vgg_19 slim model a frozen.pb graph? - tensorflow-serving

I downloaded the vgg_19_2016_08_28.tar.gz and extracted a vgg-19.pb graph. I am using this for tf2onnx. However, this seems to have some dynamic parameters and hence tf2onnx if failing. I want to check if the vgg-19.pb is a frozen graph, if not how can I get a frozen vgg_19.pb graph?
Same question for tensorflow_inception_graph - inception_v3_2016_08_28.tar.gz
Same question for resnet - resnet_v1_50_2016_08_28.tar.gz
All downloaded from here - https://github.com/tensorflow/models/tree/master/research/slim#pre-trained-models

To convert TF models to ONNX you need to freeze the graph. The TensorFlow tool to freeze the graph is https://github.com/tensorflow/tensorflow/blob/master/tensorflow/python/tools/freeze_graph.py
For example
python -m tensorflow.python.tools.freeze_graph \
--input_graph=my_checkpoint_dir/graphdef.pb \
--input_binary=true \
--output_node_names=output \
--input_checkpoint=my_checkpoint_dir \
--output_graph=tests/models/fc-layers/frozen.pb
To find the inputs and outputs for the TensorFlow graph the model developer will know or you can consult TensorFlow's summarize_graph tool (https://github.com/tensorflow/tensorflow/tree/master/tensorflow/tools/graph_transforms), for example:
summarize_graph --in_graph=tests/models/fc-layers/frozen.pb

Related

how to prune a model from model_main_tf2

I have trained a customer object detection using
python model_main_tf2.py \
--pipeline_config_path=/[ssd_mobilenet_v2_fpnlite_320x320_coco17_tpu8/pipeline.config][1] \
--model_dir=/content/drive/MyDrive/training_object \
--alsologtostderr
I would like to prune the resulting model according to the official guide here. however, the guide works with keras format model and the result of model_main_tf2 is tensorflow.python.saved_model.load.Loader._recreate_base_user_object.<locals>._UserObject and does not have meta data

How do I plot the validation loss in Tensorboard for object detection?

I am training an object detection model using Tensorflow's object detection API, specifically the model_main_tf2.py script. For some reason only the training accuracy is plotted, but not the validation. Can anyone help me in this regard? I would really appreciate it.
Here is the full command I'm using to start the training:
python3 model_main_tf2.py --model_dir /trained_model/ \
-- sample_1_of_n_eval_examples 10 \
--pipeline_config_path pipeline.config \
--alsologtostderr
P.S. There seem to be some answers on Stackoverflow for model_main.py, but not for the tf2 version

How to convert a tflite model into a frozen graph (.pb) in Tensorflow?

I would like to convert an integer quantized tflite model into a frozen graph (.pb) in Tensorflow. I read through and tried many solutions on StackOverflow and none of them worked. Specifically, toco didn't work (output_format cannot be TENSORFLOW_GRAPHDEF).
My ultimate goal is to get a quantized ONNX model through tf2onnx, yet tf2onnx does not support tflite as input (only saved_model, checkpoint and graph_def are supported). However, after quantizing the trained model using TFLiteConverter, it only returns a tflite file. This is where the problem arises.
The ideal flow is essentially this: tf model in float32 -> tflite model in int8 -> graph_def -> onnx model. I am stuck at the second arrow.
The ability to convert tflite models to .pb was removed after Tensorflow version r1.9. Try downgrading your TF version to 1.9 and then something like this
bazel run --config=opt \
//tensorflow/contrib/lite/toco:toco -- \
--input_file=/tmp/foo.tflite \
--output_file=/tmp/foo.pb \
--input_format=TFLITE \
--output_format=TENSORFLOW_GRAPHDEF \
--input_shape=1,128,128,3 \
--input_array=input \
--output_array=MobilenetV1/Predictions/Reshape_1
Here is the source.

How to get rid of additional ops added in the graph while fine-tuning Tensorflow Inception_V3 model?

