A novel middleware for adaptive and efficient split computing for real-time object detection

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Pervasive and Mobile Computing Pub Date : 2025-02-22 DOI:10.1016/j.pmcj.2025.102028
Matteo Mendula , Paolo Bellavista , Marco Levorato , Sharon Ladron de Guevara Contreras
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Abstract

Real-world applications requiring real-time responsiveness frequently rely on energy-intensive and compute-heavy neural network algorithms. Strategies include deploying distributed and optimized Deep Neural Networks on mobile devices, which can lead to considerable energy consumption and degraded performance, or offloading larger models to edge servers, which requires low-latency wireless channels. Here we present Furcifer, a novel middleware that autonomously adjusts the computing strategy (i.e., local computing, edge computing, or split computing) based on context conditions. Utilizing container-based services and low-complexity predictors that generalize across environments, Furcifer supports supervised compression as a viable alternative to pure local or remote processing in real-time environments. An extensive set of experiments coversdiverse scenarios, including both stable and highly dynamic channel environments with unpredictable changes in connection quality and load. In moderate-varying scenarios, Furcifer demonstrates significant benefits: achieving a 2x reduction in energy consumption, a 30% higher mean Average Precision score compared to local computing, and a three-fold FPS increase over static offloading. In highly dynamic environments with unreliable connectivity and rapid increases in concurrent clients, Furcifer’s predictive capabilities preserves up to 30% energy, achieving a 16% higher accuracy rate, and completing 80% more frame inferences compared to pure local computing and approaches without trend forecasting, respectively.

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现实世界中需要实时响应的应用经常依赖于能源密集型和计算量大的神经网络算法。策略包括在移动设备上部署分布式优化深度神经网络,这可能会导致相当大的能耗和性能下降;或者将大型模型卸载到边缘服务器,这需要低延迟无线信道。我们在此介绍一种新型中间件 Furcifer,它能根据上下文条件自主调整计算策略(即本地计算、边缘计算或分离计算)。利用基于容器的服务和可跨环境通用的低复杂度预测器,Furcifer 支持将监督压缩作为实时环境中纯本地或远程处理的可行替代方案。大量实验涵盖了各种不同的场景,包括连接质量和负载发生不可预测变化的稳定和高度动态信道环境。在中度变化的场景中,Furcifer 显示了显著的优势:与本地计算相比,能耗降低了 2 倍,平均精度分数提高了 30%,FPS 提高了三倍。在连接不可靠、并发客户端迅速增加的高动态环境中,Furcifer 的预测能力可节省多达 30% 的能源,准确率提高了 16%,与纯本地计算和无趋势预测的方法相比,完成的帧推理分别增加了 80%。
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来源期刊
Pervasive and Mobile Computing
Pervasive and Mobile Computing COMPUTER SCIENCE, INFORMATION SYSTEMS-TELECOMMUNICATIONS
CiteScore
7.70
自引率
2.30%
发文量
80
审稿时长
68 days
期刊介绍: As envisioned by Mark Weiser as early as 1991, pervasive computing systems and services have truly become integral parts of our daily lives. Tremendous developments in a multitude of technologies ranging from personalized and embedded smart devices (e.g., smartphones, sensors, wearables, IoTs, etc.) to ubiquitous connectivity, via a variety of wireless mobile communications and cognitive networking infrastructures, to advanced computing techniques (including edge, fog and cloud) and user-friendly middleware services and platforms have significantly contributed to the unprecedented advances in pervasive and mobile computing. Cutting-edge applications and paradigms have evolved, such as cyber-physical systems and smart environments (e.g., smart city, smart energy, smart transportation, smart healthcare, etc.) that also involve human in the loop through social interactions and participatory and/or mobile crowd sensing, for example. The goal of pervasive computing systems is to improve human experience and quality of life, without explicit awareness of the underlying communications and computing technologies. The Pervasive and Mobile Computing Journal (PMC) is a high-impact, peer-reviewed technical journal that publishes high-quality scientific articles spanning theory and practice, and covering all aspects of pervasive and mobile computing and systems.
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