Cost-Aware Fine-Grained Recognition for IoTs Based on Sequential Fixations

ICCV 2019 Hanxiao WangVenkatesh SaligramaStan SclaroffVitaly Ablavsky

We consider the problem of fine-grained classification on an edge camera device that has limited power. The edge device must sparingly interact with the cloud to minimize communication bits to conserve power, and the cloud upon receiving the edge inputs returns a classification label... (read more)

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