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People |
This Week |
Next Week |
Task Tracking (DeadLine)
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Dong Wang
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- Refine spoof paper
- Prepare talk for information theory in NN
- Prepare talk for representation investigation.
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Yunqi Cai
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- review papers about CQDs
- Verify the deconvolution of infrared and visible faces
- Verify infrared and visible image fusion based on GLOW model
- Arrange research plans for interns
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Lantian Li
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- Finish course on AI.
- Study speaker separation and think about structural embedding.
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- Finish ETM response.
- Exps of hard trials.
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Ying Shi
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- Report about e2e kws
- speech engrave (garbage node, sil training data, text to speech attention)
- analyse fenyinta test data [here]
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- more analyse about speech engrave(speech to text attention)
- speech engrave (text to speech attention)
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Haoran Sun
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- make some more efficient attempts
- ——remove rhythm and pitch encoders
- ——increase distance between speakers
- ——improve content encoder
- ——make use of speaker label
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Chen Chen
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- pre-process audio data & train GAN with wav2vec2 output data directly
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- use kmeans and pca clustering wav2vec2 output to build better segment representation
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Pengqi Li
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- reproduce a series of CAM method on speaker classification
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Qingyang Zhu
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Weida Liang
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- Finish the first version on improved exemplar autoencoder with cycle loss
- Rethink the theory analysis part
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- Test on never-before-seen speaker conversion
- Review the code of wav2vec, StarGAN and PPG based GAN
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Zixi Yan
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Sirui Li
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- Fine-tune the wav2vec model
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- Comparing Tibetan and Chinese fine-tune results
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Haoyu Jiang
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- Face sampling in CNCeleb dataset
- Filter videos without the target's face
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Renmiao Chen
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- Sample some audio,listen and analyze
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