Analyzing the Domain Shift Immunity of Deep Homography Estimation
- URL: http://arxiv.org/abs/2304.09976v2
- Date: Wed, 29 Nov 2023 21:25:28 GMT
- Title: Analyzing the Domain Shift Immunity of Deep Homography Estimation
- Authors: Mingzhen Shao, Tolga Tasdizen, Sarang Joshi
- Abstract summary: CNN-driven homography estimation models show a distinctive immunity to domain shifts.
This study explores the resilience of a variety of deep homography estimation models to domain shifts.
- Score: 1.4607247979144045
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Homography estimation serves as a fundamental technique for image alignment
in a wide array of applications. The advent of convolutional neural networks
has introduced learning-based methodologies that have exhibited remarkable
efficacy in this realm. Yet, the generalizability of these approaches across
distinct domains remains underexplored. Unlike other conventional tasks,
CNN-driven homography estimation models show a distinctive immunity to domain
shifts, enabling seamless deployment from one dataset to another without the
necessity of transfer learning. This study explores the resilience of a variety
of deep homography estimation models to domain shifts, revealing that the
network architecture itself is not a contributing factor to this remarkable
adaptability. By closely examining the models' focal regions and subjecting
input images to a variety of modifications, we confirm that the models heavily
rely on local textures such as edges and corner points for homography
estimation. Moreover, our analysis underscores that the domain shift immunity
itself is intricately tied to the utilization of these local textures.
Related papers
- Enhancing AI Diagnostics: Autonomous Lesion Masking via Semi-Supervised Deep Learning [1.4053129774629076]
This study presents an unsupervised domain adaptation method aimed at autonomously generating image masks outlining regions of interest (ROIs) for differentiating breast lesions in breast ultrasound (US) imaging.
Our semi-supervised learning approach utilizes a primitive model trained on a small public breast US dataset with true annotations.
This model is then iteratively refined for the domain adaptation task, generating pseudo-masks for our private, unannotated breast US dataset.
arXiv Detail & Related papers (2024-04-18T18:25:00Z) - Domain-Adaptive Learning: Unsupervised Adaptation for Histology Images
with Improved Loss Function Combination [3.004632712148892]
This paper presents a novel approach for unsupervised domain adaptation (UDA) targeting H&E stained histology images.
Our approach proposes a novel loss function along with carefully selected existing loss functions tailored to address the challenges specific to histology images.
The proposed method is extensively evaluated in accuracy, robustness, and generalization, surpassing state-of-the-art techniques for histology images.
arXiv Detail & Related papers (2023-09-29T12:11:16Z) - Spectral Adversarial MixUp for Few-Shot Unsupervised Domain Adaptation [72.70876977882882]
Domain shift is a common problem in clinical applications, where the training images (source domain) and the test images (target domain) are under different distributions.
We propose a novel method for Few-Shot Unsupervised Domain Adaptation (FSUDA), where only a limited number of unlabeled target domain samples are available for training.
arXiv Detail & Related papers (2023-09-03T16:02:01Z) - Towards Hierarchical Regional Transformer-based Multiple Instance
Learning [2.16656895298847]
We propose a Transformer-based multiple instance learning approach that replaces the traditional learned attention mechanism with a regional, Vision Transformer inspired self-attention mechanism.
We present a method that fuses regional patch information to derive slide-level predictions and show how this regional aggregation can be stacked to hierarchically process features on different distance levels.
Our approach is able to significantly improve performance over the baseline on two histopathology datasets and points towards promising directions for further research.
arXiv Detail & Related papers (2023-08-24T08:19:15Z) - Domain Adaptation for Medical Image Segmentation using
Transformation-Invariant Self-Training [7.738197566031678]
We propose a semi-supervised learning strategy for domain adaptation termed transformation-invariant self-training (TI-ST)
The proposed method assesses pixel-wise pseudo-labels' reliability and filters out unreliable detections during self-training.
arXiv Detail & Related papers (2023-07-31T13:42:56Z) - Unsupervised Domain Transfer with Conditional Invertible Neural Networks [83.90291882730925]
We propose a domain transfer approach based on conditional invertible neural networks (cINNs)
Our method inherently guarantees cycle consistency through its invertible architecture, and network training can efficiently be conducted with maximum likelihood.
Our method enables the generation of realistic spectral data and outperforms the state of the art on two downstream classification tasks.
arXiv Detail & Related papers (2023-03-17T18:00:27Z) - Multi-Scale Multi-Target Domain Adaptation for Angle Closure
Classification [50.658613573816254]
We propose a novel Multi-scale Multi-target Domain Adversarial Network (M2DAN) for angle closure classification.
Based on these domain-invariant features at different scales, the deep model trained on the source domain is able to classify angle closure on multiple target domains.
arXiv Detail & Related papers (2022-08-25T15:27:55Z) - Unsupervised Domain Adaptation Using Feature Disentanglement And GCNs
For Medical Image Classification [5.6512908295414]
We propose an unsupervised domain adaptation approach that uses graph neural networks and, disentangled semantic and domain invariant structural features.
We test the proposed method for classification on two challenging medical image datasets with distribution shifts.
Experiments show our method achieves state-of-the-art results compared to other domain adaptation methods.
arXiv Detail & Related papers (2022-06-27T09:02:16Z) - Few-shot Image Generation via Cross-domain Correspondence [98.2263458153041]
Training generative models, such as GANs, on a target domain containing limited examples can easily result in overfitting.
In this work, we seek to utilize a large source domain for pretraining and transfer the diversity information from source to target.
To further reduce overfitting, we present an anchor-based strategy to encourage different levels of realism over different regions in the latent space.
arXiv Detail & Related papers (2021-04-13T17:59:35Z) - Semantic Change Detection with Asymmetric Siamese Networks [71.28665116793138]
Given two aerial images, semantic change detection aims to locate the land-cover variations and identify their change types with pixel-wise boundaries.
This problem is vital in many earth vision related tasks, such as precise urban planning and natural resource management.
We present an asymmetric siamese network (ASN) to locate and identify semantic changes through feature pairs obtained from modules of widely different structures.
arXiv Detail & Related papers (2020-10-12T13:26:30Z) - Shape-aware Meta-learning for Generalizing Prostate MRI Segmentation to
Unseen Domains [68.73614619875814]
We present a novel shape-aware meta-learning scheme to improve the model generalization in prostate MRI segmentation.
Experimental results show that our approach outperforms many state-of-the-art generalization methods consistently across all six settings of unseen domains.
arXiv Detail & Related papers (2020-07-04T07:56:02Z)
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.