Patents Assigned to Tiliter Pty Ltd.
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Patent number: 12099578Abstract: In some embodiments, a method can include receiving first images of produce. The method can further include executing a first machine learning model to generate second images of produce based on the first images of produce. The first images of produce can include (1) images of non-bagged produce or (2) images of bagged produce. The second images of produce can include the other of (1) images of non-bagged produce or (2) images of bagged produce. The method can further include training a second machine learning model based on the first images of produce and the second images of produce. The method can further include executing, after the training, the second machine learning model to classify as a bagged produce or a non-bagged produce an image not included in the first images and not included in the second images.Type: GrantFiled: June 7, 2023Date of Patent: September 24, 2024Assignee: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney Sampson, Sufyan Asghar, Rui Dong
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Patent number: 12020356Abstract: In some embodiments, a method includes receiving an image of produce and an image of marking. The image of produce has a set of pixels, each associated with a position and a color value. The method further includes generating a grayscale image from the image of produce. The method further includes cropping out a portion from the grayscale image. The method further includes locating a marking position pixel on the image of produce by: (a) producing a list of pixels that are part of the cropped portion, (b) selecting, from the list of pixels, a subset of pixels having grayscale pixel values above a threshold, and (c) randomly selecting the marking position pixel from the subset of pixels. The method further includes overlaying the image of marking on the image of produce by coinciding a pixel of the image of marking with the marker position pixel.Type: GrantFiled: May 23, 2022Date of Patent: June 25, 2024Assignee: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney Sampson, Khai Van Do
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Publication number: 20240045931Abstract: In some embodiments, a method can include receiving first images of produce. The method can further include executing a first machine learning model to generate second images of produce based on the first images of produce. The first images of produce can include (1) images of non-bagged produce or (2) images of bagged produce. The second images of produce can include the other of (1) images of non-bagged produce or (2) images of bagged produce. The method can further include training a second machine learning model based on the first images of produce and the second images of produce. The method can further include executing, after the training, the second machine learning model to classify as a bagged produce or a non-bagged produce an image not included in the first images and not included in the second images.Type: ApplicationFiled: June 7, 2023Publication date: February 8, 2024Applicant: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney SAMPSON, Sufyan ASGHAR, Rui DONG
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Patent number: 11727678Abstract: In some embodiments, a method can include executing a first model to extract a first region of interest (ROI) image and a second ROI image from an image that shows an item and an indication of information associated to the item. The first ROI image can include a portion of the image showing the item and the second ROI image can include a portion of the image showing the indication of information. The method can further include executing a second model to identify the item from the first ROI image and generate a representation of the item. The method can further include executing a third model to read the indication of information associated to the item from the second ROI image and generate a representation of information.Type: GrantFiled: October 30, 2020Date of Patent: August 15, 2023Assignee: Tiliter Pty Ltd.Inventors: Marcel Herz, Christopher Bradley Rodney Sampson
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Patent number: 11720650Abstract: In some embodiments, a method can include receiving first images of produce. The method can further include executing a first machine learning model to generate second images of produce based on the first images of produce. The first images of produce can include (1) images of non-bagged produce or (2) images of bagged produce. The second images of produce can include the other of (1) images of non-bagged produce or (2) images of bagged produce. The method can further include training a second machine learning model based on the first images of produce and the second images of produce. The method can further include executing, after the training, the second machine learning model to classify as a bagged produce or a non-bagged produce an image not included in the first images and not included in the second images.Type: GrantFiled: October 30, 2020Date of Patent: August 8, 2023Assignee: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney Sampson, Sufyan Asghar, Rui Dong
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Patent number: 11720939Abstract: Disclosed are systems and methods including starting with a first number of images, generating a second number of images by digital operations on the first number of images, extracting features from the second number of images, and generating a classification model by training a neural network on the second number of images wherein the classification model provides a percentage likelihood of an image's categorisation, embedding the classification model in a processor and receiving an image for categorisation, wherein the processor is in communication with a POS system, the processor running the classification model to provide output to the POS system of a percentage likelihood of the image's categorisation.Type: GrantFiled: June 19, 2020Date of Patent: August 8, 2023Assignee: TILITER PTY LTDInventors: Marcel Herz, Christopher Sampson
