Bo-Cheng Chan


2021

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Discussion on domain generalization in the cross-device speaker verification system
Wei-Ting Lin | Yu-Jia Zhang | Chia-Ping Chen | Chung-Li Lu | Bo-Cheng Chan
Proceedings of the 33rd Conference on Computational Linguistics and Speech Processing (ROCLING 2021)

In this paper, we use domain generalization to improve the performance of the cross-device speaker verification system. Based on a trainable speaker verification system, we use domain generalization algorithms to fine-tune the model parameters. First, we use the VoxCeleb2 dataset to train ECAPA-TDNN as a baseline model. Then, use the CHT-TDSV dataset and the following domain generalization algorithms to fine-tune it: DANN, CDNN, Deep CORAL. Our proposed system tests 10 different scenarios in the NSYSU-TDSV dataset, including a single device and multiple devices. Finally, in the scenario of multiple devices, the best equal error rate decreased from 18.39 in the baseline to 8.84. Successfully achieved cross-device identification on the speaker verification system.

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RCRNN-based Sound Event Detection System with Specific Speech Resolution
Sung-Jen Huang | Yih-Wen Wang | Chia-Ping Chen | Chung-Li Lu | Bo-Cheng Chan
Proceedings of the 33rd Conference on Computational Linguistics and Speech Processing (ROCLING 2021)

Sound event detection (SED) system outputs sound events and their time boundaries in audio signals. We proposed an RCRNN-based SED system with residual connection and convolution block attention mechanism based on the mean-teacher framework of semi-supervised learning. The neural network can be trained with an amount of weakly labeled data and unlabeled data. In addition, we consider that the speech event has more information than other sound events. Thus, we use the specific time-frequency resolution to extract the acoustic feature of the speech event. Furthermore, we apply data augmentation and post-processing to improve the performance. On the DCASE 2021 Task 4 validation set, the proposed system achieves the PSDS (Poly-phonic Sound Event Detection Score)-scenario 2 of 57.6% and event-based F1-score of 41.6%, outperforming the baseline score of 52.7% and 40.7%.

2020

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NSYSU+CHT 團隊於 2020 遠場語者驗證比賽之語者驗證系統 (NSYSU+CHT Speaker Verification System for Far-Field Speaker Verification Challenge 2020)
Yu-Jia Zhang | Chia-Ping Chen | Shan-Wen Hsiao | Bo-Cheng Chan | Chung-li Lu
International Journal of Computational Linguistics & {C}hinese Language Processing, Volume 25, Number 2, December 2020

2019

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以三元組損失微調時延神經網路語者嵌入函數之語者辨識系統(Time Delay Neural Network-based Speaker Embedding Function Fine-tuned with Triplet Loss for Distance-based Speaker Recognition)
Chih-Ting Yehn | Po-Chin Wang | Su-Yu Zhang | Chia-Ping Chen | Shan-Wen Hsiao | Bo-Cheng Chan | Chung-li Lu
Proceedings of the 31st Conference on Computational Linguistics and Speech Processing (ROCLING 2019)