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Cited 8 time in webofscience Cited 14 time in scopus
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Deep Edge Computing for Videosopen access

Authors
Kim, Jun-HwaKim, NamhoWon, Chee Sun
Issue Date
2021
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Keywords
Convolutional neural networks; Three-dimensional displays; Streaming media; Cameras; Optical imaging; Image edge detection; Optical computing; Edge computing; CNN; the IoT; anomaly detection; video recognition
Citation
IEEE ACCESS, v.9, pp 123348 - 123357
Pages
10
Indexed
SCIE
SCOPUS
Journal Title
IEEE ACCESS
Volume
9
Start Page
123348
End Page
123357
URI
https://scholarworks.dongguk.edu/handle/sw.dongguk/5659
DOI
10.1109/ACCESS.2021.3109904
ISSN
2169-3536
Abstract
This paper provides a modular architecture with deep neural networks as a solution for real-time video analytics in an edge-computing environment. The modular architecture consists of two networks of Front-CNN (Convolutional Neural Network) and Back-CNN, where we adopt Shallow 3D CNN (S3D) as the Front-CNN and a pre-trained 2D CNN as the Back-CNN. The S3D (i.e., the Front CNN) is in charge of condensing a sequence of video frames into a feature map with three channels. That is, the S3D takes a set of sequential frames in the video shot as input and yields a learned 3 channel feature map (3CFM) as output. Since the 3CFM is compatible with the three-channel RGB color image format, we can use the output of the S3D (i.e., the 3CFM) as the input to a pre-trained 2D CNN of the Back-CNN for the transfer-learning. This serial connection of Front-CNN and Back-CNN architecture is end-to-end trainable to learn both spatial and temporal information of videos. Experimental results on the public datasets of UCF-Crime and UR-Fall Detection show that the proposed S3D-2DCNN model outperforms the existing methods and achieves state-of-the-art performance. Moreover, since our Front-CNN and Back-CNN modules have a shallow S3D and a light-weighted 2D CNN, respectively, it is suitable for real-time video recognition in edge-computing environments. We have implemented our CNN model on NVIDIA Jetson Nano Developer as an edge-computing device to show its real-time execution.
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