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Chinese Cafeteria Food Recognition

One of the common running themes in the campus cafeteria is the hold up in foot traffic in queueing due to food checkout. We find out that the bottleneck is caused by the staff requiring extra time to look up the prices of those miscellaneous entrees and calculate the total due amount. Thus, we were inspired to build up an object detection model that recognizes entrees in the plate and calculates the total due amount automatically. With the model, the staff no longer need to perform mental calculations.

Long Waiting Queue During Checkout

Realtime Model Inferencing

Prices/Nutrition Facts Are Calculated and Displayed in the Right

For more details on this project, checkout our project report and conference paper.

The Model Structure

We also saved the two keras model structures for references. The training model takes a 416x416x3 iamge as its input, and the three outputs of the model are the three different training losses produced from the three different scales according to the original paper. As for the inferencing model, it takes in a 416x416x3 iamge as well and produces the bounding boxes predictions at three different scales.

Tested Compatible Environment

  • Python 3.7
  • NumPy 1.16.0
  • Tensorflow 1.13.2
  • Keras 2.2.5
  • OpenCV (not version dependent)
  • tqdm (not version dependent)

Usage

Further Training

Train the model base on the settings in the config.json.

python train.py -c config.json

Evaluation

One can evaluate the model accuracy with the following command after training.

python evaluate.py -c config.json

Prediction

Single Image

python predict.py -c config.json -i /path/to/the/image [-o /path/to/the/output/folder/]

A Folder of Images

python predict.py -c config.json -i /path/to/the/image/folder [-o /path/to/the/output/folder/]

Video File

python predict.py -c config.json -i /path/to/the/video [-o /path/to/the/output/folder/]

Live Webcam

python predict.py -c config.json -i webcam0

The number 0 in the parameter webcam0 can be changed to the number of the order of the webcam installed on your device.

Credits

Special thanks to experiencor/keras-yolo3 repository which provides an implementation of YOLOv3 by using Python, TensorFlow and Keras:)