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A Novel Siamese-Based Approach for Scene Change Detection With Applications to Obstructed Routes in Hazardous Environments

机译:基于新的暹罗的场景变化检测方法,应用于危险环境中障碍路线的应用

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摘要

The demand for automatic scene change detection has massively increased in the last decades due to its importance regarding safety and security issues. Although deep learning techniques have provided significant enhancements in the field, such methods must learn which object belongs to the foreground or background beforehand. In this article, we propose an approach that employs siamese U-Nets to address the task of change detection, such that the model learns to perform semantic segmentation using background reference frames only. Therefore, any object that comes up into the scene defines a change. The experimental results show the robustness of the proposed model over the well-known public dataset CDNet2014. Additionally, we also consider a private dataset called "PetrobrasROUTES," which comprises obstruction or abandoned objects in escape routes in hazardous environments. Moreover, the experiments show that the proposed approach is more robust to noise and illumination changes.
机译:由于其关于安全性和安全问题的重要性,对自动场景变更检测的需求大幅增加。虽然深度学习技术在该领域提供了显着的增强,但这些方法必须了解预先将哪些对象属于前景或背景。在本文中,我们提出了一种采用暹罗U-网的方法来解决变更检测的任务,使模型仅使用背景参考帧进行语义分割。因此,出现在场景中的任何对象定义了更改。实验结果表明,众所周知的公共数据集CDNET2014上所提出的模型的鲁棒性。此外,我们还考虑一个名为“PetrobrasRoutes”的私有数据集,其包括危险环境中的逃生路线中的阻塞或废弃对象。此外,实验表明,该方法对噪声和照明变化更加强大。

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