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NeuralNetwork-Viterbi: A Framework for Weakly Supervised Video Learning

机译:神经网络 - 维特比:弱监督视频学习的框架

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Video learning is an important task in computer vision and has experienced increasing interest over the recent years. Since even a small amount of videos easily comprises several million frames, methods that do not rely on a frame-level annotation are of special importance. In this work, we propose a novel learning algorithm with a Viterbi-based loss that allows for online and incremental learning of weakly annotated video data. We moreover show that explicit context and length modeling leads to huge improvements in video segmentation and labeling tasks and include these models into our framework. On several action segmentation benchmarks, we obtain an improvement of up to 10% compared to current state-of-the-art methods.
机译:视频学习是计算机愿景中的重要任务,近年来越来越多的兴趣。由于即使是少量视频容易地包含数百万帧,则不依赖于帧级注释的方法具有特殊重要性。在这项工作中,我们提出了一种新的学习算法,其基于维特比的损失,允许在线和渐进的吞吐视频数据的增量学习。我们还表明,显式上下文和长度建模导致视频分段和标签任务的巨大改进,并将这些模型包含在我们的框架中。在若干行动分割基准上,与目前最先进的方法相比,我们获得高达10%的提高。

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