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Publication number: 20230196738Abstract: In some embodiments, a method can include capturing images of produce. The method can further include generating simulated images of produce based on the images of produce. The method can further include associating each image of produce from the images of produce and each simulated image of produce from the simulated images of produce with a category indicator, an organic type indicator, and a bag type indicator, to generate a training set. The method can further include training a machine leaning model using the training set such that when the machine learning model is executed, the machine learning model receives an image and generates a predicted category indicator of the image, a predicted organic type indicator of the image, and a predicted bag type indicator of the image.Type: ApplicationFiled: February 10, 2023Publication date: June 22, 2023Applicant: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney SAMPSON, Sufyan ASGHAR, Khai Van DO, Rui DONG
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Publication number: 20230106190Abstract: In some embodiments, a method includes receiving an image of produce and an image of marking. The image of produce has a set of pixels, each associated with a position and a color value. The method further includes generating a grayscale image from the image of produce. The method further includes cropping out a portion from the grayscale image. The method further includes locating a marking position pixel on the image of produce by: (a) producing a list of pixels that are part of the cropped portion, (b) selecting, from the list of pixels, a subset of pixels having grayscale pixel values above a threshold, and (c) randomly selecting the marking position pixel from the subset of pixels. The method further includes overlaying the image of marking on the image of produce by coinciding a pixel of the image of marking with the marker position pixel.Type: ApplicationFiled: May 23, 2022Publication date: April 6, 2023Applicant: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney SAMPSON, Khai Van DO
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Patent number: 11599748Abstract: In some embodiments, a method can include capturing images of produce. The method can further include generating simulated images of produce based on the images of produce. The method can further include associating each image of produce from the images of produce and each simulated image of produce from the simulated images of produce with a category indicator, an organic type indicator, and a bag type indicator, to generate a training set. The method can further include training a machine leaning model using the training set such that when the machine learning model is executed, the machine learning model receives an image and generates a predicted category indicator of the image, a predicted organic type indicator of the image, and a predicted bag type indicator of the image.Type: GrantFiled: December 18, 2020Date of Patent: March 7, 2023Assignee: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney Sampson, Sufyan Asghar, Khai Van Do, Rui Dong
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Publication number: 20220198218Abstract: In some embodiments, a method can include capturing images of produce. The method can further include generating simulated images of produce based on the images of produce. The method can further include associating each image of produce from the images of produce and each simulated image of produce from the simulated images of produce with a category indicator, an organic type indicator, and a bag type indicator, to generate a training set. The method can further include training a machine leaning model using the training set such that when the machine learning model is executed, the machine learning model receives an image and generates a predicted category indicator of the image, a predicted organic type indicator of the image, and a predicted bag type indicator of the image.Type: ApplicationFiled: December 18, 2020Publication date: June 23, 2022Applicant: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney SAMPSON, Sufyan ASGHAR, Khai Van DO, Rui DONG
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Patent number: 11341698Abstract: In some embodiments, a method includes receiving an image of produce and an image of marking. The image of produce has a set of pixels, each associated with a position and a color value. The method further includes generating a grayscale image from the image of produce. The method further includes cropping out a portion from the grayscale image. The method further includes locating a marking position pixel on the image of produce by: (a) producing a list of pixels that are part of the cropped portion, (b) selecting, from the list of pixels, a subset of pixels having grayscale pixel values above a threshold, and (c) randomly selecting the marking position pixel from the subset of pixels. The method further includes overlaying the image of marking on the image of produce by coinciding a pixel of the image of marking with the marker position pixel.Type: GrantFiled: December 18, 2020Date of Patent: May 24, 2022Assignee: Tiliter Pty Ltd.Inventors: Christopher Bradley Rodney Sampson, Khai Van Do