I'm trying to get KeithIto's Tacotron model run on Intel OpenVINO with NCS. The model optimizer fails to convert the frozen model to IR format.
After asking in the Intel Forum, I was told the 2018 R5 release didn't have GRU support and I changed it to LSTM cells. But the model still runs well in tensorflow after training it. Also I updated my OpenVINO to 2019 R1 release. But the optimizer still threw errors. The model has mainly two input nodes: inputs[N,T_in] and input_lengths[N]; where N is batch size, T_in is number of steps in the input time series, and values are character IDs with default shapes as [1,?] and . The problem is with [1,?] as model optimizer doesn't allow for dynamic shapes. I tried different values and it always throws some errors.
I tried frozen graphs with output node "model/griffinlim/Squeeze" which is the final decoder output and also with "model/inference/dense/BiasAdd" as mentioned in (https://github.com/keithito/tacotron/issues/95#issuecomment-362854371) which is the input for the Griffin-lim vocoder so that I can do the Spectrogram2Wav part outside the model and reduce it's complexity.
C:\Program Files (x86)\IntelSWTools\openvino\deployment_tools\model_optimizer>python mo_tf.py --input_model "D:\Programming\LSTM\logs-tacotron\freezeinf.pb" --freeze_placeholder_with_value "input_lengths->" --input inputs --input_shape [1,128] --output model/inference/dense/BiasAdd Model Optimizer arguments: Common parameters: - Path to the Input Model: D:\Programming\Thesis\LSTM\logs-tacotron\freezeinf.pb - Path for generated IR: C:\Program Files (x86)\IntelSWTools\openvino\deployment_tools\model_optimizer\. - IR output name: freezeinf - Log level: ERROR - Batch: Not specified, inherited from the model - Input layers: inputs - Output layers: model/inference/dense/BiasAdd - Input shapes: [1,128] - Mean values: Not specified - Scale values: Not specified - Scale factor: Not specified - Precision of IR: FP32 - Enable fusing: True - Enable grouped convolutions fusing: True - Move mean values to preprocess section: False - Reverse input channels: False TensorFlow specific parameters: - Input model in text protobuf format: False - Path to model dump for TensorBoard: None - List of shared libraries with TensorFlow custom layers implementation: None - Update the configuration file with input/output node names: None - Use configuration file used to generate the model with Object Detection API: None - Operations to offload: None - Patterns to offload: None - Use the config file: None Model Optimizer version: 2019.1.0-341-gc9b66a2 [ ERROR ] Shape [ 1 -1 128] is not fully defined for output 0 of "model/inference/post_cbhg/conv_bank/conv1d_8/batch_normalization/batchnorm/mul_1". Use --input_shape with positive integers to override model input shapes. [ ERROR ] Cannot infer shapes or values for node "model/inference/post_cbhg/conv_bank/conv1d_8/batch_normalization/batchnorm/mul_1". [ ERROR ] Not all output shapes were inferred or fully defined for node "model/inference/post_cbhg/conv_bank/conv1d_8/batch_normalization/batchnorm/mul_1". For more information please refer to Model Optimizer FAQ (<INSTALL_DIR>/deployment_tools/documentation/docs/MO_FAQ.html), question #40. [ ERROR ] [ ERROR ] It can happen due to bug in custom shape infer function <function tf_eltwise_ext.<locals>.<lambda> at 0x000001F00598FE18>. [ ERROR ] Or because the node inputs have incorrect values/shapes. [ ERROR ] Or because input shapes are incorrect (embedded to the model or passed via --input_shape). [ ERROR ] Run Model Optimizer with --log_level=DEBUG for more information. [ ERROR ] Exception occurred during running replacer "REPLACEMENT_ID" (<class 'extensions.middle.PartialInfer.PartialInfer'>): Stopped shape/value propagation at "model/inference/post_cbhg/conv_bank/conv1d_8/batch_normalization/batchnorm/mul_1" node. For more information please refer to Model Optimizer FAQ (<INSTALL_DIR>/deployment_tools/documentation/docs/MO_FAQ.html), question #38.
I also tried different methods for freezing the graph.
METHODS 1: Using freeze_graph.py provided in Tensorflow after dumping graph with:
tf.train.write_graph(self.session.graph.as_graph_def(), "models/", "graph.pb", as_text=True)
python freeze_graph.py --input_graph .\models\graph.pb --output_node_names "model/griffinlim/Squeeze" --output_graph .\logs-tacotron\freezeinf.pb --input_checkpoint .\logs-tacotron\model.ckpt-33000 --input_binary=true
METHODS 2: Using the following code after loading the model:
frozen = tf.graph_util.convert_variables_to_constants(self.session,self.session.graph_def, ["model/inference/dense/BiasAdd"]) #model/griffinlim/Squeeze graph_io.write_graph(frozen, "models/", "freezeinf.pb", as_text=False)
I expected the BatchNormalization and Dropout layers to be removed after the freezing, but looking at the errors it seems that it still exists.
OS: Windows 10 Pro
OpenVINO 2019 R1 release
Can anyone help with the above problems with the optimizer?