Toubeh, 2018 - Google Patents
Risk-aware planning by extracting uncertainty from deep learning-based perceptionToubeh, 2018
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- 14155960040851021621
- Author
- Toubeh M
- Publication year
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The integration of deep learning models and classical techniques in robotics is constantly creating solutions to problems once thought out of reach. The issues arising in most models that work involve the gap between experimentation and reality, with a need for strategies …
- 238000000034 method 0 abstract description 35
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