一种高效的卷积神经网络硬件加速器

Chiao-Yu Liang, Yang-Rwei Chang, Po-Hsiang Yang, Horng-Yuan Shih
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引用次数: 0

摘要

开发了一种能够高效处理AlexNet卷积神经网络架构的卷积神经网络加速器。处理元素(PE)阵列可以在输入数据之前简单地设置输入特征映射(ifmap)大小、过滤器大小和其他卷积模型设置,从而在每一层卷积上执行操作。PE阵列根据这些设置为每个操作选择最优分割方法。计算值通过数据总线从全局缓冲区传输,全局缓冲区存储输入特征映射、过滤器和其他相关数据。由PE操作获得的部分和也通过数据总线传输回全局缓冲区。操作完成后,输出的特征图经过ReLU函数和数据压缩编码器,再通过另一条数据总线传回片外存储器。传递的ifmap的数量和次数都将大于过滤器的数量和次数。为了适应ifmap的高吞吐量,ifmap的刮擦板(spad)和总线的宽度被设计得更大。
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A High Efficiency Hardware Accelerator for Convolution Neural Network
A convolutional neural network accelerator that can efficiently process AlexNet’s convolutional neural network architecture is developed. The processing element (PE) array can perform operations on each layer of convolution by simply setting the input feature map (ifmap) size, filter size, and other convolutional model settings before inputting data. The PE array then selects the optimal segmentation method based on these settings for each operation. The calculation values are transmitted through a data bus from the global buffer, which stores input feature maps, filters, and other relevant data. The partial sums obtained by the PE operation are also transmitted back to the global buffer through the data bus. After the complete operation, the output feature map is passed through the ReLU function and data compression encoder before being transmitted back to the off-chip memory through another data bus. Both numbers and times of ifmap passed will be greater than those of filters. To accommodate the high throughput of ifmap, the width of the scratch pad (spad) and buses for ifmap are designed to be larger.
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