Inconsistency-based Active Learning with Adaptive Pseudo-labeling for Fish Species Identification

被引:0
作者
Nabi, M. M. [1 ]
Shah, Chiranjibi [2 ]
Alaba, Simegnew Yihunie [1 ]
Caillouet, Ryan [3 ]
Prior, Jack [2 ,3 ]
Campbell, Matthew [3 ]
Wallace, Farron [4 ]
Ball, John E. [1 ]
Moorhead, Robert [2 ]
机构
[1] Mississippi State Univ, Dept Elect & Comp Engn, James Worth Bagley Coll Engn, Mississippi State, MS 39762 USA
[2] Mississippi State Univ, Northern Gulf Inst, Starkville, MS 39759 USA
[3] Southeast Fisheries Sci Ctr, Nat Marine Fisheries Serv, 3209 Frederic St, Pascagoula, MS 39567 USA
[4] NOAA Fisheries, 4700 Ave, Galveston, TX 77551 USA
来源
OCEAN SENSING AND MONITORING XVI | 2024年 / 13061卷
关键词
active learning; inconsistency; object detection; pseudo-labelling; SEAMAPD21; underwater fish; ABUNDANCE;
D O I
10.1117/12.3013336
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The deep neural network has found widespread application in object detection due to its high accuracy. However, its performance typically depends on the availability of a substantial volume of accurately labeled data. Several active learning approaches have been proposed to reduce the labeling dependency based on the confidence of the detector. Nevertheless, these approaches tend to exhibit biases toward high-performing classes, resulting in datasets that do not adequately represent the testing data. In this study, we introduce a comprehensive framework for active learning that considers both the uncertainty and the robustness of the detector, ensuring superior performance across all classes. The robustness-based score for active learning is calculated using the consistency between an image and its augmented version. Additionally, we leverage pseudo-labeling to mitigate potential distribution drift and enhance model performance. To address the challenge of setting the pseudo-labeling threshold, we introduce an adaptive threshold mechanism. This adaptability is crucial, as a fixed threshold can negatively impact performance, particularly for low-performing classes or during the initial stages of training. For our experiment, we employ the Southeast Area Monitoring and Assessment Program Dataset 2021 (SEAMAPD21), comprising 130 fish species classes with 28,328 image samples. The results show that our model outperforms the state-of-the-art method and significantly reduces the annotation cost. Furthermore, we benchmark our model's performance against a public dataset (PASCAL VOC07), showcasing its effectiveness in comparison to existing methods.
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Active Learning Based 3D Semantic Labeling From Images and Videos
    Rong, Mengqi
    Cui, Hainan
    Hu, Zhanyi
    Jiang, Hanqing
    Liu, Hongmin
    Shen, Shuhan
    [J]. IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY, 2022, 32 (12) : 8101 - 8115
  • [32] Active Learning for Adaptive Brain Machine Interface Based on Software Agent
    Castillo-Garcia, Javier
    Hortal, Enrique
    Bastos, Teodiano
    Ianez, Eduardo
    Caicedo, Eduardo
    Azorin, Jose
    [J]. 2015 23RD MEDITERRANEAN CONFERENCE ON CONTROL AND AUTOMATION (MED), 2015, : 44 - 48
  • [33] A Semi-Supervised Object Detector Based on Adaptive Weighted Active Learning and Orthogonal Data Augmentation
    Wang, Meng
    Xu, Xiao
    Liu, Haipeng
    [J]. SENSORS, 2025, 25 (06)
  • [34] Active and Transfer Learning for Efficient Identification of Species in Multi-Label Bioacoustic Datasets
    Kath, Hannes
    Gouvea, Thiago
    Sonntag, Daniel
    [J]. PROCEEDINGS OF THE 2024 INTERNATIONAL CONFERENCE ON INFORMATION TECHNOLOGY FOR SOCIAL GOOD, GOODIT 2024, 2024, : 22 - 25
  • [35] Active Learning for Ordinal Classification Based on Adaptive Diversity-Based Uncertainty Sampling
    He, Deniu
    [J]. IEEE ACCESS, 2023, 11 : 16396 - 16410
  • [36] Edge-Based Bird Species Recognition via Active Learning
    Bellafkir, Hicham
    Vogelbacher, Markus
    Schneider, Daniel
    Muehling, Markus
    Korfhage, Nikolaus
    Freisleben, Bernd
    [J]. NETWORKED SYSTEMS, NETYS 2023, 2023, 14067 : 17 - 34
  • [37] Data Labeling for Fault Detection in Cloud: A Test Suite-Based Active Learning Approach
    Bagora, Prateek
    Ebrahimzadeh, Amin
    Wuhibt, Fetahi
    Glithot, Roch H.
    [J]. 2023 IEEE 9TH INTERNATIONAL CONFERENCE ON NETWORK SOFTWARIZATION, NETSOFT, 2023, : 262 - 266
  • [38] Robust and Discriminative Labeling for Multi-Label Active Learning Based on Maximum Correntropy Criterion
    Du, Bo
    Wang, Zengmao
    Zhang, Lefei
    Zhang, Liangpei
    Tao, Dacheng
    [J]. IEEE TRANSACTIONS ON IMAGE PROCESSING, 2017, 26 (04) : 1694 - 1707
  • [39] Transient stability assessment of power system based on clustering adaptive active learning
    Lu D.
    Wang L.
    Zhang S.
    Cai Y.
    Chen J.
    [J]. Dianli Zidonghua Shebei/Electric Power Automation Equipment, 2021, 41 (07): : 176 - 181
  • [40] Active learning-based domain adaptive localized polynomial chaos expansion
    Novak, Lukas
    Shields, Michael D.
    Sadilek, Vaclav
    Vorechovsky, Miroslav
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2023, 204