Simulation and implementation of two-layer oscillatory neural networks for image edge detection: bidirectional and feedforward architectures

Madeleine Abernot, Todri-Sanial Aida
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引用次数: 7

Abstract

The growing number of edge devices in everyday life generates a considerable amount of data that current AI algorithms, like artificial neural networks, cannot handle inside edge devices with limited bandwidth, memory, and energy available. Neuromorphic computing, with low-power oscillatory neural networks (ONNs), is an alternative and attractive solution to solve complex problems at the edge. However, ONN is currently limited with its fully-connected recurrent architecture to solve auto-associative memory problems. In this work, we use an alternative two-layer bidirectional ONN architecture. We introduce a two-layer feedforward ONN architecture to perform image edge detection, using the ONN to replace convolutional filters to scan the image. Using an HNN Matlab emulator and digital ONN design simulations, we report efficient image edge detection from both architectures using various size filters (3 × 3, 5 × 5, and 7 × 7) on black and white images. In contrast, the feedforward architectures can also perform image edge detection on gray scale images. With the digital ONN design, we also assess latency performances and obtain that the bidirectional architecture with a 3 × 3 filter size can perform image edge detection in real-time (camera flow from 25 to 30 images per second) on images with up to 128 × 128 pixels while the feedforward architecture with same 3 × 3 filter size can deal with 170 × 170 pixels, due to its faster computation.
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用于图像边缘检测的两层振荡神经网络的仿真和实现:双向和前馈架构
日常生活中越来越多的边缘设备产生了大量的数据,而当前的人工智能算法(如人工神经网络)无法处理带宽、内存和可用能量有限的内部边缘设备。基于低功耗振荡神经网络(ONNs)的神经形态计算是解决边缘复杂问题的另一种有吸引力的解决方案。然而,ONN目前在解决自动联想记忆问题上的全连接循环架构是有限的。在这项工作中,我们使用了一种可选的两层双向ONN架构。我们引入了一个两层前馈ONN架构来执行图像边缘检测,使用ONN取代卷积滤波器来扫描图像。使用HNN Matlab仿真器和数字ONN设计仿真,我们报告了在黑白图像上使用不同尺寸滤波器(3 × 3、5 × 5和7 × 7)的两种架构的有效图像边缘检测。相比之下,前馈结构也可以对灰度图像进行图像边缘检测。通过数字ONN设计,我们还评估了延迟性能,并获得具有3 × 3滤波器尺寸的双向架构可以对高达128 × 128像素的图像进行实时图像边缘检测(相机流量从每秒25到30张图像),而具有相同3 × 3滤波器尺寸的前馈架构由于其更快的计算速度可以处理170 × 170像素。
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