Artículo
A 4 μ W Low-Power Audio Processor System for Real-Time Jaw Movements Recognition in Grazing Cattle
Fecha de publicación:
11/2022
Editorial:
Springer
Revista:
Journal Of Signal Processing Systems For Signal Image And Video Technology
ISSN:
1939-8018
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
Precision livestock farming consists of technological tools and techniques to improve livestock management. Proper detection and classification of jaw movement (JM) events are indispensable for the estimation of dry matter intake, detection of health problems, and flag the onset of estrus, among other information. The analysis of acoustic signals is one of the most accepted ways to monitor the feeding behavior of free-grazing cattle. Different acoustic methods have been developed for recognizing JM-events in recent years. However, their operation is limited to off-line analysis on a personal computer. The lack of on-line acoustic monitoring systems is associated with the challenging operation requirements (low-power consumption, autonomy, portability, robustness and non-intrusive on the animal). In this paper, a fixed-point variant of the chew-bite energy-based algorithm is presented. This algorithm is implemented on a new low-power audio processor system for real-time recognition of JM-events. The system includes a Nanocontroller processor, which is always-on and detects JM-events; and a second transport-triggered architecture (TTA) based processor, which is mainly in power-down and classifies JM-events. The results demonstrate that the proposed fixed-point JM-events recognizer achieves a recognition rate of 91.4% and 90.2% in noiseless and noisy conditions, respectively. The recognition rate increases by 6.1% regarding a previous reference on-line system. Moreover, the proposed audio processor system chip consumes 4 μW on average, i.e., only 2.3% of the power of an always-on TTA-based processor system for the same audio sequence. An exemplary implementation of the proposed system in a 65 nm low-leakage CMOS technology is given.
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Articulos(SINC(I))
Articulos de INST. DE INVESTIGACION EN SEÑALES, SISTEMAS E INTELIGENCIA COMPUTACIONAL
Articulos de INST. DE INVESTIGACION EN SEÑALES, SISTEMAS E INTELIGENCIA COMPUTACIONAL
Citación
Martínez Rau, Luciano Sebastián; Weißbrich, Moritz; Payá Vayá, Guillermo; A 4 μ W Low-Power Audio Processor System for Real-Time Jaw Movements Recognition in Grazing Cattle; Springer; Journal Of Signal Processing Systems For Signal Image And Video Technology; 95; 4; 11-2022; 407-424
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