Papers

Confidence Learning from Noisy Labels for Arabic Dialect Identification

International Conference
작성자
dsp
작성일
2021-06-28 12:44
조회
1184
Authors : Zainab Alhakeem, Hong-Goo Kang

Year : 2021

Publisher / Conference : ITC-CSCC

Research area : Speech Signal Processing

Presentation : 구두

In this paper, we propose a new deep learning network for Arabic Dialect Identification (ADI) that addresses the incorrect label problem using confidence information. The dataset recently released for the MGB-5 ADI challenge includes a small amount of verified labels but a large amount of noisy labels,
which makes the ADI task very challenging. We propose a confidence learning network (CLN) that utilizes a multi-task learning strategy to handle confidence information by leveraging the verified and noisy label sets. The proposed CLN employs a confidence refinement module using a Gumbel softmax sampler that generates representations with more discriminative capabilities. Experimental results demonstrate that the proposed CLN model shows higher classification accuracy than conventional state of-the-art ADI systems.
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