CascadeCNN: Pushing the performance limits of quantisation
Kouris, Alexandros, Venieris, Stylianos I., Bouganis, Christos-Savvas
–arXiv.org Artificial Intelligence
This work presents CascadeCNN, an automated toolflow that pushes the quantisation limits of any given CNN model, to perform high-throughput inference by exploiting the computation time-accuracy trade-off. Without the need for retraining, a two-stage architecture tailored for any given FPGA device is generated, consisting of a low- and a high-precision unit. A confidence evaluation unit is employed between them to identify misclassified cases at run time and forward them to the high-precision unit or terminate computation. Experiments demonstrate that CascadeCNN achieves a performance boost of up to 55% for VGG-16 and 48% for AlexNet over the baseline design for the same resource budget and accuracy.
arXiv.org Artificial Intelligence
May-22-2018
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- North America > United States > California > Santa Clara County > Stanford (0.04)
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- Research Report (0.40)
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