Patents by Inventor Dighanchal Banerjee

Dighanchal Banerjee 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).

  • Publication number: 20240126943
    Abstract: Simulation of dynamic physical systems is done using iterative solvers. However, this iterative process is a time consuming and compute intensive process and, for a given set of simulation parameters, the solution does not always converge to a physically meaningful solution, resulting in huge waste of man hours and computation resource. Embodiments herein provide a method and system for stabilizing a diverged numerical simulation and accelerating a converged numerical simulation by changing one or more control parameters. An automatic monitoring mechanism of residue history (to interpret convergence or divergence) and a subsequent control logic to auto-tune the under-relaxation factor would help in stabilizing a diverging simulation and reaching faster convergence by accelerating converging simulation.
    Type: Application
    Filed: September 1, 2023
    Publication date: April 18, 2024
    Applicant: Tata Consultancy Services Limited
    Inventors: Mithilesh Kumar MAURYA, Dighanchal BANERJEE, Dilshad AHMAD, Sounak DEY
  • Publication number: 20230334300
    Abstract: The present disclosure relates to methods and systems for time-series classification using a reservoir-based spiking neural network, that can be used at edge computing applications. Conventional reservoir based SNN techniques addressed either by using non-bio-plausible backpropagation-based mechanisms, or by optimizing the network weight parameters. The present disclosure solves the technical problems of TSC, using a reservoir-based spiking neural network. According to the present disclosure, the time-series data is encoded first using a spiking encoder. Then the spiking reservoir is used to extract the spatio-temporal features for the time-series data. Lastly, the extracted spatio-temporal features of the time-series data is used to train a classifier to obtain the time-series classification model that is used to classify the time-series data in real-time, received from edge devices present at the edge computing network.
    Type: Application
    Filed: December 13, 2022
    Publication date: October 19, 2023
    Applicant: Tata Consultancy Services Limited
    Inventors: Dighanchal BANERJEE, Arijit Mukherjee, Sounak Dey, Arun George, Arpan Pal
  • Publication number: 20230316053
    Abstract: Disadvantage of these existing approaches for spike encoding optimization are that they fail to process multivariate data and perform energy-efficient time series classification at edge. The disclosure herein generally relates to spike encoding optimization, and, more particularly, to a method and system for Mutual Information (MI) based spike encoding optimization. Before performing spike data optimization for a given input multivariate time series data, the system ensures by iteratively adding gaussian noise to the input data that the input data has achieved a maximum MI value. After the input data has achieved a maximum MI value, spike train optimization is done by the system, to generate optimized spike data and in turn a spike reservoir.
    Type: Application
    Filed: November 29, 2022
    Publication date: October 5, 2023
    Applicant: Tata Consultancy Services Limited
    Inventors: DIGHANCHAL BANERJEE, ARIJIT MUKHERJEE, SOUNAK DEY, ARUN GEORGE
  • Publication number: 20230229911
    Abstract: This disclosure relates generally to time series forecasting, and, more particularly, to a system and method for online time series forecasting using spiking reservoir. Existing systems do not cater for efficient online time-series analysis and forecasting due to their memory and computation power requirements. System and method of the present disclosure convert a time series value F(t) at time ‘t’ to an encoded multivariate spike train and extracts temporal features from the encoded multivariate spike train by the excitatory neurons of a reservoir, predict a time series value Y(t + k) at time ‘t’ by performing a linear combination of extracted temporal features with read-out weights, compute an error for predicted time series value Y(t + k) with input time series value F(t + k), employs a FORCE learning on read-out weights using the error to reduce error in future forecasting. Feeding a feedback value back to the reservoir to optimize memory of the reservoir.
