Representation alignment (REPA) has been investigated to accelerate diffusion training, but we observe that regularizing intermediate representations in diffusion Transformers (DiT) may implicitly entangle latents and limit generative capacity. To address this issue, we propose ReGen, a hierarchical multi-prompt representation generation framework that jointly estimates multiple vector fields for both representations and data within a single diffusion model. We further introduce generalized flow matching (GFM) to improve the generalization of conditional flow matching (CFM). We validate ReGen on single-stage waveform diffusion models including neural audio codec and Wave-VAE. ReGen significantly improves waveform generation quality from highly compressed latent representations at 12.5 Hz. We also present ReGenVoice, a latent diffusion model (LDM)-based text-to-speech model that achieves strong speech intelligibility (WER) and speaker similarity (SIM) with a small dataset. Moreover, operating the LDM at 6.25 Hz with rich semantic and acoustic latent representation enables efficient training and sampling, requiring only 1 day of training on 4 GPUs and fast inference with an RTF of 0.08.
| GT (24 kHz) |
ReGenVAE-Emilia (24 kHz, 12.5 Hz, 32 Dim.) |
ReGenVAE-LibriTTS (24 kHz, 12.5 Hz, 32 Dim.) |
ReGenTokenizer-Emilia (24 kHz, 25 TPS) |
ReGenTokenizer-LibriTTS (24 kHz, 25 TPS) |
WavTokenizer (24 kHz, 40 TPS) |
WavTokenizer (24 kHz, 75 TPS) |
Mimi (24 kHz, 100 TPS) |
EnCodec (24 kHz, 600 TPS) |
DAC (24 kHz, 600 TPS) |
SpeechTokenizer (16 kHz, 400 TPS) |
BigCodec (16 kHz, 80 TPS) |
X-codec2 (16 kHz, 50 TPS) |
StableCodec (16 kHz, 50 TPS) |
StableCodec (16 kHz, 25 TPS) |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| GT (24 kHz) |
ReGenVAE-Emilia (24 kHz, 12.5 Hz, 32 Dim.) |
ReGenVAE-LibriTTS (24 kHz, 12.5 Hz, 32 Dim.) |
ReGenTokenizer-Emilia (24 kHz, 25 TPS) |
ReGenTokenizer-LibriTTS (24 kHz, 25 TPS) |
WavTokenizer (24 kHz, 40 TPS) |
WavTokenizer (24 kHz, 75 TPS) |
Mimi (24 kHz, 100 TPS) |
EnCodec (24 kHz, 600 TPS) |
DAC (24 kHz, 600 TPS) |
SpeechTokenizer (16 kHz, 400 TPS) |
BigCodec (16 kHz, 80 TPS) |
X-codec2 (16 kHz, 50 TPS) |
StableCodec (16 kHz, 50 TPS) |
StableCodec (16 kHz, 25 TPS) |
| GT (24 kHz) |
ReGenVAE-Emilia (24 kHz, 12.5 Hz, 32 Dim.) |
ReGenVAE-LibriTTS (24 kHz, 12.5 Hz, 32 Dim.) |
ReGenTokenizer-Emilia (24 kHz, 25 TPS) |
ReGenTokenizer-LibriTTS (24 kHz, 25 TPS) |
WavTokenizer (24 kHz, 40 TPS) |
WavTokenizer (24 kHz, 75 TPS) |
Mimi (24 kHz, 100 TPS) |
EnCodec (24 kHz, 600 TPS) |
DAC (24 kHz, 600 TPS) |
SpeechTokenizer (16 kHz, 400 TPS) |
BigCodec (16 kHz, 80 TPS) |
X-codec2 (16 kHz, 50 TPS) |
StableCodec (16 kHz, 50 TPS) |
StableCodec (16 kHz, 25 TPS) |
| GT (24 kHz) |
ReGenVAE-Emilia (24 kHz, 12.5 Hz, 32 Dim.) |
ReGenVAE-LibriTTS (24 kHz, 12.5 Hz, 32 Dim.) |
ReGenTokenizer-Emilia (24 kHz, 25 TPS) |
ReGenTokenizer-LibriTTS (24 kHz, 25 TPS) |
WavTokenizer (24 kHz, 40 TPS) |
WavTokenizer (24 kHz, 75 TPS) |
Mimi (24 kHz, 100 TPS) |
EnCodec (24 kHz, 600 TPS) |
DAC (24 kHz, 600 TPS) |
SpeechTokenizer (16 kHz, 400 TPS) |
BigCodec (16 kHz, 80 TPS) |
X-codec2 (16 kHz, 50 TPS) |
StableCodec (16 kHz, 50 TPS) |
StableCodec (16 kHz, 25 TPS) |
Comparison of audio samples from Prompt, CosyVoice2, CosyVoice3-RL and Ours (ReGenVoice).
