Towards Resource-Efficient DNN Deployment for Traffic Object Recognition: From Edge to Fog
Author:
Stojanovic DraganORCID, Sentic Stefan, Stojanovic NatalijaORCID
Abstract
AbstractThe paper focuses on the challenges associated with deploying deep neural networks (DNNs) for the recognition of traffic objects using the camera of Android smartphones. The main objective of this research is to achieve resource-awareness, enabling efficient utilization of computational resources while maintaining high recognition accuracy. To achieve this, a methodology is proposed that leverages the Edge-to-Fog paradigm to distribute the inference workload across multiple tiers of the distributed system architecture. The evaluation was conducted using a dataset comprising real-world traffic scenarios and diverse traffic objects. The main findings of this research highlight the feasibility of deploying DNNs for traffic object recognition on resource-constrained Android smartphones. The proposed Edge-to-Fog methodology demonstrated improvements in terms of both recognition accuracy and resource utilization, and viability of both edge-only and edge-fog based approaches. Moreover, the experimental results showcased the adaptability of the system to dynamic traffic scenarios, thus ensuring real-time recognition performance even in challenging environments.
Publisher
Springer Nature Switzerland
Reference10 articles.
1. Bittencourt, L., et al.: The Internet of Things, fog and cloud continuum: integration and challenges. In: Internet of Things, vol. 3–4, pp. 134–155 (2018) 2. Lockhart, L., Harvey, P., Imai, P., Willis, P., Varghese, B.: Scission: performance-driven and context-aware cloud-edge distribution of deep neural networks. In: Proceedings of the IEEE/ACM 13th International Conference on Utility and Cloud Computing (UCC), Leicester, United Kingdom, pp. 257–268 (2020) 3. Cho, E., Yoon, J., Baek, D., Lee, D., Bae, DH.: DNN model deployment on distributed edges. In: Bakaev, M., Ko, I.Y., Mrissa, M., Pautasso, C., Srivastava, A. (eds.) ICWE 2021 Workshops. Communications in Computer and Information Science, vol. 1508, pp. 15–26. Springer, Cham (2021). https://doi.org/10.1007/978-3-030-92231-3_2 4. Chang-You, L., Tzu-Chen, W., Kuan-Chih, C., Bor-Yan, L., Jian-Jhih Kuo, K.: Distributed deep neural network deployment for smart devices from the edge to the cloud. In: Proceedings of the ACM MobiHoc Workshop on Pervasive Systems in the IoT Era (PERSIST-IoT 2019), New York, NY, USA, pp. 43–48 (2019) 5. McNamee, F., Dustdar, S., Kilpatrick, P., Shi, W., Spence, I., Varghese, B.: The case for adaptive deep neural networks in edge computing. In: Proceedings of the IEEE 14th International Conference on Cloud Computing (CLOUD), pp. 43–52 (2021)
|
|