    Type: Application
    Filed: November 29, 2022
    Publication date: July 20, 2023
    Applicant: Tata Consultancy Services Limited
    Inventors: Arun GEORGE, Dighanchal BANERJEE, Sounak DEY, Arijit MUKHERJEE
  • Publication number: 20220222522
    Abstract: This disclosure generally relates optimized spike encoding for spiking neural networks (SNNs). The SNN processes data in spike train format, whereas the real world measurements/input signals are in analog (continuous or discrete) signal format; therefore, it is necessary to convert the input signal to a spike train format before feeding the input signal to the SNNs. One of the challenges during conversion of the input signal to the spike train format is to ensure retention of maximum information between the input signal to the spike train format. The disclosure reveals an optimized encoding method to convert the input signal to optimized spike train for spiking neural networks. The disclosed optimized encoding approach enables maximizing mutual information between the input signal and optimized spike train by introducing an optimal Gaussian noise that augments the entire input signal data.
    Type: Application
    Filed: March 1, 2021
    Publication date: July 14, 2022
    Applicant: Tata Consultancy Services Limited
    Inventors: DIGHANCHAL BANERJEE, Sounak DEY, Arijit MUKHERJEE, Arun GEORGE
  • Patent number: 11256954
    Abstract: This disclosure relates to method of identifying a gesture from a plurality of gestures using a reservoir based convolutional spiking neural network. A two-dimensional spike streams is received from neuromorphic event camera as an input. The two-dimensional spike streams associated with at least one gestures from a plurality of gestures is preprocessed to obtain plurality of spike frames. The plurality of spike frames is processed by a multi layered convolutional spiking neural network to learn plurality of spatial features from the at least one gesture. A filter block is deactivated from the plurality of filter blocks corresponds to at least one gesture which are not currently being learnt. A spatio-temporal features is obtained by allowing the spike activations from CSNN layer to flow through the reservoir. The spatial feature is classified by classifier from the CSNN layer and the spatio-temporal features from the reservoir to obtain set of prioritized gestures.
    Type: Grant
    Filed: December 17, 2020
    Date of Patent: February 22, 2022
    Assignee: Tala Consultancy Services Limited
    Inventors: Arun George, Dighanchal Banerjee, Sounak Dey, Arijit Mukherjee
  • Publication number: 20210397878
    Abstract: This disclosure relates to method of identifying a gesture from a plurality of gestures using a reservoir based convolutional spiking neural network. A two-dimensional spike streams is received from neuromorphic event camera as an input. The two-dimensional spike streams associated with at least one gestures from a plurality of gestures is preprocessed to obtain plurality of spike frames. The plurality of spike frames is processed by a multi layered convolutional spiking neural network to learn plurality of spatial features from the at least one gesture. A filter block is deactivated from the plurality of filter blocks corresponds to at least one gesture which are not currently being learnt. A spatio-temporal features is obtained by allowing the spike activations from CSNN layer to flow through the reservoir. The spatial feature is classified by classifier from the CSNN layer and the spatio-temporal features from the reservoir to obtain set of prioritized gestures.
    Type: Application
    Filed: December 17, 2020
    Publication date: December 23, 2021
    Applicant: Tata Consultancy Services Limited
    Inventors: Arun George, Dighanchal Banerjee, Sounak Dey, Arijit Mukherjee
  • Publication number: 20210365778
    Abstract: This disclosure relates generally to action recognition and more particularly to system and method for real-time radar-based action recognition. The classical machine learning techniques used for learning and inferring human actions from radar images are compute intensive, and require volumes of training data, making them unsuitable for deployment on network edge. The disclosed system utilizes neuromorphic computing and Spiking Neural Networks (SNN) to learn human actions from radar data captured by radar sensor(s). In an embodiment, the disclosed system includes a SNN model having a data pre-processing layer, Convolutional SNN layers and a Classifier layer. The preprocessing layer receives radar data including doppler frequencies reflected from the target and determines a binarized matrix. The CSNN layers extracts features (spatial and temporal) associated with the target's actions based on the binarized matrix.
    Type: Application
    Filed: December 15, 2020
    Publication date: November 25, 2021
    Applicant: Tata Consultancy Services Limited
    Inventors: Sounak Dey, Arijit Mukherjee, Dighanchal Banerjee, Smriti Rani, Arun George, Tapas Chakravarty, Arijit Chowdhury, Arpan Pal