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Segmentation of Low-Level Temporal Plume Patterns From IR Video

机译:从红外视频分割低水平时间羽状流模式

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In this paper, a method to segment out gas or steam plumes in IR videos collected from fixed cameras is presented. We propose a spatio-temporal U-Net architecture that captures deforming blobs of gas/steam plumes that have a unique temporal signature. In this task, the blob shapes are not semantically meaningful and change from frame to frame with no consistency across different exemplar plumes; however, there is spatial and temporal continuity in the way blobs deform suggesting a need for a low-level spatio-temporal segmentation network. The proposed method is compared to an LSTM-based segmentation network on a challenging IR video dataset collected in a controlled environment. In the controlled dataset there is motion due to steam plumes with deforming blob patterns as well as due to walking people with more structured high-level patterns. The experiments show that plume patterns are successfully segmented out with no confusion to moving people and the proposed spatiotemporal U-Net outperforms LSTM-based network in terms of pixelwise accuracy of output masks.
机译:在本文中,提出了一种从固定摄像机收集的IR视频中分割出气体或蒸汽羽的方法。我们提出了一种捕获具有独特时间签名的气体/蒸汽羽毛的变形斑点的时空U-Net架构。在此任务中,BLOB形状并不从语义上有意义,并从帧到帧更改,而不同的示例羽毛没有一致;然而,在BLOB变形的方式中存在空间和时间连续性,表明需要低级时空分段网络。将所提出的方法与基于LSTM的分段网络进行比较,在受控环境中收集的具有挑战性的IR视频数据集。在受控数据集中,由于蒸汽羽毛具有变形的圆形图案,并且由于具有更多结构化高级别图案的人行道,因此存在蒸汽羽毛。实验表明,在输出掩模的像素的像素方面,羽流模式成功分割,没有混淆移动人和提出的时空U-Net优于LSTM的网络。

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