Differentiable foveated vision for Deep Learning methods
Project description
FoveaTorch
👀🔥 ![](https://pypi-camo.freetls.fastly.net/365f73d9266e583d3040d4de3402ea8a3db19074/68747470733a2f2f6275636b65742e62616c6c6172696e2e63632f73657276652f696d672f666f766561746f7263685f64616c6c65322e706e67)
Differentiable foveated vision for Deep Learning methods
References
- J.S. Perry and W.S. Geisler, "Gaze-contingent real-time simulation of arbitrary visual fields", IS&T/SPIE Electronic Imaging, 2002
- M. Jiang, S. Huang, J. Duan and Q. Zhao, "SALICON: Saliency in Context", IEEE Conference on Computer Vision and Pattern Recognition, 2015
- Zhibo Yang, "Image_Foveation_Python: Python implementation of image retina transformation"
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