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A number recognition system with memory optimized convolutional neural network for smart metering devices

机译:具有内存优化卷积神经网络的数字识别系统,用于智能计量设备

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This paper presents a number recognition system based on a memory-optimized convolutional neural network for smart metering devices. Smart metering is one of the fastest growing applications for wireless sensor networks. Wireless sensor nodes are in general battery powered, and thus are often constrained by limited memory size and computation power. Due to the memory constraint, general architectures of convolutional neural networks are not suitable for smart metering devices. It is also challenging to recognize the number images of smart metering devices, since the numbers are rolling on mechanical wheels. We propose a memory-optimized architecture of convolutional neural network (MO-CNN) well suited to smart metering devices with a tight memory constraint. We implemented the proposed MO-CNN in a C program and conducted experiments with various rolling number images captured using real water meters. The proposed architecture demonstrate 100% recognition rate under the light condition of 2 ~ 150 Lux, while it reduces the memory size by 30 times compared with the conventional CNN architecture.
机译:本文提出了一种基于内存优化的卷积神经网络的数字识别系统,用于智能计量设备。智能计量是无线传感器网络增长最快的应用之一。无线传感器节点通常由电池供电,因此通常受限于有限的内存大小和计算能力。由于内存的限制,卷积神经网络的一般体系结构不适用于智能计量设备。由于数字在机械轮上滚动,因此识别智能计量设备的数字图像也是一项挑战。我们提出了一种卷积神经网络(MO-CNN)的内存优化架构,非常适合具有严格内存约束的智能计量设备。我们在C程序中实现了拟议的MO-CNN,并使用真实水表捕获的各种滚动数图像进行了实验。所提出的架构在2〜150 Lux的光照条件下显示出100%的识别率,而与传统的CNN架构相比,其内存大小减少了30倍。

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