会议专题

Function-Guided Energy-Precision Optimization with Precision-Rate-Complexity Bivariate Models

  In an intelligent wireless vision sensor network,an intra encoder is used for the energy-precision optimization with two control parameters: sampling ratio and quantization parameter,which have a direct impact on the coding bit rate,encoder complexity,wireless transmission energy,as well as the serverend object classification precision.Through extensive experiments,we construct the precision-rate-complexity bivariate models to understand the behaviors of the intra encoder and the deep convolutional neural networks,and then characterize the inherent relationship between bit rate,encoding complexity,classification precision and these two control parameters.With these models,we study the problem of optimization control of the wireless vision sensor node so that the node-end energy can be minimized subject to the server-end object classification precision.Our experimental results demonstrate that the proposed control method is able to effectively adjust the energy consumption of the sensor node while achieving the target classification performance.

Intra encoder Energy-precision optimization Bivariate models Deep convolutional neural networks

Hao Liu Rong Huang Zhihai He

College of Information Science and Technology,Donghua University,Shanghai 201620,China Department of Electrical and Computer Engineering,University of Missouri,Columbia,MO 65211,USA

国际会议

中国模式识别与计算机视觉大会(PRCV2018)

广州

英文

403-414

2018-11-23(万方平台首次上网日期,不代表论文的发表时间)