Patents by Inventor Aaron CHADHA
Aaron CHADHA 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: 12244792Abstract: A method of processing, prior to encoding using an external encoder, image data using an artificial neural network is provided. The external encoder is operable in a plurality of encoding modes. At the neural network, image data representing one or more images is received. The image data is processed using the neural network to generate output data indicative of an encoding mode selected from the plurality of encoding modes of the external encoder. The neural network trained to select using image data an encoding mode of the plurality of encoding modes of the external encoder using one or more differentiable functions configured to emulate an encoding process. The generated output data is outputted from the neural network to the external encoder to enable the external encoder to encode the image data using the selected encoding mode.Type: GrantFiled: June 16, 2021Date of Patent: March 4, 2025Assignee: Sony Interactive Entertainment Europe LimitedInventors: Aaron Chadha, Ioannis Andreopoulos
-
Publication number: 20240070819Abstract: Image data of a first image in a sequence of images is processed using an artificial neural network (ANN) to generate output image data indicative of an alignment of the first image with a second image in the sequence. The ANN is trained using outputs of an alignment pipeline configured to perform alignment of images. The alignment pipeline is configured to determine flow vectors representing optical flow between images, and perform an image transformation using the flow vectors to align the images. The ANN is trained to emulate a result derivable using the alignment pipeline.Type: ApplicationFiled: January 31, 2023Publication date: February 29, 2024Inventors: Ayan BHUNIA, Muhammad Umar Karim KHAN, Aaron CHADHA, Ioannis ANDREOPOULOS
-
Publication number: 20240062333Abstract: Image data representing one or more images at a first resolution is received at a first artificial neural network (ANN). The image data is processed using the first ANN to generate upscaled image data representing the one or more images at a second, higher resolution. The first ANN is trained to perform image upscaling and is trained using first training image data representing one or more training images at the first resolution, the first training image data being at a first level of quality. The first ANN is also trained using features of a second ANN, wherein the second ANN is trained to perform image upscaling and is trained using second training image data representing one or more training images at the first resolution, the second training image data being at a second level of quality, higher than the first level of quality.Type: ApplicationFiled: January 31, 2023Publication date: February 22, 2024Inventors: Muhammad Umar Karim KHAN, Ayan Bhunia, Aaron Chadha, Ioannis Andreopoulos
-
Publication number: 20230254230Abstract: A method of processing a time-varying signal in a signal processing system. Data representative of one or more first time samples of the time-varying signal is received at an artificial neural network, ANN. The received data is processed using the ANN to generate predicted data representative of a second time sample of the time-varying signal, the second time sample being later than the one or more first time samples. The ANN is trained to predict data representative of time samples of time-varying signals based on data representative of earlier time samples of the time-varying signals. The signal processing system processes the predicted data representative of the second time sample in place of a third time sample of the time-varying signal, the third time sample being earlier than the second time sample.Type: ApplicationFiled: July 13, 2022Publication date: August 10, 2023Inventors: Aaron CHADHA, Ioannis ANDREOPOULOS, Matthias TREDER, Jia-Jie LIM
-
Publication number: 20230145616Abstract: A computer-implemented method of processing image data using a model of the human visual system. The model comprises a first artificial neural network system trained to generate the first output data using one or more differentiable functions configured to model the generation of signals from images by the human eye, and a second artificial neural network system trained to generate the second output data using one or more differentiable functions configured to model the processing of signals from the human eye by the human visual cortex. The method comprises receiving image data representing one or more images, processing the received image data using the first artificial neural network system to generate first output data, processing the first output data using a second artificial neural network system to generate second output data. Model output data is determined from the second output data, and output for use in an image processing process.Type: ApplicationFiled: January 5, 2022Publication date: May 11, 2023Inventors: Aaron CHADHA, Ioannis ANDREOPOULOS, Matthias TREDER
-
Publication number: 20230112647Abstract: A method of processing image data is provided. Pixel data for a first image is preprocessed to identify a subset of the pixel data corresponding to a region of interest depicting a scene element. The subset of the pixel data is processed at a first encoder to generate a first data structure representative of the region of interest, the first data structure identifying the scene element depicted in the region of interest. The subset of pixel data is also processed at a second encoder to generate a second data structure representative of the region of interest, the second data structure comprising values for visual characteristics associated with the scene element. The first and second data structures are outputted for use by a decoder to generate a second image approximating the region of interest of the first image.Type: ApplicationFiled: December 3, 2021Publication date: April 13, 2023Inventors: Matthias TREDER, Aaron CHADHA, Ilya FADEEV, Ioannis ANDREOPOULOS
-
Publication number: 20220321879Abstract: A method of processing, prior to encoding using an external encoder, image data using an artificial neural network is provided. The external encoder is operable in a plurality of encoding modes. At the neural network, image data representing one or more images is received. The image data is processed using the neural network to generate output data indicative of an encoding mode selected from the plurality of encoding modes of the external encoder. The neural network trained to select using image data an encoding mode of the plurality of encoding modes of the external encoder using one or more differentiable functions configured to emulate an encoding process. The generated output data is outputted from the neural network to the external encoder to enable the external encoder to encode the image data using the selected encoding mode.Type: ApplicationFiled: June 16, 2021Publication date: October 6, 2022Inventors: Aaron CHADHA, Ioannis ANDREOPOULOS
-
Patent number: 11445222Abstract: Certain aspects of the present disclosure provide techniques for preprocessing, prior to encoding with an external encoder, image data using a preprocessing network comprising a set of inter-connected weights is provided. At the preprocessing network, image data from one or more images is received. The image data is processed using the preprocessing network to generate an output pixel representation for encoding with the external encoder. The weights of the preprocessing network are trained to optimize a combination of at least one quality score indicative of the quality of the output pixel representation and a rate score indicative of the bits required by the external encoder to encode the output pixel representation.Type: GrantFiled: September 29, 2020Date of Patent: September 13, 2022Assignee: ISIZE LIMITEDInventors: Ioannis Andreopoulos, Aaron Chadha
-
Patent number: 11223833Abstract: A method of preprocessing, prior to encoding with an external encoder, image data using a preprocessing network comprising a set of inter-connected learnable weights is provided. At the preprocessing network, image data from one or more images is received. The image data is processed using the preprocessing network to generate an output pixel representation for encoding with the external encoder. The preprocessing network is configured to take as an input encoder configuration data representing one or more configuration settings of the external encoder. The weights of the preprocessing network are dependent upon the one or more configuration settings of the external encoder.Type: GrantFiled: September 30, 2020Date of Patent: January 11, 2022Assignee: iSize LimitedInventors: Ioannis Andreopoulos, Aaron Chadha
-
Publication number: 20210211682Abstract: A method of preprocessing, prior to encoding with an external encoder, image data using a preprocessing network comprising a set of inter-connected learnable weights is provided. At the preprocessing network, image data from one or more images is received. The image data is processed using the preprocessing network to generate an output pixel representation for encoding with the external encoder. The preprocessing network is configured to take as an input encoder configuration data representing one or more configuration settings of the external encoder. The weights of the preprocessing network are dependent upon the one or more configuration settings of the external encoder.Type: ApplicationFiled: September 30, 2020Publication date: July 8, 2021Inventors: Ioannis ANDREOPOULOS, Aaron CHADHA