基于消失点检测的高分辨率铁路远景目标自适应辅助输入提取

Li Xingxin, Zhu Liqiang, Yu Zujun, W. Yanqin
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引用次数: 5

摘要

目标检测在铁路安全监控系统的入侵检测中起着重要的作用。通常,为了减少计算量,高分辨率图像必须进行下采样,从而导致对远处物体的遗漏检测。提出了一种基于消失点(VP)检测的辅助输入框架,以保持铁路报警区域中远处物体的图像分辨率。我们改进了基于CNN分类的VP检测网络,该网络由两个分支组成,分别估计x-y坐标。基于VP的辅助输入可以提高目标检测的精度,特别是对远距离目标的检测。在公共数据集上的实验表明,该模型优于单分支模型和回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive auxiliary input extraction based on vanishing point detection for distant object detection in high-resolution railway scene
Object detection plays an important role in intrusion detection of railway safety monitoring system. Generally, high-resolution image has to be down-sampled in order to reduce the amount of computation, resulting in missed detections of distant objects. This paper proposes an auxiliary input framework based on vanishing point (VP) detection to preserve the image resolution of distant objects in railway alarm region. We improved the VP detection network based on CNN classification, which consists of two branches, estimating the x-y coordinates respectively. Auxiliary input based on VP can improve the accuracy of target detection, especially for distant targets. Experiments on public data sets show that the proposed model overperforms single-branch model and regression model.
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