. A first image is received, and a first map is generated by processing the first image using the system of neural networks.Type: ApplicationFiled: February 7, 2020Publication date: August 12, 2021Inventors: Rui ZHANG, Conrad M. ALBRECHT, Siyuan LU, Wei ZHANG, Ulrich Alfons FINKLER, David S. KUNG, Xiaodong CUI, Marcus FREITAG
-
Publication number: 20210200218Abstract: In some examples, a method of vector-raster data fusion includes receiving vector data for a geographical location, and statistically analyzing the vector data to obtain vector statistics. In some examples the method further includes rasterizing the vector statistics, and storing at least one of the vector data and the rasterized vector statistics together in a key-value store together with previously stored raster data for the geographical location. In some examples, the vector data further includes metadata, and the method further includes storing the metadata in at least one of the key-value store or a separate vector database.Type: ApplicationFiled: December 26, 2019Publication date: July 1, 2021Inventors: Conrad M. ALBRECHT, Ildar KHABIBRAKHMANOV, Sharathchandra PANKANTI, Levente KLEIN, Wang ZHOU, Bruce Gordon ELMEGREEN, Siyuan LU, Hendrick F. HAMANN, Carlo SIEBENSCHUH
-
Publication number: 20210118117Abstract: Methods and systems for managing vegetation include training a machine learning model based on an image of a training data region before a weather event, an image of the training data region after the weather event, and information regarding the weather event. A risk score is generated for a second region using the trained machine learning model based on an image of the second region and predicted weather information for the second region. The risk score is determined to indicate high-risk vegetation in the second region. A corrective action is performed to reduce the risk of vegetation in the second region.Type: ApplicationFiled: October 21, 2019Publication date: April 22, 2021Inventors: Conrad M. Albrecht, Hendrik F. Hamann, Levente Klein, Siyuan Lu, Sharathchandra Pankanti, Wang Zhou
-
Patent number: 10839264Abstract: Scalable feature classification for 3D point cloud data is provided. In one aspect, a method for rasterizing 3D point cloud data includes: obtaining the 3D point cloud data; generating a digital elevation model (DEM) from the 3D point cloud data; decomposing the DEM into local and global fluctuations to obtain a local DEM; generating geo-referenced shapes by automatically thresholding the local DEM; cropping and normalizing the local DEM using minimum bounding boxes derived from the geo-referenced shapes and manual annotations from subject matter experts to create a cropped DEM; and linking geo-spatially tagged labels from the subject matter experts to the cropped DEM. These data can be then directly fed into a system having an ensemble of artificial neural networks. By way of example, a scalable ecosystem is presented on the basis of the geo-spatial platform IBM PAIRS.Type: GrantFiled: November 9, 2018Date of Patent: November 17, 2020Assignee: International Business Machines CorporationInventors: Conrad M. Albrecht, Sharathchandra Pankanti, Marcus O. Freitag, Hendrik F. Hamann