Patents by Inventor Anand Sriraman

Anand Sriraman 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: 20240095606
    Abstract: This disclosure relates generally to method and system for predicting shelf life of perishable food items. In supply chain management, current technology provides limited capability in providing relation between visual image of food item and a quality parameter value at different storage conditions. The system includes a quality parameter prediction module and a shelf life prediction module. The method obtains input data from user comprising a visual data and a storage data of each food item. The quality parameter prediction module determines a current quality parameter value of the food item from a look-up table. The shelf life prediction module predicts the shelf life of food item based on the current quality parameter value, a critical quality parameter value and the storage data. The look-up table comprising a plurality of weather zones are generated based on relationship dynamics between the visual image of food item and the quality parameter value.
    Type: Application
    Filed: August 22, 2023
    Publication date: March 21, 2024
    Applicant: Tata Consultancy Services Limited
    Inventors: PRIYA KEDIA, SHANKAR KAUSLEY, MANASI SAMARTH PATWARDHAN, SHIRISH SUBHASH KARANDE, BEENA RAI, JAYITA DUTTA, PARIJAT DESHPANDE, ANAND SRIRAMAN, SHRIKANT ARJUNRAO KAPSE
  • Patent number: 10621474
    Abstract: The most challenging problems in karyotyping are segmentation and classification of overlapping chromosomes in metaphase spread images. Often chromosomes are bent in different directions with varying degrees of bend. Tediousness and time consuming nature of the effort for ground truth creation makes it difficult to scale the ground truth for training phase. The present disclosure provides an end-to-end solution that reduces the cognitive burden of segmenting and karyotyping chromosomes. Dependency on experts is reduced by employing crowdsourcing while simultaneously addressing the issues associated with crowdsourcing. Identified segments through crowdsourcing are pre-processed to improve classification achieved by employing deep convolutional network (CNN).
    Type: Grant
    Filed: February 13, 2018
    Date of Patent: April 14, 2020
    Assignee: Tata Consultancy Services Limited
    Inventors: Monika Sharma, Lovekesh Vig, Shirish Subhash Karande, Anand Sriraman, Ramya Sugnana Murthy Hebbalaguppe
  • Patent number: 10269353
    Abstract: The disclosure generally relates to transcription of spoken words, and more particularly to a system and method for transcription of spoken words using multilingual mismatched words. The process comprises collection of multi-scripted noisy transcriptions of the spoken word obtained from workers of the multilingual mismatched crowd unfamiliar with the spoken language. The collected words are mapped to a phoneme sequence in the source language using script specific graphemes to phoneme model. Further, it builds a multi-scripted transcription script specific, worker specific and a global insertion-deletion-substitution (IDS) channel. Furthermore, the disclosure also determines reputation of workers to allocate the transcription task. Determination of reputation is based on word belief.
    Type: Grant
    Filed: March 31, 2017
    Date of Patent: April 23, 2019
    Assignee: Tata Consultancy Services Limited
    Inventors: Purushotam Gopaldas Radadia, Kanika Kalra, Rahul Kumar, Anand Sriraman, Gangadhara Reddy Sirigireddy, Shrikant Joshi, Shirish Subhash Karande, Sachin Premsukh Lodha
  • Publication number: 20190026604
    Abstract: The most challenging problems in karyotyping are segmentation and classification of overlapping chromosomes in metaphase spread images. Often chromosomes are bent in different directions with varying degrees of bend. Tediousness and time consuming nature of the effort for ground truth creation makes it difficult to scale the ground truth for training phase. The present disclosure provides an end-to-end solution that reduces the cognitive burden of segmenting and karyotyping chromosomes. Dependency on experts is reduced by employing crowdsourcing while simultaneously addressing the issues associated with crowdsourcing. Identified segments through crowdsourcing are pre-processed to improve classification achieved by employing deep convolutional network (CNN).
    Type: Application
    Filed: February 13, 2018
    Publication date: January 24, 2019
    Applicant: Tata Consultany Services Limited
    Inventors: Monika SHARMA, Lovekesh VIG, Shirish Subhash KARANDE, Anand SRIRAMAN, Ramya Sugnana Murthy HEBBALAGUPPE
  • Patent number: 10163197
    Abstract: System and method for layer-wise training of deep neural networks (DNNs) are disclosed. In an embodiment, multiple labelled images are received at a layer of multiple layers of a DNN. Further, the labelled images are pre-processed. The pre-processed images are then transformed based on a predetermined weight matrix to obtain feature representation of the pre-processed images at the layer, the feature representation comprise feature vectors and associated labels. Furthermore, kernel similarity between the feature vectors is determined based on a predefined kernel function. Moreover, a Gaussian kernel matrix is determined based on the kernel similarity. In addition, an error function is computed based on the predetermined weight matrix and the Gaussian kernel matrix. Also, a weight matrix associated with the layer is computed based on the error function and predetermined weight matrix, thereby training the layer of the multiple layers.
    Type: Grant
    Filed: March 30, 2017
    Date of Patent: December 25, 2018
    Assignee: Tata Consultancy Services Limited
    Inventors: Mandar Shrikant Kulkarni, Anand Sriraman, Rahul Kumar, Kanika Kalra, Shirish Subhash Karande, Purushotam Gopaldas Radadia
  • Patent number: 10095957
    Abstract: The present application provides a method and system for unsupervised word image clustering, comprises capturing one or more image wherein the one or more image comprises at least one word images. Extracting at least one feature vector using an untrained convolution neural network architecture, wherein the convolution filters are initialized by random filter based deep learning techniques using Gaussian random variable with zero mean and unit standard deviation, and wherein the convolution filters are constrained to sum to zero. The extracted feature vectors are used for clustering, wherein clustering is performed in two stages. First stage includes clustering word images which are similar using a graph connected component. Second stage clustering includes clustering a remaining word images which are not clustered during the first stage by evaluating the remaining images against the clusters formed during the first stage and assigning them to clusters based on the evaluation.
