Patents by Inventor Atish P. Kamble
Atish P. Kamble 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: 20250131554Abstract: Methods, systems, and apparatus, including medium-encoded computer program products, for generating synthetic images, include: obtaining a captured image of a symbol that encodes data; producing a synthetic image from the captured image using a trained machine learning model, wherein the trained machine learning model has been trained using first images and second images of examples of symbols, wherein the second images have a second image quality that is different than a first image quality of first images, and wherein parameters of the machine learning model have been adjusted responsive to image features to tradeoff content loss versus style loss using measurements of information content correlation between third images produced during training and each of the first images and the second images, the measurements being from a comparison metric; and providing the synthetic image for use by a program configured to identify information in images of symbols.Type: ApplicationFiled: November 5, 2024Publication date: April 24, 2025Inventors: Michael Soborski, Bodhayan Dev, Matthias Voigt, Atish P. Kamble, Prem Swaroop
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Patent number: 12169922Abstract: Methods, systems, and apparatus, including medium-encoded computer program products, for generating synthetic images, include: obtaining a captured image of a symbol that encodes data; producing a synthetic image from the captured image using a trained machine learning model, wherein the trained machine learning model has been trained using first images and second images of examples of symbols, wherein the second images have a second image quality that is different than a first image quality of first images, and wherein parameters of the machine learning model have been adjusted responsive to image features to tradeoff content loss versus style loss using measurements of information content correlation between third images produced during training and each of the first images and the second images, the measurements being from a comparison metric; and providing the synthetic image for use by a program configured to identify information in images of symbols.Type: GrantFiled: March 10, 2022Date of Patent: December 17, 2024Assignee: Sys-Tech Solutions, Inc.Inventors: Michael Soborski, Bodhayan Dev, Matthias Voigt, Atish P. Kamble, Prem Swaroop
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Publication number: 20240395006Abstract: Among other things, the techniques described herein include a method for receiving a plurality of images of one or more containers while the one or more containers are being emptied, the plurality of images comprising a training set of images and a validation set of images; labeling each image of the plurality of images as including either an overfilled container or a not-overfilled container; processing each image of the plurality of images to reduce bias of a machine learning model; training, and based on the labeling, the machine learning model using the plurality of images; and optimizing the machine learning model by performing learning against the validation set, the optimized machine learning model being used to generate a prediction for a new image of a container, the prediction indicating whether the container in the new image was overfilled prior to the new container being emptied.Type: ApplicationFiled: August 6, 2024Publication date: November 28, 2024Inventors: Prem Swaroop, Atish P. Kamble, Bodhayan Dev
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Patent number: 12080040Abstract: Among other things, the techniques described herein include a method for receiving a plurality of images of one or more containers while the one or more containers are being emptied, the plurality of images comprising a training set of images and a validation set of images; labeling each image of the plurality of images as including either an overfilled container or a not-overfilled container; processing each image of the plurality of images to reduce bias of a machine learning model; training, and based on the labeling, the machine learning model using the plurality of images; and optimizing the machine learning model by performing learning against the validation set, the optimized machine learning model being used to generate a prediction for a new image of a container, the prediction indicating whether the container in the new image was overfilled prior to the new container being emptied.Type: GrantFiled: March 23, 2023Date of Patent: September 3, 2024Assignee: The Heil Co.Inventors: Prem Swaroop, Atish P. Kamble, Bodhayan Dev
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Publication number: 20240193615Abstract: Among other things, techniques are described for an after-market service process digitization. Service data is obtained that is associated with at least one asset and comprises at least historical warranty data and current IoT data. Predictive analysis to generate an asset survival prediction is performed based on current data associated with a first asset and the service data. Troubleshooting data associated with the first asset from at least one knowledge data source is received. A warranty coverage metric is determined based on the asset survival prediction and the troubleshooting data, wherein the warranty coverage metric is calculated in real time according to the asset survival prediction and the troubleshooting data. The warranty coverage metric is transformed at a device into human-readable form.Type: ApplicationFiled: April 20, 2022Publication date: June 13, 2024Inventors: Prem Swaroop, Bodhayan Dev, Atish P. Kamble, Girish Juneja, Jonah Somers
