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train_ssd_mobilenet's Introduction


My training machine

  • AWS p3.2xlarge(Tesla V100 16GB 300W)

    • Ubuntu 16.04
    • docker-ce
    • nvidia-docker
      • nvidia/cuda
      • Python 3.6.3/OpenCV 3.3.1/Tensorflow r1.4.1 (build from source)
      • Tensorflow Object Detection API (branch r1.5)
    • nvidia-docker
      • nvidia/cuda:9.0-devel-ubuntu16.04
      • Python 2.7.12/OpenCV 3.4.2/Tensorflow r1.8.0 (build from source)
      • Tensorflow Object Detection API (branch master)
  • PC

    • CPU: i7-8700 3.20GHz 6-core 12-threads
    • GPU: NVIDIA GTX1060 6GB 120W
    • MEMORY: 32GB
    • Ubuntu 16.04
    • docker-ce
    • nvidia-docker
      • nvidia/cuda:9.0-devel-ubuntu16.04
      • Pyton 2.7.12/OpenCV 3.4.2/Tensorflow 1.8.0 (build from source)
      • Tensorflow Object Detection API (branch master)


Install LabelImg on your Ubuntu desktop PC.

Install LabelImg.

mkdir ~/github
sudo apt-get install -y pyqt4-dev-tools
sudo apt-get install -y python-pip
sudo pip install --upgrade pip
sudo pip install lxml

cd ~/github
git clone https://github.com/tzutalin/labelImg

cd ~/github/labelImg
make qt4py2

Make all image's label with LabelImg.

cd ~/github/labelImg
./labelImg.py

labelImg.png

Divide directory of jpg file and xml file.

mkdir ~/roadsign_data/PascalVOC/JPEGImages
mkdir ~/roadsign_data/PascalVOC/Annotations

# in your data dir
mv *.jpg ~/roadsign_data/PascalVOC/JPEGImages
mv *.xml ~/roadsign_data/PascalVOC/Annotations

Make your label_map file like this.
file:./roadsign_data/roadsign_label_map.pbtxt

item {
  id: 1
  name: 'stop'
}

item {
  id: 2
  name: 'speed_10'
}

item {
  id: 3
  name: 'speed_20'
}

item {
  id: 4
  name: 'speed_30'
}

Copy the data to training machine.
Example:

scp -r ~/roadsign_data training_machine:~/github/train_ssd_mobilenet/

 


Branch r1.5.

cd ~/github
git clone https://github.com/tensorflow/models
cd models/
git fetch
git checkout r1.5

You can use master branch, but it occasionally causes an error.

If you want to run on r1.4.1, you need to fix this problem.
ValueError: Protocol message RewriterConfig has no "layout_optimizer" field.
tensorflow/tensorflow#16268

Edit ~/github/models/research/object_detection/exporter.py L:71-72

        rewrite_options = rewriter_config_pb2.RewriterConfig()
sudo apt-get install -y protobuf-compiler
cd ~/github/models/research
protoc object_detection/protos/*.proto --python_out=.

For tensorflow/models master branch, protobuf version 3 is required.
If you get an error please install protobuf version 3 first.
Install protobuf 3 on Ubuntu

# Make sure you grab the latest version
curl -OL https://github.com/google/protobuf/releases/download/v3.2.0/protoc-3.2.0-linux-x86_64.zip

# Unzip
unzip protoc-3.2.0-linux-x86_64.zip -d protoc3

# Move protoc to /usr/local/bin/
sudo mv protoc3/bin/* /usr/local/bin/

# Move protoc3/include to /usr/local/include/
sudo mv protoc3/include/* /usr/local/include/

# Optional: change owner
sudo chwon [user] /usr/local/bin/protoc
sudo chwon -R [user] /usr/local/include/google

Download checkpoint from here. https://github.com/tensorflow/models/blob/master/research/object_detection/g3doc/detection_model_zoo.md

cd ~/github/train_ssd_mobilenet/
wget http://download.tensorflow.org/models/object_detection/ssd_mobilenet_v1_coco_2017_11_17.tar.gz
tar xvf ssd_mobilenet_v1_coco_2017_11_17.tar.gz

In tensorflow/models master branch, you can train new ssd models.