I am trying to convert a fine-tuned tensorflow inception_v3 model to uff format which can be run on NVIDIA's Jetson TX2. For conversion to uff, certain ops are supported, some are not. I am able to successfully freeze and convert to uff inception_v3 model with imagenet checkpoint provided by tensorflow. However if I fine-tune the model, additional ops like Floor, RandomUniform, etc are added in the new graph which are not yet supported. These layers remain even after freezing the model. This is happening in the fine-tuning for flowers sample provided on tensorflow site as well.
I want to understand why additional ops are added in the graph, while fine-tuning is just supposed to modify the final layer to match number of outputs required.
If they are added while training, how can I get rid of them? What post-processing steps tensorflow team followed before releasing inception_v3 model for imagenet?
I can share the pbtxt files if needed. For now, model layers details are uploaded at https://github.com/shrutim90/TF_to_UFF_Issue. I am using Tensorflow 1.6 with GPU.
I am following the steps to freeze or fine-tune the model from: https://github.com/tensorflow/models/tree/master/research/slim#Pretrained. As described in the above link, to reproduce the issue, install TF-Slim image models library and follow these steps:
1. python export_inference_graph.py \
--alsologtostderr \
--model_name=inception_v3 \
--output_file=/tmp/inception_v3_inf_graph.pb
2. python freeze_graph.py \
--input_graph=/tmp/inception_v3_inf_graph.pb \
--input_checkpoint=/tmp/checkpoints/inception_v3.ckpt \
--input_binary=true --output_graph=/tmp/frozen_inception_v3.pb \
--output_node_names=InceptionV3/Predictions/Reshape_1
3. DATASET_DIR=/tmp/flowers
TRAIN_DIR=/tmp/flowers-models/inception_v3
CHECKPOINT_PATH=/tmp/my_checkpoints/inception_v3.ckpt
python train_image_classifier.py --train_dir=$TRAIN_DIR --dataset_dir=$DATASET_DIR --dataset_name=flowers --dataset_split_name=train --model_name=inception_v3 --checkpoint_path=${CHECKPOINT_PATH} --checkpoint_exclude_scopes=InceptionV3/Logits,InceptionV3/AuxLogits --trainable_scopes=InceptionV3/Logits,InceptionV3/AuxLogits
4. python freeze_graph.py \
--input_graph=/tmp/graph.pbtxt \
--input_checkpoint=/tmp/checkpoints/model.ckpt-2539 \
--input_binary=false --output_graph=/tmp/frozen_inception_v3_flowers.pb \
--output_node_names=InceptionV3/Predictions/Reshape_1
To check the layers, you can check out .pbtxt file or use NVIDIA's convert-to-uff utility.
Run training script -> export_inference_graph -> freeze_graph . This gets rid of all the extra nodes and model can be easily converted to uff.

Can I convert the tensorflow inception pb model to tflite model?

I see the guide of converting tensorflow pb model, only given to mobilenet model
https://github.com/tensorflow/tensorflow/tree/master/tensorflow/contrib/lite#step-2-model-format-conversion
So my question is, can I convert the tensorflow inception pb model to tflite model?
If yes, where can I get the checkpoint (ckpt) file? I can't find them for inception model in https://github.com/tensorflow/models/tree/master/research/slim/nets.
Did I miss anything?
Yes, you should also be able to convert an inception model to TFLITE. You only need the checkpoints if the graph is not yet frozen. If the graph is already frozen (what I assume), you should be able to convert it with the following command:
bazel run --config=opt //tensorflow/contrib/lite/toco:toco -- \
--input_file=**/path/to/your/graph.pb** \
--output_file=**/path/to/your/output.tflite** \
--input_format=TENSORFLOW_GRAPHDEF \
--output_format=TFLITE \
--inference_type=FLOAT \
--input_shape=1,299,299,3 \
--input_array=**your_input** \
--output_array=**your_final_tensor**
(you have to replace the text between the asterisks with the arguments that applies to your case; --inputs=Mul for example)
Note on --inputs=Mul
Some of the TF commands used in Inception v3 are not supported by TFLITE (decodejpeg, expand_dims), since they typically do not have to be adopted by the model on the mobile phone (these tasks are done directly in the app code). Therefore you have to define where you want to hook into the graph with TF Lite.
You will probably get the following error message without using input_array:
Some of the operators in the model are not supported by the standard TensorFlow Lite runtime. If you have a custom implementation for them you can disable this error with --allow_custom_ops. Here is a list of operators for which you will need custom implementations: DecodeJpeg, ExpandDims.
I hope I could help you. I'm just struggling with converting retrained graphs around.