Detectability of multi-dimensional movement and behaviour in cattle using sensor data and machine learning algorithms: Study on a Charolais bull

被引:0
|
作者
Biszkup, Miklos [1 ]
Vasarhelyi, Gabor [2 ,3 ]
Setiawan, Nuri Nurlaila [1 ]
Marton, Aliz [1 ]
Szentes, Szilard [4 ]
Balogh, Petra [1 ]
Babay-Torok, Barbara [1 ]
Pajor, Gabor [1 ]
Drexler, Dora [1 ]
机构
[1] Hungarian Res Inst Organ Agr, Budapest, Hungary
[2] CollMot Robot Ltd, Budapest, Hungary
[3] Eotvos Lorand Univ, Dept Biol Phys, Budapest, Hungary
[4] Univ Vet Med, Anim Breeding Nutr & Lab Anim Sci Dept, Budapest, Hungary
来源
ARTIFICIAL INTELLIGENCE IN AGRICULTURE | 2024年 / 14卷
关键词
Cattle; PLF; Motion sensors; RumiWatch; Complex behaviour; Multi-dimensional; Parallel; Machine learning; DAIRY; CLASSIFICATION; PREDICTION; VALIDATION; WELFARE; TIME;
D O I
10.1016/j.aiia.2024.11.002
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
The development of motion sensors for monitoring cattle behaviour has enabled farmers to predict the state of their cattle's welfare more efficiently. While most studies work with one dimensional output with disjunct behaviour categories, more accurate prediction can still be achieved by including complex movements and enriching the sensor algorithm to detect multi-dimensional movements, i.e., more than one movement occurring simultaneously. This paper presents such a machine-learning method for analysing overlapping independent movements. The output of the method consists of automatically recognized complex behaviour patterns that can be used for measuring animal welfare, predicting calving, or detecting early signs of diseases. This study combines automated motion sensors (i.e., halter and pedometer) for ruminants known as RumiWatch mounted on a Charolais fattening bull and camera observation. Fourteen types of complex movements were identified, i.e., defecating-urinating, eating, drinking, getting up, head movement, licking, lying down, lying, playingaggression, rubbing, ruminating, sleeping, standing, and stepping. As multiple parallel binary classificators were used, the system was able to recognize parallel behavioural patterns with high fidelity. Two types of machine learning, i.e., Support Vector Classification (SVC) and RandomForest were used to recognize different general and non-general forms of movement. Results from these two supervised learning systems were compared. A continuous forty-eight hours of video were annotated to train the systems and validate their predictions. The success rate of both classifiers in recognizing special movements from both sensors or separately in different settings (i.e., window and padding) was examined. Although the two classifiers produced different results, the ideal settings showed that all forms of movement in the subject animal were successfully recognized with high accuracy. More studies using more individual animals and different ruminants would increase our knowledge on enhancing the system's performance and accuracy. (c) 2024 The Authors. Publishing services by Elsevier B.V. on behalf of KeAi Communications Co., Ltd. This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
引用
收藏
页码:86 / 98
页数:13
相关论文
共 50 条
  • [31] Enhancing flood susceptibility modeling using multi-temporal SAR images, CHIRPS data, and hybrid machine learning algorithms
    Riazi, Mostafa
    Khosravi, Khabat
    Shahedi, Kaka
    Ahmad, Sajjad
    Jun, Changhyun
    Bateni, Sayed M.
    Kazakis, Nerantzis
    SCIENCE OF THE TOTAL ENVIRONMENT, 2023, 871
  • [32] High-Knee-Flexion Posture Recognition Using Multi-Dimensional Dynamic Time Warping on Inertial Sensor Data
    Laudanski, Annemarie F.
    Kuederle, Arne
    Kluge, Felix
    Eskofier, Bjoern M.
    Acker, Stacey M.
    SENSORS, 2025, 25 (04)
  • [33] Optimising carbon fixation through agroforestry: Estimation of aboveground biomass using multi-sensor data synergy and machine learning
    Singh, R. K.
    Biradar, C. M.
    Behera, M. D.
    Prakash, A. J.
    Das, P.
    Mohanta, M. R.
    Krishna, G.
    Dogra, A.
    Dhyani, S. K.
    Rizvi, J.
    ECOLOGICAL INFORMATICS, 2024, 79
  • [34] Prediction of Diabetes Using Data Mining and Machine Learning Algorithms: A Cross-Sectional Study
    Shojaee-Mend, Hassan
    Velayati, Farnia
    Tayefi, Batool
    Babaee, Ebrahim
    HEALTHCARE INFORMATICS RESEARCH, 2024, 30 (01) : 73 - 82
  • [35] Three-Dimensional Mapping of Habitats Using Remote-Sensing Data and Machine-Learning Algorithms
    Amani, Meisam
    Foroughnia, Fatemeh
    Moghimi, Armin
    Mahdavi, Sahel
    Jin, Shuanggen
    REMOTE SENSING, 2023, 15 (17)
  • [36] A STUDY ON OIL PALM CLASSIFICATION FOR RANONG PROVINCE USING DATA FUSION AND MACHINE LEARNING ALGORITHMS
    Worachairungreung, Morakot
    Thanakunwutthirot, Kunyaphat
    Kulpanich, Nayot
    GEOGRAPHIA TECHNICA, 2023, 18 (01): : 161 - 176
  • [37] A comparison of machine learning algorithms for chemical toxicity classification using a simulated multi-scale data model
    Richard Judson
    Fathi Elloumi
    R Woodrow Setzer
    Zhen Li
    Imran Shah
    BMC Bioinformatics, 9
  • [38] Machine learning algorithms and biomarkers identification for pancreatic cancer diagnosis using multi-omics data integration
    Rouzbahani, Arian Karimi
    Khalili-Tanha, Ghazaleh
    Rajabloo, Yasamin
    Khojasteh-Leylakoohi, Fatemeh
    Garjan, Hassan Shokri
    Nazari, Elham
    Avan, Amir
    PATHOLOGY RESEARCH AND PRACTICE, 2024, 263
  • [39] Application of Machine Learning and Multi-Dimensional Perception in Urban Spatial Quality Evaluation: A Case Study of Shanghai Underground Pedestrian Street
    Yao, Tianning
    Xu, Yao
    Sun, Liang
    Liao, Pan
    Wang, Jin
    LAND, 2024, 13 (09)
  • [40] Comparison of Optimal Machine Learning Algorithms for Early Detection of Unknown Hazardous Chemicals in Rivers Using Sensor Monitoring Data
    Nam, Su Han
    Kwon, Jae Hyun
    Kim, Young Do
    TOXICS, 2023, 11 (04)