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Proceedings ArticleDOI

SoundSense: scalable sound sensing for people-centric applications on mobile phones

TLDR
This paper proposes SoundSense, a scalable framework for modeling sound events on mobile phones that represents the first general purpose sound sensing system specifically designed to work on resource limited phones and demonstrates that SoundSense is capable of recognizing meaningful sound events that occur in users' everyday lives.
Abstract
Top end mobile phones include a number of specialized (e.g., accelerometer, compass, GPS) and general purpose sensors (e.g., microphone, camera) that enable new people-centric sensing applications. Perhaps the most ubiquitous and unexploited sensor on mobile phones is the microphone - a powerful sensor that is capable of making sophisticated inferences about human activity, location, and social events from sound. In this paper, we exploit this untapped sensor not in the context of human communications but as an enabler of new sensing applications. We propose SoundSense, a scalable framework for modeling sound events on mobile phones. SoundSense is implemented on the Apple iPhone and represents the first general purpose sound sensing system specifically designed to work on resource limited phones. The architecture and algorithms are designed for scalability and Soundsense uses a combination of supervised and unsupervised learning techniques to classify both general sound types (e.g., music, voice) and discover novel sound events specific to individual users. The system runs solely on the mobile phone with no back-end interactions. Through implementation and evaluation of two proof of concept people-centric sensing applications, we demostrate that SoundSense is capable of recognizing meaningful sound events that occur in users' everyday lives.

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Patent

Mobile device location estimation using environmental information

TL;DR: In this paper, the authors estimate the location of a mobile device by comparing environmental information, such as environmental sound, associated with the mobile device with that of other devices to determine if the environmental information is similar enough to conclude that the mobile devices is in a comparable location as another device.
Journal ArticleDOI

A Survey on Human-in-the-Loop Applications Towards an Internet of All

TL;DR: This research presents a critical overview of the current taxonomic efforts in the area of Human-in-the-Loop CPSs, and a novel taxonomic exercise focused on the general roles of the human component together with a requirement analysis, are presented.
Journal ArticleDOI

Service-oriented middleware for the Future Internet: state of the art and research directions

TL;DR: This article focuses on research challenges for service-oriented middleware design, investigating service description, discovery, access, and composition in the Future Internet of services.
Proceedings ArticleDOI

Designing content-driven intelligent notification mechanisms for mobile applications

TL;DR: This paper presents a study of mobile user interruptibility with respect to notification content, its sender, and the context in which a notification is received, and shows that classifiers lead to a more accurate prediction of users' interruptibility than an alternative approach based on user-defined rules of their own interruptibility.
Journal ArticleDOI

LittleRock: Enabling Energy-Efficient Continuous Sensing on Mobile Phones

TL;DR: The root causes of energy overhead in continuous sensing are examined and it is shown that energy-efficient continuous sensing can be achieved through proper system design.
References
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Journal ArticleDOI

On the use of windows for harmonic analysis with the discrete Fourier transform

F.J. Harris
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