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Smart city article details

Title Toward Intelligent Visual Sensing And Low-Cost Analysis: A Collaborative Computing Approach
ID_Doc 57706
Authors Bai Y.; Duan L.-Y.; Luo Y.; Wang S.; Wen Y.; Gao W.
Year 2019
Published 2019 IEEE International Conference on Visual Communications and Image Processing, VCIP 2019
DOI http://dx.doi.org/10.1109/VCIP47243.2019.8965808
Abstract In the big data era, there has been an increasing consensus that the label information, computational resources and communication bandwidth are particularly precious. State-of-The-Art research is revolutionizing the vision systems of the smart city, which converts the visual signals from sensory input into feature representations and conveys the compact feature for analysis by using the computational resources of both front and back ends. To deploy a robust model, large amounts of labeled data are usually required, and thereby heavy computational and communication resources are incurred in model training as well as inference. However, the computational resources in front-end devices are usually constrained, and heavy transmission burden is imposed when leveraging multiple models amongst different ends. In this work, we propose a novel collaborative computing approach for intelligent sensing and low-cost analysis, which reduces the requirement of labeled data and communication cost, and balances the computational load in model training and inference. By incorporating the adversarial learning mechanism into collaborative model training, knowledge of different domains can be better exploited. Moreover, the learned models are deployed for inference in a collaborative manner, in which part of model is placed in front-ends for extracting intermediate feature maps, and part of the model remains in back ends for inference with received feature maps. The effectiveness of the proposed approach has been validated in the context of an emerging digital retina system for smart city intelligent applications. © 2019 IEEE.
Author Keywords adversarial learning; deep learning model; edge computing; feature compression; Intelligent sensing


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