Tyrväinen, 2021 - Google Patents
Soft labels and supervised image classificationTyrväinen, 2021
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- 14227414337745060749
- Author
- Tyrväinen S
- Publication year
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Abstract Machine learning is used daily in areas such as security, medical care, and financial systems. Failures in such institutions can have dire consequences. Adversarial attacks on deep neural networks exploit instabilities in the network with regard to noise and …
- 238000010801 machine learning 0 abstract description 4
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