https://www.kaggle.com/c/google-ai-open-images-object-detection-track
- Training model (Faster and SSD): train_frcnn.py
- Training model (Yolo): train_yolo.py
- Generate the submission csv: eval.py
- Evaluate with yolo: yolo_eval_csv.py
- Convert raw img to tfrecord: create_oid_tf_record.py
- Visual check the submission: vis_infer_result.py
- Visual check tfrecord file: check_tfrecord.py
- script: the bash files to run all the app
- config: config files needed for app
- All other main files should placed in the root folder
- web: a simple framework to run a server app that can recogization simgle image.
- tfrecord files:
- box.csv: ground truth of box and classes info for each image
- oid_object_detection_challenge_500_label_map.pbtxt: mapping between machine code of class and human readable name
- faster_rcnn.config: config files for tfrecord, checkpoint
- https://github.com/cvdfoundation/open-images-dataset
- https://docs.aws.amazon.com/cli/latest/userguide/installing.html
- https://storage.googleapis.com/openimages/web/download.html
- Only download the csv from this site
- The csv files include the box, image class, image URL information
- sudo /home/chamo/.pyenv/versions/anaconda3-5.1.0/bin/protoc ./object_detection/protos/*.proto --python_out=.
- tensorflow 1.8
- Other python package which can be eaily installed by pip
- https://www.kaggle.com/rabienrose
- https://www.kaggle.com/bryanbocao
- https://github.com/rabienrose
- https://github.com/BryanBo-Cao/x-lab
- http://cv-tricks.com/object-detection/faster-r-cnn-yolo-ssd/
- https://towardsdatascience.com/understanding-ssd-multibox-real-time-object-detection-in-deep-learning-495ef744fab
- https://www.figure-eight.com/dataset/open-images-annotated-with-bounding-boxes/
- https://itnext.io/implementing-yolo-v3-in-tensorflow-tf-slim-c3c55ff59dbe