MTRFN: Multiscale Temporal Receptive Field Network for Compressed Video Action Recognition at Edge Servers

Author(s):  
Lijun He ◽  
Miao Zhang ◽  
Sijin Zhang ◽  
Liejun Wang ◽  
Fan Li
Author(s):  
Chao-Yuan Wu ◽  
Manzil Zaheer ◽  
Hexiang Hu ◽  
R. Manmatha ◽  
Alexander J. Smola ◽  
...  

2022 ◽  
Vol 2161 (1) ◽  
pp. 012064
Author(s):  
M Dhruv ◽  
R Sai Chandra Teja ◽  
R Sri Devi ◽  
S Nagesh Kumar

Abstract COVID-19 is an emerging infectious disease that has been rampant worldwide since its onset causing Lung irregularity and severe respiratory failure due to pneumonia. The Community-Acquired Pneumonia (CAP), Normal, and COVID-19 Computed Tomography (CT) scan images are classified using Involution Receptive Field Network from Large COVID-19 CT scan slice dataset. The proposed lightweight Involution Receptive Field Network (InRFNet) is spatial specific and channel-agnostic with Receptive Field structure to enhance the feature map extraction. The InRFNet model evaluation results show high training (99%) and validation (96%) accuracy. The performance metrics of the InRFNet model are Sensitivity (94.48%), Specificity (97.87%), Recall (96.34%), F1-score (96.33%), kappa score (94.10%), ROC-AUC (99.41%), mean square error (0.04), and the total number of parameters (33100).


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