A Global Model Approach to Robust Few-Shot SAR Automatic Target Recognition

被引:9
作者
Inkawhich, Nathan [1 ]
机构
[1] Air Force Res Lab Informat Directorate AFRL RI, High Performance Syst Branch, Rome, NY 13441 USA
关键词
Feature extraction; Training; Synthetic aperture radar; Task analysis; Data mining; Standards; Data models; Automatic target recognition (ATR); deep learning; few-shot learning (FSL); out-of-distribution detection (OOD);
D O I
10.1109/LGRS.2023.3264535
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
In real-world scenarios, it may not always be possible to collect hundreds of labeled samples per class for training deep-learning-based synthetic aperture radar (SAR) automatic target recognition (ATR) models. This work specifically tackles the few-shot SAR ATR problem, where only a handful of labeled samples may be available to support the task of interest. Our approach is composed of two stages. In the first, a global representation model is trained via self-supervised learning (SSL) on a large pool of diverse and unlabeled SAR data. In the second stage, the global model is used as a fixed feature extractor and a classifier is trained to partition the feature space given the few-shot support samples, while simultaneously being calibrated to detect anomalous inputs. Unlike competing approaches which require a pristine labeled dataset for pretraining via meta-learning, our approach learns highly transferable features from unlabeled data that have little-to-no relation to the downstream task. We evaluate our method in standard and extended moving and stationary target acquisition and recognition (MSTAR) operating conditions and find it to achieve high accuracy and robust out-of-distribution (OOD) detection in many different few-shot settings. Our results are particularly significant because they show the merit of a global model approach to SAR ATR, which makes minimal assumptions and provides many axes for extendability.
引用
收藏
页数:5
相关论文
共 23 条
  • [1] Target Classification Using the Deep Convolutional Networks for SAR Images
    Chen, Sizhe
    Wang, Haipeng
    Xu, Feng
    Jin, Ya-Qiu
    [J]. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2016, 54 (08): : 4806 - 4817
  • [2] Chen T, 2020, PR MACH LEARN RES, V119
  • [3] Dungan K. E., 2010, ALGORITHMS SYNTHETIC, V18, P242, DOI DOI 10.1117/12.850151.FULL
  • [4] Deep Residual Learning for Image Recognition
    He, Kaiming
    Zhang, Xiangyu
    Ren, Shaoqing
    Sun, Jian
    [J]. 2016 IEEE CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2016, : 770 - 778
  • [5] Hendrycks D., 2019, INT C LEARN REPR
  • [6] Hendrycks Dan, 2016, Gaussian Error Linear Units (GELUs)
  • [7] Hou X., 2020, Sci. China Inf. Sci., V63, P1
  • [8] A Dual-Polarimetric SAR Ship Detection Dataset and a Memory-Augmented Autoencoder-Based Detection Method
    Hu, Yuxin
    Li, Yini
    Pan, Zongxu
    [J]. SENSORS, 2021, 21 (24)
  • [9] Improving Out-of-Distribution Detection by Learning From the Deployment Environment
    Inkawhich, Nathan
    Zhang, Jingyang
    Davis, Eric K.
    Luley, Ryan
    Chen, Yiran
    [J]. IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2022, 15 : 2070 - 2086
  • [10] Training SAR-ATR Models for Reliable Operation in Open-World Environments
    Inkawhich, Nathan A.
    Davis, Eric K.
    Inkawhich, Matthew J.
    Majumder, Uttam K.
    Chen, Yiran
    [J]. IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2021, 14 : 3954 - 3966