论文标题

视觉变压器以进行行动识别:调查

Vision Transformers for Action Recognition: A Survey

论文作者

Ulhaq, Anwaar, Akhtar, Naveed, Pogrebna, Ganna, Mian, Ajmal

论文摘要

视觉变压器正在成为解决计算机视觉问题的强大工具。最近的技术还证明了超出图像域以外的变压器解决众多与视频相关任务的功效。其中,由于其广泛的应用,人类的行动识别是从研究界受到特别关注。本文提供了有关动作识别的视觉变压器技术的首次全面调查。我们朝着这个方向分析并总结了现有和新兴文献,同时强调了适应变压器以识别行动识别的流行趋势。由于其专业应用,我们将这些方法统称为``动作变压器''。我们的文献综述根据其架构,方式和预期目标为动作变压器提供了适当的分类法。在动作变压器的背景下,我们探讨了编码时空数据,降低维度降低,框架贴片和时空立方体构造以及各种表示方法的技术。我们还研究了变压器层中时空注意的优化,以处理更长的序列,通常通过减少单个注意操作中的令牌数量。此外,我们还研究了不同的网络学习策略,例如自我监督和零击学习,以及它们基于变压器的行动识别的相关损失。这项调查还总结了在具有动作变压器重要基准的评估度量评分方面取得的进步。最后,它提供了有关该研究方向的挑战,前景和未来途径的讨论。

Vision transformers are emerging as a powerful tool to solve computer vision problems. Recent techniques have also proven the efficacy of transformers beyond the image domain to solve numerous video-related tasks. Among those, human action recognition is receiving special attention from the research community due to its widespread applications. This article provides the first comprehensive survey of vision transformer techniques for action recognition. We analyze and summarize the existing and emerging literature in this direction while highlighting the popular trends in adapting transformers for action recognition. Due to their specialized application, we collectively refer to these methods as ``action transformers''. Our literature review provides suitable taxonomies for action transformers based on their architecture, modality, and intended objective. Within the context of action transformers, we explore the techniques to encode spatio-temporal data, dimensionality reduction, frame patch and spatio-temporal cube construction, and various representation methods. We also investigate the optimization of spatio-temporal attention in transformer layers to handle longer sequences, typically by reducing the number of tokens in a single attention operation. Moreover, we also investigate different network learning strategies, such as self-supervised and zero-shot learning, along with their associated losses for transformer-based action recognition. This survey also summarizes the progress towards gaining grounds on evaluation metric scores on important benchmarks with action transformers. Finally, it provides a discussion on the challenges, outlook, and future avenues for this research direction.

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