RESUMO
Wearable systems constitute a promising solution to the emerging challenges of healthcare provision, feeding machine learning frameworks with necessary data. In practice, however, raw data collection is expensive in terms of energy, and therefore imposes a significant maintenance burden to the user, which in turn results in poor user experience, as well as significant data loss due to improper battery maintenance. In this paper, we propose a framework for on-board activity classification targeting severely energy-constrained wearable systems. The proposed framework leverages embedded classifiers to activate power-hungry sensing elements only when they are useful, and to distil the raw data into knowledge that is eventually transmitted over the air. We implement the proposed framework on a prototype wearable system and demonstrate that it can decrease the energy requirements by one order of magnitude, yielding high classification accuracy that is reduced by approximately 5%, as compared to a cloud-based reference system.
Assuntos
Técnicas Biossensoriais , Aprendizado de Máquina , Dispositivos Eletrônicos Vestíveis , Fontes de Energia Elétrica , HumanosRESUMO
Speech perception in everyday conditions is highly affected by the presence of noise of a different nature. The presence of overlapping speakers is considered an especially challenging scenario, as it introduces both energetic and informational masking. The efficacy of the masking also depends on the familiarity with the language of both the target and masking stimuli. This work analyses consonant identification by non-native English speakers in N-talker natural babble noise and babble-modulated noise, by varying the number of talkers in the babble. In particular, only English consonants that are also present in all the native languages of the subjects are used. As the subjects are familiar with the consonants used, this study can be considered a step towards a deeper analysis on perception of first language speech in the presence of second language maskers.