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Clockwork Convnets for Video Semantic Segmentation

机译:用于视频语义细分的发条探讨

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Recent years have seen tremendous progress in still-image segmentation; however the naieve application of these state-of-the-art algorithms to every video frame requires considerable computation and ignores the temporal continuity inherent in video. We propose a video recognition framework that relies on two key observations: (1) while pixels may change rapidly from frame to frame, the semantic content of a scene evolves more slowly, and (2) execution can be viewed as an aspect of architecture, yielding purpose-fit computation schedules for networks. We define a novel family of "clockwork" convnets driven by fixed or adaptive clock signals that schedule the processing of different layers at different update rates according to their semantic stability. We design a pipeline schedule to reduce latency for real-time recognition and a fixed-rate schedule to reduce overall computation. Finally, we extend clockwork scheduling to adaptive video processing by incorporating data-driven clocks that can be tuned on unlabeled video. The accuracy and efficiency of clockwork convnets are evaluated on the Youtube-Objects, NYUD, and Cityscapes video datasets.
机译:近年来在静止图像细分中看到了巨大进展;然而,对于每个视频帧的这些最先进的算法的警惕应用需要相当大的计算,并且忽略视频中固有的时间连续性。我们提出了一种依赖于两个关键观测的视频识别框架:(1)虽然像素可以从帧到帧快速地改变,但场景的语义内容更慢地发展,并且(2)执行可以被视为架构的一个方面,用于网络的目的拟合计算计划。我们定义了由固定或自适应时钟信号驱动的新颖的“发条”扫描系列,该探测器根据其语义稳定性调度不同的更新速率的不同层的处理。我们设计管道计划,以减少实时识别的延迟和固定速率计划,以减少整体计算。最后,我们通过结合可以在未标记的视频上调谐的数据驱动的时钟来扩展到自适应视频处理的时光调度。在YouTube-Objects,Nyud和CityCapes视频数据集上评估发条探伤仪的准确性和效率。

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