首页> 外国专利> HARDWARE ARCHITECTURE FOR DEEP LEARNING NEURON NETWORK AND METHOD FOR IMAGE PROCESSING

HARDWARE ARCHITECTURE FOR DEEP LEARNING NEURON NETWORK AND METHOD FOR IMAGE PROCESSING

机译:用于深度学习神经网络的硬件体系结构和图像处理方法

摘要

The invention relates to the electronics, in particular to the electronic systems with multi-processor systems for solving common task. The invention is a hardware architecture for deep learning neuron network comprising multiple general purpose programmable microprocessors and artificial neuron processors which are interconnected forming a multi-layer deep learning hardware neuron network. Each of the layers is composed of a general purpose controlling microprocessor and a neuron network microprocessor forming a unified convolution layer structure, what enables relatively easy to scale up and down the whole system as well as to adapt the controlling software of the controlling microprocessor to address needs of a particular task. Controlling microprocessors can be synchronized forming a data processing conveyer of higher performance, by enabling to process different input data arrays at different convolution layers at the same time. The method for image processing is provided, where hardware architecture for deep learning neuron network is used.
机译:本发明涉及电子设备,尤其涉及具有用于解决共同任务的多处理器系统的电子系统。本发明是一种用于深度学习神经元网络的硬件架构,其包括相互连接形成多层深度学习硬件神经元网络的多个通用可编程微处理器和人工神经元处理器。每层都由通用控制微处理器和形成统一卷积层结构的神经元网络微处理器组成,这使得相对容易地按比例放大和缩小整个系统以及使控制微处理器的控制软件适应于特定任务的需求。通过允许同时处理不同卷积层上的不同输入数据阵列,可以同步控制微处理器,从而形成更高性能的数据处理传送带。提供了用于图像处理的方法,其中使用了用于深度学习神经元网络的硬件架构。

著录项

  • 公开/公告号LV15414A

    专利类型

  • 公开/公告日2019-06-20

    原文格式PDF

  • 申请/专利权人 RĪGAS TEHNISKĀ UNIVERSITĀTE;

    申请/专利号LV20170000087

  • 发明设计人 BERKOLDS KĀRLIS;ŅIKITENKO AGRIS;

    申请日2017-12-14

  • 分类号G06T1/40;G06N3/04;

  • 国家 LV

  • 入库时间 2022-08-21 12:02:01

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