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Fixed-Point Convolutional Neural Network for Real-Time Video Processing in FPGA

机译:FPGA中实时视频处理的定点卷积神经网络

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Modern mobile neural networks with a reduced number of weights and parameters do a good job with image classification tasks, but even they may be too complex to be implemented in an FPGA for video processing tasks. The article proposes neural network architecture for the practical task of recognizing images from a camera, which has several advantages in terms of speed. This is achieved by reducing the number of weights, moving from a floating-point to a fixed-point arithmetic, and due to a number of hardware-level optimizations associated with storing weights in blocks, a shift register, and an adjustable number of convolutional blocks that work in parallel. The article also proposed methods for adapting the existing data set for solving a different task. As the experiments showed, the proposed neural network copes well with real-time video processing even on the cheap FPGAs.
机译:现代移动神经网络具有减少的权重和参数,具有图像分类任务的良好作业,但即使它们可能太复杂,无法在FPGA中实现以进行视频处理任务。本文提出了神经网络架构,用于识别来自相机的图像的实际任务,这在速度方面具有若干优点。这是通过减少权重的数量来实现的,从浮点移动到一个定点算术,并且由于许多与块,移位寄存器和可调节数量的卷积器的重量相关联的硬件级优化并行工作的块。本文还提出了调整现有数据集的方法,以解决不同的任务。随着实验所显示的,即使在廉价的FPGA上,所提出的神经网络也与实时视频处理很好。

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