首页> 外文期刊>Universitatea din Craiova. Analele. Seria: Matematica, Informatica >FPGA design and hardware implementation of a convolutional neural network for classification of saccadic eye movements
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FPGA design and hardware implementation of a convolutional neural network for classification of saccadic eye movements

机译:卷积神经网络的FPGA设计和硬件实现,用于对眼球运动进行分类

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The paper presents an efficient design and implementation of a convolutional neural network on an FPGA device. The aim is not only theoretical but also practical, since the solution will be used in a medical clinic dealing with SpinoCerebellar Ataxia type 2 as part of a larger project. Hence, the current work targets both high learning capabilities as well as portability. The former has been tackled through the apppointment a convolutional neural network while the latter is concerned with the hardware implementation of the complex network on a FPGA. The preliminary results encourage the further exploitation of the proposed solution.
机译:本文提出了在FPGA器件上卷积神经网络的高效设计和实现。该目标不仅是理论上的,而且是实践上的,因为该解决方案将在处理SpinoCerebellar共济失调2型的医疗诊所中使用,作为较大项目的一部分。因此,当前的工作既针对高学习能力又针对便携性。通过指定卷积神经网络解决了前者问题,而后者则关注于FPGA上复杂网络的硬件实现。初步结果鼓励进一步利用提出的解决方案。

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