An unsupervised anomaly detection framework for smart assisted living via growing neural gas networks

被引:0
作者
Ciprian, Matteo [1 ]
Gadaleta, Matteo [1 ,2 ]
Rossi, Michele [1 ]
机构
[1] Univ Padua, Dept Informat Engn, Via Gradenigo 6-B, I-35131 Padua, Italy
[2] Scripps Res Translat Inst, 3344 N Torrey Pines Ct, La Jolla, CA 92037 USA
关键词
Assisted living; anomaly detection; pattern learning; growing neural gas networks; adaptation; unsupervised learning; artificial intelligence; behavioral datasets; sensor data; ACTIVITY RECOGNITION; AMBIENT; INTERNET; CONTEXT; SYSTEMS; THINGS;
D O I
10.3233/AIS-230436
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this study, we present a novel framework for detecting anomalies in everyday activities within a smart-home environment. Our method utilizes the growing neural gas (GNG) concept to dynamically adapt to the changing behaviors of monitored individuals, eliminating the need for supervised input. To develop and evaluate our framework, we collected real-life data from environmental sensors that tracked the daily activities of 17 elderly subjects over a continuous two-year period. The proposed approach is highly versatile, capable of detecting a wide range of anomalies associated with daily living activities. We focus on activities that exhibit abnormal duration, frequency, or entirely new behaviors that deviate from established routines. The performance evaluation of our framework revolves around two key aspects: reliability and adaptability. Reliability measures the accuracy of detecting unusual events, while adaptability assesses the system's ability to accommodate changes in user behavior. This involves recognizing recurrent anomalous behaviors as new norms over time and transitioning from persistent anomalies during an initial phase. Our proposed anomaly detection system demonstrates promising results in real-life scenarios. It achieves good reliability, with true negative rate and true positive rate exceeding 90% and 80% respectively, across all activities and users. Additionally, the system swiftly adapts to new individuals or their evolving behaviors, adjusting within a span of 3 to 7 days for new behaviors.
引用
收藏
页码:365 / 387
页数:23
相关论文
共 39 条
  • [1] Securing Cyberspace of Future Smart Cities with 5G Technologies
    Akhunzada, Adnan
    ul Islam, Saif
    Zeadally, Sherali
    [J]. IEEE NETWORK, 2020, 34 (04): : 336 - 342
  • [2] Activities Recognition, Anomaly Detection and Next Activity Prediction Based on Neural Networks in Smart Homes
    Alaghbari, Khaled A.
    Saad, Mohamad Hanif Md
    Hussain, Aini
    Alam, Muhammad Raisul
    [J]. IEEE ACCESS, 2022, 10 : 28219 - 28232
  • [3] Alshammari N.O., 2018, Anomaly detection using hierarchical temporal memory in smart homes
  • [4] OpenSHS: Open Smart Home Simulator
    Alshammari, Nasser
    Alshammari, Talal
    Sedky, Mohamed
    Champion, Justin
    Bauer, Carolin
    [J]. SENSORS, 2017, 17 (05):
  • [5] Alshammari T., 2018, Evaluating Machine Learning Techniques for Activity Classification in Smart Home Environments
  • [6] Anomaly Detection in Elderly Daily Behavior in Ambient Sensing Environments
    Aran, Oya
    Sanchez-Cortes, Dairazalia
    Minh-Tri Do
    Gatica-Perez, Daniel
    [J]. HUMAN BEHAVIOR UNDERSTANDING, 2016, 9997 : 51 - 67
  • [7] Aztiria A., 2012, INT WORKSH AMB ASS L, P90
  • [8] NOVELTY DETECTION AND NEURAL-NETWORK VALIDATION
    BISHOP, CM
    [J]. IEE PROCEEDINGS-VISION IMAGE AND SIGNAL PROCESSING, 1994, 141 (04): : 217 - 222
  • [9] Privacy challenges in Ambient Intelligence systems Lessons learned, gaps and perspectives from the AAL domain and applications
    Caire, Patrice
    Moawad, Assaad
    Efthymiou, Vasilis
    Bikakis, Antonis
    Le Traon, Yves
    [J]. JOURNAL OF AMBIENT INTELLIGENCE AND SMART ENVIRONMENTS, 2016, 8 (06) : 619 - 644
  • [10] Online anomaly detection for long-term ECG monitoring using wearable devices
    Carrera, Diego
    Rossi, Beatrice
    Fragneto, Pasqualina
    Boracchi, Giacomo
    [J]. PATTERN RECOGNITION, 2019, 88 : 482 - 492