@RemiCadene: AI developed at @UMA_Robots Single neural network, End to End It operates robustly for hours, with precision, adapting …
Summary
Researchers at UMA_Robots developed a single end-to-end neural network that operates robustly for hours with precision and adaptation to visual input.
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AI developed at @UMA_Robots
Single neural network, End to End It operates robustly for hours, with precision, adapting to what it sees. https://t.co/TL6n80WfSc
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