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Convert Labelbox json format to TFRecord format.

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LabelboxToTFRecord

Convert Labelbox style json files to TFRecord file format (.tfrecord files) so the data can be used with TensorFlow.

Installation

Python Installation using Tensorflow 2:

You must have TensorFlow's Object Detection API installed, directions for installation can be found here: https://github.com/tensorflow/models/blob/master/research/object_detection/g3doc/tf2.md

Then run

python3 -m pip install -r requirements.txt

Docker Installation using Tensorflow 1:

Assuming you have a config.yaml file set up (see Examples section):

# From project root
docker build -t lb2tf .
mkdir data

# This will run convert.py, downloading the data to a ./data folder
docker run --mount "type=bind,src=${PWD}/data,dst=/data" lb2tf --split 80 20 --download --labelbox-dest /data/labelbox --tfrecord-dest /data/tfrecord

Change the mount src to change where the data is downloaded to.

NOTE: if you have downloaded a large amount of data in your project, when docker build runs it will copy the data as part of the context which may take a long time. To avoid this, either move downloaded data outside of the project folder before doing a build, use mount settings to save the data outside the project folder to begin with, or use a dockerignore file to ignore the data once downloaded.

If you encounter permissions denied errors, check to see that docker hasn't created the data directory as root. chown or recreate the directory yourself to fix.

Usage:

convert.py

usage: convert.py [-h] [--puid PUID] [--api-key API_KEY]
              [--labelbox-dest LABELBOX_DEST]
              [--tfrecord-dest TFRECORD_DEST]
              [--splits SPLITS [SPLITS ...]] [--download]

Convert Labelbox data to TFRecord and store .tfrecord file(s) locally. Saving
images to disk is optional. Create a file "config.yaml" in the current
directory to store Labelbox sensitive data, see "config.yaml.sample" for an
example.

optional arguments:
  -h, --help            show this help message and exit
  --puid PUID           Project Unique ID (PUID) of your Labelbox project,
                    found in URL of Labelbox project home page
  --api-key API_KEY     API key associated with your Labelbox account
  --labelbox-dest LABELBOX_DEST
                    Destination folder for downloaded images and json file
                    of Labelbox labels.
  --tfrecord-dest TFRECORD_DEST
                    Destination folder for downloaded images
  --limit LIMIT         Only retrieve and convert the first LIMIT data items
  --splits SPLITS [SPLITS ...]
                    Space-separated list of integer percentages for
                    splitting the output into multiple TFRecord files
                    instead of one. Sum of values should be <=100.
                    Example: '--splits 10 70' will write 3 files with 10%,
                    70%, and 20% of the data, respectively
  --download            Save the images locally in addition to creating
                    TFRecord(s)

split.py

usage: split.py [-h] infile splits [splits ...]

Split a .tfrecord file into smaller files

positional arguments:
  infile      the .tfrecord file to split
  splits      Space-separated list of integers, the number of records to put
              in each output file. Should add up to the total number of
              records in the input tfrecord file.

optional arguments:
  -h, --help  show this help message and exit

shuffle.py

usage: shuffle.py [-h] tfrfile randfile

Shuffle a .tfrecord file using a random numbers file

positional arguments:
  tfrfile     the .tfrecord file to shuffle
  randfile    A file containing a shuffled sequence of newline-separated
              numbers from 0 to N-1, where N is the number of records in the
              .tfrecord file.

optional arguments:
  -h, --help  show this help message and exit

join.py

usage: join.py [-h] outfile infiles [infiles ...]

Combine several .tfrecord files into a new one

positional arguments:
  outfile     the name of the output file
  infiles     files to be combined

optional arguments:
  -h, --help  show this help message and exit

count.py

usage: count.py [-h] [--total | --categories] infiles [infiles ...]

Display the number of records in each file

positional arguments:
  infiles           files with records to be counted

optional arguments:
  -h, --help        show this help message and exit
  --total, -t       instead of the the total for each file, display the sum
                    total across all files
  --categories, -c  display the number of labels of each category for each
                    file

Examples

Download Labelbox images and convert labels to TFRecord format:

python convert.py PUID API_KEY --- will download all Labelbox data (images, label file) to ./labelbox, will output tfrecord file to tfrecord/.tfrecord

If you have a config.yaml file specified in the current directory, you can simply use...

python convert.py

To split data into two groups, with 30% in the first and 70% in the second...

python convert.py --split 30 70

To split data into two groups, with 30% in the first and 70% in the second, while downloading images locally...

python convert.py --download --split 30 70

You can also split an existing .tfrecord file into smaller pieces with split.py:

python split.py ./10_record_file.tfrecord 3 2 5

This will write 3 new files containing 3, 2, and 5 records, respectively. To copy a .tfrecord file into a new file, shuffling the records according to a provided random_ints.txt file:

python shuffle.py ./10_record_file.tfrecord random_seq.txt

random_seq.txt should be a file of all the indices into the tfrecord file, [0,N), where N is the number of records in the tfrecord file, each index occurs exactly once, and there is one index per line. This allows you to shuffle the tfrecord file using random data like from random.org.

To copy several .tfrecord files into a new combined file:

python join.py outfile.tfrecord infile1.tfrecord infile2.tfrecord infile3.tfrecord

To display the number of records in each of files pets_train.tfrecord and pets_val.tfrecord...

python count.py pets_train.tfrecord pets_val.tfrecord

To display a table of the number of records in each category (shark, dolphin, etc.) in all files with "train" in the name...

python count.py -c *train*.tfrecord

The above prints something like:

2021-03-04 00:21:34.523331: I tensorflow/core/platform/cpu_feature_guard.cc:142] Your CPU supports instructions that this TensorFlow binary was not compiled to use: AVX2 FMA
2021-03-04 00:21:34.531411: I tensorflow/core/platform/profile_utils/cpu_utils.cc:94] CPU Frequency: 1992000000 Hz
2021-03-04 00:21:34.532907: I tensorflow/compiler/xla/service/service.cc:168] XLA service 0x42a1fd0 initialized for platform Host (this does not guarantee that XLA will be used). Devices:
2021-03-04 00:21:34.532962: I tensorflow/compiler/xla/service/service.cc:176]   StreamExecutor device (0): Host, Default Version
filename                               total    sealion    person    dolphin    shark    boat
-----------------------------------  -------  ---------  --------  ---------  -------  ------
2021-01-26_cv_a_train_2824.tfrecord     2824          0      3078        712     2512     165
2021-01-26_cv_b_train_2824.tfrecord     2824          1      3188        689     2472     173
2021-01-26_cv_c_train_2824.tfrecord     2824          1      3201        686     2493     173
2021-01-26_cv_d_train_2824.tfrecord     2824          1      2977        729     2488     176
2021-01-26_cv_e_train_2824.tfrecord     2824          1      3132        680     2491     173

Tests

To run the tests:

cd src
python -m unittest

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