Large-scale Video Analytics with Cloud–Edge Collaborative Continuous Learning

Author:

Nan Ya1ORCID,Jiang Shiqi2ORCID,Li Mo1ORCID

Affiliation:

1. Nanyang Technological University, Singapore

2. Microsoft Research Asia, China

Abstract

Deep learning–based video analytics demands high network bandwidth to ferry the large volume of data when deployed on the cloud. When incorporated at the edge side, only lightweight deep neural network (DNN) models are affordable due to computational constraint. In this article, a cloud–edge collaborative architecture is proposed combining edge-based inference with cloud-assisted continuous learning. Lightweight DNN models are maintained at the edge servers and continuously retrained with a more comprehensive model on the cloud to achieve high video analytics performance while reducing the amount of data transmitted between edge servers and the cloud. The proposed design faces the challenge of constraints of both computation resources at the edge servers and network bandwidth of the edge–cloud links. An accuracy gradient-based resource allocation algorithm is proposed to allocate the limited computation and network resources across different video streams to achieve the maximum overall performance. A prototype system is implemented and experiment results demonstrate the effectiveness of our system with up to 28.6% absolute mean average precision gain compared with alternative designs.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference65 articles.

1. Michael R. Anderson, Michael J. Cafarella, Germán Ros, and Thomas F. Wenisch. 2019. Physical representation-based predicate optimization for a visual analytics database. In ICDE. IEEE, 1466–1477.

2. James Bankoski John Koleszar Lou Quillio Janne Salonen Paul Wilkins and Yaowu Xu. 2011. RFC 6386: VP8 Data Format and Decoding Guide.

3. Romil Bhardwaj, Zhengxu Xia, Ganesh Ananthanarayanan, Junchen Jiang, Yuanchao Shu, Nikolaos Karianakis, Kevin Hsieh, Paramvir Bahl, and Ion Stoica. 2022. Ekya: Continuous learning of video analytics models on edge compute servers. In NSDI. USENIX Association, 119–135.

4. Xingyuan Bu, Junran Peng, Junjie Yan, Tieniu Tan, and Zhaoxiang Zhang. 2021. GAIA: A transfer learning system of object detection that fits your needs. In CVPR. Computer Vision Foundation/IEEE, 274–283.

5. Frank Cangialosi, Neil Agarwal, Venkat Arun, Srinivas Narayana, Anand D. Sarwate, and Ravi Netravali. 2022. Privid: Practical, privacy-preserving video analytics queries. In NSDI. USENIX Association, 209–228.

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