Learning Invariant Representation via Contrastive Feature Alignment for
Clutter Robust SAR Target Recognition
- URL: http://arxiv.org/abs/2304.01747v1
- Date: Tue, 4 Apr 2023 12:35:33 GMT
- Title: Learning Invariant Representation via Contrastive Feature Alignment for
Clutter Robust SAR Target Recognition
- Authors: Bowen Peng, Jianyue Xie, Bo Peng, Li Liu
- Abstract summary: This letter proposes a solution called Contrastive Feature Alignment (CFA) to learn invariant representation for robust recognition.
CFA combines both classification and CWMSE losses to train the model jointly.
The proposed CFA combines both classification and CWMSE losses to train the model jointly, which allows for the progressive learning of invariant target representation.
- Score: 10.993101256393679
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The deep neural networks (DNNs) have freed the synthetic aperture radar
automatic target recognition (SAR ATR) from expertise-based feature designing
and demonstrated superiority over conventional solutions. There has been shown
the unique deficiency of ground vehicle benchmarks in shapes of strong
background correlation results in DNNs overfitting the clutter and being
non-robust to unfamiliar surroundings. However, the gap between fixed
background model training and varying background application remains
underexplored. Inspired by contrastive learning, this letter proposes a
solution called Contrastive Feature Alignment (CFA) aiming to learn invariant
representation for robust recognition. The proposed method contributes a mixed
clutter variants generation strategy and a new inference branch equipped with
channel-weighted mean square error (CWMSE) loss for invariant representation
learning. In specific, the generation strategy is delicately designed to better
attract clutter-sensitive deviation in feature space. The CWMSE loss is further
devised to better contrast this deviation and align the deep features activated
by the original images and corresponding clutter variants. The proposed CFA
combines both classification and CWMSE losses to train the model jointly, which
allows for the progressive learning of invariant target representation.
Extensive evaluations on the MSTAR dataset and six DNN models prove the
effectiveness of our proposal. The results demonstrated that the CFA-trained
models are capable of recognizing targets among unfamiliar surroundings that
are not included in the dataset, and are robust to varying signal-to-clutter
ratios.
Related papers
- Adaptive Residual Transformation for Enhanced Feature-Based OOD Detection in SAR Imagery [5.63530048112308]
The presence of unknown targets in real battlefield scenarios is unavoidable.
Various feature-based out-of-distribution approaches have been developed to address this issue.
We propose transforming feature-based OOD detection into a class-localized feature-residual-based approach.
arXiv Detail & Related papers (2024-11-01T00:09:02Z) - PseudoNeg-MAE: Self-Supervised Point Cloud Learning using Conditional Pseudo-Negative Embeddings [55.55445978692678]
PseudoNeg-MAE is a self-supervised learning framework that enhances global feature representation of point cloud mask autoencoders.
We show that PseudoNeg-MAE achieves state-of-the-art performance on the ModelNet40 and ScanObjectNN datasets.
arXiv Detail & Related papers (2024-09-24T07:57:21Z) - Bayesian Learning-driven Prototypical Contrastive Loss for Class-Incremental Learning [42.14439854721613]
We propose a prototypical network with a Bayesian learning-driven contrastive loss (BLCL) tailored specifically for class-incremental learning scenarios.
Our approach dynamically adapts the balance between the cross-entropy and contrastive loss functions with a Bayesian learning technique.
arXiv Detail & Related papers (2024-05-17T19:49:02Z) - Enhancing Multiple Reliability Measures via Nuisance-extended
Information Bottleneck [77.37409441129995]
In practical scenarios where training data is limited, many predictive signals in the data can be rather from some biases in data acquisition.
We consider an adversarial threat model under a mutual information constraint to cover a wider class of perturbations in training.
We propose an autoencoder-based training to implement the objective, as well as practical encoder designs to facilitate the proposed hybrid discriminative-generative training.
arXiv Detail & Related papers (2023-03-24T16:03:21Z) - Magnitude Matters: Fixing SIGNSGD Through Magnitude-Aware Sparsification
in the Presence of Data Heterogeneity [60.791736094073]
Communication overhead has become one of the major bottlenecks in the distributed training of deep neural networks.
We propose a magnitude-driven sparsification scheme, which addresses the non-convergence issue of SIGNSGD.
The proposed scheme is validated through experiments on Fashion-MNIST, CIFAR-10, and CIFAR-100 datasets.
arXiv Detail & Related papers (2023-02-19T17:42:35Z) - Toward Certified Robustness Against Real-World Distribution Shifts [65.66374339500025]
We train a generative model to learn perturbations from data and define specifications with respect to the output of the learned model.
A unique challenge arising from this setting is that existing verifiers cannot tightly approximate sigmoid activations.
We propose a general meta-algorithm for handling sigmoid activations which leverages classical notions of counter-example-guided abstraction refinement.
arXiv Detail & Related papers (2022-06-08T04:09:13Z) - Feature Diversity Learning with Sample Dropout for Unsupervised Domain
Adaptive Person Re-identification [0.0]
This paper proposes a new approach to learn the feature representation with better generalization ability through limiting noisy pseudo labels.
We put forward a brand-new method referred as to Feature Diversity Learning (FDL) under the classic mutual-teaching architecture.
Experimental results show that our proposed FDL-SD achieves the state-of-the-art performance on multiple benchmark datasets.
arXiv Detail & Related papers (2022-01-25T10:10:48Z) - Semi-supervised Domain Adaptive Structure Learning [72.01544419893628]
Semi-supervised domain adaptation (SSDA) is a challenging problem requiring methods to overcome both 1) overfitting towards poorly annotated data and 2) distribution shift across domains.
We introduce an adaptive structure learning method to regularize the cooperation of SSL and DA.
arXiv Detail & Related papers (2021-12-12T06:11:16Z) - Pose Discrepancy Spatial Transformer Based Feature Disentangling for
Partial Aspect Angles SAR Target Recognition [11.552273102567048]
This letter presents a novel framework termed DistSTN for the task of synthetic aperture radar (SAR) automatic target recognition (ATR)
In contrast to the conventional SAR ATR algorithms, DistSTN considers a more challenging practical scenario for non-cooperative targets.
We develop an amortized inference scheme that enables efficient feature extraction and recognition using an encoder-decoder mechanism.
arXiv Detail & Related papers (2021-03-07T11:47:34Z) - Deep Semantic Matching with Foreground Detection and Cycle-Consistency [103.22976097225457]
We address weakly supervised semantic matching based on a deep network.
We explicitly estimate the foreground regions to suppress the effect of background clutter.
We develop cycle-consistent losses to enforce the predicted transformations across multiple images to be geometrically plausible and consistent.
arXiv Detail & Related papers (2020-03-31T22:38:09Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.