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Sustained Self-Supervised Pretraining for Temporal Order Verification

机译:用于时间顺序验证的持续自我监督预训练

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Self-Supervised Pretraining (SSP) has been shown to boost performance for video related tasks such as action recognition and pose estimation. It captures important spatiotemporal constraints which act as an implicit regularizer. This work seeks to leverage upon temporal derivatives and a novel sampling algorithm for sustained (long term) SSP. Main limitations of our baseline approach are - its inadequacy to capture sustained temporal information, weaker sampling algorithm, and the need for parameter tuning. This work analyzes the Temporal Order Verification (TOV) problem in detail, by incorporating multiple temporal derivatives for temporal information amplification and using a novel sampling algorithm that does not need manual parameter adjustment. The key idea is that image-only tuples contain less information and become virtually indiscriminating in case of cyclic events, this can be attenuated by fusing temporal derivatives with the image-only tuples. We explore a few simple yet powerful variants for TOV. One variant uses Motion History Images (MHI), others use optical flow. The proposed TOV algorithm has been compared with previous works along with validation on challenging benchmarks - HMDB51 and UCF101.
机译:自我监督式预训练(SSP)已被证明可以提高视频相关任务的性能,例如动作识别和姿势估计。它捕获了重要的时空约束,这些约束充当隐式正则化器。这项工作旨在利用时间导数和新颖的采样算法来持续(长期)SSP。我们的基线方法的主要局限性是-它不足以捕获持续的时间信息,较弱的采样算法以及需要进行参数调整。这项工作通过合并用于时间信息放大的多个时间导数并使用不需要手动参数调整的新颖采样算法,详细分析了时间顺序验证(TOV)问题。关键思想是纯图像元组包含较少的信息,并且在循环事件的情况下几乎变得不加区别,这可以通过将时间导数与纯图像元组融合来减弱。我们探索了一些简单但功能强大的TOV变体。一种使用运动历史图像(MHI),另一种使用光流。拟议的TOV算法已与以前的工作进行了比较,并在具有挑战性的基准测试(HMDB51和UCF101)上进行了验证。

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