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Deep Learning Based Target Tracking and Classification for Infrared Videos Using Compressive Measurements

机译:使用压缩测量的基于深度学习的红外视频目标跟踪和分类

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Although compressive measurements save data storage and bandwidth usage, they are difficult to be used directly for target tracking and classification without pixel reconstruction. This is because the Gaussian random matrix destroys the target location information in the original video frames. This paper summarizes our research effort on target tracking and classification directly in the compressive measurement domain. We focus on one particular type of compressive measurement using pixel subsampling. That is, original pixels in video frames are randomly subsampled. Even in such a special compressive sensing setting, conventional trackers do not work in a satisfactory manner. We propose a deep learning approach that integrates YOLO (You Only Look Once) and ResNet (residual network) for multiple target tracking and classification. YOLO is used for multiple target tracking and ResNet is for target classification. Extensive experiments using short wave infrared (SWIR), mid-wave infrared (MWIR), and long-wave infrared (LWIR) videos demonstrated the efficacy of the proposed approach even though the training data are very scarce.
机译:尽管压缩测量节省了数据存储和带宽使用量,但是如果不进行像素重建,则很难将其直接用于目标跟踪和分类。这是因为高斯随机矩阵破坏了原始视频帧中的目标位置信息。本文总结了我们直接在压缩测量领域对目标跟踪和分类的研究成果。我们专注于使用像素二次采样的一种特定类型的压缩测量。即,视频帧中的原始像素被随机地二次采样。即使在这种特殊的压缩感测设置中,常规跟踪器也无法令人满意地工作。我们提出了一种深度学习方法,该方法将YOLO(只看一次)和ResNet(残差网络)集成在一起,以进行多个目标跟踪和分类。 YOLO用于多个目标跟踪,而ResNet用于目标分类。使用短波红外(SWIR),中波红外(MWIR)和长波红外(LWIR)视频进行的大量实验证明了该方法的有效性,尽管训练数据非常匮乏。

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