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Sanskrit ASR Noisy Benchmark Dataset: Kathbath Sanskrit Noisy Test Unknown

Sanskrit ASR Noisy Benchmark Dataset: Kathbath Sanskrit Noisy Test Unknown

Sanskrit ASR (Automatic Speech Recognition) benchmark noisy test dataset from Bhashini for supporting the development of robust regional speech recognition systems.

About Dataset

This is a Sanskrit ASR benchmark dataset specifically designed to evaluate and improve Automatic Speech Recognition (ASR) systems in noisy and challenging scenarios, particularly in the general domain. The dataset comprises 1684 hours of labeled speech data across 12 Indian languages, with a focus on Sanskrit. This dataset variant, known as "Kathbath-Sanskrit-Noisy-Test-Unknown," provides researchers and developers with a critical resource for building robust ASR models capable of handling real-world noisy conditions. Submitted by Tahir Javed, it supports advancements in speech recognition technologies for regional languages.

Activity Overview Activity Overview

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  • File Size 146.60 MB

Tags Tags

  • NLP Dataset
  • Benchmark
  • General Domain
  • Automatic Speech Recognition
  • Speech Technology
  • ASR
  • Regional Languages
  • Noisy Data
  • Audio Processing
  • Sanskrit
  • Tahir Javed

License Control License Control

Attribution-ShareAlike 4.0 International (CC BY-SA 4.0)

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  • admin·1 year(s) ago
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