Over the years, convolutional neural networks
have been used in different applications, due to their
ability to perform tasks using a reduced number of
parameters compared to other in-depth learning methods.
However, the use of power and memory constraints,
which are often marginal and portable, often conflict with
the requirements of accuracy and latency. For these
reasons, commercial commercial accelerators have
become popular and their design is built on the tendencies
of the overall convolutional network models. However, the
layout of the gate-mounted gateway represents an
attractive view because it offers the opportunity to use a
hardware design designed for a particular model of a
convolutional network, with promising results in terms of
latency and power consumption. In this article, we
propose a complete accelerator for chip-programmable
gate array hardware for convolutional neural network
partition, designed for a keyword recognition system
Keywords : CNN, Accelerator, FPGA.