LEON: Light Weight Edge Detection Network

N. Akbari, A. Baniasadi
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Abstract

Deep Convolutional Neural Networks (CNNs) have achieved human-level performance in edge detection. However, there have not been enough studies on how to efficiently utilize the parameters of the neural network in edge detection applications. Therefore, the associated memory and energy costs remain high. In this paper, inspired by Depthwise Separable Convolutions and deformable convolutional networks (Deformable-ConvNet), we aim to address current inefficiencies in edge detection applications. To this end, we propose a new architecture, which we refer to as Lightweight Edge Detection Network (LEON ). The proposed approach is designed to integrate the advantages of the deformable unit and DepthWise Separable convolutions architecture to create a lightweight backbone employed for efficient feature extraction. As we show, we achieve state-of-the-art accuracy while significantly reducing the complexity by carefully choosing proper components for edge detection purposes. Our results on BSDS500 and NYUDv2 demonstrate that LEON outperforms the current lightweight edge detectors while requiring only 500k parameters. It is worth mentioning that we train the network from scratch without using pre- trained weights.
轻量级边缘检测网络
深度卷积神经网络(cnn)在边缘检测方面已经达到了人类的水平。然而,如何在边缘检测应用中有效地利用神经网络的参数,目前还没有足够的研究。因此,相关的内存和能源成本仍然很高。在本文中,受深度可分离卷积和可变形卷积网络(deformable - convnet)的启发,我们的目标是解决当前边缘检测应用中的低效率问题。为此,我们提出了一种新的架构,我们称之为轻量级边缘检测网络(LEON)。该方法结合了可变形单元和深度可分离卷积结构的优点,创建了一个轻量级的骨干结构,用于高效的特征提取。正如我们所展示的,我们实现了最先进的精度,同时通过仔细选择适合边缘检测目的的组件显著降低了复杂性。我们在BSDS500和NYUDv2上的结果表明,LEON在只需要500k个参数的情况下优于当前的轻量级边缘检测器。值得一提的是,我们在没有使用预训练权值的情况下从头开始训练网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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