Patents by Inventor Xiao Bian
Xiao Bian 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).
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Publication number: 20200159195Abstract: The example embodiments are directed to a system and method for optimizing data the is transmitted from an edge device to a central server such as the cloud platform. In one example, the method may include one or more of receiving incoming data which is associated with an industrial asset positioned at an edge of an Internet of Things (IoT) network, transforming the incoming data into a pattern of data points within a feature space based on a machine learning model configured to detect patterns within the data, selecting a subset of data points from the pattern based on a distance between data points in the pattern of data points with respect to a previous pattern of data points in a previous dataset associated with the industrial asset, and transmitting the selected subset of data points to a central platform via the IoT network.Type: ApplicationFiled: November 16, 2018Publication date: May 21, 2020Inventors: Xiao BIAN, Colin PARRIS, Dayu HUANG, Huan TAN, Kiersten RALSTON, Shaopeng LIU, Guiju SONG
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Publication number: 20200160208Abstract: The example embodiments are directed to a system and method for sharing machine learning model parameters among edge devices in a clustered group of edge devices sensing data about an industrial asset. In one example, the method may include one or more of storing unique parameters of a machine learning (ML) model associated with an industrial asset which are unique with respect to unique parameters of other edge systems in the group of edge systems, receiving common parameter information from the group of edge systems which is shared among the group of edge systems, generating updated parameter values for an ML model based on a combination of the unique parameters and the received common parameter information, and executing the updated ML model based on incoming data from the industrial asset to generate predictive information about the industrial asset.Type: ApplicationFiled: November 15, 2018Publication date: May 21, 2020Inventors: Huan TAN, Colin PARRIS, Xiao BIAN, Shaopeng LIU, Kiersten RALSTON, Guiju SONG, Dayu HUANG
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Publication number: 20200160207Abstract: The example embodiments are directed to a system and methods for determining to update a machine learning model based on model degradation. In one example, the method may include one or more of receiving data acquired at an edge of an Internet of things (IoT) network from an industrial asset, executing a machine learning model with the received data as input to generate a predictive output associated with the industrial asset, determining that a performance of the machine learning model on the edge has degraded based on the generated predictive output of the machine learning model, and transmitting information about the degraded performance of the machine learning model to a central server within the IoT network.Type: ApplicationFiled: November 15, 2018Publication date: May 21, 2020Inventors: Guiju SONG, Colin PARRIS, Xiao BIAN, Huan TAN, Kiersten RALSTON, Shaopeng LIU, Dayu HUANG
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Publication number: 20200160227Abstract: The example embodiments are directed to a system for triggering a model update for an edge device in an IIoT network. In one example, the method may include one or more of receiving data of an operation performed by an industrial asset, the received data comprising input for a machine learning (ML) model associated with the industrial asset, determining that the received data comprises a change in data pattern with respect to a training data set which was used to previously train the ML model, storing the received data comprising the change in data pattern in a new data set, and in response to the new data set reaching a minimum threshold size, at least one of updating the ML model based on the new data set and transmitting a request to update the ML model based on the new data set.Type: ApplicationFiled: November 15, 2018Publication date: May 21, 2020Inventors: Shaopeng LIU, Colin PARRIS, Xiao BIAN, Huan TAN, Kiersten RALSTON, Guiju SONG, Dayu HUANG
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Patent number: 10621717Abstract: A system includes one or more processors configured to detect perimeter edges of one or more rotor blades of a turbine assembly as depicted in a series of image frames using boundary analysis performed on the image frames. The one or more processors are configured to identify a set of the image frames as key frames based on positional offsets between the perimeter edges that are detected in the image frames and a reference blade pose such that the key frames are able to be inspected for objects-of-interest without inspecting the image frames that are not the key frames.Type: GrantFiled: March 30, 2018Date of Patent: April 14, 2020Assignee: General Electric CompnayInventors: Wei Wang, Longyin Wen, Xiao Bian, Arpit Jain, David Scott Diwinsky, Bernard Bewlay
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Patent number: 10592725Abstract: Systems and methods are provided relating to artificial neural networks are provided. The systems and methods obtain a teacher network that includes artificial neural layers configured to automatically identify one or more objects in an image examined by the artificial neural layers, receive a set of task images at the teacher network, examine the set of task images with the teacher network, identify a subset of the artificial neural layers that are utilized during examination of the set of task images with the teacher network, and define a student network based on the set of task images. The student network is configured to automatically identify one or more objects in an image examined by the subset.Type: GrantFiled: April 21, 2017Date of Patent: March 17, 2020Assignee: General Electric CompanyInventors: Ser Nam Lim, David Scott Diwinsky, Xiao Bian
