PEFSL: A deployment Pipeline for Embedded Few-Shot Learning on a FPGA SoC
arxiv(2024)
摘要
This paper tackles the challenges of implementing few-shot learning on
embedded systems, specifically FPGA SoCs, a vital approach for adapting to
diverse classification tasks, especially when the costs of data acquisition or
labeling prove to be prohibitively high. Our contributions encompass the
development of an end-to-end open-source pipeline for a few-shot learning
platform for object classification on a FPGA SoCs. The pipeline is built on top
of the Tensil open-source framework, facilitating the design, training,
evaluation, and deployment of DNN backbones tailored for few-shot learning.
Additionally, we showcase our work's potential by building and deploying a
low-power, low-latency demonstrator trained on the MiniImageNet dataset with a
dataflow architecture. The proposed system has a latency of 30 ms while
consuming 6.2 W on the PYNQ-Z1 board.
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