    Type: Grant
    Filed: February 14, 2017
    Date of Patent: October 9, 2018
    Assignee: Tata Consultancy Services Limited
    Inventors: Mandar Shrikant Kulkarni, Anand Sriraman, Rahul Kumar, Kanika Kalra, Shirish Subhash Karande, Sachin Premsukh Lodha
  • Publication number: 20180158181
    Abstract: System and method for layer-wise training of deep neural networks (DNNs) are disclosed. In an embodiment, multiple labelled images are received at a layer of multiple layers of a DNN. Further, the labelled images are pre-processed. The pre-processed images are then transformed based on a predetermined weight matrix to obtain feature representation of the pre-processed images at the layer, the feature representation comprise feature vectors and associated labels. Furthermore, kernel similarity between the feature vectors is determined based on a predefined kernel function. Moreover, a Gaussian kernel matrix is determined based on the kernel similarity. In addition, an error function is computed based on the predetermined weight matrix and the Gaussian kernel matrix. Also, a weight matrix associated with the layer is computed based on the error function and predetermined weight matrix, thereby training the layer of the multiple layers.
    Type: Application
    Filed: March 30, 2017
    Publication date: June 7, 2018
    Applicant: Tata Consultancy Services Limited
    Inventors: Mandar Shrikant Kulkarni, Anand Sriraman, Rahul Kumar, Kanika Kalra, Shirish Subhash Karande, Purushotam Gopaldas Radadia
  • Publication number: 20180061417
    Abstract: The disclosure generally relates to transcription of spoken words, and more particularly to a system and method for transcription of spoken words using multilingual mismatched words. The process comprises collection of multi-scripted noisy transcriptions of the spoken word obtained from workers of the multilingual mismatched crowd. The collected words are mapped to a phoneme sequence in the source language using script specific graphemes to phoneme model. Further, it builds a multi-scripted transcription script specific, worker specific and a global insertion-deletion-substitution (IDS) channel. Furthermore, the disclosure also determines reputation of workers to allocate the transcription task. Determination of reputation is based on word belief.
    Type: Application
    Filed: March 31, 2017
    Publication date: March 1, 2018
    Applicant: Tata Consultancy Services Limited
    Inventors: Purushotam Gopaldas Radadia, Kanika Kalra, Rahul Kumar, Anand Sriraman, Gangadhara Reddy Sirigireddy, Shrikant Joshi, Shirish Subhash Karande, Sachin Premsukh Lodha
  • Publication number: 20170270387
    Abstract: The present application provides a method and system for unsupervised word image clustering, comprises capturing one or more image wherein the one or more image comprises at least one word images. Extracting at least one feature vector using an untrained convolution neural network architecture, wherein the convolution filters are initialized by random filter based deep learning techniques using Gaussian random variable with zero mean and unit standard deviation, and wherein the convolution filters are constrained to sum to zero. The extracted feature vectors are used for clustering, wherein clustering is performed in two stages. First stage includes clustering word images which are similar using a graph connected component. Second stage clustering includes clustering a remaining word images which are not clustered during the first stage by evaluating the remaining images against the clusters formed during the first stage and assigning them to clusters based on the evaluation.
    Type: Application
    Filed: February 14, 2017
    Publication date: September 21, 2017
    Applicant: Tata Consultancy Services Limited
    Inventors: Mandar Shrikant Kulkarni, Anand Sriraman, Rahul Kumar, Kanika KaIra, Shirish Subhash Karande, Sachin Premsukh Lodha
  • Publication number: 20170200101
    Abstract: Optimizing task allocation requires taking into account cognitive load on workers and their response time to allocated tasks. The present disclosure provides for allocation of task by receiving data pertaining to current activity of workers; receiving data pertaining to at least one task to be allocated and determining activity-task pairs based on an activity feature vector corresponding to at least one human body part used during the current activity and a task feature vector corresponding to at least one human body part required for the at least one task to be performed by the workers. Cognitive load on the workers is then estimated for the determined activity-task pairs. An optimum activity-task pair based on the estimated cognitive load is determined and at least one task is allocated to the workers based on the determined optimum activity-task pair.
    Type: Application
    Filed: January 6, 2017
    Publication date: July 13, 2017
    Applicant: Tata Consultancy Services Limited
    Inventors: Rahul KUMAR, Anand SRIRAMAN, Mandar Shrikant KULKARNI, Kanika KALRA, Shirish Subhash KARANDE, Sachin Premsukh LODHA
  • Publication number: 20150220864
    Abstract: The present subject matter discloses a system and a method for allocating task on crowdsourcing platform. A task may be received from a first user on the platform. Further, a protocol may be configured by the first user indicating one or more task actions to be performed for completing the task. Further, a hierarchy comprising a plurality of micro-tasks associated with the task may be created. Based on the protocol configured, the system may assign a task action to each of the plurality of micro-tasks. Further, the system may allocate each of the plurality of micro-tasks to a second user based on the task action assigned and a set of parameters. The set of parameters may comprise second user's metadata, completion time associated with each micro-task, size of each micro-task, and form factor of an interface accessed by the second user.
    Type: Application
    Filed: February 5, 2015
    Publication date: August 6, 2015
    Inventors: Shirish Subhash Karande, Iyengar Venkatachary Srinivasan, Sachin P. Lodha, Anand Sriraman, Kanika Kalra, Rahul Kumar