Correlation-based ConvNet for Small Object Detection in Videos

Brais Bosquet, M. Mucientes, V. Brea
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引用次数: 1

Abstract

The detection of small objects is of particular interest in many real applications. In this paper, we propose STDnet-ST, a novel approach to small object detection in video using spatial information operating alongside temporal video information. STDnet-ST is an end-to-end spatio-temporal convolutional neural network that detects small objects over time and correlates pairs of the top-ranked regions with the highest likelihood of containing small objects. This architecture links the small objects across the time as tubelets, being able to dismiss unprofitable object links in order to provide high-quality tubelets. STDnet-ST achieves state-of-the-art results for small objects on the publicly available USC-GRAD-STDdb and UAVDT video datasets.
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基于相关性的卷积神经网络视频小目标检测
在许多实际应用中,对小物体的检测是特别有趣的。在本文中,我们提出了STDnet-ST,这是一种利用空间信息和时间视频信息一起操作的视频小目标检测的新方法。STDnet-ST是一个端到端的时空卷积神经网络,可以随着时间的推移检测小物体,并将包含小物体的可能性最高的排名最高的区域对关联起来。这种体系结构将小对象作为tubelet连接起来,能够排除无利可图的对象链接,以提供高质量的tubelet。STDnet-ST在公开可用的USC-GRAD-STDdb和UAVDT视频数据集上实现了最先进的小对象结果。
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