Performance analysis of anomaly detection of different IoT datasets using cloud micro services

Author(s):  
N. Rakesh
Sensors ◽  
2021 ◽  
Vol 21 (22) ◽  
pp. 7619
Author(s):  
Jelle De Bock ◽  
Steven Verstockt

Video-based trajectory analysis might be rather well discussed in sports, such as soccer or basketball, but in cycling, this is far less common. In this paper, a video processing pipeline to extract riding lines in cyclocross races is presented. The pipeline consists of a stepwise analysis process to extract riding behavior from a region (i.e., the fence) in a video camera feed. In the first step, the riders are identified by an Alphapose skeleton detector and tracked with a spatiotemporally aware pose tracker. Next, each detected pose is enriched with additional meta-information, such as rider modus (e.g., sitting on the saddle or standing on the pedals) and detected team (based on the worn jerseys). Finally, a post-processor brings all the information together and proposes ride lines with meta-information for the riders in the fence. The presented methodology can provide interesting insights, such as intra-athlete ride line clustering, anomaly detection, and detailed breakdowns of riding and running durations within the segment. Such detailed rider info can be very valuable for performance analysis, storytelling, and automatic summarization.


Author(s):  
Mohiuddin Ahmed ◽  
Adnan Anwar ◽  
Abdun Naser Mahmood ◽  
Zubair Shah ◽  
Michael J. Maher

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