Uniting farms : Federated learning for sensor-based animal activity recognition
Research output: Conference Papers › RGC 32 - Refereed conference paper (without host publication) › peer-review
Author(s)
Related Research Unit(s)
Detail(s)
Original language | English |
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Publication status | Published - 30 Aug 2022 |
Conference
Title | 10th European Conference on Precision Livestock Farming (ECPLF 2022) |
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Location | University of Veterinary Medicine Vienna |
Place | Austria |
City | Vienna |
Period | 29 August - 2 September 2022 |
Link(s)
Document Link | Links
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Link to Scopus | https://www.scopus.com/record/display.uri?eid=2-s2.0-85172327332&origin=recordpage |
Permanent Link | https://scholars.cityu.edu.hk/en/publications/publication(bb8e4ad6-d546-4961-9df4-0b4eb72e9727).html |
Abstract
Automated animal activity recognition (AAR) has achieved great success due to the development of deep learning methods trained on large-scale datasets, providing rich insights into animal health and welfare and alleviating the workloads of animal caretakers and veterinarians. However, constructing centralised data across diverse sources (e.g., farms) faces two challenges: 1) data ownership and privacy issues when accessing farm data, and 2) limited storage and computational capabilities in a single central repository. Federated learning (FL), which allows data owners to collectively train a model while keeping their data stored locally, provides a privacy-preserving decentralised solution. This study introduced the FL-based framework for the first time to AAR fields and explored its feasibility and effectiveness in improving model performance by uniting sensor data from different farms. Three state-of-the-art FL strategies (i.e., FedAvg, FedProx, and FedBN) were compared against SingleSet (i.e., training an individual model within each client) based on two public datasets. These two datasets consist of 87,621 and 42,943 2-s motion data (tri-axial acceleration and tri-axial angular velocity) acquired from horses and goats, respectively. The results demonstrated that FedAvg, FedProx, and FedBN could accurately classify activities of horses and goats, outperforming the SingleSet with different increments in average accuracy (horses: 12.07%, 12.05%, 11.89%; goats: 4.05%, 4.07%, 4.16%). This proved the promising capability of FL to enhance AAR's performance without privacy leakage. In addition, empirical analyses were conducted to assess FL's performance from two aspects, including data sizes and clients numbers, providing rich insights into FL's appropriate applications in the future.
Research Area(s)
- animal welfare, deep learning, distributed learning, privacy-preserving, wearable sensor
Bibliographic Note
Research Unit(s) information for this publication is provided by the author(s) concerned.
Citation Format(s)
Uniting farms: Federated learning for sensor-based animal activity recognition. / MAO, Axiu; HUANG, Endai; GAN, Haiming et al.
2022. Paper presented at 10th European Conference on Precision Livestock Farming (ECPLF 2022), Vienna, Austria.
2022. Paper presented at 10th European Conference on Precision Livestock Farming (ECPLF 2022), Vienna, Austria.
Research output: Conference Papers › RGC 32 - Refereed conference paper (without host publication) › peer-review