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Enhancing Usability, Security, and Performance in Mobile Computing

机译:增强移动计算的可用性,安全性和性能

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摘要

We have witnessed the prevalence of smart devices in every aspect of human life. However, the ever-growing smart devices present significant challenges in terms of usability, security, and performance. First, we need to design new interfaces to improve the device usability which has been neglected during the rapid shift from hand-held mobile devices to wearables. Second, we need to protect smart devices with abundant private data against unauthorized users. Last, new applications with compute-intensive tasks demand the integration of emerging mobile backend infrastructure. This dissertation focuses on addressing these challenges.;First, we present GlassGesture, a system that improves the usability of Google Glass through a head gesture user interface with gesture recognition and authentication. We accelerate the recognition by employing a novel similarity search scheme, and improve the authentication performance by applying new features of head movements in an ensemble learning method. As a result, GlassGesture achieves 96% gesture recognition accuracy. Furthermore, GlassGesture accepts authorized users in nearly 92% of trials, and rejects attackers in nearly 99% of trials.;Next, we investigate the authentication between a smartphone and a paired smartwatch. We design and implement WearLock, a system that utilizes one's smartwatch to unlock one's smartphone via acoustic tones. We build an acoustic modem with sub-channel selection and adaptive modulation, which generates modulated acoustic signals to maximize the unlocking success rate against ambient noise. We leverage the motion similarities of the devices to eliminate unnecessary unlocking. We also offload heavy computation tasks from the smartwatch to the smartphone to shorten response time and save energy. The acoustic modem achieves a low bit error rate (BER) of 8%. Compared to traditional manual personal identification numbers (PINs) entry, WearLock not only automates the unlocking but also speeds it up by at least 18%.;Last, we consider low-latency video analytics on mobile devices, leveraging emerging mobile backend infrastructure. We design and implement LAVEA, a system which offloads computation from mobile clients to edge nodes, to accomplish tasks with intensive computation at places closer to users in a timely manner. We formulate an optimization problem for offloading task selection and prioritize offloading requests received at the edge node to minimize the response time. We design and compare various task placement schemes for inter-edge collaboration to further improve the overall response time. Our results show that the client-edge configuration has a speedup ranging from 1.3x to 4x against running solely by the client and 1.2x to 1.7x against the client-cloud configuration.
机译:我们已经见证了智能设备在人类生活各个方面的普及。但是,不断增长的智能设备在可用性,安全性和性能方面提出了严峻的挑战。首先,我们需要设计新的接口来改善设备的可用性,而在从手持移动设备向可穿戴设备的快速转变过程中,这一点已被忽略。其次,我们需要保护具有大量私人数据的智能设备,防止未经授权的用户进入。最后,具有计算密集型任务的新应用程序需要集成新兴的移动后端基础架构。首先,我们介绍了GlassGesture,这是一个通过具有手势识别和身份验证的头部手势用户界面来提高Google Glass可用性的系统。我们通过采用新颖的相似性搜索方案来加快识别速度,并通过在整体学习方法中应用头部运动的新功能来提高认证性能。结果,GlassGesture达到了96%的手势识别精度。此外,GlassGesture在将近92%的试验中接受授权用户,并在将近99%的试验中拒绝攻击者。接下来,我们研究智能手机与配对智能手表之间的身份验证。我们设计并实现了WearLock,该系统利用个人的智能手表通过声音来解锁个人的智能手机。我们构建了一个具有子通道选择和自适应调制功能的声学调制解调器,该调制解调器会生成调制后的声学信号,以最大程度地提高针对环境噪声的解锁成功率。我们利用设备的运动相似性来消除不必要的解锁。我们还将繁重的计算任务从智能手表转移到智能手机,以缩短响应时间并节省能源。声学调制解调器可实现8%的低误码率(BER)。与传统的手动个人识别码(PIN)输入相比,WearLock不仅可以自动执行解锁操作,还可以将解锁速度提高至少18%。最后,我们考虑利用新兴的移动后端基础架构在移动设备上进行低延迟的视频分析。我们设计并实现了LAVEA,这是一个将计算从移动客户端转移到边缘节点的系统,可以在距离用户更近的地方及时完成密集计算的任务。我们为卸载任务选择制定了一个优化问题,并对在边缘节点接收的卸载请求进行了优先排序,以最大程度地缩短响应时间。我们设计并比较了用于跨边缘协作的各种任务放置方案,以进一步缩短总体响应时间。我们的结果表明,仅由客户端运行时,客户端边缘配置的速度提高了1.3倍至4倍,而针对客户端云配置的速度提高了1.2倍至1.7倍。

著录项

  • 作者

    Yi, Shanhe.;

  • 作者单位

    The College of William and Mary.;

  • 授予单位 The College of William and Mary.;
  • 学科 Computer science.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 134 p.
  • 总页数 134
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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