Wipro Limited
METHOD AND SYSTEM FOR PERFORMING CLASSIFICATION OF REAL-TIME INPUT SAMPLE USING COMPRESSED CLASSIFICATION MODEL

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Abstract:

The present disclosure relates to method and system for performing classification of real-time input sample using compressed classification model. Classification system receives classification model configured to classify training input sample. Relevant neurons are identified from neurons of the classification model. Classification error is identified for each class. Reward value is determined for the relevant neurons based on relevance score of each neuron and the classification error. Optimal image is generated for each class based on the reward value of the relevant neurons. The optimal image is provided to the classification model for generating classification error vector for each class. The classification error vector is used for identifying pure neurons from the relevant neurons. A compressed classification model comprising the pure neurons is generated. The generated compressed classification model is used for performing the classification of real-time input sample.

Status:
Application
Type:

Utility

Filling date:

2 Dec 2020

Issue date:

31 Mar 2022