Publication | Closed Access
Resource-aware Feature Extraction in Mobile Edge Computing
18
Citations
35
References
2020
Year
EngineeringFeature DetectionEdge DeviceBiometricsReal-time Image AnalysisImage ClassificationImage AnalysisData SciencePattern RecognitionFeature (Computer Vision)Internet Of ThingsNetwork TrafficEdge IntelligenceMachine VisionFeature LearningMobile ComputingComputer ScienceEdge ArchitectureComputer VisionNestdfe AlgorithmEdge ComputingCloud ComputingDfe AlgorithmResource-aware Feature Extraction
Mobile image recognition services, which provide people with image recognition services through the cameras of mobile devices, are revolutionizing our lives. However, most existing cloud/edge-based approaches suffer from two major limitations, (i) Low recognition accuracy and high network bandwidth pressure, and (ii) Not easy to extract features based on currently available resources of mobile devices. In this paper, we propose a resource-aware feature extraction framework for mobile image recognition services. The proposed framework consists of discriminative feature extraction (DFE) and NestDFE algorithms. The DFE algorithm can generate an extractor <inline-formula><tex-math notation="LaTeX">${{\mathbf E}}$</tex-math></inline-formula> to extract discriminative features from the image data set on the edge server and images on mobile devices. Thus, the proposed framework can achieve higher recognition accuracy and require mobile devices to upload less feature data to the edge server. The NestDFE algorithm generates a single multi-capacity extractor that acts as a series of sub-extractors and enables mobile devices to dynamically select sub-extractors. Experimental results show that the proposed framework improves recognition accuracy by about 23 percent and reduces network traffic by about 76 percent compared with existing approaches.
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