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TU-VDN: Tripura University Video Dataset at Night Time in Degraded Atmospheric Outdoor Conditions for Moving Object Detection

机译:TU-VDN:Tripura大学视频数据集在夜间在恶劣的大气室外条件下进行运动对象检测

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Even though thermal infrared images captured during night time are available in some publicly available datasets, such images acquisitioned in adverse weather conditions such as low light, dust, rain, fog etc. are not reported as yet to the best of our knowledge. Because of these deficiencies, object detection techniques applicable in weather affected night thermal infrared images have a very limited reporting in literature. In the present scope, we discussed the acquisition, creation, design, and ground truth annotation of a new video dataset consisting of nearly 60 videos representing 4 atmospheric conditions: low light, dust, rain, fog, named as Tripura University Video Dataset at Night time (TU-VDN) in adverse weather conditions, suitable for this purpose. The objective is to provide a night video dataset containing moving objects with annotated ground truth in the image frame sequences. Using TU-VDN a comparative study is made between the results of ten existing state-of-the-art moving object segmentation methods.
机译:尽管在一些公开可用的数据集中可以获得夜间捕获的红外热图像,但据我们所知,此类图像是在不利的天气条件下采集的,例如弱光,灰尘,雨水,雾气等。由于这些缺陷,适用于受天气影响的夜间热红外图像的物体检测技术在文献中的报道非常有限。在当前范围内,我们讨论了一个新的视频数据集的获取,创建,设计和地面真相注释,该数据集由近60个代表4个大气条件的视频组成:弱光,灰尘,雨水和雾,被称为Tripura University夜间视频数据集恶劣天气条件下的时间(TU-VDN),适用于此目的。目的是提供一个夜视数据集,其中包含运动对象,这些运动对象在图像帧序列中具有带注释的地面真相。使用TU-VDN,对十种现有的最先进的运动对象分割方法的结果进行了比较研究。

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