Video anomaly detection system with multiple algorithms, and real-time support.
For each approach, there should be a jupyter notebook, evaluation support (taking a sample test and output whether it is anomaly or not), and real-time support.
Approach | Notebook Status | Evaluation Support | Real Time Support |
---|---|---|---|
STAE | todo | done | todo |
LSTM Autoencoder | done | todo | todo |
Create a new Config.py by copying Config.py.example, which contains the following parameters.
- DATASET_PATH: path to USCDped1/Train directory.
- SINGLE_TEST_PATH: the test sample you want to run.
- RELOAD_DATASET: boolean parameter. set to
True
if when reading the database the first time orFalse
to read from cache. - RELOAD_TESTSET: boolean parameter. set to
True
if when reading the test sample the first time orFalse
to read from cache. - RELOAD_MODEL: set to
True
if you want to re-train the model,False
otherwise. - CACHE_PATH: path to the cache file.
- BATCH_SIZE & EPOCHS: parameters for training the model.
- MODEL_PATH: the path to save the model.
After putting the desired configurations, run evaluation.py to get the result of the chosed sample test after processed by the model.
LSTM autoencoder which I used in my article only exists as a jupyter notebook in notebooks/lstmautoencoder. It'll be integrated with the project later.