The results of the model's inference (the one trained with augmented data) can be apreciated in both animations gifs, the main features and conclussions of the project can be found in the file "project_writeup.pdf".
- Encountered problems with the installed version of keras in the Udacity docker instalation, so the first step in order to run the programs is mathching the keras version with the tensorflow's version. This is achieved by writing in the dockers terminal: pip install keras==2.5.0rc0
Further details for downloading and running this git can be found in the next lines and in the Udacity web.
For this project, we will be using data from the Waymo Open dataset.
[OPTIONAL] - The files can be downloaded directly from the website as tar files or from the Google Cloud Bucket as individual tf records. We have already provided the data required to finish this project in the workspace, so you don't need to download it separately.
The data you will use for training, validation and testing is organized as follow:
/home/workspace/data/waymo
- training_and_validation - contains 97 files to train and validate your models
- train: contain the train data (empty to start)
- val: contain the val data (empty to start)
- test - contains 3 files to test your model and create inference videos
The training_and_validation
folder contains file that have been downsampled: we have selected one every 10 frames from 10 fps videos. The testing
folder contains frames from the 10 fps video without downsampling.
You will split this training_and_validation
data into train
, and val
sets by completing and executing the create_splits.py
file.
The experiments folder will be organized as follow:
experiments/
- pretrained_model/
- exporter_main_v2.py - to create an inference model
- model_main_tf2.py - to launch training
- reference/ - reference training with the unchanged config file
- experiment0/ - create a new folder for each experiment you run
- experiment1/ - create a new folder for each experiment you run
- experiment2/ - create a new folder for each experiment you run
- label_map.pbtxt
...
For local setup if you have your own Nvidia GPU, you can use the provided Dockerfile and requirements in the build directory.
Follow the README therein to create a docker container and install all prerequisites.
Note: ”If you are using the classroom workspace, we have already completed the steps in the section for you. You can find the downloaded and processed files within the /home/workspace/data/preprocessed_data/
directory. Check this out then proceed to the Exploratory Data Analysis part.
The first goal of this project is to download the data from the Waymo's Google Cloud bucket to your local machine. For this project, we only need a subset of the data provided (for example, we do not need to use the Lidar data). Therefore, we are going to download and trim immediately each file. In download_process.py
, you can view the create_tf_example
function, which will perform this processing. This function takes the components of a Waymo Tf record and saves them in the Tf Object Detection api format. An example of such function is described here. We are already providing the label_map.pbtxt
file.
You can run the script using the following command:
python download_process.py --data_dir {processed_file_location} --size {number of files you want to download}
You are downloading 100 files (unless you changed the size
parameter) so be patient! Once the script is done, you can look inside your data_dir
folder to see if the files have been downloaded and processed correctly.
In the classroom workspace, every library and package should already be installed in your environment. You will NOT need to make use of gcloud
to download the images.
You should use the data already present in /home/workspace/data/waymo
directory to explore the dataset! This is the most important task of any machine learning project. To do so, open the Exploratory Data Analysis
notebook. In this notebook, your first task will be to implement a display_instances
function to display images and annotations using matplotlib
. This should be very similar to the function you created during the course. Once you are done, feel free to spend more time exploring the data and report your findings. Report anything relevant about the dataset in the writeup.
Keep in mind that you should refer to this analysis to create the different spits (training, testing and validation).
In the class, we talked about cross-validation and the importance of creating meaningful training and validation splits. For this project, you will have to create your own training and validation sets using the files located in /home/workspace/data/waymo
. The split
function in the create_splits.py
file does the following:
- create three subfolders:
/home/workspace/data/train/
,/home/workspace/data/val/
, and/home/workspace/data/test/
- split the tf records files between these three folders by symbolically linking the files from
/home/workspace/data/waymo/
to/home/workspace/data/train/
,/home/workspace/data/val/
, and/home/workspace/data/test/
Use the following command to run the script once your function is implemented:
python create_splits.py --data-dir /home/workspace/data
Now you are ready for training. As we explain during the course, the Tf Object Detection API relies on config files. The config that we will use for this project is pipeline.config
, which is the config for a SSD Resnet 50 640x640 model. You can learn more about the Single Shot Detector here.
