TensorBox is a simple framework for training neural networks to detect objects in images. Training requires a json file (e.g. here) containing a list of images and the bounding boxes in each image. The basic model implements the simple and robust GoogLeNet-OverFeat algorithm with attention.
You need Python 2.7, run with env cv3_py2! First, install TensorFlow from source or pip (NB: source installs currently break threading on 0.11)
$ git clone http://github.com/russell91/tensorbox
$ cd tensorbox
$ ./download_data.sh
$ # start make with env prak_ml!!
$ cd /path/to/tensorbox/utils && make && make hungarian && cd ..
$ python train.py --hypes hypes/overfeat_rezoom.json --gpu 0 --logdir output
$ #see evaluation instructions below
Note that running on your own dataset should only require modifying the hypes/overfeat_rezoom.json
file.
There are two options for evaluation, an ipython notebook and a python script.
The ipython notebook allows you to interactively modify the inference algorithm, and can be run concurrently with training (assuming you have 2 gpus). You can evaluate on new data by modifying paths and pointing to new weights.
For those who would prefer to evaluate using a script, you can alternately use evaluate.py. The following instructions demonstrate how evaluate.py wase used after one of my experiments - you will need to change paths as appropriate:
$ # kill training script if you don't have a spare GPU
$ cd /path/to/tensorbox
$ python evaluate.py --weights output/overfeat_rezoom_2017_01_17_15.20/save.ckpt-130000 --test_boxes data/brainwash/val_boxes.json
$ # val_boxes should contain the list of images you want to output boxes on, and
$ # the annotated boxes for each image if you want to generate a precision recall curve
$ cd ./output/overfeat_rezoom_2017_01_17_15.20/images_val_boxes_130000/
$ ls # ... notice the images with predicted boxes painted on, and the results saved in results.png
$ python -m SimpleHTTPServer 8080 # set up a image server to view the images from your browser
$ ssh myserver -N -L localhost:8080:localhost:8080 # set up an ssh tunnel to your server (skip if running locally)
$ # open firefox and visit localhost:8080 to view images
If you get some decent results and want to improve your performance, there are many things you can try. For hyperparameter optimization, the Learning rate, dropout ratios, and parameter initializations are a great place to start. You may want to read this blog post for a more generic tutorial on debugging neural nets. We have recently added a resnet version as well, which should work slightly better on larger boxes (this repo has historically done poorly on these, as they weren't port of the original research goal). I would recommend using the overfeat version over the lstm as well if you have a large variation in box sizes.
You can visualize the progress of your experiments during training using Tensorboard.
$ cd /path/to/tensorbox
$ tensorboard --logdir output
$ # (optional, start an ssh tunnel if not experimenting locally)
$ ssh myserver -N -L localhost:6006:localhost:6006
$ # open localhost:6006 in your browser
For example, the following is a screenshot of a Tensorboard comparing two different experiments with learning rate decays that kick in at different points. The learning rate drops in half at 60k iterations for the green experiment and 300k iterations for red experiment.
If you're new to object detection, and want to chat with other people that are working on similar problems, check out the community chat at https://gitter.im/Russell91/TensorBox, especially on Saturdays.