Copy sample config.

cp ~/github/models/research/object_detection/samples/configs/ssd_mobilenet_v1_coco.config ~/github/train_ssd_mobilenet/ssd_mobilenet_v1_roadsign.config

Edit your pipeline config like this.
pipeline config: ssd_mobilenet_v1_roadsign.config

diff -u ~/github/models/research/object_detection/samples/configs/ssd_mobilenet_v1_coco.config ~/train_ssd_mobilenet/ssd_mobilenet_v1_roadsign.config

--- /home/ubuntu/github/models/research/object_detection/samples/configs/ssd_mobilenet_v1_coco.config	2017-12-20 11:46:42.832787513 +0900
+++ /home/ubuntu/github/train_ssd_mobilenet/ssd_mobilenet_v1_roadsign.config	2018-03-19 11:22:10.521440000 +0900
@@ -6,7 +6,7 @@
 
 model {
   ssd {
-    num_classes: 90
+    num_classes: 4
     box_coder {
       faster_rcnn_box_coder {
         y_scale: 10.0
@@ -155,7 +155,7 @@
       epsilon: 1.0
     }
   }
-  fine_tune_checkpoint: "PATH_TO_BE_CONFIGURED/model.ckpt"
+  fine_tune_checkpoint: "ssd_mobilenet_v1_coco_2017_11_17/model.ckpt"
   from_detection_checkpoint: true
   # Note: The below line limits the training process to 200K steps, which we
   # empirically found to be sufficient enough to train the pets dataset. This
@@ -174,9 +174,9 @@
 
 train_input_reader: {
   tf_record_input_reader {
-    input_path: "PATH_TO_BE_CONFIGURED/mscoco_train.record"
+    input_path: "roadsign_data/tfrecords/train.record"
   }
-  label_map_path: "PATH_TO_BE_CONFIGURED/mscoco_label_map.pbtxt"
+  label_map_path: "roadsign_data/roadsign_label_map.pbtxt"
 }
 
 eval_config: {
@@ -188,9 +188,9 @@
 
 eval_input_reader: {
   tf_record_input_reader {
-    input_path: "PATH_TO_BE_CONFIGURED/mscoco_val.record"
+    input_path: "roadsign_data/tfrecords/val.record"
   }
-  label_map_path: "PATH_TO_BE_CONFIGURED/mscoco_label_map.pbtxt"
+  label_map_path: "roadsign_data/roadsign_label_map.pbtxt"
   shuffle: false
   num_readers: 1
   num_epochs: 1
cd ~/github
git clone https://github.com/pdollar/coco.git
cd coco/PythonAPI
make
sudo make install
sudo python setup.py install

 


Make sure you run:
cd ~/github/models/
From tensorflow/models/research/
protoc object_detection/protos/*.proto --python_out=.

From tensorflow/models/research/
export PYTHONPATH=$PYTHONPATH:pwd:pwd/slim


export PYTHONPATH=$PYTHONPATH:`pwd`:`pwd`/research/slim:`pwd`/research:

Create TF Record data from PascalVOC data.

Check config.yml.

sudo pip install lxml pyyaml

cd ~/github/train_ssd_mobilenet
# Please check config.yml

python build1_trainval.py
python build2_tf_record.py

 


--train_dir: output directory.
--logtostderr: log to stderror.
--pipeline_config_path: model config file.



cd ~/github/train_ssd_mobilenet
# training/continue from checkpoint
python ~/github/models/research/object_detection/train.py --logtostderr --train_dir=./train --pipeline_config_path=./ssd_mobilenet_v1_roadsign.config

In tensorflow/models master branch, you can train with new ssd models.
In this case, I downloaded ssdlite_mobilenet_v2 and edit config like ssd_mobilenet_v1.

In master branch, local training command has changed.
Running Locally
--model_dir: output directory.
--alsologtostderr: log to stderror.
--pipeline_config_path: model config file.



cd ~/github/train_ssd_mobilenet
# training/continue from checkpoint
python ~/github/models/research/object_detection/model_main.py --alsologtostderr --model_dir=train --pipeline_config_path=./ssdlite_mobilenet_v2_roadsign.config

 


cd ~/github/train_ssd_mobilenet
python ~/github/models/research/object_detection/eval.py --logtostderr \
        --checkpoint_dir=./train \
        --eval_dir=eval \
        --pipeline_config_path=./ssd_mobilenet_v1_roadsign.config

Freeze Graph.

# If you have output dir, please remove it first.
rm -rf ./output/

# Please change to your checkpoint file.: ./train/model.ckpt-11410
python ~/github/models/research/object_detection/export_inference_graph.py --input_type image_tensor --pipeline_config_path=./ssd_mobilenet_v1_roadsign.config --trained_checkpoint_prefix ./train/model.ckpt-11410 --output_directory ./output \
       --config_override " \
            model{ \
              ssd { \
                post_processing { \
                  batch_non_max_suppression { \
                    score_threshold: 0.5 \
                  } \
                } \
              } \
            }"

# if you want to strip more, then execute next.
python ./freeze_graph.py

ls -l ./output/

 

freeze_graph.pb and roadsign_label_map.pbtxt are required for running.
You can use Tensorflow realtime_object_detection.
TX2

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