Cross-pollination of knowledge for object detection in domain adaptation for industrial automation

被引:0
|
作者
Rehman, Anwar Ur [1 ]
Gallo, Ignazio [1 ]
机构
[1] Univ Insubria, Dept Theoret & Appl Sci, Via Ravasi 2, I-21100 Varese, Varese, Italy
关键词
Object detection; Domain adaptation; Convolutional neural network; Industrial automation; Digit recognition; Cross-pollination; YOLO;
D O I
10.1007/s41315-024-00372-9
中图分类号
TP24 [机器人技术];
学科分类号
080202 ; 1405 ;
摘要
Artificial Intelligence is revolutionizing industries by enhancing efficiency through real-time Object Detection (OD) applications. Utilizing advanced computer vision techniques, OD systems automate processes, analyze complex visual data, and facilitate data-driven decisions, thus increasing productivity. Domain Adaptation for OD has recently gained prominence for its ability to recognize target objects without annotations. Innovative approaches that merge traditional cross-disciplinary domain modeling with cutting-edge deep learning have become essential in addressing complex AI challenges in real-time scenarios. Unlike traditional methods, this study proposes a novel, effective Cross-Pollination of Knowledge (CPK) strategy for domain adaptation inspired by botanical processes. The CPK approach involves merging target samples with source samples at the input stage. By incorporating a random and unique selection of a few target samples, the merging process enhances object detection results efficiently in domain adaptation, supporting detectors in aligning and generalizing features with the source domain. Additionally, this work presents the new Planeat digit recognition dataset, which includes 231 images. To ensure robust comparison, we employ a self-supervised Domain Adaptation (UDA) method that simultaneously trains target and source domains using unsupervised techniques. UDA method leverages target data to identify high-confidence regions, which are then cropped and augmented, adapting UDA for effective OD. The proposed CPK approach significantly outperforms existing UDA techniques, improving mean Average Precision (mAP) by 10.9% through rigorous testing on five diverse datasets across different conditions- cross-weather, cross-camera, and synthetic-to-real. Our code is publicly available https://github.com/anwaar0/CPK-Object-Detection
引用
收藏
页数:19
相关论文
共 50 条
  • [41] One-Shot Object Detection Based on Cross-Domain Learning
    Feng Jiawei
    Chu Jinghui
    Lu Wei
    LASER & OPTOELECTRONICS PROGRESS, 2023, 60 (04)
  • [42] Incremental multi-target domain adaptation for object detection with efficient domain transfer
    Nguyen-Meidine, Le Thanh
    Kiran, Madhu
    Pedersoli, Marco
    Dolz, Jose
    Blais-Morin, Louis -Antoine
    Granger, Eric
    PATTERN RECOGNITION, 2022, 129
  • [43] Object detection based on semi-supervised domain adaptation for imbalanced domain resources
    Wei Li
    Meng Wang
    Hongbin Wang
    Yafei Zhang
    Machine Vision and Applications, 2020, 31
  • [44] Object detection based on semi-supervised domain adaptation for imbalanced domain resources
    Li, Wei
    Wang, Meng
    Wang, Hongbin
    Zhang, Yafei
    MACHINE VISION AND APPLICATIONS, 2020, 31 (03)
  • [45] Progressive Critical Region Transfer for Cross-Domain Visual Object Detection
    Wang, Xiaowei
    Jiang, Peiwen
    Li, Yang
    Hu, Manjiang
    Gao, Ming
    Cao, Dongpu
    Ding, Rongjun
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2024, 25 (08) : 9427 - 9441
  • [46] Reliable hybrid knowledge distillation for multi-source domain adaptive object detection
    Li, Yang
    Zhang, Shanshan
    Liu, Yunan
    Yang, Jian
    KNOWLEDGE-BASED SYSTEMS, 2024, 297
  • [47] Self-Training-Based Unsupervised Domain Adaptation for Object Detection in Remote Sensing Imagery
    Luo, Sihao
    Ma, Li
    Yang, Xiaoquan
    Luo, Dapeng
    Du, Qian
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2024, 62
  • [48] Domain Adaptation and Adaptive Information Fusion for Object Detection on Foggy Days
    Chen, Zhe
    Li, Xiaofang
    Zheng, Hao
    Gao, Hongmin
    Wang, Huibin
    SENSORS, 2018, 18 (10)
  • [49] Coarse-to-fine domain adaptation object detection with feature disentanglement
    Li, Jiafeng
    Zhi, Mengxun
    Zheng, Yongyu
    Zhuo, Li
    Zhang, Jing
    INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS, 2025,
  • [50] C2FDA: Coarse-to-Fine Domain Adaptation for Traffic Object Detection
    Zhang, Hui
    Luo, Guiyang
    Li, Jinglin
    Wang, Fei-Yue
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2022, 23 (08) : 12633 - 12647