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Signed-off-by: Jael Gu <mengjia.gu@zilliz.com>
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README.md
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@ -11,7 +11,7 @@ Each vector represents for an audio clip with a fixed length of around 1s. |
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This operator generates audio embeddings with fingerprinting method introduced by [Neural Audio Fingerprint](https://arxiv.org/abs/2010.11910). |
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The model is implemented in Pytorch. |
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We've also trained the nnfp model with [FMA dataset](https://github.com/mdeff/fma) (& some noise audio) and shared weights in this operator. |
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The nnfp operator is suitable to generate audio fingerprints. |
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The nnfp operator is suitable for audio fingerprinting. |
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<br /> |
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@ -84,7 +84,7 @@ An audio embedding operator generates vectors in numpy.ndarray given towhee audi |
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*data: List[towhee.types.audio_frame.AudioFrame]* |
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Input audio data is a list of towhee audio frames. |
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The input data should represent for an audio longer than 1s. |
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The audio input should be at least 1s. |
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**Returns**: |
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