A Smart Service Rebuilding Scheme across Cloudlets via Mobile AR Frame Feature Mapping

Mobile edge computing platforms, such as cloudlets, bring computation resources closer to mobile users, as compared to the cloud, which decreases the end-to-end network latency. This benefit enables a myriad of real-time mobile applications, especially augmented reality (AR), that require low latency and high computation power. However, when mobile users move away from the attached cloudlet, the offloaded services have to be migrated or rebuilt on a new nearby cloudlet. However, this service rebuilding process takes a lot of time and may deteriorate user experience. In this paper, we propose a smart service rebuilding scheme which seamlessly restores the offloading services on the target cloudlet while the mobile user is moving. The service rebuilding process includes the radio handoff stage and service handoff stage. A seamless service rebuilding process is achieved via predicting user's target cloudlet before being triggered a radio handoff, by leveraging extracted features from the captured frames of the mobile user's camera. Furthermore, based on the proposed service rebuilding scheme, we design a feature mapping algorithm to achieve a high prediction precision and a short prediction latency. We implement our scheme on a testbed and conduct experiments using real world AR applications. The experimental results show that our proposed scheme decreases the service rebuilding latency by around 65.8%, as compared to the conventional rebuilding process. In addition, we conduct extensive simulations to evaluate the performance of our proposed feature mapping algorithm. Simulation confirms that our algorithm is robust and can predict users' target cloudlet with high precision and low latency.

[1]  Qun Li,et al.  Efficient service handoff across edge servers via docker container migration , 2017, SEC.

[2]  Myungchul Kim,et al.  Behavior-based mobility prediction for seamless handoffs in mobile wireless networks , 2011, Wirel. Networks.

[3]  Tao Han,et al.  V-handoff: A practical energy efficient handoff for 802.11 infrastructure networks , 2017, 2017 IEEE International Conference on Communications (ICC).

[4]  Mahadev Satyanarayanan,et al.  Adaptive VM Handoff Across Cloudlets , 2015 .

[5]  Tuna Tugcu,et al.  A survey of cross-layer performance enhancements for Mobile IP networks , 2005, Comput. Networks.

[6]  Paramvir Bahl,et al.  The Case for VM-Based Cloudlets in Mobile Computing , 2009, IEEE Pervasive Computing.

[7]  Iakovos S. Venieris,et al.  Fast handover support in a WLAN environment: challenges and perspectives , 2005, IEEE Network.

[8]  Mahadev Satyanarayanan,et al.  OpenFace: A general-purpose face recognition library with mobile applications , 2016 .

[9]  Mahadev Satyanarayanan,et al.  You can teach elephants to dance: agile VM handoff for edge computing , 2017, SEC.

[10]  Jiang Xie,et al.  IMeX: Intergateway Cross-Layer Handoffs in Internet-Based Infrastructure Wireless Mesh Networks , 2012, IEEE Transactions on Mobile Computing.

[11]  Andrew Warfield,et al.  Live migration of virtual machines , 2005, NSDI.

[12]  Ben-Jye Chang,et al.  Markov Decision Process-Based Adaptive Vertical Handoff with RSS Prediction in Heterogeneous Wireless Networks , 2009, 2009 IEEE Wireless Communications and Networking Conference.

[13]  Yellu Sreenivasulu,et al.  FAST TRANSPARENT MIGRATION FOR VIRTUAL MACHINES , 2014 .

[14]  Mahadev Satyanarayanan,et al.  Towards wearable cognitive assistance , 2014, MobiSys.

[15]  Ben-Jye Chang,et al.  Cross-Layer-Based Adaptive Vertical Handoff With Predictive RSS in Heterogeneous Wireless Networks , 2008, IEEE Transactions on Vehicular Technology.