End to End Learning for Self-Driving Cars
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Still work in progress, but basic model trained on GTA V dataset can be found:
To Do:
- Get proper driving data.
- Inlcude the autonomy score.
- Include model internal state viz.
About the Model
- Originally the model consists of:
The network consists of 9 layers, including a normalization layer, 5 convolutional layers and 3 fully connected layers. The input image is split into YUV planes and passed to the network.
model.py
contains the ConvNet, running the file will output a model to be used bytrain.py
Dependecy:
- Keras '1.2.0'
- Theano '0.9.0dev4.dev-RELEASE'
Dataset:
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The GTA V Dataset was used, previously it use to be hosted here.
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The dataset is messy often, but good enough for training/testing a model.
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If you have the dataset,
load_deepdrive_data.py
can be used to reduce the data into 128 and do any normalization desired for the model. -
trained model /
weights
, can be downloaded here
Training results for steering with Autopilot ConvNet:
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GPU (Trained 1080).
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Green is the original steering, and red is the Model's predictions.
the data contains weird incidents where the car is not going anywhere and suddent appearnce of other cars