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Patent number: 10504220Abstract: A system includes one or more processors configured to analyze obtained image data representing a rotor blade to detect a candidate feature on the rotor blade and determine changes in the size or position of the candidate feature over time. The one or more processors are configured to identify the candidate feature on the rotor blade as a defect feature responsive to the changes in the candidate feature being the same or similar to a predicted progression of the defect feature over time. The predicted progression of the defect feature is determined according to an action-guidance function generated by an artificial neural network via a machine learning algorithm. Responsive to identifying the candidate feature on the rotor blade as the defect feature, the one or more processors are configured to automatically schedule maintenance for the rotor blade, alert an operator, or stop movement of the rotor blade.Type: GrantFiled: May 25, 2017Date of Patent: December 10, 2019Assignee: GENERAL ELECTRIC COMPANYInventors: Ser Nam Lim, David Scott Diwinsky, Wei Wang, Swaminathan Sankaranarayanan, Xiao Bian, Arpit Jain
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Patent number: 10475174Abstract: A generative adversarial network (GAN) system includes a generator neural sub-network configured to receive one or more images depicting one or more objects. The generator neural sub-network also is configured to generate a foreground image and a background image based on the one or more images that are received, the generator neural sub-network configured to combine the foreground image with the background image to form a consolidated image. The GAN system also includes a discriminator neural sub-network configured to examine the consolidated image and determine whether the consolidated image depicts at least one of the objects. The generator neural sub-network is configured to one or more of provide the consolidated image or generate an additional image as a training image used to train another neural network to automatically identify the one or more objects in one or more other images.Type: GrantFiled: April 6, 2017Date of Patent: November 12, 2019Assignee: GENERAL ELECTRIC COMPANYInventors: Ser Nam Lim, David Diwinsky, Yen-Liang Lin, Xiao Bian
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Publication number: 20190333202Abstract: A system includes a borescope and at least one processor. The borescope includes a camera configured to acquire an acquisition series of frames of at least one target component. The at least one processor is operably coupled to the camera, and is configured to acquire the acquisition series of frames from the camera; determine a blurriness metric value for each of the frames; select frames that satisfy a threshold for the blurriness metric value to form an inspection series of frames; and perform an inspection analysis for the at least one target component using the inspection series of frames.Type: ApplicationFiled: April 30, 2018Publication date: October 31, 2019Inventors: Wei Wang, Longyin Wen, Xiao Bian, Arpit Jain, David Scott Diwinsky, Bernard Patrick Bewlay
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Patent number: 10445871Abstract: A method includes obtaining a series of images of a rotating target object through multiple revolutions of the target object. The method includes grouping the images into multiple, different sets of images. The images in each of the different sets depict a common portion of the target object. At least some of the images in each set are obtained during a different revolution of the target object. The method further includes examining the images in at least a first set of the multiple sets of images using an artificial neural network for automated object-of-interest recognition by the artificial neural network.Type: GrantFiled: May 22, 2017Date of Patent: October 15, 2019Assignee: GENERAL ELECTRIC COMPANYInventors: Ser Nam Lim, Xiao Bian, David Scott Diwinsky
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Publication number: 20190304077Abstract: A system includes one or more processors configured to detect perimeter edges of one or more rotor blades of a turbine assembly as depicted in a series of image frames using boundary analysis performed on the image frames. The one or more processors are configured to identify a set of the image frames as key frames based on positional offsets between the perimeter edges that are detected in the image frames and a reference blade pose such that the key frames are able to be inspected for objects-of-interest without inspecting the image frames that are not the key frames.Type: ApplicationFiled: March 30, 2018Publication date: October 3, 2019Inventors: Wei Wang, Longyin Wen, Xiao Bian, Arpit Jain, David Scott Diwinsky, Bernard Bewlay
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Patent number: 10265850Abstract: The present disclosure is directed to a computer-implemented method of sensor planning for acquiring samples via an apparatus including one or more sensors. The computer-implemented method includes defining, by one or more computing devices, an area of interest; identifying, by the one or more computing devices, one or more sensing parameters for the one or more sensors; determining, by the one or more computing devices, a sampling combination for acquiring a plurality of samples by the one or more sensors based at least in part on the one or more sensing parameters; and providing, by the one or more computing devices, one or more command control signals to the apparatus including the one or more sensors to acquire the plurality of samples of the area of interest using the one or more sensors based at least on the sampling combination.Type: GrantFiled: November 3, 2016Date of Patent: April 23, 2019Assignee: General Electric CompanyInventors: Ser Nam Lim, David Scott Diwinsky, Xiao Bian, Wayne Ray Grady, Mustafa Gokhan Uzunbas, Mustafa Devrim Kaba
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Patent number: 10268913Abstract: A generative adversarial network (GAN) system includes a generator sub-network configured to examine one or more images of actual damage to equipment. The generator sub-network also is configured to create one or more images of potential damage based on the one or more images of actual damage that were examined. The GAN system also includes a discriminator sub-network configured to examine the one or more images of potential damage to determine whether the one or more images of potential damage represent progression of the actual damage to the equipment.Type: GrantFiled: April 3, 2017Date of Patent: April 23, 2019Assignee: General Electric CompanyInventors: Ser Nam Lim, Arpit Jain, David Diwinsky, Sravanthi Bondugula, Yen-Liang Lin, Xiao Bian