First, let's download the pretrained model and move it to /home/workspace/experiments/pretrained_model/
.
We need to edit the config files to change the location of the training and validation files, as well as the location of the label_map file, pretrained weights. We also need to adjust the batch size. To do so, run the following:
python edit_config.py --train_dir /home/workspace/data/train/ --eval_dir /home/workspace/data/val/ --batch_size 2 --checkpoint /home/workspace/experiments/pretrained_model/ssd_resnet50_v1_fpn_640x640_coco17_tpu-8/checkpoint/ckpt-0 --label_map /home/workspace/experiments/label_map.pbtxt
A new config file has been created, pipeline_new.config
.
You will now launch your very first experiment with the Tensorflow object detection API. Move the pipeline_new.config
to the /home/workspace/experiments/reference
folder. Now launch the training process:
- a training process:
python experiments/model_main_tf2.py --model_dir=experiments/reference/ --pipeline_config_path=experiments/reference/pipeline_new.config
Once the training is finished, launch the evaluation process:
- an evaluation process:
python experiments/model_main_tf2.py --model_dir=experiments/reference/ --pipeline_config_path=experiments/reference/pipeline_new.config --checkpoint_dir=experiments/reference/
Note: Both processes will display some Tensorflow warnings, which can be ignored. You may have to kill the evaluation script manually using
CTRL+C
.
To monitor the training, you can launch a tensorboard instance by running python -m tensorboard.main --logdir experiments/reference/
. You will report your findings in the writeup.
Most likely, this initial experiment did not yield optimal results. However, you can make multiple changes to the config file to improve this model. One obvious change consists in improving the data augmentation strategy. The preprocessor.proto
file contains the different data augmentation method available in the Tf Object Detection API. To help you visualize these augmentations, we are providing a notebook: Explore augmentations.ipynb
. Using this notebook, try different data augmentation combinations and select the one you think is optimal for our dataset. Justify your choices in the writeup.
Keep in mind that the following are also available:
- experiment with the optimizer: type of optimizer, learning rate, scheduler etc
- experiment with the architecture. The Tf Object Detection API model zoo offers many architectures. Keep in mind that the
pipeline.config
file is unique for each architecture and you will have to edit it.
Important: If you are working on the workspace, your storage is limited. You may to delete the checkpoints files after each experiment. You should however keep the tf.events
files located in the train
and eval
folder of your experiments. You can also keep the saved_model
folder to create your videos.
Modify the arguments of the following function to adjust it to your models:
python experiments/exporter_main_v2.py --input_type image_tensor --pipeline_config_path experiments/reference/pipeline_new.config --trained_checkpoint_dir experiments/reference/ --output_directory experiments/reference/exported/
This should create a new folder experiments/reference/exported/saved_model
. You can read more about the Tensorflow SavedModel format here.
Finally, you can create a video of your model's inferences for any tf record file. To do so, run the following command (modify it to your files):
python inference_video.py --labelmap_path label_map.pbtxt --model_path experiments/reference/exported/saved_model --tf_record_path /data/waymo/testing/segment-12200383401366682847_2552_140_2572_140_with_camera_labels.tfrecord --config_path experiments/reference/pipeline_new.config --output_path animation.gif
This section should contain a brief description of the project and what we are trying to achieve. Why is object detection such an important component of self driving car systems?
This section should contain a brief description of the steps to follow to run the code for this repository.
This section should contain a quantitative and qualitative description of the dataset. It should include images, charts and other visualizations.
This section should detail the cross validation strategy and justify your approach.
This section should detail the results of the reference experiment. It should includes training metrics and a detailed explanation of the algorithm's performances.
This section should highlight the different strategies you adopted to improve your model. It should contain relevant figures and details of your findings.