CVNov 25, 2020

Recent Progress in Appearance-based Action Recognition

arXiv:2011.12619v1
Originality Synthesis-oriented
AI Analysis

This review paper provides a structured overview of appearance-based action recognition for computer vision researchers, helping them understand the current landscape and future challenges.

This paper reviews recent progress in appearance-based action recognition, categorizing methods into 2D convolutional, 3D convolutional, motion representation-based, and context representation-based approaches. It summarizes and discusses dozens of research papers within these categories, highlighting cutting-edge algorithms and identifying future research directions.

Action recognition, which is formulated as a task to identify various human actions in a video, has attracted increasing interest from computer vision researchers due to its importance in various applications. Recently, appearance-based methods have achieved promising progress towards accurate action recognition. In general, these methods mainly fulfill the task by applying various schemes to model spatial and temporal visual information effectively. To better understand the current progress of appearance-based action recognition, we provide a comprehensive review of recent achievements in this area. In particular, we summarise and discuss several dozens of related research papers, which can be roughly divided into four categories according to different appearance modelling strategies. The obtained categories include 2D convolutional methods, 3D convolutional methods, motion representation-based methods, and context representation-based methods. We analyse and discuss representative methods from each category, comprehensively. Empirical results are also summarised to better illustrate cutting-edge algorithms. We conclude by identifying important areas for future research gleaned from our categorisation.

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