fix image link (#612)

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Hui Zhang 4 years ago committed by GitHub
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@ -4,7 +4,7 @@
We compare the training time with 1, 2, 4, 8 Tesla V100 GPUs (with a subset of LibriSpeech samples whose audio durations are between 6.0 and 7.0 seconds). And it shows that a **near-linear** acceleration with multiple GPUs has been achieved. In the following figure, the time (in seconds) cost for training is printed on the blue bars.
<img src="images/multi_gpu_speedup.png" width=450><br/>
<img src="../images/multi_gpu_speedup.png" width=450><br/>
| # of GPU | Acceleration Rate |
| -------- | --------------: |

@ -101,7 +101,7 @@ LP -> LO -> L1(#1) -> L2(#2) -> L3(#3) -> L4(#4) -> L5 -> L6 -> L7
常用方法使用的是级联CRF首先预测如果是PW再继续预测是否是PPH再预测是否是IPH
<img src="images/prosody.jpeg" width=450><br/>
<img src="../images/prosody.jpeg" width=450><br/>
论文: 2015 .Ding Et al. - Automatic Prosody Prediction For Chinese Speech Synthesis Using BLSTM-RNN and Embedding Features

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