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基于高效两阶段卷积神经网络的铁路图像中的异物检测。

Foreign Object Detection in Railway Images Based on an Efficient Two-Stage Convolutional Neural Network.

机构信息

Information Engineering Institute, Guangzhou Railway Polytechnic, Guangzhou 510430, China.

出版信息

Comput Intell Neurosci. 2022 Aug 28;2022:3749635. doi: 10.1155/2022/3749635. eCollection 2022.

Abstract

Foreign object intrusion is one of the main causes of train accidents that threaten human life and public property. Thus, the real-time detection of foreign objects intruding on the railway is important to prevent the train from colliding with foreign objects. Currently, the detection of railway foreign objects is mainly performed manually, which is prone to negligence and inefficient. In this study, an efficient two-stage framework is proposed for foreign object detection in railway images. In the first stage, a lightweight railway image classification network is established to classify any input railway images into one of two classes: normal or intruded. To enable real-time and accurate classification, we propose an improved inverted residual unit by introducing two improvements to the original inverted residual unit. First, the selective kernel convolution is used to dynamically select kernel size and learn multiscale features from railway images. Second, we employ a lightweight attention mechanism, called the convolutional block attention module, to exploit both spatial and channel-wise relationships between feature maps. In the second stage of our framework, the intruded image is fed to the foreign object detection network to further detect the location and class of the objects in the image. Experimental results confirm that the performance of our classification network is comparable to the widely used baselines, and it obtains outperforming efficiency. Moreover, the performances of the second-stage object detection are satisfying.

摘要

异物入侵是威胁人类生命和公共财产的铁路事故的主要原因之一。因此,实时检测侵入铁路的异物对于防止列车与异物碰撞至关重要。目前,铁路异物的检测主要是人工进行的,容易出现疏忽和效率低下的情况。在这项研究中,提出了一种用于铁路图像异物检测的高效两阶段框架。在第一阶段,建立了一个轻量级的铁路图像分类网络,将任何输入的铁路图像分类为正常或侵入两类。为了实现实时和准确的分类,我们通过对原始反卷积单元进行两项改进,提出了一种改进的倒置残差单元。首先,使用选择性核卷积从铁路图像中动态选择核大小并学习多尺度特征。其次,我们采用了一种轻量级的注意力机制,称为卷积块注意力模块,以挖掘特征图之间的空间和通道关系。在框架的第二阶段,将侵入的图像输入到异物检测网络中,以进一步检测图像中物体的位置和类别。实验结果证实,我们的分类网络的性能可与广泛使用的基线相媲美,并具有出色的效率。此外,第二阶段的物体检测性能也令人满意。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/45ec/9441342/6a99d51b3d6b/CIN2022-3749635.001.jpg

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