2021
DOI: 10.48550/arxiv.2110.01863
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DeepEdge: A Deep Reinforcement Learning based Task Orchestrator for Edge Computing

Abstract: The improvements in the edge computing technology pave the road for diversified applications that demand real-time interaction. However, due to the mobility of the end-users and the dynamic edge environment, it becomes challenging to handle the task offloading with high performance. Moreover, since each application in mobile devices has different characteristics, a task orchestrator must be adaptive and have the ability to learn the dynamics of the environment. For this purpose, we develop a deep reinforcement… Show more

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“…Edge detection is a fundamental and important topic in computer vision. Various approaches have been proposed to tackle this problem, such as the Canny detector [ 31 ], Statistical Edges [ 38 ], Structured Edges [ 39 ], and DeepEdge [ 40 ]. This work used a pretrained holistically nested edge detection (HED) [ 36 ] model to extract the grain boundaries in composite microscopy images.…”
Section: Methodsmentioning
confidence: 99%
“…Edge detection is a fundamental and important topic in computer vision. Various approaches have been proposed to tackle this problem, such as the Canny detector [ 31 ], Statistical Edges [ 38 ], Structured Edges [ 39 ], and DeepEdge [ 40 ]. This work used a pretrained holistically nested edge detection (HED) [ 36 ] model to extract the grain boundaries in composite microscopy images.…”
Section: Methodsmentioning
confidence: 99%