Skeleton-based Human Activity Classification in Sparse Image Sequences

Q4 Engineering
Włodzimierz Kasprzak, Paweł Piwowarski
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引用次数: 0

Abstract

Research results on human activity classification in video are described, based on initial human skeleton estimation in video frames. Both single person actions and two-person interactions are considered. The initial skeleton data is estimated in selected video frames by OpenPose, HRNet or other dedicated library. Important contributions of presented work are computational steps of skeleton tracking and -refinement, and relational feature extraction from pairs of skeleton joints. It is shown, that this feature engineering significantly increases the classification accuracy. Regarding the final neural network encoder-classifier, two different architectures are designed and tested. The first solution is a lightweight MLP network, implementing the idea of a "mixture of pose experts". Several pose classifiers (experts) are trained independently on different time periods (snapshots) of single-person visual actions (or 2-person interactions), while the final classification is a time-related pooling of weighted expert classifications. All pose experts use the same deep encoding network. The second (middle weight) solution is based on a LSTM network.Both solutions are trained and tested on the action set of the well-known NTU RGB+D dataset, although only 2D data are used.Our results show comparable performance with some of the best reported STM- and CNN-based classifiers for this dataset. We conclude that by reducing the noise of skeleton data, highly successful lightweight- and midweight-approaches to visual activity recognition in image sequences can be achieved.
稀疏图像序列中基于骨架的人类活动分类
基于视频帧中的初始人体骨架估计,介绍了视频中人体活动分类的研究成果。单人动作和双人互动都被考虑在内。初始骨骼数据是通过 OpenPose、HRNet 或其他专用库在选定的视频帧中估算出来的。这项工作的重要贡献在于骨架跟踪和细化的计算步骤,以及骨架关节对的关系特征提取。结果表明,这种特征工程能显著提高分类精度。关于最终的神经网络编码器-分类器,我们设计并测试了两种不同的架构。第一种解决方案是轻量级 MLP 网络,实现了 "姿势专家混合物 "的理念。多个姿势分类器(专家)在单人视觉动作(或双人互动)的不同时间段(快照)上进行独立训练,而最终分类是加权专家分类的时间相关集合。所有姿势专家都使用相同的深度编码网络。虽然只使用了 2D 数据,但我们在著名的 NTU RGB+D 数据集的动作集上对这两种解决方案进行了训练和测试。我们的结果表明,在该数据集上,我们的性能与一些已报道的基于 STM 和 CNN 的最佳分类器不相上下。我们的结论是,通过降低骨架数据的噪声,可以在图像序列中实现非常成功的轻量级和中量级视觉活动识别方法。
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来源期刊
Journal of Automation, Mobile Robotics and Intelligent Systems
Journal of Automation, Mobile Robotics and Intelligent Systems Engineering-Control and Systems Engineering
CiteScore
1.10
自引率
0.00%
发文量
25
期刊介绍: Fundamentals of automation and robotics Applied automatics Mobile robots control Distributed systems Navigation Mechatronics systems in robotics Sensors and actuators Data transmission Biomechatronics Mobile computing
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