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Publication number: 20180342069Abstract: A system includes one or more processors configured to analyze obtained image data representing a rotor blade to detect a candidate feature on the rotor blade and determine changes in the size or position of the candidate feature over time. The one or more processors are configured to identify the candidate feature on the rotor blade as a defect feature responsive to the changes in the candidate feature being the same or similar to a predicted progression of the defect feature over time. The predicted progression of the defect feature is determined according to an action-guidance function generated by an artificial neural network via a machine learning algorithm. Responsive to identifying the candidate feature on the rotor blade as the defect feature, the one or more processors are configured to automatically schedule maintenance for the rotor blade, alert an operator, or stop movement of the rotor blade.Type: ApplicationFiled: May 25, 2017Publication date: November 29, 2018Inventors: Ser Nam Lim, David Scott Diwinsky, Wei Wang, Swaminathan Sankaranarayanan, Xiao Bian, Arpit Jain
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Publication number: 20180336454Abstract: The systems and methods herein relate to artificial neural networks. The systems and methods examine an input image having a plurality of instances using an artificial neural network, and generate an affinity graph based on the input image. The affinity graph is configured to indicate positions of the instances within the input image. The systems and methods further identify a number of instances of the input image by clustering the instances based on the affinity graph.Type: ApplicationFiled: May 19, 2017Publication date: November 22, 2018Inventors: Ser Nam Lim, Xiao Bian, Wei-Chih Hung, David Scott Diwinsky
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Publication number: 20180336674Abstract: A method includes obtaining a series of images of a rotating target object through multiple revolutions of the target object. The method includes grouping the images into multiple, different sets of images. The images in each of the different sets depict a common portion of the target object. At least some of the images in each set are obtained during a different revolution of the target object. The method further includes examining the images in at least a first set of the multiple sets of images using an artificial neural network for automated object-of-interest recognition by the artificial neural network.Type: ApplicationFiled: May 22, 2017Publication date: November 22, 2018Inventors: Ser Nam Lim, Xiao Bian, David Scott Diwinsky
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Publication number: 20180307894Abstract: Systems and methods are provided relating to artificial neural networks are provided. The systems and methods obtain a teacher network that includes artificial neural layers configured to automatically identify one or more objects in an image examined by the artificial neural layers, receive a set of task images at the teacher network, examine the set of task images with the teacher network, identify a subset of the artificial neural layers that are utilized during examination of the set of task images with the teacher network, and define a student network based on the set of task images. The student network is configured to automatically identify one or more objects in an image examined by the subset.Type: ApplicationFiled: April 21, 2017Publication date: October 25, 2018Inventors: Ser Nam Lim, David Scott Diwinsky, Xiao Bian
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Publication number: 20180293734Abstract: A generative adversarial network (GAN) system includes a generator neural sub-network configured to receive one or more images depicting one or more objects. The generator neural sub-network also is configured to generate a foreground image and a background image based on the one or more images that are received, the generator neural sub-network configured to combine the foreground image with the background image to form a consolidated image. The GAN system also includes a discriminator neural sub-network configured to examine the consolidated image and determine whether the consolidated image depicts at least one of the objects. The generator neural sub-network is configured to one or more of provide the consolidated image or generate an additional image as a training image used to train another neural network to automatically identify the one or more objects in one or more other images.Type: ApplicationFiled: April 6, 2017Publication date: October 11, 2018Inventors: Ser Nam Lim, David Diwinsky, Yen-Liang Lin, Xiao Bian
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Publication number: 20180286034Abstract: A generative adversarial network (GAN) system includes a generator sub-network configured to examine one or more images of actual damage to equipment. The generator sub-network also is configured to create one or more images of potential damage based on the one or more images of actual damage that were examined. The GAN system also includes a discriminator sub-network configured to examine the one or more images of potential damage to determine whether the one or more images of potential damage represent progression of the actual damage to the equipment.Type: ApplicationFiled: April 3, 2017Publication date: October 4, 2018Inventors: Ser Nam Lim, Arpit Jain, David Diwinsky, Sravanthi Bondugula, Yen-Liang Lin, Xiao Bian
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Publication number: 20180117760Abstract: The present disclosure is directed to a computer-implemented method of sensor planning for acquiring samples via an apparatus including one or more sensors. The computer-implemented method includes defining, by one or more computing devices, an area of interest; identifying, by the one or more computing devices, one or more sensing parameters for the one or more sensors; determining, by the one or more computing devices, a sampling combination for acquiring a plurality of samples by the one or more sensors based at least in part on the one or more sensing parameters; and providing, by the one or more computing devices, one or more command control signals to the apparatus including the one or more sensors to acquire the plurality of samples of the area of interest using the one or more sensors based at least on the sampling combination.Type: ApplicationFiled: November 3, 2016Publication date: May 3, 2018Inventors: Ser Nam Lim, David Scott Diwinsky, Xiao Bian, Wayne Ray Grady, Mustafa Gokhan Uzunbas, Mustafa Devrim Kaba