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Publication number: 20240184282Abstract: Among other things, systems and techniques are described for predictive maintenance of industrial equipment. Sensor data is obtained, e.g., using sensor hubs that are configured to capture sensor data associated with one or more operating conditions of the industrial equipment. The sensor data is input to a trained machine learning model. The trained machine learning model includes a physics based feature extraction model and a deep learning based automatic feature extraction model. Operating conditions associated with operation of the industrial equipment are predicted using the trained machine learning models.Type: ApplicationFiled: March 31, 2022Publication date: June 6, 2024Inventors: Bodhayan Dev, Atish P. Kamble, Prem Swaroop, Vijay Karthick Baskar, Richard Buteau, Sreedhar Patnala
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Publication number: 20230297058Abstract: Methods, systems, and apparatus, including medium-encoded computer program products, for an end-to-end wireless sensor hub include: configuring a sensor hubs in an order using a sequence established by 5 a time of addition to a network. The sensor hubs is grouped into one or more groups. Sensor data captured by the one or more groups is obtained according to a current group number, wherein the sensor data is obtained from each group of the one or more groups according to a predetermined schedule.Type: ApplicationFiled: March 20, 2023Publication date: September 21, 2023Inventors: Bodhayan Dev, Atish P. Kamble, Prem Swaroop, Vijay Karthick Baskar, Richard Buteau, Sreedhar Patnala
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Publication number: 20230289952Abstract: Methods, systems, and apparatus, including medium-encoded computer program products, for generating synthetic images, include: obtaining a captured image of a symbol that encodes data; producing a synthetic image from the captured image using a trained machine learning model, wherein the trained machine learning model has been trained using first images and second images of examples of symbols, wherein the second images have a second image quality that is different than a first image quality of first images, and wherein parameters of the machine learning model have been adjusted responsive to image features to tradeoff content loss versus style loss using measurements of information content correlation between third images produced during training and each of the first images and the second images, the measurements being from a comparison metric; and providing the synthetic image for use by a program configured to identify information in images of symbols.Type: ApplicationFiled: March 10, 2022Publication date: September 14, 2023Inventors: Michael Soborski, Bodhayan Dev, Matthias Voigt, Atish P. Kamble, Prem Swaroop
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Publication number: 20230289922Abstract: Methods, systems, and apparatus, including medium-encoded computer program products, for glare mitigation techniques include: obtaining images containing a representation of a mark, the images comprising multiple poses of the mark and generating a single image from the images that contain a representation of the mark with reduced glare when compared to the images comprising multiple poses of the mark. The single image is provided for processing of the representation of the mark to identify information associated with the mark.Type: ApplicationFiled: March 10, 2022Publication date: September 14, 2023Inventors: Michael Soborski, Bodhayan Dev, Prem Swaroop, Atish P. Kamble, Matthias Voigt
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Publication number: 20230230221Abstract: Systems and methods for detecting hail damage on a vehicle are described including, receiving an image of at least a section of a vehicle. Detecting a plurality of hail damage including, detecting a plurality of damaged areas distributed over the entire section of the vehicle, and differentiating the plurality of damaged areas from one or more areas of noise, processing the received image to classify one or more sections of the vehicle as one or more panels of the vehicle bodywork, and using the detected areas of damage, the classification of the seriousness of the damage and the classification of one or more panels to compute a panel damage density estimate.Type: ApplicationFiled: January 5, 2023Publication date: July 20, 2023Inventors: Bodhayan Dev, Atish P. Kamble, Prem Swaroop, Girish Juneja
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Publication number: 20230230340Abstract: Among other things, the techniques described herein include a method for receiving a plurality of images of one or more containers while the one or more containers are being emptied, the plurality of images comprising a training set of images and a validation set of images; labeling each image of the plurality of images as including either an overfilled container or a not-overfilled container; processing each image of the plurality of images to reduce bias of a machine learning model; training, and based on the labeling, the machine learning model using the plurality of images; and optimizing the machine learning model by performing learning against the validation set, the optimized machine learning model being used to generate a prediction for a new image of a container, the prediction indicating whether the container in the new image was overfilled prior to the new container being emptied.Type: ApplicationFiled: March 23, 2023Publication date: July 20, 2023Inventors: Prem Swaroop, Atish P. Kamble, Bodhayan Dev
