Auritus

Author:

Saha Swapnil Sayan1,Sandha Sandeep Singh1,Pei Siyou1,Jain Vivek1,Wang Ziqi1,Li Yuchen1,Sarker Ankur1,Srivastava Mani1

Affiliation:

1. University of California - Los Angeles, Los Angeles, CA, USA

Abstract

Smart ear-worn devices (called earables) are being equipped with various onboard sensors and algorithms, transforming earphones from simple audio transducers to multi-modal interfaces making rich inferences about human motion and vital signals. However, developing sensory applications using earables is currently quite cumbersome with several barriers in the way. First, time-series data from earable sensors incorporate information about physical phenomena in complex settings, requiring machine-learning (ML) models learned from large-scale labeled data. This is challenging in the context of earables because large-scale open-source datasets are missing. Secondly, the small size and compute constraints of earable devices make on-device integration of many existing algorithms for tasks such as human activity and head-pose estimation difficult. To address these challenges, we introduce Auritus, an extendable and open-source optimization toolkit designed to enhance and replicate earable applications. Auritus serves two primary functions. Firstly, Auritus handles data collection, pre-processing, and labeling tasks for creating customized earable datasets using graphical tools. The system includes an open-source dataset with 2.43 million inertial samples related to head and full-body movements, consisting of 34 head poses and 9 activities from 45 volunteers. Secondly, Auritus provides a tightly-integrated hardware-in-the-loop (HIL) optimizer and TinyML interface to develop lightweight and real-time machine-learning (ML) models for activity detection and filters for head-pose tracking. To validate the utlity of Auritus, we showcase three sample applications, namely fall detection, spatial audio rendering, and augmented reality (AR) interfacing. Auritus recognizes activities with 91% leave 1-out test accuracy (98% test accuracy) using real-time models as small as 6-13 kB. Our models are 98-740x smaller and 3-6% more accurate over the state-of-the-art. We also estimate head pose with absolute errors as low as 5 degrees using 20kB filters, achieving up to 1.6x precision improvement over existing techniques. We make the entire system open-source so that researchers and developers can contribute to any layer of the system or rapidly prototype their applications using our dataset and algorithms.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference103 articles.

1. 2021. Falls - World Health Organization. Retrieved from: https://www.who.int/en/news-room/fact-sheets/detail/falls , Accessed: 29th Oct. 2021 . 2021. Falls - World Health Organization. Retrieved from: https://www.who.int/en/news-room/fact-sheets/detail/falls, Accessed: 29th Oct. 2021.

2. Md Atiqur Rahman Ahad , Anindya Das Antar, and Masud Ahmed . 2020 . IoT sensor-based activity recognition. Md Atiqur Rahman Ahad, Anindya Das Antar, and Masud Ahmed. 2020. IoT sensor-based activity recognition.

3. Ashwin Ahuja Andrea Ferlini and Cecilia Mascolo. 2021. PilotEar: Enabling In-ear Inertial Navigation. In Adjunct Proceedings of the 2021 ACM International Joint Conference on Pervasive and Ubiquitous Computing and Proceedings of the 2021 ACM International Symposium on Wearable Computers. 139--145. Ashwin Ahuja Andrea Ferlini and Cecilia Mascolo. 2021. PilotEar: Enabling In-ear Inertial Navigation. In Adjunct Proceedings of the 2021 ACM International Joint Conference on Pervasive and Ubiquitous Computing and Proceedings of the 2021 ACM International Symposium on Wearable Computers. 139--145.

4. Davide Anguita , Alessandro Ghio , Luca Oneto , Xavier Parra Perez , and Jorge Luis Reyes Ortiz . 2013 . A public domain dataset for human activity recognition using smartphones . In Proceedings of the 21th International European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning. 437--442 . Davide Anguita, Alessandro Ghio, Luca Oneto, Xavier Parra Perez, and Jorge Luis Reyes Ortiz. 2013. A public domain dataset for human activity recognition using smartphones. In Proceedings of the 21th International European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning. 437--442.

5. Louis Atallah , Anatole Wiik , Gareth G Jones , Benny Lo , Justin P Cobb , Andrew Amis , and Guang-Zhong Yang . 2012. Validation of an ear-worn sensor for gait monitoring using a force-plate instrumented treadmill. Gait & posture 35, 4 ( 2012 ), 674--676. Louis Atallah, Anatole Wiik, Gareth G Jones, Benny Lo, Justin P Cobb, Andrew Amis, and Guang-Zhong Yang. 2012. Validation of an ear-worn sensor for gait monitoring using a force-plate instrumented treadmill. Gait & posture 35, 4 (2012), 674--676.

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