Comments (4)
The architecture we are using is similar to WaveRNN, in the sense that it has 2 different networks. The conditioning network that runs once for every frame, upsampling the input conditioning features to the sample rate. And the model network that runs once for every sample, combining the output of the conditioning network with the state of the previous samples to generate the next sample in an autoregressive fashion. When benchmarking we report the time for each of these networks, as well as the combined total.
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Thanks for your response. I want to know :
The audio quality of conditioning_only decoder. Which is better, conditioning_only or model_only ? And which type of decoder in the guide of README.md when the command is "babel-bin/decoder_main --model_path=wavegru" . How can I get the generate audio for conditioning_only decoder.
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Oh, sorry I wasn't clear. Lyra always uses conditioning and model networks. There is no way to generate audio with conditioning only. We only report the complexity of each network separately in the benchmark tool to have a finer grain understanding of the computational complexity of different networks.
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I got it. thanks!
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Related Issues (20)
- ANDROID BUILD HOT 1
- Can't load TFLite output_details for quantizer model (encode) HOT 3
- When will lyra support ios platform? HOT 1
- The decoding CPU is too high. Is there any way to reduce it?
- model structure of lyra 1.3.2
- About crash problem with kInternalSampleRateHz set to 32k
- Android app built as per readme crashes (on Samsung S23) HOT 1
- how to read the encoded data in the sample1_16kHz.lyra file into python/numpy array?
- Directly provide the executable download address HOT 3
- Is that possible to release the model coeffs with codebook size=1024?
- Is it possible to still run the V1 model with the latest API? Or only V2
- LMCodec HOT 2
- Build fails on MacOS due to bad Tensorflow link HOT 1
- Noise is being added to generated speech in Python E2E flow (TFLite Models) HOT 2
- The Lyra Parameters
- bazel build -c opt lyra/cli_example:encoder_main
- support of sdk 34 and ndk
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