| Prompt | Text | CosyVoice2 | CosyVoice3-RL | ReGenVoice |
|---|---|---|---|---|
| The hinge on the door creaked with old age. | ||||
| For this particular purpose, we choose the virtual force system in Fig. | ||||
| Numerous ships were queried and boarded to verify their cargo manifests. | ||||
| Take these capsules over to Mrs. David's house. | ||||
| It had a lower rate of fire and was used as a siege engine. | ||||
| She married David Wallett, and moved to Los Angeles to try acting. | ||||
| The wooden shrine is generously proportioned for the three images it houses. | ||||
| We do not know what rash expressions it may have contained. | ||||
| The doctor cried after his birth. | ||||
| In both cases the silver was alloyed with copper. | ||||
| Prompt | Text | CosyVoice2 | CosyVoice3-RL | ReGenVoice |
| Russo was thrown out of his car and died immediately. | ||||
| Netarhat is famous for its glorious sunrises and sunsets during the summer months. | ||||
| He told them all to be seated. | ||||
| Kenneth A. Schmied and a brother entered the family furniture business. | ||||
| A dog with a water pack is walking through clear green water. | ||||
| It was considered one of the most remarkable engineering feats of the time. | ||||
| They had three sons and lived mainly in Wolvercote, Oxford. | ||||
| Carson greatly admired the talents of Hank Williams. | ||||
| The area was swirling in dust so intense that it hid the moon from view. | ||||
| He did find it, soon after dawn, and not far from the sand pits. | ||||
| Prompt | Text | CosyVoice2 | CosyVoice3-RL | ReGenVoice |
| She was the wealthiest lady in Poland. | ||||
| The children of Gowanda had school that day. | ||||
| My mother has rheumatoid arthritis. | ||||
| There was no replacement for armed forces lost in the fight. | ||||
| The mixture of public and private funding have created complex pension and insurance systems. | ||||
| He was known as "Roaring Bill". | ||||
| He contributed donations to the new Birmingham University following representations by Joseph Chamberlain. | ||||
| He relocated to Bentonville, Arkansas, where he worked for Wal-Mart as a fitness trainer. | ||||
| This was the strangest of all things that ever came to earth from outer space. | ||||
| They defend themselves if they feel threatened, but otherwise tend to ignore humans. | ||||
| Prompt | Text | CosyVoice2 | CosyVoice3-RL | ReGenVoice |
| For a long time, the city's downfall was attributed to its second sacking. | ||||
| He enters the hotel room but finds that everyone already escaped. | ||||
| After I had finished the first batch of papers, I was getting into the workflow. | ||||
| After the war, May returned to work in the textiles industry. | ||||
| He studied in Lausanne and lived with his parents, whose marriage was breaking up. | ||||
| His wife Ginny survives him with their son, two grandchildren and a great grandchild. | ||||
| In many cases, such as France, no distinct regional substructures have been employed. | ||||
| As such, symbols and customs of Mexico grew up in New Mexico as well. | ||||
| Smith was a fellow of the British Academy. | ||||
| It is also used as an initial ingredient in homeopathic remedies. |