Literature DB >> 36009732

FedAAR: A Novel Federated Learning Framework for Animal Activity Recognition with Wearable Sensors.

Axiu Mao1, Endai Huang1,2, Haiming Gan1, Kai Liu1.   

Abstract

Deep learning dominates automated animal activity recognition (AAR) tasks due to high performance on large-scale datasets. However, constructing centralised data across diverse farms raises data privacy issues. Federated learning (FL) provides a distributed learning solution to train a shared model by coordinating multiple farms (clients) without sharing their private data, whereas directly applying FL to AAR tasks often faces two challenges: client-drift during local training and local gradient conflicts during global aggregation. In this study, we develop a novel FL framework called FedAAR to achieve AAR with wearable sensors. Specifically, we devise a prototype-guided local update module to alleviate the client-drift issue, which introduces a global prototype as shared knowledge to force clients to learn consistent features. To reduce gradient conflicts between clients, we design a gradient-refinement-based aggregation module to eliminate conflicting components between local gradients during global aggregation, thereby improving agreement between clients. Experiments are conducted on a public dataset to verify FedAAR's effectiveness, which consists of 87,621 two-second accelerometer and gyroscope data. The results demonstrate that FedAAR outperforms the state-of-the-art, on precision (75.23%), recall (75.17%), F1-score (74.70%), and accuracy (88.88%), respectively. The ablation experiments show FedAAR's robustness against various factors (i.e., data sizes, communication frequency, and client numbers).

Entities:  

Keywords:  animal behaviour; client-drift; data privacy; deep learning; distributed learning; local gradient conflicts

Year:  2022        PMID: 36009732      PMCID: PMC9404798          DOI: 10.3390/ani12162142

Source DB:  PubMed          Journal:  Animals (Basel)        ISSN: 2076-2615            Impact factor:   3.231


  2 in total

1.  Deep Learning Classification of Canine Behavior Using a Single Collar-Mounted Accelerometer: Real-World Validation.

Authors:  Robert D Chambers; Nathanael C Yoder; Aletha B Carson; Christian Junge; David E Allen; Laura M Prescott; Sophie Bradley; Garrett Wymore; Kevin Lloyd; Scott Lyle
Journal:  Animals (Basel)       Date:  2021-05-25       Impact factor: 2.752

  2 in total

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