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Publication number: 20230196382Abstract: Methods, systems, and apparatus, including medium-encoded computer program products, for photocopy or counterfeit detection include: obtaining images with a representation of a same mark and predicting an authenticity of the representation of the same mark in each image to obtain an authenticity prediction corresponding to each image of the set of images. The authenticity predictions are consolidated to determine an ensemble prediction of authenticity associated with the same mark.Type: ApplicationFiled: March 10, 2022Publication date: June 22, 2023Inventors: Bodhayan Dev, Michael Soborski, Atish P. Kamble, Prem Swaroop
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Patent number: 11615275Abstract: Among other things, the techniques described herein include a method for receiving a plurality of images of one or more containers while the one or more containers are being emptied, the plurality of images comprising a training set of images and a validation set of images; labeling each image of the plurality of images as including either an overfilled container or a not-overfilled container; processing each image of the plurality of images to reduce bias of a machine learning model; training, and based on the labeling, the machine learning model using the plurality of images; and optimizing the machine learning model by performing learning against the validation set, the optimized machine learning model being used to generate a prediction for a new image of a container, the prediction indicating whether the container in the new image was overfilled prior to the new container being emptied.Type: GrantFiled: March 17, 2021Date of Patent: March 28, 2023Assignee: The Heil Co.Inventors: Prem Swaroop, Atish P. Kamble, Bodhayan Dev
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Patent number: 11574395Abstract: Systems and methods for detecting hail damage on a vehicle are described including, receiving an image of at least a section of a vehicle. Detecting a plurality of hail damage including, detecting a plurality of damaged areas distributed over the entire section of the vehicle, and differentiating the plurality of damaged areas from one or more areas of noise, processing the received image to classify one or more sections of the vehicle as one or more panels of the vehicle bodywork, and using the detected areas of damage, the classification of the seriousness of the damage and the classification of one or more panels to compute a panel damage density estimate.Type: GrantFiled: November 25, 2020Date of Patent: February 7, 2023Assignee: Vehicle Service Group, LLCInventors: Bodhayan Dev, Atish P. Kamble, Prem Swaroop, Girish Juneja
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Publication number: 20220318616Abstract: Among other things, techniques are described for predictive maintenance using vibration analysis of vane pumps. Sensor data is obtained and pre-processed the sensor data according to at least one feature extraction system. The features are extracted from the pre-processed sensor data and classified into at least one operating condition. A representation of the at least one operating condition is rendered at a device.Type: ApplicationFiled: April 6, 2021Publication date: October 6, 2022Inventors: Atish P. Kamble, Prem Swaroop, Bodhayan Dev, Nicholas Möller
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Publication number: 20220164942Abstract: Systems and methods for detecting hail damage on a vehicle are described including, receiving an image of at least a section of a vehicle. Detecting a plurality of hail damage including, detecting a plurality of damaged areas distributed over the entire section of the vehicle, and differentiating the plurality of damaged areas from one or more areas of noise, processing the received image to classify one or more sections of the vehicle as one or more panels of the vehicle bodywork, and using the detected areas of damage, the classification of the seriousness of the damage and the classification of one or more panels to compute a panel damage density estimate.Type: ApplicationFiled: November 25, 2020Publication date: May 26, 2022Inventors: Bodhayan Dev, Atish P. Kamble, Prem Swaroop, Girish Juneja
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Publication number: 20210326658Abstract: Among other things, the techniques described herein include a method for receiving a plurality of images of one or more containers while the one or more containers are being emptied, the plurality of images comprising a training set of images and a validation set of images; labeling each image of the plurality of images as including either an overfilled container or a not-overfilled container; processing each image of the plurality of images to reduce bias of a machine learning model; training, and based on the labeling, the machine learning model using the plurality of images; and optimizing the machine learning model by performing learning against the validation set, the optimized machine learning model being used to generate a prediction for a new image of a container, the prediction indicating whether the container in the new image was overfilled prior to the new container being emptied.Type: ApplicationFiled: March 17, 2021Publication date: October 21, 2021Inventors: Prem Swaroop, Atish P. Kamble, Bodhayan Dev