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Annotation and Benchmarking of a Video Dataset under Degraded Complex Atmospheric Conditions and Its Visibility Enhancement Analysis for Moving Object Detection

机译:在降级的复杂大气条件下的视频数据集的注释和基准测试及其对象检测的可见性增强分析

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摘要

Detection of moving objects in outdoor environments is an extremely researched topic. However, studies on moving object detection in complex atmospheric/weather conditions are limited, primarily because of the absence of any relevant benchmark dataset. To address this disparity, we introduce a novel benchmark video dataset entitled "Extended Tripura University Video Dataset (E-TUVD)" which is a diverse dataset of complex atmospheric/weather conditions. Currently, E-TUVD is the largest video dataset for moving object detection under degraded atmospheric/weather conditions. The dataset comprises 147 video clips spanning 1-5 minutes in duration of each video clips. Because of the requirement of evaluating any object detection model, this study emphasizes on generation of ground-truth images of salient moving objects on E-TUVD. Using this dataset, we assessed the performance of several state-of-the-art algorithms, considering both the ability to detect moving objects and visibility enhancement under such complex conditions. The method with the best performance was used to investigate the effectiveness of visibility enhancement of atmospheric/weather degraded image sequences for accurate moving object detection. Results and analysis reveal that effective enhancement can significantly improve the ability of detection algorithms under degraded atmospheric/weather conditions to resemble the true properties of moving objects in terms of pixel oriented binary masks.
机译:在室外环境中检测移动物体是一个极其研究的主题。然而,在复杂的大气/天气条件下移动物体检测的研究是有限的,主要是因为没有任何相关的基准数据集。为了解决这种差异,我们介绍了一个名为“扩展的旅行者大学视频数据集(E-Tuvd)”的新型基准视频数据集,这是一个复杂的大气/天气条件的不同数据集。目前,E-TUVD是用于在退化的大气/天气条件下移动物体检测的最大视频数据集。数据集包括在每个视频剪辑的持续时间内跨越1-5分钟的147个视频剪辑。由于评估了任何对象检测模型的要求,这项研究强调了在E-Tuvd上产生突出的移动物体的地面实际图像。使用此数据集,我们评估了几种最先进的算法的性能,考虑到在这种复杂条件下检测移动物体和可见性增强的能力。使用最佳性能的方法用于研究大气/天气降低图像序列的可见性增强的有效性,以便精确移动物体检测。结果与分析表明,有效的增强可以显着提高检测算法在降级的大气/天气条件下的能力,以类似于像素导向二进制掩模的移动物体的真实特性。

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