Simultaneous Utilization of Inertial and Video Sensing for Action Detection and Recognition in Continuous Action Streams

2020 ◽  
Vol 20 (11) ◽  
pp. 6055-6063 ◽  
Author(s):  
Haoran Wei ◽  
Nasser Kehtarnavaz
2020 ◽  
Vol 14 (5) ◽  
pp. 177-184
Author(s):  
Ran Cui ◽  
Aichun Zhu ◽  
Jingran Wu ◽  
Gang Hua

Author(s):  
Dianting Liu ◽  
Yilin Yan ◽  
Mei-Ling Shyu ◽  
Guiru Zhao ◽  
Min Chen

Understanding semantic meaning of human actions captured in unconstrained environments has broad applications in fields ranging from patient monitoring, human-computer interaction, to surveillance systems. However, while great progresses have been achieved on automatic human action detection and recognition in videos that are captured in controlled/constrained environments, most existing approaches perform unsatisfactorily on videos with uncontrolled/unconstrained conditions (e.g., significant camera motion, background clutter, scaling, and light conditions). To address this issue, the authors propose a robust human action detection and recognition framework that works effectively on videos taken in controlled or uncontrolled environments. Specifically, the authors integrate the optical flow field and Harris3D corner detector to generate a new spatial-temporal information representation for each video sequence, from which the general Gaussian mixture model (GMM) is learned. All the mean vectors of the Gaussian components in the generated GMM model are concatenated to create the GMM supervector for video action recognition. They build a boosting classifier based on a set of sparse representation classifiers and hamming distance classifiers to improve the accuracy of action recognition. The experimental results on two broadly used public data sets, KTH and UCF YouTube Action, show that the proposed framework outperforms the other state-of-the-art approaches on both action detection and recognition.


2020 ◽  
Vol 10 (21) ◽  
pp. 7856
Author(s):  
Yun Yang ◽  
Jiacheng Wang ◽  
Tianyuan Liu ◽  
Xiaolei Lv ◽  
Jinsong Bao

As an indispensable part of workshops, the normalization of workers’ manufacturing processes is an important factor that affects product quality. How to effectively supervise the manufacturing process of workers has always been a difficult problem in intelligent manufacturing. This paper proposes a method for action detection and process evaluation of workers based on a deep learning model. In this method, the human skeleton and workpiece features are separately obtained by the monitoring frame and then input into an action detection network in chronological order. The model uses two inputs to predict frame-by-frame classification results, which are then merged into a continuous action flow, and finally, input into the action flow evaluation network. The network effectively improves the ability to evaluate action flow through the attention mechanism of key actions in the process. The experimental results show that our method can effectively recognize operation actions in workshops, and can evaluate the manufacturing process with 99% accuracy using the experimental verification dataset.


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